Exploring the phenotypic consequences of tissue specific gene expression variation inferred from GWAS summary statistics.
- Authors
- Barbeira, Alvaro N; Dickinson, Scott P; Bonazzola, Rodrigo; Zheng, Jiamao; Wheeler, Heather E; Torres, Jason M; Torstenson, Eric S; Shah, Kaanan P; Garcia, Tzintzuni; Edwards, Todd L; Stahl, Eli A; Huckins, Laura M; GTEx Consortium; Nicolae, Dan L; Cox, Nancy J; Im, Hae Kyung
- Year
- 2018
- Journal
- Nature communications
- PMID
- 29739930
- DOI
- 10.1038/s41467-018-03621-1
- PMCID
- PMC5940825
Scalable, integrative methods to understand mechanisms that link genetic variants with phenotypes are needed. Here we derive a mathematical expression to compute PrediXcan (a gene mapping approach) results using summary data (S-PrediXcan) and show its accuracy and general robustness to misspecified reference sets. We apply this framework to 44 GTEx tissues and 100+ phenotypes from GWAS and meta-analysis studies, creating a growing public catalog of associations that seeks to capture the effects of gene expression variation on human phenotypes. Replication in an independent cohort is shown. Most of the associations are tissue specific, suggesting context specificity of the trait etiology. Colocalized significant associations in unexpected tissues underscore the need for an agnostic scanning of multiple contexts to improve our ability to detect causal regulatory mechanisms. Monogenic disease genes are enriched among significant associations for related traits, suggesting that smaller alterations of these genes may cause a spectrum of milder phenotypes.
Comparison between GWAS, PrediXcan, and S-PrediXcan. a Compares GWAS, PrediXcan, and Summary-PrediXcan. Both GWAS and PrediXcan take genotype and phenotype data as input. GWAS computes the regression coefficients of Y on Xl using the model \documentclass[12pt]{minimal} \usepackage{amsmath} \usepackage{wasysym} \usepackage{amsfonts} \usepackage{amssymb} \usepackage{amsbsy} \usepackage{mathrsfs} \usepackage{upgreek} \setlength{\oddsidemargin}{-69pt} \begin{document}$$Y = a + X_lb + {\it{\epsilon }}$$\end{document}Y=a+Xlb+Ο΅, where Y is the phenotype and Xl the individual SNP dosage. The output is a table of SNP-level results. PrediXcan, in contrast, starts first by predicting/imputing the transcriptome. Then it calculates the regression coefficients of the phenotype Y on each geneβs predicted expression \documentclass[12pt]{minimal} \usepackage{amsmath} \usepackage{wasysym} \usepackage{amsfonts} \usepackage{amssymb} \usepackage{amsbsy} \usepackage{mathrsfs} \usepackage{upgreek} \setlength{\oddsidemargin}{-69pt} \begin{document}$$T_g$$\end{document}Tg. The output is a table of gene-level results. Summary-PrediXcan directly computes the gene-level association results using the output from GWAS. b Shows the components of the formula to calculate PrediXcan gene-level association results using summary statistics. The different sets involved as input data are shown. The regression coefficient between the phenotype and the genotype is obtained from the study set. The training set is the reference transcriptome dataset where the prediction models of gene expression levels are trained. The reference set (1000G, or training set having some advantages) is used to compute the variances and covariances (LD structure) of the markers used in the predicted expression levels. Both the reference set and training set values are precomputed and provided to the user so that only the study set results need to be provided to the software. The crossed out term was set to 1 as an approximation. We found this approximation to have negligible impact on the results
Comparison of PrediXcan and S-PrediXcan results in real and simulated traits. This figure shows a comparison of PrediXcan vs. S-PrediXcan for a a simulated phenotype under null hypothesis of no genetic component; b a cellular phenotype (=intrinsic growth); and c bipolar disorder and type 1 diabetes studies from Wellcome Trust Case Control Consortium (WTCCC). Gene expression prediction models were based on the DGN cohort presented in ref. 11. For the simulated phenotype, study sets (GWAS set) and reference sets (LD calculation set) consisted of African (661), East Asian (504), and European (503) individuals from the 1000 Genomes Project. When the same study set is used as reference set, we obtained a high correlation (coefficient of determination): r2 > 0.99999. For the intrinsic growth phenotype, study sets were a subset of 140 individuals from each of the African, Asian, and European groups from 1000 Genomes Project. The reference set was the same as for the simulated phenotype. For the disease phenotypes, the study set consisted of British individuals, and the LD calculation set was the European population subset of the 1000 Genomes Project
Colocalization status of S-PrediXcan results. a Shows a ternary plot that represents the probabilities of various configurations from COLOC. This plot conveniently constrains the values such that the sum of the probabilities is 1. All points in a horizontal line have the same probability of βcolocalizedβ GWAS and eQTL signals (P4), points on a line parallel to the right side of the triangle (NW to SE) have the same probability of βIndependent signalsβ (P3), and lines parallel to the left side of the triangle (NE to SW) correspond to constant P0+P1+P2. Top sub-triangle in blue corresponds to high probability of colocalization (P4 > 0.5), lower left sub-triangle in orange corresponds to probability of independent signals (P3 > 0.5), and lower right parallelogram corresponds to genes without enough power to determine or reject colocalization. The following panels present ternary plots of COLOC probabilities with a density overlay for S-PrediXcan results of the Height phenotype. b Shows the colocalization probabilities for all gene-tissue pairs. Most results fall into the βundeterminedβ region. c Shows that if we keep only Bonferroni-significant S-PrediXcan results, associations tend to cluster into three distinct regions: βindependent signals,β βcolocalized,β and βundertermined.β d Shows that HEIDI significant genes (to be interpreted as high heterogeneity between GWAS and eQTL signals, i.e., distinct signals) tightly cluster in the βindependent signalβ region, in concordance with COLOC. A few genes fall in the βcolocalizedβ region, in disagreement with COLOC classification. Unlike COLOC results, HEIDI does not partition the genes into distinct clusters and an arbitrary cutoff p-value has to be chosen. e Shows genes with large HEIDI p-value (no evidence of heterogeneity) which fall in large part in the βcolocalizedβ region. However a substantial number fall in βindependent signalβ region, disagreeing with COLOCβs classification
Comparison between S-PrediXcan and S-TWAS. a Depicts how summary-TWAS and PrediXcan test the mediating role of gene expression level Tg. Multiple SNPs are linked to the expression level of a gene via weights wX,Tg. b Shows the significance of Summary-TWAS (BSLMM) vs. summary-PrediXcan (elastic net), for the height phenotype across 44 GTEx tissues. There is a small bias caused by using S-TWAS results available from24, which only lists significant hits. S-PrediXcan tends to yield a larger number of significant associations (see Supplementary Fig. 12). P-values were thresholded at 10β50 for visualization purposes. c Shows the proportion of non-colocalized associations (distinct eQTL and GWAS signals) from S-TWAS significant vs. S-PrediXcan significant results. For all phenotypes, S-TWAS has a higher proportion of LD-contaminated signals compared to S-PrediXcan, as estimated via COLOC. d Shows the proportion of colocalized associations (shared eQTL and GWAS signals) from S-TWAS significant vs. S-PrediXcan significant results. For most phenotypes, TWAS has lower proportion of colocalized signals compared to S-PrediXcan, as estimated via COLOC. Phenotype abbreviations are as follows: FNBD Femoral Neck Bone Density, LSBD Lumbar Spine Bone Density, BMI Body Mass Index, HEIGHT Height, LDL Low-Density Lipoprotein Cholesterol, HDL High-Density Lipoprotein Cholesterol, TRYG Tryglicerides, CROHN Crohnβs Disease, INFBOWEL Inflammatory Bowelβs Disease, ULCERC Ulcerative Colitis, HBA1C Hemogoblin Levels, HOMA-IR HOMA Insulin Response, SCZ Schizophrenia, RA Rheumatoid Arthritis, COLLEGE College Completion, EDUCYEARS Education Years
Comparison between summary-PrediXcan and SMR. a Depicts how SMR tests the mediating role of gene expression level \documentclass[12pt]{minimal} \usepackage{amsmath} \usepackage{wasysym} \usepackage{amsfonts} \usepackage{amssymb} \usepackage{amsbsy} \usepackage{mathrsfs} \usepackage{upgreek} \setlength{\oddsidemargin}{-69pt} \begin{document}$$T_g$$\end{document}Tg. The top eQTL is linked to the phenotype as an instrumental variable in a Mendelian Randomization approach. b Shows the significance of SMR vs. the significance of Summary-PrediXcan. As expected, SMR associations tend to be smaller than S-PrediXcan ones. c and d show that the SMR statistics significance is bounded by GWAS and eQTL p-values. The p-values (βlog10) of the SMR statistics are plotted against the GWAS p-value of the top eQTL SNP (c), and the geneβs top eQTL p-value (d). e Shows a QQ plot for simulated values of \documentclass[12pt]{minimal} \usepackage{amsmath} \usepackage{wasysym} \usepackage{amsfonts} \usepackage{amssymb} \usepackage{amsbsy} \usepackage{mathrsfs} \usepackage{upgreek} \setlength{\oddsidemargin}{-69pt} \begin{document}$$T_{\mathrm{SMR}}$$\end{document}TSMR. Under the null hypothesis of significant eQTL signal and no GWAS association, we generated random values for \documentclass[12pt]{minimal} \usepackage{amsmath} \usepackage{wasysym} \usepackage{amsfonts} \usepackage{amssymb} \usepackage{amsbsy} \usepackage{mathrsfs} \usepackage{upgreek} \setlength{\oddsidemargin}{-69pt} \begin{document}$$Z_{\mathrm{GWAS}}^2$$\end{document}ZGWAS2 and \documentclass[12pt]{minimal} \usepackage{amsmath} \usepackage{wasysym} \usepackage{amsfonts} \usepackage{amssymb} \usepackage{amsbsy} \usepackage{mathrsfs} \usepackage{upgreek} \setlength{\oddsidemargin}{-69pt} \begin{document}$$Z_{\mathrm{eQTL}}^2$$\end{document}ZeQTL2 following the simulations from ref. 16. \documentclass[12pt]{minimal} \usepackage{amsmath} \usepackage{wasysym} \usepackage{amsfonts} \usepackage{amssymb} \usepackage{amsbsy} \usepackage{mathrsfs} \usepackage{upgreek} \setlength{\oddsidemargin}{-69pt} \begin{document}$$T_{\mathrm{SMR}}$$\end{document}TSMR statistic was calculated from these values, and compared to a \documentclass[12pt]{minimal} \usepackage{amsmath} \usepackage{wasysym} \usepackage{amsfonts} \usepackage{amssymb} \usepackage{amsbsy} \usepackage{mathrsfs} \usepackage{upgreek} \setlength{\oddsidemargin}{-69pt} \begin{document}$$\chi _1^2$$\end{document}Ο12 distribution to illustrate this statisticsβ deflation. f shows the sample mean of \documentclass[12pt]{minimal} \usepackage{amsmath} \usepackage{wasysym} \usepackage{amsfonts} \usepackage{amssymb} \usepackage{amsbsy} \usepackage{mathrsfs} \usepackage{upgreek} \setlength{\oddsidemargin}{-69pt} \begin{document}$$T_{\mathrm{SMR}}$$\end{document}TSMR from 1000 simulations, centered close to 0.93, instead of the expected value of 1 for a \documentclass[12pt]{minimal} \usepackage{amsmath} \usepackage{wasysym} \usepackage{amsfonts} \usepackage{amssymb} \usepackage{amsbsy} \usepackage{mathrsfs} \usepackage{upgreek} \setlength{\oddsidemargin}{-69pt} \begin{document}$$\chi _1^2$$\end{document}Ο12-distributed variable. g shows the proportion of non-colocalized significant associations to total significant associations in PrediXcan and SMR. h Shows the proportion of colocalized significant associations (shared eQTL and GWAS signals). As expected, SMR shows a higher proportion of colocalized and non-colocalized associations than PrediXcan. This is caused by SMRβs high eQTL significance threshold, that rules out most of the genes with low colocalization power (P0 + P1 + P2 > 0.5). For some of the associations, GWAS and eQTL p-values were more significant than shown since they were thresholded at 10β50 to improve visualization. Phenotype abbreviations are as follows: FNBD Femoral Neck Bone Density, LSBD Lumbar Spine Bone Density, BMI Body Mass Index, HEIGHT Height, LDL Low-Density Lipoprotein Cholesterol, HDL High-Density Lipoprotein Cholesterol, TRYG Tryglicerides, CROHN Crohnβs Disease, INFBOWEL Inflammatory Bowelβs Disease, ULCERC Ulcerative Colitis, HBA1C Hemogoblin Levels, HOMA-IR HOMA Insulin Response, SCZ Schizophrenia, RA Rheumatoid Arthritis, COLLEGE College Completion, EDUCYEARS Education Years
MetaXcan framework and application. a Shows a general framework (MetaXcan) which encompasses methods such as PrediXcan, TWAS, SMR, COLOC among others. b Summarizes the application of the MetaXcan framework with S-PrediXcan using 44 GTEx tissue transcriptomes and over 100 GWAS and meta analysis results. We trained prediction models using elastic-net26 and deposited the weights and SNP covariances in the publicly available resource (http://predictdb.org/). The weights, covariances, and over 100 GWAS summary results were processed with S-PrediXcan. Colocalization status was computed and the full set of results was deposited in gene2pheno.org
ClinVar genes show significant S-PrediXcan associations. Genes implicated in ClinVar tended to be more significant in S-PrediXcan for most diseases tested, except for schizophrenia and autism. This suggests that more moderate alteration of monogenic disease genes may contribute in a continuum of more moderate but related phenotypes. Alternatively, a more complex interplay between common and rare variation could be taking place such as higher tolerance to loss of function mutations in lower expressing haplotypes which could induce association with predicted expression. Blue circles correspond to the QQ plot of genes in ClinVar that were annotated with the phenotype and black circles correspond to all genes
S-PrediXcan associations in different tissues. a Displays associations for PCSK9, SORT1, and C4A on relevant traits by tissue. This figure shows the association strength between three well studied genes and corresponding phenotypes. C4A associations with schizophrenia (SCZ) are significant across most tissues. SORT1 associations with LDL-C, coronary artery disease (CAD), and myocardial infarction (MI) are most significant in liver. PCSK9 associations with LDL-C, coronary artery disease (CAD), and myocardial infarction (MI) are most significant in tibial nerve. The size of the points represent the significance of the association between predicted expression and the traits indicated on the top labels. Red indicates negative correlation whereas blue indicates positive correlation. \documentclass[12pt]{minimal} \usepackage{amsmath} \usepackage{wasysym} \usepackage{amsfonts} \usepackage{amssymb} \usepackage{amsbsy} \usepackage{mathrsfs} \usepackage{upgreek} \setlength{\oddsidemargin}{-69pt} \begin{document}$$R_{\mathrm{pred}}^2$$\end{document}Rpred2 is a performance measure computed as the correlation squared between observed and predicted expression, cross validated in the training set. Darker points indicate larger genetic component and consequently more active regulation in the tissue. b Displays a histogram of the number of tissues for which a gene is significantly associated with height (other phenotypes show a similar pattern). Tissue abbreviations: ADPSBQ Adipose-Subcutaneous, ADPVSC Adipose-Visceral(Omentum), ADRNLG Adrenal Gland, ARTAORT Artery-Aorta, ARTCRN Artery-Coronary, ARTTBL Artery-Tibial, BLDDER Bladder, BRNAMY Brain-Amygdala, BRNACC Brain-Anterior cingulate cortex (BA24), BRNCDT Brain-Caudate(basal ganglia), BRNCHB Brain-Cerebellar Hemisphere, BRNCHA Brain-Cerebellum, BRNCTXA Brain-Cortex, BRNCTXB Brain-Frontal Cortex (BA9), BRNHPP Brain-Hippocampus, BRNHPT Brain-Hypothalamus, BRNNCC Brain Nucleus accumbens(basal ganglia), BRNPTM Brain-Putamen (basal ganglia), BRNSPC Brain-Spinal cord(cervical c-1), BRNSNG Brain-Substantia nigra, BREAST Breast-Mammary Tissue, LCL Cells-EBV-transformed lymphocytes, FIBRBLS Cells-Transformed fibroblasts, CVXECT Cervix-Ectocervix, CVSEND Cervix-Endocervix, CLNSGM Colon-Sigmoid, CLNTRN Colon-Transverse, ESPGEJ Esophagus-Gastroesophageal Junction, ESPMCS Esophagus-Mucosa, ESPMSL Esophagus-Muscularis, FLLPNT Fallopian Tube, HRTAA Heart-Atrial Appendage, HRTLV Heart-Left Ventricle, KDNCTX Kidney-Cortex, LIVER Liver, LUNG Lung, SLVRYG Minor Salivary Gland, MSCLSK Muscle-Skeletal, NERVET Nerve-Tibial, OVARY Ovary, PNCREAS Pancreas, PTTARY Pituitary, PRSTTE Prostate, SKINNS Skin-Not Sun Exposed (Suprapubic), SKINS Skin-Sun Exposed (Lower leg), SNTTRM Small Intestine-Terminal Ileum, SPLEEN Spleen, STMACH Stomach, TESTIS Testis, THYROID Thyroid, UTERUS Uterus, VAGINA Vagina, WHLBLD Whole Blood
Discovery and replication Z-scores for lipid trait. This figure shows the Z-scores of the association between dyslipidemia (GERA) and predicted gene expression levels on the vertical axis and the Z-scores for LDL cholesterol on the horizontal axis. To facilitate visualization, very large Z-scores where thresholded to 10. Proportions in each quadrant were computed excluding Z-scores with magnitude smaller than 2 to filter out noise
| Name | Type |
|---|---|
| 1000 Genomes genotype data local | cohort |
| 1000 Genomes Project | cohort |
| 12 diseases local | phenotype |
| 44 human tissues local | anatomy |
| Affymetrix | drug |
| African subset local | cohort |
| age-related macular degeneration | phenotype |
| Alzheimerβs disease | phenotype |
| anthropometric traits | phenotype |
| Any cardiac event local | phenotype |
| Any psychiatric event local | phenotype |
| autism | phenotype |
| autoimmune diseases | phenotype |
| bipolar disorder | phenotype |
| Blue region local | drug |
| Bonferroni correction | drug |
| brain | anatomy |
| broad set of phenotypes local | phenotype |
| C4A local | gene |
| cardiometabolic traits local | phenotype |
| cardiovascular disease | phenotype |
| causal SNP | cohort |
| cellular growth phenotype local | phenotype |
| ClinVar genes local | gene |
| Coloc | drug |
| colocalized genes local | gene |
| COLOC P3 local | drug |
| COLOC P4 local | drug |
| common variants | cohort |
| COMPLEX_TRAIT local | phenotype |
| complex traits | phenotype |
| coronary artery disease | phenotype |
| Crohnβs disease | phenotype |
| dbGaP | cohort |
| DGN | anatomy |
| DGN Cohort local | cohort |
| diabetes | phenotype |
| discovery dataset | cohort |
| disease-associated genes local | phenotype |
| dyslipidemia | phenotype |
| Eagle2 | drug |
| East Asian subset local | cohort |
| eQTL local | cohort |
| eQTLGen Consortium | cohort |
| eQTL signals local | drug |
| European population | cohort |
| European subset local | cohort |
| expression training set local | cohort |
| Fig. 3a local | drug |
| Framingham Heart Study | cohort |
| gene | gene |
| gene2pheno.org local | drug |
| Gene A local | gene |
| gene expression | phenotype |
| gene expression level (Tg) local | gene |
| gene expression trait local | phenotype |
| gene expression variation local | variant |
| gene g | gene |
| gene model local | gene |
| gene-tissue pair local | gene |
| geneβtissue pairs local | gene |
| GERA | cohort |
| GitHub repository https://github.com/hakyimlab/MetaXcan local | drug |
| glycemic traits | phenotype |
| gray region local | drug |
| GTEx | cohort |
| GTEx consortium | cohort |
| GTEx eQTL associations local | cohort |
| GTEx project | cohort |
| GWAMA studies local | cohort |
| GWAS | cohort |
| GWAS association local | phenotype |
| GWAS study set local | cohort |
| GWA study | cohort |
| HDL cholesterol | phenotype |
| height | phenotype |
| HRC-1000G-check-bim.pl script local | drug |
| HRC r1.1 2016 panel local | cohort |
| independent signal local | drug |
| inflammatory bowel disease | phenotype |
| LDL cholesterol | phenotype |
| LDL cholesterol levels local | phenotype |
| LDL-C lowering drugs local | drug |
| lipid levels | phenotype |
| liver | anatomy |
| Loss of function mutations local | variant |
| Lower expressing haplotypes local | variant |
| lung | anatomy |
| major depressive disorder | phenotype |
| MetaXcan | drug |
| Michigan Imputation Server local | cohort |
| minimac3 | drug |
| monogenic disease genes local | gene |
| Monogenic disease genes local | gene |
| mutations | variant |
| non-colocalized genes local | gene |
| obesity | phenotype |
| pancreas | anatomy |
| PCSK9 | gene |
| phenotype | phenotype |
| Phenotype associations local | phenotype |
| population | cohort |
| population reference set local | cohort |
| predictdb.org local | drug |
| PredictDB.org local | drug |
| predicted expression local | drug |
| Predicted expression local | phenotype |
| predicted expression levels local | drug |
| PrediXcan local | drug |
| psychiatric disorders | phenotype |
| rare variation | cohort |
| reference population | cohort |
| Reliably predicted genes local | gene |
| replication set local | cohort |
| Replication Set local | cohort |
| rheumatoid arthritis | phenotype |
| RPGEH local | cohort |
| rs12740374 local | variant |
| schizophrenia | phenotype |
| selected phenotypes local | phenotype |
| significant genes local | gene |
| simulated phenotype | phenotype |
| SMR16 local | drug |
| SNP | cohort |
| SNP l local | variant |
| SORT1 | gene |
| S-PrediXcan | drug |
| STARNET study local | cohort |
| study cohort | cohort |
| study set local | cohort |
| Study Set local | cohort |
| ternary plot local | drug |
| tibial nerve | anatomy |
| top eQTL local | variant |
| training set | cohort |
| trait | phenotype |
| trait-associated variant | cohort |
| triglyceride levels | phenotype |
| triglycerides | phenotype |
| type 1 diabetes | phenotype |
| type 2 diabetes | phenotype |
| UCSF Institute for Human Genetics local | cohort |
| ulcerative colitis | phenotype |
| visceral adipose tissue | phenotype |
| whole blood | anatomy |
| WTCCC | cohort |
| WTCCC Consortium local | cohort |
| WTCCC_EGA local | cohort |
| Ο1 local | drug |
| Ο1(all) local | drug |
| Ο1(sig) local | drug |
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| DEDUCE: statistical inference on disease-associated genes uncovers tissue-disease associations. | Wang B et al. | β | 2025 | β |
| DMRdb: a disease-centric Mendelian randomization database for systematically assessing causal relationships of diseases with genes, proteins, CpG sites, metabolites and other diseases. | Zheng X et al. | β | 2025 | β |
| Endothelial Vasoactive Pathways and Renal Outcomes: A Drug-Target Mendelian Randomization and Transcriptome-Wide Association Study. | Ma Y et al. | β | 2025 | β |
| Enhancer RNA Transcriptome-Wide Association Study Reveals a Distinctive Class of Pan-Cancer Susceptibility eRNAs. | Chen W et al. | β | 2025 | β |
| Enhancing disease risk gene discovery by integrating transcription factor-linked trans-variants into transcriptome-wide association analyses. | He J et al. | β | 2025 | β |
| Enhancing genetic discovery through narrow phenotyping in schizophrenia. | Yakovchik A et al. | β | 2025 | β |
| Establishing a robust triangulation framework to explore the relationship between hearing loss and Parkinson's disease. | Zhang H et al. | β | 2025 | β |
| Exploring genetic loci linked to COVID-19 severity and immune response through multi-trait GWAS analyses. | Meng Z et al. | β | 2025 | β |
| Exploring the genomic and transcriptomic profiles of glycemic traits and drug repurposing. | Lin MR et al. | β | 2025 | β |
| Exploring the molecular basis of the genetic correlation between body mass index and brain morphological traits. | Fusco D et al. | β | 2025 | β |
| General Kernel Machine Methods for Multi-Omics Integration and Genome-Wide Association Testing With Related Individuals. | Little A et al. | β | 2025 | β |
| Genetically Predicted Gene Expression Effects on Changes in Red Blood Cell and Plasma Polyunsaturated Fatty Acids. | Khankari NK et al. | β | 2025 | β |
| Genetically regulated eRNA expression predicts chromatin contact frequency and reveals genetic mechanisms at GWAS loci. | Betti MJ et al. | β | 2025 | β |
| Genetic analysis in African ancestry populations reveals genetic contributors to lung cancer susceptibility. | Betti MJ et al. | β | 2025 | β |
| Genetic analysis of psychosis Biotypes: shared Ancestry-adjusted polygenic risk and unique genomic associations. | Xia C et al. | β | 2025 | β |
| Genetic Architecture of Immune Cell DNA Methylation in the Rhesus Macaque. | Costa CE et al. | β | 2025 | β |
| Genetic predisposition to persistent fatigue after a diagnosis of colorectal cancer. | Kazemian E et al. | β | 2025 | β |
| Genetic regulation of gene expression across multiple tissues in chickens. | Guan D et al. | β | 2025 | β |
| Genetic regulation of lncRNA expression in whole human brain and their contribution to CNS disorders. | He Y et al. | β | 2025 | β |
| Genetic Studies Through the Lens of Gene Networks. | Subirana-GranΓ©s M et al. | β | 2025 | β |
| Genetic Variation in the Alternative Complement Pathway Contributes to Individual Susceptibility to Bacteremia and Sepsis. | Inman K et al. | β | 2025 | β |
| Genome- and transcriptome-wide association meta-analysis reveals new insights into genes affecting coronary and peripheral artery disease. | Rode M et al. | β | 2025 | β |
| Genome and transcriptome wide association study identify candidate genes regulating folate levels in maize. | Zou C et al. | β | 2025 | β |
| Genome-wide association meta-analyses of drug-resistant epilepsy. | Leu C et al. | β | 2025 | β |
| Genome-wide association studies of hospitalized influenza identify 4 risk loci and a relationship with COVID-19 | Xue X et al. | β | 2025 | β |
| Genome-Wide Association Study and Candidate Gene Identification for Girth Traits in Rubber Tree. | Li W et al. | β | 2025 | β |
| Genome-Wide Association Study of COVID-19 Breakthrough Infections and Genetic Overlap with Other Diseases: A Study of the UK Biobank. | Feng Y et al. | β | 2025 | β |
| Genome-wide meta-analysis identifies novel risk loci for uterine fibroids within and across multiple ancestry groups. | Kim J et al. | β | 2025 | β |
| GRPa-PRS: A risk stratification method to identify genetically-regulated pathways in polygenic diseases. | Li X et al. | β | 2025 | β |
| GWAS by Subtraction to Disentangle RBD Genetic Background from Ξ±-Synucleinopathies. | Gaudio A et al. | β | 2025 | β |
| GWAS meta-analysis of psoriasis identifies new susceptibility alleles impacting disease mechanisms and therapeutic targets. | Dand N et al. | β | 2025 | β |
| Identifying Alzheimer's disease-related pathways based on whole-genome sequencing data. | Wang Y et al. | β | 2025 | β |
| Identifying candidate genetic variants for egg number by analyzing over 1,000 fully sequenced layers. | Ni A et al. | β | 2025 | β |
| Impact of common variants on brain gene expression from RNA to protein to schizophrenia risk. | Liang Q et al. | β | 2025 | β |
| Incorporating local ancestry information to predict genetically associated DNA methylation in admixed populations. | Cheng Y et al. | β | 2025 | β |
| Integrated analysis for drug repositioning in migraine using genetic evidence and claims database. | Inokuchi S et al. | β | 2025 | β |
| Integrated multiomics of pressure overload in the human heart prioritizes targets relevant to heart failure. | Lindman BR et al. | β | 2025 | β |
| Integrating HiTOP and RDoC frameworks part II: shared and distinct biological mechanisms of externalizing and internalizing psychopathology. | Davis CN et al. | β | 2025 | β |
| Integrating large-scale meta-GWAS and PigGTEx resources to decipher the genetic basis of 232 complex traits in pigs. | Xu Z et al. | β | 2025 | β |
| Integrating multi-ancestry genomic and proteomic data to identify blood risk biomarkers and target proteins for breast cancer genetic risk loci. | Jia G et al. | β | 2025 | β |
| Integrating population-level and cell-based signatures for drug repositioning. | He C et al. | β | 2025 | β |
| Integrative Multi-Omics Approach for Improving Causal Gene Identification. | King A et al. | β | 2025 | β |
| Integrative pigGTEx resource with GWAS reveals genetic mechanism underlying semen quality in boars. | Li X et al. | β | 2025 | β |
| Integrative Transcriptome-Wide Association Study With Expression Quantitative Trait Loci Colocalization Identifies a Causal VAMP8 Variant for Nasopharyngeal Carcinoma Susceptibility. | Liang Y et al. | β | 2025 | β |
| Investigating the shared genetic architecture between post-traumatic stress disorder and neurodegenerative diseases: a large-scale genomewide cross-trait analysis. | Shi Y et al. | β | 2025 | β |
| Investigating the shared genetic structure between rheumatoid arthritis and stroke. | Qin Q et al. | β | 2025 | β |
| Knockoff procedure improves susceptibility gene identifications in conditional transcriptome-wide association studies. | Zhang X et al. | β | 2025 | β |
| L3MBTL2 as a novel therapeutic target for trigeminal neuralgia: evidence from integrated TWAS, multi-tissue MR, and experimental validation. | Wang H et al. | β | 2025 | β |
| Large-scale genome-wide association analyses identify novel genetic loci and mechanisms in hypertrophic cardiomyopathy. | Tadros R et al. | β | 2025 | β |
| Large-scale multi-omics analyses in Hispanic/Latino populations identify genes for cardiometabolic traits. | Petty LE et al. | β | 2025 | β |
| Leveraging genome-wide association studies to better understand the etiology of cancers. | Sonehara K et al. | β | 2025 | β |
| Leveraging genomic and transcriptomic data of diverse ancestry to uncover mechanisms of psychiatric risk in the adult and developing brain. | Jajoo A et al. | β | 2025 | β |
| LIPA, a risk locus for coronary artery disease: decoding the variant-to-function relationship. | Li F et al. | β | 2025 | β |
| <i>CHP2</i> Modifies Chronic <i>Pseudomonas aeruginosa</i> Airway Infection Risk in Cystic Fibrosis. | Faino AV et al. | β | 2025 | β |
| MAAT: a new nonparametric Bayesian framework for incorporating multiple functional annotations in transcriptome-wide association studies. | Wang H et al. | β | 2025 | β |
| Mapping dynamic regulation of gene expression using single-cell transcriptomics and application to complex disease genetics. | Abe H et al. | β | 2025 | β |
| Mapping the regulatory genetic landscape of complex traits using a chicken advanced intercross line. | Zhu X et al. | β | 2025 | β |
| Mendelian Randomization Suggests a Causal Link Between Glycemic Traits and Thoracic Aortic Structures and Diseases. | Daria T et al. | β | 2025 | β |
| Monocyte inflammation and resilience to Alzheimer's disease: novel genetic risk genes identified by transcriptome-wide association study. | Mustafa Y et al. | β | 2025 | β |
| Multi-ancestry meta-analysis of keloids uncovers novel susceptibility loci in diverse populations. | Greene CA et al. | β | 2025 | β |
| Multi-INTACT: integrative analysis of the genome, transcriptome, and proteome identifies causal mechanisms of complex traits. | Okamoto J et al. | β | 2025 | β |
| Multilevel Transcriptomic Association Analysis Reveals Key Genes and Potential Mechanisms in Endometrial, Ovarian, and Cervical Cancers. | Liu L et al. | β | 2025 | β |
| Multiomic analyses direct hypotheses for Creutzfeldt-Jakob disease risk genes. | KΓΌΓ§ΓΌkali F et al. | β | 2025 | β |
| Multi-Omics Analysis Identifies Genetic Mechanisms and Therapeutic Targets for Acne Vulgaris. | Qiu X et al. | β | 2025 | β |
| Multi-omics integration reveals Chr1 associated QTL mediating backfat thickness in pigs. | Yu N et al. | β | 2025 | β |
| Multi-tissue expression and splicing data prioritise anatomical subsite- and sex-specific colorectal cancer susceptibility genes. | Hazelwood E et al. | β | 2025 | β |
| Multi-trait Genome-Wide Analysis Identified 20 Novel Loci for Sarcopenia-Related Traits in UK Biobank. | Ran S et al. | β | 2025 | β |
| Multivariate genome-wide analysis reveals shared genetic architecture and brain structural correlates of human cognitive abilities. | Chen H et al. | β | 2025 | β |
| New Genetic Loci Implicated in Cardiac Morphology and Function Using Three-Dimensional Population Phenotyping. | Lu C et al. | β | 2025 | β |
| Novel Genetic Loci in Early-Onset Gout Derived From Whole-Genome Sequencing of an Adolescent Gout Cohort. | Ji A et al. | β | 2025 | β |
| Polygenic transcriptome risk scores enhance predictive accuracy in atopic dermatitis. | Antonatos C et al. | β | 2025 | β |
| Proteome-wide association studies for blood lipids and comparison with transcriptome-wide association studies. | Zhang D et al. | β | 2025 | β |
| RatXcan: A framework for cross-species integration of genome-wide association and gene expression data. | Santhanam N et al. | β | 2025 | β |
| rs762855 single nucleotide polymorphism modulates the risk for diffuse-type gastric cancer in females: a genome-wide association study in the Korean population. | Park K et al. | β | 2025 | β |
| scPrediXcan integrates deep learning methods and single-cell data into a cell-type-specific transcriptome-wide association study framework. | Zhou Y et al. | β | 2025 | β |
| Shared neuroimaging and molecular profiles in type 2 diabetes mellitus and major depressive disorder: an integrative analysis of genetic, transcriptomic, and neuroimaging data. | Xu J et al. | β | 2025 | β |
| Structural framework to address variant-gene relationship in primary open-angle glaucoma. | Singh N et al. | β | 2025 | β |
| Systematic dissection of pleiotropic loci and critical regulons in excitatory neurons and microglia relevant to neuropsychiatric and ocular diseases. | Ma Y et al. | β | 2025 | β |
| Testing a Large Number of Composite Null Hypotheses Using Conditionally Symmetric Multidimensional Gaussian Mixtures in Genome-Wide Studies. | Sun R et al. | β | 2025 | β |
| The impact of common and rare genetic variants on bradyarrhythmia development. | Weng LC et al. | β | 2025 | β |
| The integration of genome-wide and transcriptome-wide association studies in neurodegenerative diseases: opportunities, challenges, and current methodological innovations. | Gu SC et al. | β | 2025 | β |
| Therapeutic target prediction for orphan diseases integrating genome-wide and transcriptome-wide association studies. | Namba S et al. | β | 2025 | β |
| The shared genetic architecture and evolution of human language and musical rhythm. | AlagΓΆz G et al. | β | 2025 | β |
| TransferTWAS: A transfer learning framework for cross-tissue transcriptome-wide association study. | Lai D et al. | β | 2025 | β |
| Uncovering causal gene-tissue pairs and variants through a multivariate TWAS controlling for infinitesimal effects. | Yang Y et al. | β | 2025 | β |
| Unlocking biological insights from differentially expressed genes: Concepts, methods, and future perspectives. | Yin H et al. | β | 2025 | β |
| Unraveling the genetic landscape of susceptibility to multiple primary cancers. | Middha P et al. | β | 2025 | β |
| Variants in CALD1, ESRP1, and RBFOX1 are associated with orofacial cleft risk. | Carlson JC et al. | β | 2025 | β |
| WebCMap: an R package for high-throughput connectivity analysis within the CMap framework. | Kang H et al. | β | 2025 | β |
| A bootstrap model comparison test for identifying genes with context-specific patterns of genetic regulation. | Malakhov MM et al. | β | 2024 | β |
| A compendium of genetic regulatory effects across pig tissues. | Teng J et al. | β | 2024 | β |
| Adaptive selection at G6PD and disparities in diabetes complications. | Breeyear JH et al. | β | 2024 | β |
| A distinct class of pan-cancer susceptibility genes revealed by an alternative polyadenylation transcriptome-wide association study. | Chen H et al. | β | 2024 | β |
| Adjusting for genetic confounders in transcriptome-wide association studies improves discovery of risk genes of complex traits. | Zhao S et al. | β | 2024 | β |
| Age-Related Hearing Impairment: Genome and Blood Methylome Data Integration Reveals Candidate Epigenetic Biomarkers. | Yu J et al. | β | 2024 | β |
| A multi-ancestry cerebral cortex transcriptome-wide association study identifies genes associated with smoking behaviors. | Tan Q et al. | β | 2024 | β |
| A multi-tissue, splicing-based joint transcriptome-wide association study identifies susceptibility genes for breast cancer. | Gao G et al. | β | 2024 | β |
| An emerging multi-omic understanding of the genetics of opioid addiction. | Johnson EO et al. | β | 2024 | β |
| A new test for trait mean and variance detects unreported loci for blood-pressure variation. | Breeyear JH et al. | β | 2024 | β |
| An overview of detecting gene-trait associations by integrating GWAS summary statistics and eQTLs. | Zhang Y et al. | β | 2024 | β |
| An X Chromosome Transcriptome Wide Association Study Implicates ARMCX6 in Alzheimer's Disease. | Zhang X et al. | β | 2024 | β |
| A proteome-wide association study identifies putative causal proteins for breast cancer risk. | Zhao T et al. | β | 2024 | β |
| A review and analysis of key biomarkers in Alzheimer's disease. | Zhang Z et al. | β | 2024 | β |
| Association of Gene Expression and Tremor Network Structure. | Welton T et al. | β | 2024 | β |
| A statistical method for image-mediated association studies discovers genes and pathways associated with four brain disorders. | He J et al. | β | 2024 | β |
| A transcriptome-wide association study identified susceptibility genes for hepatocellular carcinoma in East Asia. | Zhang J et al. | β | 2024 | β |
| A transcriptomic atlas of the human brain reveals genetically determined aspects of neuropsychiatric health. | Bledsoe X et al. | β | 2024 | β |
| Bayesian genome-wide TWAS with reference transcriptomic data of brain and blood tissues identified 141 risk genes for Alzheimer's disease dementia. | Guo S et al. | β | 2024 | β |
| Cis- and trans-eQTL TWASs of breast and ovarian cancer identify more than 100 susceptibility genes in the BCAC and OCAC consortia. | Head ST et al. | β | 2024 | β |
| Clinical and genetic associations of asymmetric apical and septal left ventricular hypertrophy. | Yuan V et al. | β | 2024 | β |
| Cognitive Impairment in Nonagenarians: Potential Metabolic Mechanisms Revealed by the Synergy of In Silico Gene Expression Modeling and Pathway Enrichment Analysis. | Mamchur A et al. | β | 2024 | β |
| Correlates of suicidal behaviors and genetic risk among United States veterans with schizophrenia or bipolar I disorder. | Bigdeli TB et al. | β | 2024 | β |
| Cross-ancestry analysis of brain QTLs enhances interpretation of schizophrenia genome-wide association studies. | Chen Y et al. | β | 2024 | β |
| Cross-population enhancement of PrediXcan predictions with a gnomAD-based east Asian reference framework. | Chan HC et al. | β | 2024 | β |
| Divergent gene expression patterns in alcohol and opioid use disorders lead to consistent alterations in functional networks within the dorsolateral prefrontal cortex. | MacDonald M et al. | β | 2024 | β |
| Examination of a novel expression-based gene-SNP annotation strategy to identify tissue-specific contributions to heritability in multiple traits. | Mize TJ et al. | β | 2024 | β |
| Expression- and splicing-based multi-tissue transcriptome-wide association studies identified multiple genes for breast cancer by estrogen-receptor status. | McClellan JC et al. | β | 2024 | β |
| From GWASs toward Mechanistic Understanding with Case Studies in Dermatogenetics. | Shen S et al. | β | 2024 | β |
| Gene discovery and biological insights into anxiety disorders from a large-scale multi-ancestry genome-wide association study. | Friligkou E et al. | β | 2024 | β |
| Genetically Regulated Gene Expression in the Brain Associated With Chronic Pain: Relationships With Clinical Traits and Potential for Drug Repurposing. | Johnston KJA et al. | β | 2024 | β |
| Genetic analyses of inflammatory polyneuropathy and chronic inflammatory demyelinating polyradiculoneuropathy identified candidate genes. | Du Z et al. | β | 2024 | β |
| Genetic and molecular architecture of complex traits. | Lappalainen T et al. | β | 2024 | β |
| Genetic Association of Juvenile Idiopathic Arthritis With Adult Rheumatic Disease. | Fan J et al. | β | 2024 | β |
| Genetic basis of right and left ventricular heart shape. | Burns R et al. | β | 2024 | β |
| Genetic imputation of kidney transcriptome, proteome and multi-omics illuminates new blood pressure and hypertension targets. | Xu X et al. | β | 2024 | β |
| Genome-wide analysis in over 1 million individuals of European ancestry yields improved polygenic risk scores for blood pressure traits. | Keaton JM et al. | β | 2024 | β |
| Genome-wide association analyses identify 95 risk loci and provide insights into the neurobiology of post-traumatic stress disorder. | Nievergelt CM et al. | β | 2024 | β |
| Genome-wide association analyses identify distinct genetic architectures for age-related macular degeneration across ancestries. | Gorman BR et al. | β | 2024 | β |
| Genome-wide association analysis provides insights into the molecular etiology of dilated cardiomyopathy. | Zheng SL et al. | β | 2024 | β |
| Genome-wide association studies of coffee intake in UK/US participants of European ancestry uncover cohort-specific genetic associations. | Thorpe HHA et al. | β | 2024 | β |
| Genome-wide association study of hospitalized patients and acute kidney injury. | Siew ED et al. | β | 2024 | β |
| Genome-wide meta-analyses of restless legs syndrome yield insights into genetic architecture, disease biology and risk prediction. | Schormair B et al. | β | 2024 | β |
| Genome-wide study of gene-by-sex interactions identifies risks for cleft palate. | Robinson K et al. | β | 2024 | β |
| Genomic insights into gestational weight gain uncover tissue-specific mechanisms and pathways. | Jasper EA et al. | β | 2024 | β |
| Haplotype-aware modeling of cis-regulatory effects highlights the gaps remaining in eQTL data. | Ehsan N et al. | β | 2024 | β |
| Haplotype function score improves biological interpretation and cross-ancestry polygenic prediction of human complex traits. | Song W et al. | β | 2024 | β |
| Heterogeneity-aware integrative regression for ancestry-specific association studies. | Molstad AJ et al. | β | 2024 | β |
| Human genetics and epigenetics of alcohol use disorder. | Zhou H et al. | β | 2024 | β |
| Identification and characterization of whole blood gene expression and splicing quantitative trait loci during early to mid-lactation of dairy cattle. | Tang Y et al. | β | 2024 | β |
| Identification of genetically predicted DNA methylation markers associated with non-small cell lung cancer risk among 34,964 cases and 448,579 controls. | Zhao X et al. | β | 2024 | β |
| Identification of genetic basis of brain imaging by group sparse multi-task learning leveraging summary statistics. | Xi D et al. | β | 2024 | β |
| Identifying genetic variants associated with chromatin looping and genome function. | Bhattacharyya S et al. | β | 2024 | β |
| Instrumental variable and colocalization analyses identify endotrophin and HTRA1 as potential therapeutic targets for coronary artery disease. | Lee PC et al. | β | 2024 | β |
| Integrating muti-omics data to identify tissue-specific DNA methylation biomarkers for cancer risk. | Yang Y et al. | β | 2024 | β |
| Integration across biophysical scales identifies molecular and cellular correlates of person-to-person variability in human brain connectivity. | Ng B et al. | β | 2024 | β |
| Integration of human organoids single-cell transcriptomic profiles and human genetics repurposes critical cell type-specific drug targets for severe COVID-19. | Ma Y et al. | β | 2024 | β |
| Integration of multi-omics summary data reveals the role of N6-methyladenosine in neuropsychiatric disorders. | Liufu C et al. | β | 2024 | β |
| Integrative genomic analyses identify candidate causal genes for calcific aortic valve stenosis involving tissue-specific regulation. | ThΓ©riault S et al. | β | 2024 | β |
| Integrative genomic analyses identify neuroblastoma risk genes involved in neuronal differentiation. | Tirelli M et al. | β | 2024 | β |
| Integrative multi-omics analyses to identify the genetic and functional mechanisms underlying ovarian cancer risk regions. | Dareng EO et al. | β | 2024 | β |
| Integrative multi-omics analysis to gain new insights into COVID-19. | Eshetie S et al. | β | 2024 | β |
| Investigating the impact of feed-induced, subacute ruminal acidosis on rumen epimural transcriptome and metatranscriptome in young calves at 8- and 17-week of age. | Li W et al. | β | 2024 | β |
| Joint-tissue integrative analysis identifies high-risk genes for Parkinson's disease. | Wu YS et al. | β | 2024 | β |
| Large-scale cross-ancestry genome-wide meta-analysis of serum urate. | Cho C et al. | β | 2024 | β |
| Mapping drug biology to disease genetics to discover drug impacts on the human phenome. | Habib M et al. | β | 2024 | β |
| Meta-Analysis of Genome-Wide Association Studies Reveals Genetic Mechanisms of Supraventricular Arrhythmias. | Weng LC et al. | β | 2024 | β |
| Metabolic gene function discovery platform GeneMAP identifies SLC25A48 as necessary for mitochondrial choline import. | Khan A et al. | β | 2024 | β |
| Microvascular and cellular dysfunctions in Alzheimer's disease: an integrative analysis perspective. | Li M et al. | β | 2024 | β |
| Modeling multi-stageΒ disease progression and identifying genetic risk factors via a novel collaborative learning method. | Xi D et al. | β | 2024 | β |
| Molecular quantitative trait loci in reproductive tissues impact male fertility in cattle. | Mapel XM et al. | β | 2024 | β |
| MOSES: a methylation-based gene association approach for unveiling environmentally regulated genes linked to a trait or disease. | Kim S et al. | β | 2024 | β |
| Multi-ancestry meta-analysis of tobacco use disorder identifies 461 potential risk genes and reveals associations with multiple health outcomes. | Toikumo S et al. | β | 2024 | β |
| Multiomic integration analysis identifies atherogenic metabolites mediating between novel immune genes and cardiovascular risk. | Carreras-Torres R et al. | β | 2024 | β |
| Multi-tissue transcriptome-wide association studies identified 235 genes for intrinsic subtypes of breast cancer. | Li JL et al. | β | 2024 | β |
| Multivariate genome-wide association study of sleep health demonstrates unity and diversity. | Morrison CL et al. | β | 2024 | β |
| Neurodevelopmental signature of a transcriptome-based polygenic risk score for depression. | Miles AE et al. | β | 2024 | β |
| NK2R control of energy expenditure and feeding to treat metabolic diseases. | Sass F et al. | β | 2024 | β |
| Novel ancestry-specific primary open-angle glaucoma loci and shared biology with vascular mechanisms and cell proliferation. | Lo Faro V et al. | β | 2024 | β |
| Novel insight into the etiology of ischemic stroke gained by integrative multiome-wide association study. | Jung J et al. | β | 2024 | β |
| Novel risk loci for COVID-19 hospitalization among admixed American populations. | Diz-de Almeida S et al. | β | 2024 | β |
| Omnibus proteome-wide association study identifies 43 risk genes for Alzheimer disease dementia. | Hu T et al. | β | 2024 | β |
| Open Science Practices in Psychiatric Genetics: A Primer. | KΔpiΕska AP et al. | β | 2024 | β |
| Partitioning and aggregating cross-tissue and tissue-specific genetic effects to identify gene-trait associations. | Song S et al. | β | 2024 | β |
| Pervasive tissue-, genetic background-, and allele-specific gene expression effects in Drosophila melanogaster. | Glaser-Schmitt A et al. | β | 2024 | β |
| PharmGWAS: a GWAS-based knowledgebase for drug repurposing. | Kang H et al. | β | 2024 | β |
| PigBiobank: a valuable resource for understanding genetic and biological mechanisms of diverse complex traits in pigs. | Zeng H et al. | β | 2024 | β |
| postGWAS: A web server for deciphering the causality post the genome-wide association studies. | Wang T et al. | β | 2024 | β |
| Precision Approaches to Chronic Obstructive Pulmonary Disease Management. | Moll M et al. | β | 2024 | β |
| Predicting the genetic component of gene expression using gene regulatory networks. | Mohammad GI et al. | β | 2024 | β |
| Quantifying the regulatory potential of genetic variants via a hybrid sequence-oriented model with SVEN. | Wang Y et al. | β | 2024 | β |
| Reply to: Enhancing Clarity in Tremor Network Gene Expression Analysis. | Welton T et al. | β | 2024 | β |
| Shared and Unique Genetic Links between Neuroticism and Gastrointestinal Tract Diseases. | Tian Y et al. | β | 2024 | β |
| Splicing-specific transcriptome-wide association uncovers genetic mechanisms for schizophrenia. | Hervoso JL et al. | β | 2024 | β |
| SR-TWAS: leveraging multiple reference panels to improve transcriptome-wide association study power by ensemble machine learning. | Parrish RL et al. | β | 2024 | β |
| Subset-based method for cross-tissue transcriptome-wide association studies improves power and interpretability. | Guo X et al. | β | 2024 | β |
| Systems biology dissection of PTSD and MDD across brain regions, cell types, and blood. | Daskalakis NP et al. | β | 2024 | β |
| The broad impact of cell death genes on the human disease phenome. | Rich AL et al. | β | 2024 | β |
| The effect of histo-blood group ABO system transferase (BGAT) on pregnancy related outcomesοΌA Mendelian randomization study. | Sun Y et al. | β | 2024 | β |
| The goldmine of GWAS summary statistics: a systematic review of methods and tools. | Kontou PI et al. | β | 2024 | β |
| The impact of exercise on gene regulation in association with complex trait genetics. | Vetr NG et al. | β | 2024 | β |
| The Potential of Genomics and Electronic Health Records to Invigorate Drug Development. | Nisbet LN et al. | β | 2024 | β |
| TIPS: a novel pathway-guided joint model for transcriptome-wide association studies. | Wang N et al. | β | 2024 | β |
| Transcriptome-wide association analysis identifies candidate susceptibility genes for prostate-specific antigen levels in men without prostate cancer. | Chen DM et al. | β | 2024 | β |
| Transcriptome-wide association studies associated with Crohn's disease: challenges and perspectives. | Jia K et al. | β | 2024 | β |
| Transcriptome-Wide Association Studies (TWAS): Methodologies, Applications, and Challenges. | Evans P et al. | β | 2024 | β |
| Transcriptome-Wide Association Study of Idiopathic Pulmonary Fibrosis Survival Identifies <i>PTPN9</i> and <i>SNRPB2</i>. | Hu X et al. | β | 2024 | β |
| Transcriptome-wide association study of the plasma proteome reveals cis and trans regulatory mechanisms underlying complex traits. | Wittich H et al. | β | 2024 | β |
| Transcriptome-wide Mendelian randomization during CD4<sup>+</sup> T cell activation reveals immune-related drug targets for cardiometabolic diseases. | Wu X et al. | β | 2024 | β |
| Transcriptomic imputation of genetic risk variants uncovers novel whole-blood biomarkers of Parkinson's disease. | Chew G et al. | β | 2024 | β |
| TWAS-GKF: a novel method for causal gene identification in transcriptome-wide association studies with knockoff inference. | Wang A et al. | β | 2024 | β |
| Unraveling phenotypic variance in metabolic syndrome through multi-omics. | Amente LD et al. | β | 2024 | β |
| Unsupervised ensemble-based phenotyping enhances discoverability of genes related to left-ventricular morphology. | Bonazzola R et al. | β | 2024 | β |
| Using encrypted genotypes and phenotypes for collaborative genomic analyses to maintain data confidentiality. | Zhao T et al. | β | 2024 | β |
| Using genome and transcriptome data from African-ancestry female participants to identify putative breast cancer susceptibility genes. | Ping J et al. | β | 2024 | β |
| Whole-genome analysis of plasma fibrinogen reveals population-differentiated genetic regulators with putative liver roles. | Huffman JE et al. | β | 2024 | β |
| xWAS analysis in neuropsychiatric disorders by integrating multi-molecular phenotype quantitative trait loci and GWAS summary data. | Luo L et al. | β | 2024 | β |
| A Bayesian method for estimating gene-level polygenicity under the framework of transcriptome-wide association study. | Majumdar A et al. | β | 2023 | β |
| A Functional Pipeline of Genome-Wide Association Data Leads to Midostaurin as a Repurposed Drug for Alzheimer's Disease. | Esteban-Martos A et al. | β | 2023 | β |
| A genome-wide cross-trait analysis identifies genomic correlation, pleiotropic loci, and causal relationship between sex hormone-binding globulin and rheumatoid arthritis. | Jiang Y et al. | β | 2023 | β |
| A GWAS in the pandemic epicenter highlights the severe COVID-19 risk locus introgressed by Neanderthals. | Breno M et al. | β | 2023 | β |
| A joint transcriptome-wide association study across multiple tissues identifies candidate breast cancer susceptibility genes. | Gao G et al. | β | 2023 | β |
| Alternative polyadenylation transcriptome-wide association study identifies APA-linked susceptibility genes in brain disorders. | Cui Y et al. | β | 2023 | β |
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| ARFID Genes and Environment (ARFID-GEN): study protocol. | Bulik CM et al. | β | 2023 | β |
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| Genetics of myocardial interstitial fibrosis in the human heart and association with disease. | Nauffal V et al. | β | 2023 | β |
| Genome- and transcriptome-wide splicing associations with alcohol use disorder. | Huggett SB et al. | β | 2023 | β |
| Genome-wide association analysis of heifer livability and early first calving in Holstein cattle. | Gao Y et al. | β | 2023 | β |
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| GWAS on retinal vasculometry phenotypes. | Jiang X et al. | β | 2023 | β |
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| Identification of <i>MKNK1</i> and <i>TOP3A</i> as ovarian endometriosis risk-associated genes using integrative genomic analyses and functional experiments. | Huang Y et al. | β | 2023 | β |
| Identification of multiple novel susceptibility genes associated with autoimmune thyroid disease. | Liu X et al. | β | 2023 | β |
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| Integrating genetics and transcriptomics to study major depressive disorder: a conceptual framework, bioinformatic approaches, and recent findings. | Hicks EM et al. | β | 2023 | β |
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| Invited review: Good practices in genome-wide association studies to identify candidate sequence variants in dairy cattle. | Sahana G et al. | β | 2023 | β |
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| Multi-ancestry study of the genetics of problematic alcohol use in over 1 million individuals. | Zhou H et al. | β | 2023 | β |
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| Pleiotropy analysis between lobar intracerebral hemorrhage and CSF Ξ²-amyloid highlights new and established associations. | Marini S et al. | β | 2023 | β |
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| Predicted Proteome Association Studies of Breast, Prostate, Ovarian, and Endometrial Cancers Implicate Plasma Protein Regulation in Cancer Susceptibility. | Gregga I et al. | β | 2023 | β |
| Predicting molecular mechanisms of hereditary diseases by using their tissue-selective manifestation. | Simonovsky E et al. | β | 2023 | β |
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| Shared Genetics and Comorbid Genes of Amyotrophic Lateral Sclerosis and Parkinson's Disease. | Tian Y et al. | β | 2023 | β |
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| Genome- and Transcriptome-Wide Association Studies Identify Susceptibility Genes and Pathways for Periodontitis. | Zhu G et al. | β | 2022 | β |
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| Genome-wide analysis of 102,084 migraine cases identifies 123 risk loci and subtype-specific risk alleles. | Hautakangas H et al. | β | 2022 | β |
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| Genome-wide association and multi-trait analyses characterize the common genetic architecture of heart failure. | Levin MG et al. | β | 2022 | β |
| Genome-Wide Association Study Identifies Two Common Loci Associated with Pigment Dispersion Syndrome/Pigmentary Glaucoma and Implicates Myopia in its Development. | Simcoe MJ et al. | β | 2022 | β |
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| Genome-Wide Integration of Genetic and Genomic Studies of Atopic Dermatitis: Insights into Genetic Architecture and Pathogenesis. | Chen Y et al. | β | 2022 | β |
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| Genome-Wide Pleiotropy Study Identifies Association of <i>PDGFB</i> with Age-Related Macular Degeneration and COVID-19 Infection Outcomes. | Chung J et al. | β | 2022 | β |
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| Integrative Prioritization of Causal Genes for Coronary Artery Disease. | Hao K et al. | β | 2022 | β |
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| Investigating the prediction of CpG methylation levels from SNP genotype data to help elucidate relationships between methylation, gene expression and complex traits. | Fryett JJ et al. | β | 2022 | β |
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| Methylation quantitative trait loci are largely consistent across disease states in Crohn's disease. | Venkateswaran S et al. | β | 2022 | β |
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| Molecular Pathophysiological Mechanisms in Huntington's Disease. | Jurcau A | β | 2022 | β |
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| New insights into the genetic etiology of Alzheimer's disease and related dementias. | Bellenguez C et al. | β | 2022 | β |
| Novel genetic loci associated with osteoarthritis in multi-ancestry analyses in the Million Veteran Program and UK Biobank. | McDonald MN et al. | β | 2022 | β |
| Pinpointing novel risk loci for Lewy body dementia and the shared genetic etiology with Alzheimer's disease and Parkinson's disease: a large-scale multi-trait association analysis. | Guo P et al. | β | 2022 | β |
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| Polygenic transcriptome risk scores for COPD and lung function improve cross-ethnic portability of prediction in the NHLBI TOPMed program. | Hu X et al. | β | 2022 | β |
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| A transcriptome-wide association study identifies novel susceptibility genes for psoriasis. | Zhu D et al. | β | 2021 | β |
| A transcriptome-wide association study identifies susceptibility genes for Parkinson's disease. | Yao S et al. | β | 2021 | β |
| A transcriptome-wide association study to detect novel genes for volumetric bone mineral density. | Liu A et al. | β | 2021 | β |
| A trans-omic Mendelian randomization study of parental lifespan uncovers novel aging biology and therapeutic candidates for chronic diseases. | Perrot N et al. | β | 2021 | β |
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| Bench Research Informed by GWAS Results. | Kondratyev NV et al. | β | 2021 | β |
| Beyond association: successes and challenges in linking non-coding genetic variation to functional consequences that modulate Alzheimer's disease risk. | Novikova G et al. | β | 2021 | β |
| Bi-ancestral depression GWAS in the Million Veteran Program and meta-analysis in >1.2 million individuals highlight new therapeutic directions. | Levey DF et al. | β | 2021 | β |
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| Common and rare variant association analyses in amyotrophic lateral sclerosis identify 15 risk loci with distinct genetic architectures and neuron-specific biology. | van Rheenen W et al. | β | 2021 | β |
| CoMM-S<sup>4</sup>: A Collaborative Mixed Model Using Summary-Level eQTL and GWAS Datasets in Transcriptome-Wide Association Studies. | Yang Y et al. | β | 2021 | β |
| Computational Methods for Prediction of Human Protein-Phenotype Associations: A Review. | Liu L et al. | β | 2021 | β |
| Construction and Clinical Translation of Causal Pan-Cancer Gene Score Across Cancer Types. | Tao S et al. | β | 2021 | β |
| COVID-19 genetic risk variants are associated with expression of multiple genes in diverse immune cell types. | Schmiedel BJ et al. | β | 2021 | β |
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| Delineating the Genetic Component of Gene Expression in Major Depression. | Dall'Aglio L et al. | β | 2021 | β |
| Detection of Genetic Overlap Between Rheumatoid Arthritis and Systemic Lupus Erythematosus Using GWAS Summary Statistics. | Lu H et al. | β | 2021 | β |
| Druggable genome in attention deficit/hyperactivity disorder and its co-morbid conditions. New avenues for treatment. | Hegvik TA et al. | β | 2021 | β |
| Drug repurposing strategies of relevance for Parkinson's disease. | Fletcher EJR et al. | β | 2021 | β |
| Electronic health record-based genome-wide meta-analysis provides insights on the genetic architecture of non-alcoholic fatty liver disease. | Ghodsian N et al. | β | 2021 | β |
| Elucidation of disease etiology by trans-layer omics analysis. | Shirai Y et al. | β | 2021 | β |
| E-MAGMA: an eQTL-informed method to identify risk genes using genome-wide association study summary statistics. | Gerring ZF et al. | β | 2021 | β |
| Emerging Methods and Resources for BiologicalΒ Interrogation of Neuropsychiatric Polygenic Signal. | Uffelmann E et al. | β | 2021 | β |
| Epigenetic Element-Based Transcriptome-Wide Association Study Identifies Novel Genes for Bipolar Disorder. | Yao S et al. | β | 2021 | β |
| Evaluation of Genotype-Based Gene Expression Model Performance: A Cross-Framework and Cross-Dataset Study. | Tavares V et al. | β | 2021 | β |
| Exploiting the GTEx resources to decipher the mechanisms at GWAS loci. | Barbeira AN et al. | β | 2021 | β |
| Exploring the Contribution to ADHD of Genes Involved in Mendelian Disorders Presenting with Hyperactivity and/or Inattention. | FernΓ ndez-Castillo N et al. | β | 2021 | β |
| Exploring the Impact of Cerebrovascular Disease and Major Depression on Non-diseased Human Tissue Transcriptomes. | Poon CL et al. | β | 2021 | β |
| From GWAS to Gene: Transcriptome-Wide Association Studies and Other Methods to Functionally Understand GWAS Discoveries. | Li B et al. | β | 2021 | β |
| Functional annotation of lncRNA in high-throughput screening. | Yip CW et al. | β | 2021 | β |
| Genetically regulated expression in late-onset Alzheimer's disease implicates risk genes within known and novel loci. | Chen HH et al. | β | 2021 | β |
| Genetically regulated expression underlies cellular sensitivity to chemotherapy in diverse populations. | Mulford AJ et al. | β | 2021 | β |
| Genetic mechanisms of COVID-19 and its association with smoking and alcohol consumption. | Rao S et al. | β | 2021 | β |
| Genetic mechanisms of critical illness in COVID-19. | Pairo-Castineira E et al. | β | 2021 | β |
| Genetic variations of DNA bindings of FOXA1 and co-factors in breast cancer susceptibility. | Wen W et al. | β | 2021 | β |
| Genome-wide association analyses of post-traumatic stress disorder and its symptom subdomains in the Million Veteran Program. | Stein MB et al. | β | 2021 | β |
| Genome-Wide Association Studies of Schizophrenia and Bipolar Disorder in a Diverse Cohort of US Veterans. | Bigdeli TB et al. | β | 2021 | β |
| Genome-wide association study identifies 18 novel loci associated with left atrial volume and function. | Ahlberg G et al. | β | 2021 | β |
| Genome-wide association study of problematic opioid prescription use in 132,113 23andMe research participants of European ancestry. | Sanchez-Roige S et al. | β | 2021 | β |
| Genome-wide meta-analysis identifies 127 open-angle glaucoma loci with consistent effect across ancestries. | Gharahkhani P et al. | β | 2021 | β |
| Genome-wide meta-analysis of muscle weakness identifies 15 susceptibility loci in older men and women. | Jones G et al. | β | 2021 | β |
| Genome-wide search for genes affecting the age at diagnosis of type 1 diabetes. | Syreeni A et al. | β | 2021 | β |
| GmKIX8-1 regulates organ size in soybean and is the causative gene for the major seed weight QTL qSw17-1. | Nguyen CX et al. | β | 2021 | β |
| H3K27ac HiChIP in prostate cell lines identifies risk genes for prostate cancer susceptibility. | Giambartolomei C et al. | β | 2021 | β |
| Heritability Enrichment of Immunoglobulin G N-Glycosylation in Specific Tissues. | Li X et al. | β | 2021 | β |
| Hippocampal transcriptome-wide association study and neurobiological pathway analysis for Alzheimer's disease. | Liu N et al. | β | 2021 | β |
| Identification of Candidate Parkinson Disease Genes by Integrating Genome-Wide Association Study, Expression, and Epigenetic Data Sets. | Kia DA et al. | β | 2021 | β |
| Identification of Functional Genetic Determinants of Cardiac Troponin T and I in a Multiethnic Population and Causal Associations With Atrial Fibrillation. | Yang Y et al. | β | 2021 | β |
| Identifying nootropic drug targets via large-scale cognitive GWAS and transcriptomics. | Lam M et al. | β | 2021 | β |
| Identifying Novel Susceptibility Genes for Colorectal Cancer Risk From a Transcriptome-Wide Association Study of 125,478 Subjects. | Guo X et al. | β | 2021 | β |
| Imputed gene expression risk scores: a functionally informed component of polygenic risk. | Pain O et al. | β | 2021 | β |
| Increasing the resolution and precision of psychiatric genome-wide association studies by re-imputing summary statistics using a large, diverse reference panel. | Chatzinakos C et al. | β | 2021 | β |
| Inference of phenotype-relevant transcriptional regulatory networks elucidates cancer type-specific regulatory mechanisms in a pan-cancer study. | Emad A et al. | β | 2021 | β |
| INFIMA leverages multi-omics model organism data to identify effector genes of human GWAS variants. | Dong C et al. | β | 2021 | β |
| InTACT: An adaptive and powerful framework for joint-tissue transcriptome-wide association studies. | Bae YE et al. | β | 2021 | β |
| Integrating Genome and Methylome Data to Identify Candidate DNA Methylation Biomarkers for Pancreatic Cancer Risk. | Zhu J et al. | β | 2021 | β |
| Integrating genome-wide association and transcriptome prediction model identifies novel target genes for osteoporosis. | Zhu M et al. | β | 2021 | β |
| Integration of genetic, transcriptomic, and clinical data provides insight into 16p11.2 and 22q11.2 CNV genes. | Vysotskiy M et al. | β | 2021 | β |
| Integrative genomic analyses identify susceptibility genes underlying COVID-19 hospitalization. | Pathak GA et al. | β | 2021 | β |
| Integrative genomic analysis of blood pressure and related phenotypes in rats. | Takeuchi F et al. | β | 2021 | β |
| Integrative genomics analysis reveals a 21q22.11 locus contributing risk to COVID-19. | Ma Y et al. | β | 2021 | β |
| Integrative Transcriptome-Wide Analyses Uncover Novel Risk-Associated MicroRNAs in Hormone-Dependent Cancers. | Jayarathna DK et al. | β | 2021 | β |
| Interpretation of psychiatric genome-wide association studies with multispecies heterogeneous functional genomic data integration. | Reynolds T et al. | β | 2021 | β |
| kTWAS: integrating kernel machine with transcriptome-wide association studies improves statistical power and reveals novel genes. | Cao C et al. | β | 2021 | β |
| Large-scale transcriptome sequencing in broiler chickens to identify candidate genes for breast muscle weight and intramuscular fat content. | Kang H et al. | β | 2021 | β |
| Linking the genomic signatures of human beat synchronization and learned song in birds. | Gordon RL et al. | β | 2021 | β |
| Massively Parallel Reporter Assays: Defining Functional Psychiatric Genetic Variants Across Biological Contexts. | Mulvey B et al. | β | 2021 | β |
| Meta-Analysis of Transcriptome-Wide Association Studies across 13 Brain Tissues Identified Novel Clusters of Genes Associated with Nicotine Addiction. | Ye Z et al. | β | 2021 | β |
| Multi-omic and multi-species meta-analyses of nicotine consumption. | Palmer RHC et al. | β | 2021 | β |
| Multivariate analysis of 1.5 million people identifies genetic associations with traits related to self-regulation and addiction. | Karlsson LinnΓ©r R et al. | β | 2021 | β |
| Mutational sources of <i>trans</i>-regulatory variation affecting gene expression in <i>Saccharomyces cerevisiae</i>. | Duveau F et al. | β | 2021 | β |
| New biomarkers from multiomics approaches: improving risk prediction of atrial fibrillation. | Kornej J et al. | β | 2021 | β |
| New novel non-MHC genes were identified for cervical cancer with an integrative analysis approach of transcriptome-wide association study. | Chen H et al. | β | 2021 | β |
| Novel strategy for disease risk prediction incorporating predicted gene expression and DNA methylation data: a multi-phased study of prostate cancer. | Wu C et al. | β | 2021 | β |
| Pervasive cis effects of variation in copy number of large tandem repeats on local DNA methylation and gene expression. | Garg P et al. | β | 2021 | β |
| Power analysis of transcriptome-wide association study: Implications for practical protocol choice. | Cao C et al. | β | 2021 | β |
| Prioritization of candidate causal genes for asthma in susceptibility loci derived from UK Biobank. | Valette K et al. | β | 2021 | β |
| Prioritizing the Role of Major Lipoproteins and Subfractions as Risk Factors for Peripheral Artery Disease. | Levin MG et al. | β | 2021 | β |
| Regulatory variants in TCF7L2 are associated with thoracic aortic aneurysm. | Roychowdhury T et al. | β | 2021 | β |
| Risk variants and polygenic architecture of disruptive behavior disorders in the context of attention-deficit/hyperactivity disorder. | Demontis D et al. | β | 2021 | β |
| Sex-Specific Associations of Genetically Predicted Circulating Lp(a) (Lipoprotein(a)) and Hepatic <i>LPA</i> Gene Expression Levels With Cardiovascular Outcomes: Mendelian Randomization and Observational Analyses. | Guertin J et al. | β | 2021 | β |
| Sex-Specific Causal Relations between Steroid Hormones and Obesity-A Mendelian Randomization Study. | Pott J et al. | β | 2021 | β |
| Single cell sequencing analysis identifies genetics-modulated ORMDL3<sup>+</sup> cholangiocytes having higher metabolic effects on primary biliary cholangitis. | Xiang B et al. | β | 2021 | β |
| Single-nucleus transcriptome analysis of human brain immune response in patients with severe COVID-19. | Fullard JF et al. | β | 2021 | β |
| Spatial Expression Pattern of ZNF391 Gene in the Brains of Patients With Schizophrenia, Bipolar Disorders or Major Depressive Disorder Identifies New Cross-Disorder Biotypes: A Trans-Diagnostic, Top-Down Approach. | Ren H et al. | β | 2021 | β |
| SUPERGNOVA: local genetic correlation analysis reveals heterogeneous etiologic sharing of complex traits. | Zhang Y et al. | β | 2021 | β |
| Transcriptome prediction performance across machine learning models and diverse ancestries. | Okoro PC et al. | β | 2021 | β |
| Transcriptome-wide association analysis identifies DACH1 as a kidney disease risk gene that contributes to fibrosis. | Doke T et al. | β | 2021 | β |
| Transcriptome-wide association analysis of brain structures yields insights into pleiotropy with complex neuropsychiatric traits. | Zhao B et al. | β | 2021 | β |
| Transcriptome-wide association studies: a view from Mendelian randomization. | Zhu H et al. | β | 2021 | β |
| Transcriptome-Wide Association Study of Blood Cell Traits in African Ancestry and Hispanic/Latino Populations. | Wen J et al. | β | 2021 | β |
| Transcriptome-wide association study uncovers the role of essential genes in anthracycline-induced cardiotoxicity. | Scott EN et al. | β | 2021 | β |
| Transcriptomic Insight Into the Polygenic Mechanisms Underlying Psychiatric Disorders. | Hernandez LM et al. | β | 2021 | β |
| Unraveling Risk Genes of COVID-19 by Multi-Omics Integrative Analyses. | Baranova A et al. | β | 2021 | β |
| Using INFERNO to Infer the Molecular Mechanisms Underlying Noncoding Genetic Associations. | Amlie-Wolf A et al. | β | 2021 | β |
| UTMOST, a single and cross-tissue TWAS (Transcriptome Wide Association Study), reveals new ASD (Autism Spectrum Disorder) associated genes. | Rodriguez-Fontenla C et al. | β | 2021 | β |
| Variants at the MHC Region Associate With Susceptibility to <i>Clostridioides difficile</i> Infection: A Genome-Wide Association Study Using Comprehensive Electronic Health Records. | Li J et al. | β | 2021 | β |
| Where Are the Disease-Associated eQTLs? | Umans BD et al. | β | 2021 | β |
| Whole-genome association analyses of sleep-disordered breathing phenotypes in the NHLBI TOPMed program. | Cade BE et al. | β | 2021 | β |
| A general framework for functionally informed set-based analysis: Application to a large-scale colorectal cancer study. | Dong X et al. | β | 2020 | β |
| A large-scale genome-wide association study meta-analysis of cannabis use disorder. | Johnson EC et al. | β | 2020 | β |
| A Multi-tissue Transcriptome Analysis of Human Metabolites Guides Interpretability of Associations Based on Multi-SNP Models for Gene Expression. | Ndungu A et al. | β | 2020 | β |
| Analysis of Genetically Regulated Gene Expression Identifies a Prefrontal PTSD Gene, SNRNP35, Specific to Military Cohorts. | Huckins LM et al. | β | 2020 | β |
| Analysis of putative cis-regulatory elements regulating blood pressure variation. | Nandakumar P et al. | β | 2020 | β |
| An analysis of genetically regulated gene expression across multiple tissues implicates novel gene candidates in Alzheimer's disease. | Gerring ZF et al. | β | 2020 | β |
| Ancestry-specific associations identified in genome-wide combined-phenotype study of red blood cell traits emphasize benefits of diversity in genomics. | Hodonsky CJ et al. | β | 2020 | β |
| An integrative multi-omics analysis to identify candidate DNA methylation biomarkers related to prostate cancer risk. | Wu L et al. | β | 2020 | β |
| A powerful fine-mapping method for transcriptome-wide association studies. | Wu C et al. | β | 2020 | β |
| A Review of Integrative Imputation for Multi-Omics Datasets. | Song M et al. | β | 2020 | β |
| A tissue-specific collaborative mixed model for jointly analyzing multiple tissues in transcriptome-wide association studies. | Shi X et al. | β | 2020 | β |
| A Transcriptome-Wide Association Study Identifies Candidate Susceptibility Genes for Pancreatic Cancer Risk. | Liu D et al. | β | 2020 | β |
| A Transcriptome-Wide Association Study Identifies Novel Candidate Susceptibility Genes for Pancreatic Cancer. | Zhong J et al. | β | 2020 | β |
| A transcriptome-wide association study implicates specific pre- and post-synaptic abnormalities in schizophrenia. | Hall LS et al. | β | 2020 | β |
| A transcriptome-wide Mendelian randomization study to uncover tissue-dependent regulatory mechanisms across the human phenome. | Richardson TG et al. | β | 2020 | β |
| Bayesian Genome-wide TWAS Method to Leverage both cis- and trans-eQTL Information through Summary Statistics. | Luningham JM et al. | β | 2020 | β |
| Combinatorial and statistical prediction of gene expression from haplotype sequence. | Alpay BA et al. | β | 2020 | β |
| Common genetic risk variants identified in the SPARK cohort support DDHD2 as a candidate risk gene for autism. | Matoba N et al. | β | 2020 | β |
| CoMM-S2: a collaborative mixed model using summary statistics in transcriptome-wide association studies. | Yang Y et al. | β | 2020 | β |
| Considerations for integrative multi-omic approaches to explore Alzheimer's disease mechanisms. | Ma Y et al. | β | 2020 | β |
| Diverse types of genomic evidence converge on alcohol use disorder risk genes. | Dai Y et al. | β | 2020 | β |
| Eliciting priors and relaxing the single causal variant assumption in colocalisation analyses. | Wallace C | β | 2020 | β |
| Expanding the genetic architecture of nicotine dependence and its shared genetics with multiple traits. | Quach BC et al. | β | 2020 | β |
| Fine-mapping and QTL tissue-sharing information improves the reliability of causal gene identification. | Barbeira AN et al. | β | 2020 | β |
| From GWAS to Function: Using Functional Genomics to Identify the Mechanisms Underlying Complex Diseases. | Cano-Gamez E et al. | β | 2020 | β |
| Functional annotation of genetic associations by transcriptome-wide association analysis provides insights into neutrophil development regulation. | Yao Y et al. | β | 2020 | β |
| Functional genomics, genetic risk profiling and cell phenotypes in neurodegenerative disease. | Finkbeiner S | β | 2020 | β |
| GBAT: a gene-based association test for robust detection of trans-gene regulation. | Liu X et al. | β | 2020 | β |
| Gene Expression and RNA Splicing Imputation Identifies Novel Candidate Genes Associated with Osteoporosis. | Liu Y et al. | β | 2020 | β |
| Gene expression predictions and networks in natural populations supports the omnigenic theory. | Chateigner A et al. | β | 2020 | β |
| Gene expression profiles complement the analysis of genomic modifiers of the clinical onset of Huntington disease. | Wright GEB et al. | β | 2020 | β |
| Genetically Predicted Levels of DNA Methylation Biomarkers and Breast Cancer Risk: Data From 228β951 Women of European Descent. | Yang Y et al. | β | 2020 | β |
| Genetic drug target validation using Mendelian randomisation. | Schmidt AF et al. | β | 2020 | β |
| Genetic meta-analysis of obsessive-compulsive disorder and self-report compulsive symptoms. | Smit DJA et al. | β | 2020 | β |
| Genome-wide Association Analysis in Humans Links Nucleotide Metabolism to Leukocyte Telomere Length. | Li C et al. | β | 2020 | β |
| Genome-wide association and Mendelian randomisation analysis provide insights into the pathogenesis of heart failure. | Shah S et al. | β | 2020 | β |
| Genome-Wide Association Study Identifies Genetic Associations with Perceived Age. | Roberts V et al. | β | 2020 | β |
| Genome-wide association study identifies locus at chromosome 2q32.1 associated with syncope and collapse. | Hadji-Turdeghal K et al. | β | 2020 | β |
| Genome-wide association study of corneal biomechanical properties identifies over 200 loci providing insight into the genetic etiology of ocular diseases. | Simcoe MJ et al. | β | 2020 | β |
| Genome-Wide Association Study of Cryptosporidiosis in Infants Implicates <i>PRKCA</i>. | Wojcik GL et al. | β | 2020 | β |
| Genome-wide meta-analysis of problematic alcohol use in 435,563 individuals yields insights into biology and relationships with other traits. | Zhou H et al. | β | 2020 | β |
| Identification of novel breast cancer susceptibility loci in meta-analyses conducted among Asian and European descendants. | Shu X et al. | β | 2020 | β |
| Identification of relevant hub genes for early intervention at gene coexpression modules with altered predicted expression in schizophrenia. | Rodriguez-LΓ³pez J et al. | β | 2020 | β |
| Identification of therapeutic targets from genetic association studies using hierarchical component analysis. | Lee HC et al. | β | 2020 | β |
| Identifying Shared Risk Genes for Asthma, Hay Fever, and Eczema by Multi-Trait and Multiomic Association Analyses. | Guo H et al. | β | 2020 | β |
| IGREX for quantifying the impact of genetically regulated expression on phenotypes. | Cai M et al. | β | 2020 | β |
| Incorporating multiple sets of eQTL weights into gene-by-environment interaction analysis identifies novel susceptibility loci for pancreatic cancer. | Yang T et al. | β | 2020 | β |
| Integrating comprehensive functional annotations to boost power and accuracy in gene-based association analysis. | Quick C et al. | β | 2020 | β |
| Integrative analyses prioritize GNL3 as a risk gene for bipolar disorder. | Meng Q et al. | β | 2020 | β |
| Investigation of prediction accuracy and the impact of sample size, ancestry, and tissue in transcriptome-wide association studies. | Fryett JJ et al. | β | 2020 | β |
| Large eQTL meta-analysis reveals differing patterns between cerebral cortical and cerebellar brain regions. | Sieberts SK et al. | β | 2020 | β |
| Leveraging functional annotation to identify genes associated with complex diseases. | Liu W et al. | β | 2020 | β |
| Massively parallel techniques for cataloguing the regulome of the human brain. | Townsley KG et al. | β | 2020 | β |
| Mechanisms of tissue and cell-type specificity in heritable traits andΒ diseases. | Hekselman I et al. | β | 2020 | β |
| Multi-ancestry GWAS of the electrocardiographic PR interval identifies 202 loci underlying cardiac conduction. | Ntalla I et al. | β | 2020 | β |
| Multi-ethnic transcriptome-wide association study of prostate cancer. | Fiorica PN et al. | β | 2020 | β |
| Multiple-Tissue Integrative Transcriptome-Wide Association Studies Discovered New Genes Associated With Amyotrophic Lateral Sclerosis. | Xiao L et al. | β | 2020 | β |
| Non-random sampling leads to biased estimates of transcriptome association. | Foulkes AS et al. | β | 2020 | β |
| On the cross-population generalizability of gene expression prediction models. | Keys KL et al. | β | 2020 | β |
| Phenome-wide analyses establish a specific association between aortic valve PALMD expression and calcific aortic valve stenosis. | Li Z et al. | β | 2020 | β |
| PhenomeXcan: Mapping the genome to the phenome through the transcriptome. | Pividori M et al. | β | 2020 | β |
| Population-Matched Transcriptome Prediction Increases TWAS Discovery and Replication Rate. | Geoffroy E et al. | β | 2020 | β |
| Post-GWAS analysis of six substance use traits improves the identification and functional interpretation of genetic risk loci. | Marees AT et al. | β | 2020 | β |
| Primo: integration of multiple GWAS and omics QTL summary statistics for elucidation of molecular mechanisms of trait-associated SNPs and detection of pleiotropy in complex traits. | Gleason KJ et al. | β | 2020 | β |
| Psychiatric comorbidities in Asperger syndrome are related with polygenic overlap and differ from other Autism subtypes. | GonzΓ‘lez-PeΓ±as J et al. | β | 2020 | β |
| PTWAS: investigating tissue-relevant causal molecular mechanisms of complex traits using probabilistic TWAS analysis. | Zhang Y et al. | β | 2020 | β |
| Quantifying genetic effects on disease mediated by assayed gene expression levels. | Yao DW et al. | β | 2020 | β |
| RICOPILI: Rapid Imputation for COnsortias PIpeLIne. | Lam M et al. | β | 2020 | β |
| Sex-Specific Genetic Associations for Barrett's Esophagus and Esophageal Adenocarcinoma. | Dong J et al. | β | 2020 | β |
| Stochastic imputation for integrated transcriptome association analysis of a longitudinally measured trait. | Ray EL et al. | β | 2020 | β |
| Strengthening Causal Inference for Complex Disease Using Molecular Quantitative Trait Loci. | Neumeyer S et al. | β | 2020 | β |
| Testing and controlling for horizontal pleiotropy with probabilistic Mendelian randomization in transcriptome-wide association studies. | Yuan Z et al. | β | 2020 | β |
| The GTEx Consortium atlas of genetic regulatory effects across human tissues. | GTEx Consortium | β | 2020 | β |
| The landscape of host genetic factors involved in immune response to common viral infections. | Kachuri L et al. | β | 2020 | β |
| Transcriptome-wide association study reveals candidate causal genes for lung cancer. | BossΓ© Y et al. | β | 2020 | β |
| TSEA-DB: a trait-tissue association map for human complex traits and diseases. | Jia P et al. | β | 2020 | β |
| Turning genome-wide association study findings into opportunities for drug repositioning. | Lau A et al. | β | 2020 | β |
| A Convergent Study of Genetic Variants Associated With Crohn's Disease: Evidence From GWAS, Gene Expression, Methylation, eQTL and TWAS. | Dai Y et al. | β | 2019 | β |
| A <i>Trans</i>-Ethnic Genome-Wide Association Study of Uterine Fibroids. | Edwards TL et al. | β | 2019 | β |
| A Mendelian randomization study of IL6 signaling in cardiovascular diseases, immune-related disorders and longevity. | Rosa M et al. | β | 2019 | β |
| A meta-analysis of genome-wide association studies identifies multiple longevity genes. | Deelen J et al. | β | 2019 | β |
| An association analysis to identify genetic variants linked to asthma and rhino-conjunctivitis in a cohort of Sicilian children. | Sottile G et al. | β | 2019 | β |
| An integrative cross-omics analysis of DNA methylation sites of glucose and insulin homeostasis. | Liu J et al. | β | 2019 | β |
| Associations of variants In the hexokinase 1 and interleukin 18 receptor regions with oxyhemoglobin saturation during sleep. | Cade BE et al. | β | 2019 | β |
| A statistical framework for cross-tissue transcriptome-wide association analysis. | Hu Y et al. | β | 2019 | β |
| Brain Banks Spur New Frontiers in Neuropsychiatric Research and Strategies for Analysis and Validation. | Wang L et al. | β | 2019 | β |
| Combined analysis of keratinocyte cancers identifies novel genome-wide loci. | Liyanage UE et al. | β | 2019 | β |
| CoMM: A Collaborative Mixed Model That Integrates GWAS and eQTL Data Sets to Investigate the Genetic Architecture of Complex Traits. | Yeung KF et al. | β | 2019 | β |
| Drug Targetor: a web interface to investigate the human druggome for over 500 phenotypes. | Gaspar HA et al. | β | 2019 | β |
| Exploring genetic variation that influences brain methylation in attention-deficit/hyperactivity disorder. | Pineda-Cirera L et al. | β | 2019 | β |
| Functionally oriented analysis of cardiometabolic traits in a trans-ethnic sample. | Petty LE et al. | β | 2019 | β |
| Genetically regulated gene expression underlies lipid traits in Hispanic cohorts. | Andaleon A et al. | β | 2019 | β |
| Genetic Data from Nearly 63,000 Women of European Descent Predicts DNA Methylation Biomarkers and Epithelial Ovarian Cancer Risk. | Yang Y et al. | β | 2019 | β |
| Genetic landscape of chronic obstructive pulmonary disease identifies heterogeneous cell-type and phenotype associations. | Sakornsakolpat P et al. | β | 2019 | β |
| Genetics of Blood Pressure Regulation: Possible Paths in the Labyrinth. | Foco L et al. | β | 2019 | β |
| Genome wide analysis for mouth ulcers identifies associations at immune regulatory loci. | Dudding T et al. | β | 2019 | β |
| Genome-wide analysis of dental caries and periodontitis combining clinical and self-reported data. | Shungin D et al. | β | 2019 | β |
| Genome-wide association and transcriptome studies identify target genes and risk loci for breast cancer. | Ferreira MA et al. | β | 2019 | β |
| Genome-wide Association Studies in Ancestrally Diverse Populations: Opportunities, Methods, Pitfalls, and Recommendations. | Peterson RE et al. | β | 2019 | β |
| Genome-wide association study identifies loci associated with liability to alcohol and drug dependence that is associated with variability in reward-related ventral striatum activity in African- and European-Americans. | Wetherill L et al. | β | 2019 | β |
| Genome-wide association study of cerebral small vessel disease reveals established and novel loci. | Chung J et al. | β | 2019 | β |
| Genome-Wide Association Study of Diabetic Kidney Disease Highlights Biology Involved in Glomerular Basement Membrane Collagen. | Salem RM et al. | β | 2019 | β |
| Gut Microbiota Has a Widespread and Modifiable Effect on Host Gene Regulation. | Richards AL et al. | β | 2019 | β |
| Heritability and genome-wide association study of benign prostatic hyperplasia (BPH) in the eMERGE network. | Hellwege JN et al. | β | 2019 | β |
| Identification of Novel Susceptibility Loci and Genes for Prostate Cancer Risk: A Transcriptome-Wide Association Study in Over 140,000 European Descendants. | Wu L et al. | β | 2019 | β |
| iFunMed: Integrative functional mediation analysis of GWAS and eQTL studies. | Rojo C et al. | β | 2019 | β |
| Imputed gene associations identify replicable trans-acting genes enriched in transcription pathways and complex traits. | Wheeler HE et al. | β | 2019 | β |
| Informing disease modelling with brain-relevant functional genomic annotations. | Reynolds RH et al. | β | 2019 | β |
| Innovative strategies for annotating the "relationSNP" between variants and molecular phenotypes. | Miller JE et al. | β | 2019 | β |
| Integrating predicted transcriptome from multiple tissues improves association detection. | Barbeira AN et al. | β | 2019 | β |
| Integrative transcriptome imputation reveals tissue-specific and shared biological mechanisms mediating susceptibility to complex traits. | Zhang W et al. | β | 2019 | β |
| Interpreting Coronary Artery Disease Risk Through Gene-Environment Interactions in Gene Regulation. | Findley AS et al. | β | 2019 | β |
| Low-frequency variation in TP53 has large effects on head circumference and intracranial volume. | Haworth S et al. | β | 2019 | β |
| Mapping eGFR loci to the renal transcriptome and phenome in the VA Million Veteran Program. | Hellwege JN et al. | β | 2019 | β |
| New insight into human sweet taste: a genome-wide association study of the perception and intake of sweet substances. | Hwang LD et al. | β | 2019 | β |
| Novel Insight Into the Etiology of Autism Spectrum Disorder Gained by Integrating Expression Data With Genome-wide Association Statistics. | Pain O et al. | β | 2019 | β |
| Opportunities and challenges for transcriptome-wide association studies. | Wainberg M et al. | β | 2019 | β |
| Pharmacogenomics of Vincristine-Induced Peripheral Neuropathy Implicates Pharmacokinetic and Inherited Neuropathy Genes. | Wright GEB et al. | β | 2019 | β |
| Pleiotropic Meta-Analysis of Cognition, Education, and Schizophrenia Differentiates Roles of Early Neurodevelopmental and Adult Synaptic Pathways. | Lam M et al. | β | 2019 | β |
| Psychiatric Genetics, Epigenetics, and Cellular Models in Coming Years. | Liu C et al. | β | 2019 | β |
| Reference Trait Analysis Reveals Correlations Between Gene Expression and Quantitative Traits in Disjoint Samples. | Skelly DA et al. | β | 2019 | β |
| Shared and distinct genetic risk factors for childhood-onset and adult-onset asthma: genome-wide and transcriptome-wide studies. | Pividori M et al. | β | 2019 | β |
| Transcriptome association studies of neuropsychiatric traits in African Americans implicate <i>PRMT7</i> in schizophrenia. | Fiorica PN et al. | β | 2019 | β |
| Transcriptome-Wide Association Study Identifies New Candidate Susceptibility Genes for Glioma. | Atkins I et al. | β | 2019 | β |
| Trans-ethnic association study of blood pressure determinants in over 750,000 individuals. | Giri A et al. | β | 2019 | β |
| Use of the epigenetic toolboxβ¨to contextualize common variants associated with schizophrenia riskβ©. | Rajarajan P et al. | β | 2019 | β |
| Using genetic drug-target networks to develop new drug hypotheses for major depressive disorder. | Gaspar HA et al. | β | 2019 | β |
| ANCO-GeneDB: annotations and comprehensive analysis of candidate genes for alcohol, nicotine, cocaine and opioid dependence. | Hu R et al. | β | 2018 | β |
| An eQTL Landscape of Kidney Tissue in Human Nephrotic Syndrome. | Gillies CE et al. | β | 2018 | β |
| Another Round of "Clue" to Uncover the Mystery of Complex Traits. | Verma SS et al. | β | 2018 | β |
| A transcriptome-wide association study of 229,000 women identifies new candidate susceptibility genes for breast cancer. | Wu L et al. | β | 2018 | β |
| Bid maintains mitochondrial cristae structure and function and protects against cardiac disease in an integrative genomics study. | Salisbury-Ruf CT et al. | β | 2018 | β |
| Characterizing the Relation Between Expression QTLs and Complex Traits: Exploring the Role of Tissue Specificity. | Ip HF et al. | β | 2018 | β |
| Consortium-based genome-wide meta-analysis for childhood dental caries traits. | Haworth S et al. | β | 2018 | β |
| Evaluating the potential role of pleiotropy in Mendelian randomization studies. | Hemani G et al. | β | 2018 | β |
| Genetic architecture of gene expression traits across diverse populations. | Mogil LS et al. | β | 2018 | β |
| GWAS of lifetime cannabis use reveals new risk loci, genetic overlap with psychiatric traits, and a causal influence of schizophrenia. | Pasman JA et al. | β | 2018 | β |
| INFERNO: inferring the molecular mechanisms of noncoding genetic variants. | Amlie-Wolf A et al. | β | 2018 | β |
| Landscape of Conditional eQTL in Dorsolateral Prefrontal Cortex and Co-localization with Schizophrenia GWAS. | Dobbyn A et al. | β | 2018 | β |
| Leveraging lung tissue transcriptome to uncover candidate causal genes in COPD genetic associations. | Lamontagne M et al. | β | 2018 | β |
| Multiethnic meta-analysis identifies ancestry-specific and cross-ancestry loci for pulmonary function. | Wyss AB et al. | β | 2018 | β |
| Translating GWAS Findings to Novel Therapeutic Targets for Coronary Artery Disease. | Shu L et al. | β | 2018 | β |