Fast and Rigorous Computation of Gene and Pathway Scores from SNP-Based Summary Statistics.
- Authors
- Lamparter, David; Marbach, Daniel; Rueedi, Rico; Kutalik, ZoltΓ‘n; Bergmann, Sven
- Year
- 2016
- Journal
- PLoS computational biology
- PMID
- 26808494
- DOI
- 10.1371/journal.pcbi.1004714
- PMCID
- PMC4726509
Integrating single nucleotide polymorphism (SNP) p-values from genome-wide association studies (GWAS) across genes and pathways is a strategy to improve statistical power and gain biological insight. Here, we present Pascal (Pathway scoring algorithm), a powerful tool for computing gene and pathway scores from SNP-phenotype association summary statistics. For gene score computation, we implemented analytic and efficient numerical solutions to calculate test statistics. We examined in particular the sum and the maximum of chi-squared statistics, which measure the strongest and the average association signals per gene, respectively. For pathway scoring, we use a modified Fisher method, which offers not only significant power improvement over more traditional enrichment strategies, but also eliminates the problem of arbitrary threshold selection inherent in any binary membership based pathway enrichment approach. We demonstrate the marked increase in power by analyzing summary statistics from dozens of large meta-studies for various traits. Our extensive testing indicates that our method not only excels in rigorous type I error control, but also results in more biologically meaningful discoveries.
Overview of the methodology to compute gene and pathway scores.a) We compute gene scores by aggregating SNP p-values from a GWAS meta-analysis (without the need for individual genotypes), while correcting for linkage disequilibrium (LD) structure. To this end, we use numerical and analytic solutions to compute gene p-values efficiently and accurately given LD information from a reference population (e.g. one provided by the 1000 Genomes Project[22]). Two options are available: the max and sum of chi-squared statistics, which are based on the most significant SNP and the average association signal across the region, respectively. b) We use external databases to define gene sets for each reported pathway. We then compute pathway scores by combining the scores of genes that belong to the same pathways, i.e. gene sets. The fast gene scoring method allows us to dynamically recalculate gene scores by aggregating SNP p-values across pathway genes that are in LD and thus cannot be treated independently. This amounts to fusing the genes and computing a new score that takes the full LD structure of the corresponding locus into account. We evaluate pathway enrichment of high-scoring (possibly fused) genes using one of two parameter-free procedures (chi-squared or empirical score), avoiding any p-value thresholds inherent to standard binary enrichment tests.
Comparing efficiency between VEGAS and Pascal.a) Run times of VEGAS and Pascal (both options). Gene scores were computed on two GWAS (one HapMap imputed[23], one 1KG imputed[22,25]) for 18,132 genes on a single core. Pascal was compared to VEGAS for the HapMap imputed study and VEGAS2 for the 1KG-imputed study. For this plot, VEGAS and VEGAS2 were used with the default maximum number of Monte Carlo samples of 106 for both studies and additionally with 108 Monte Carlo samples for the HapMap imputed study. b) Scatter plot of -log10-transformed gene p-values for the sum gene scores obtained by VEGAS and Pascal, respectively. P-values above 10β6 are in excellent concordance. Below this value VEGAS could not give precise estimates, since it was run with the maximal number of Monte Carlo samples set to 108.
Pathway scores for random phenotypes.As input data we used 100 simulated instances of a random Gaussian phenotype and genotype data for 379 individuals from the EUR-1KG panel. Using the Pascal pipeline with sum gene scores and chi-squared pathway integration strategy we computed p-values for 1,077 pathways from our pathway library (results for max gene scores are similar, see S4 Fig). Panel (a) shows the p-value distributions without merging of neighbouring genes and (b) with merging of neighbouring genes (gene-fusion strategy).P-value distributions are represented by QQ-plots (upper panels) and histograms (lower panels). Results are colour-coded according to the fraction of genes in a given pathway that have a neighbouring gene in the same pathway, i.e. that are located nearby on the genome (distance <300kb). (a) P-values of pathways that contain genes in LD are strongly inflated without correction. (b) The gene fusion approach provides well-calibrated p-values independently of the number of pathway genes in LD.
Performance of pathway enrichment methods for blood lipid traits and Crohnβs disease.Displayed is the mean area under the precision-recall curve (AUC) for pathways identified using Pascal, a standard hypergeometric test at various gene score threshold levels, and a rank-sum test (vertical bars show the standard error). We show results for the max gene scores (sum gene score results are similar, see S5 Fig). a) Results for four blood lipid traits. The gold standard pathway list was defined as all pathways that show a significance level below 5Γ10β6 for any of the tested threshold parameters for hypergeometric tests in the largest study of lipid traits to date[23]. The significance level of 5Γ10β6 corresponds to the Bonferroni corrected, genome-wide significance threshold at the 0.5% level for a single method. For each phenotype, error bars denote the standard error computed from three independent subsamples of the CoLaus study (including 1500 individuals each). We see good overall performance of Pascal pathway scores, whereas results for discrete gene sets vary widely with the particular choice for the threshold parameter of hypergeometric test. b) Results for Crohnβs disease using the same approach as in (a). A reference standard pathway list was defined as in (a) using the largest study of Crohnβs disease traits to date[31]. We observe that the chi-squared strategy performs at least as well as all other strategies in this setting, whereas performance of the hypergeometric testing strategy varies.
Power of pathway scoring methods across diverse traits and diseases.Bar heights represent the number of pathways found to be significant after Bonferroni-correction. Within a given trait group, results are aggregated for all tested GWAS studies. 65 GWAS had at least one significant pathway in one of the tested methods. For each GWAS, the raw number of significant pathways was divided by the number of pathways found by the best performing method. This was done in order to avoid that a few studies with many emerging pathways dominate. We show results for the MOCS gene scores (SOCS gene score results are similar, see S6 Fig). (a) Results are aggregated over all trait groups. (b) Results for different trait groups.
Examples of pathway enrichments comparing Pascal (chi-squared method) to the hypergeometric method.Displayed are results for four phenotypes showing improvement when using Pascal instead of the hypergeometric (binary) enrichment strategy at the 5% threshold level. Underlying gene scores were calculated using the sum method. Dashed lines refer to the Bonferroni significance level when correcting for the number of pathways (1077). Besides from few cancer-related pathways, all pathways highlighted by this analysis have been implied by prior research (see main text). (a) For the trait insulin resistance, Pascal scored the pathway insulin signal attenuation first, followed by two other trait-relevant pathways (PI3K AKT activation and insulin receptor signaling), while the hypergeometric test did not find any significant pathways. (b) For smoking amount (number of cigarettes per day), Pascal revealed three significant pathways related to nicotinic acetylcholine receptors. (c) For osteoporosis, two cancer-related pathways scored significant using both Pascal and the hypergeometric test, but only Pascal revealed the WNT and Hedgehog signaling pathways, which are known to be involved in osteoblast biology. (d) For macular degeneration, Pascal found three significant, trait-relevant pathways related to lipoproteins and the complement system.
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| Bivariate genome-wide association study (GWAS) of body mass index and blood pressure phenotypes in northern Chinese twins. | Li Z et al. | β | 2021 | β |
| Causal Inference Methods to Integrate Omics and Complex Traits. | Porcu E et al. | β | 2021 | β |
| 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 |
| Comparative Analysis of Mammal Genomes Unveils Key Genomic Variability for Human Life Span. | FarrΓ© X et al. | β | 2021 | β |
| Composite trait Mendelian randomization reveals distinct metabolic and lifestyle consequences of differences in body shape. | Sulc J et al. | β | 2021 | β |
| Differentially expressed genes reflect disease-induced rather than disease-causing changes in the transcriptome. | Porcu E et al. | β | 2021 | β |
| Discover novel disease-associated genes based on regulatory networks of long-range chromatin interactions. | Wang H et al. | β | 2021 | β |
| DOMINO: a network-based active module identification algorithm with reduced rate of false calls. | Levi H et al. | β | 2021 | β |
| Eight novel susceptibility loci and putative causal variants in atopic dermatitis. | Tanaka N et al. | β | 2021 | β |
| Gene expression imputation and cell-type deconvolution in human brain with spatiotemporal precision and its implications for brain-related disorders. | Pei G et al. | β | 2021 | β |
| Genetic architectures of proximal and distal colorectal cancer are partly distinct. | Huyghe JR et al. | β | 2021 | β |
| Genetic determinants of daytime napping and effects on cardiometabolic health. | Dashti HS et al. | β | 2021 | β |
| Genetic dissection of complex traits using hierarchical biological knowledge. | Tanaka H et al. | β | 2021 | β |
| Genetic factors affect the susceptibility to bacterial infections in diabetes. | Simonsen JR et al. | β | 2021 | β |
| Genetic insights into biological mechanisms governing human ovarian ageing. | Ruth KS et al. | β | 2021 | β |
| Genome-wide association study of susceptibility to hospitalised respiratory infections. | Williams AT et al. | β | 2021 | β |
| Genome-wide association study on coronary artery disease in type 1 diabetes suggests beta-defensin 127 as a risk locus. | Antikainen AAV et al. | β | 2021 | β |
| GWAS of stool frequency provides insights into gastrointestinal motility and irritable bowel syndrome. | Bonfiglio F et al. | β | 2021 | β |
| Heritability and genome-wide association study of blood pressure in Chinese adult twins. | Chen J et al. | β | 2021 | β |
| Insilico Functional Analysis of Genome-Wide Dataset From 17,000 Individuals Identifies Candidate Malaria Resistance Genes Enriched in Malaria Pathogenic Pathways. | Damena D et al. | β | 2021 | β |
| Large-scale cis- and trans-eQTL analyses identify thousands of genetic loci and polygenic scores that regulate blood gene expression. | VΓ΅sa U et al. | β | 2021 | β |
| Metagenome-wide association study revealed disease-specific landscape of the gut microbiome of systemic lupus erythematosus in Japanese. | Tomofuji Y et al. | β | 2021 | β |
| Modeling regulatory network topology improves genome-wide analyses of complex human traits. | Zhu X et al. | β | 2021 | β |
| Multi-scale inference of genetic trait architecture using biologically annotated neural networks. | Demetci P et al. | β | 2021 | β |
| Performing post-genome-wide association study analysis: overview, challenges and recommendations. | Adam Y et al. | β | 2021 | β |
| Predicting regulatory variants using a dense epigenomic mapped CNN model elucidated the molecular basis of trait-tissue associations. | Pei G et al. | β | 2021 | β |
| Progress in Defining the Genetic Contribution to Type 2 Diabetes in Individuals of East Asian Ancestry. | Spracklen CN et al. | β | 2021 | β |
| Susceptibility loci and polygenic architecture highlight population specific and common genetic features in inguinal hernias: genetics in inguinal hernias. | Hikino K et al. | β | 2021 | β |
| Thyrotrophin and thyroxine support immune homeostasis in humans. | Jaeger M et al. | β | 2021 | β |
| TIGA: target illumination GWAS analytics. | Yang JJ et al. | β | 2021 | β |
| VarSAn: associating pathways with a set of genomic variants using network analysis. | Xie X et al. | β | 2021 | β |
| A Genome-wide Association Study Discovers 46 Loci of the Human Metabolome in the Hispanic Community Health Study/Study of Latinos. | Feofanova EV 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 network analysis to identify mediators of germline-driven differences in breast cancer prognosis. | Escala-Garcia M et al. | β | 2020 | β |
| An integrative, genomic, transcriptomic and network-assisted study to identify genes associated with human cleft lip with or without cleft palate. | Yan F et al. | β | 2020 | β |
| A Pathway and Network Oriented Approach to Enlighten Molecular Mechanisms of Type 2 Diabetes Using Multiple Association Studies | Bakir-Gungor B et al. | β | 2020 | β |
| A Review of Statistical Methods for Identifying Trait-Relevant Tissues and Cell Types. | Zhu H et al. | β | 2020 | β |
| Common variants in SOX-2 and congenital cataract genes contribute to age-related nuclear cataract. | Yonova-Doing E et al. | β | 2020 | β |
| Dense module searching for gene networks associated with multiple sclerosis. | Manuel AM et al. | β | 2020 | β |
| Detecting Shared Genetic Architecture Among Multiple Phenotypes by Hierarchical Clustering of Gene-Level Association Statistics. | McGuirl MR et al. | β | 2020 | β |
| Dosage-sensitive molecular mechanisms are associated with the tissue-specificity of traits and diseases. | Jubran J et al. | β | 2020 | β |
| DOT: Gene-set analysis by combining decorrelated association statistics. | Vsevolozhskaya OA et al. | β | 2020 | β |
| Estimation of non-null SNP effect size distributions enables the detection of enriched genes underlying complex traits. | Cheng W et al. | β | 2020 | β |
| Finding disease modules for cancer and COVID-19 in gene co-expression networks with the Core&Peel method. | Lucchetta M et al. | β | 2020 | β |
| Genetic Studies of Leptin Concentrations Implicate Leptin in the Regulation of Early Adiposity. | Yaghootkar H et al. | β | 2020 | β |
| Genome-wide association study identifies genetic factors that modify age at onset in Machado-Joseph disease. | AkΓ§imen F et al. | β | 2020 | β |
| Genome-Wide Association Study of Brain Connectivity Changes for Alzheimer's Disease. | Elsheikh SSM et al. | β | 2020 | β |
| Genome-Wide Scan for Five Brain Oscillatory Phenotypes Identifies a New QTL Associated with Theta EEG Band. | Rebelo MΓ et al. | β | 2020 | β |
| GWAS of 165,084 Japanese individuals identified nine loci associated with dietary habits. | Matoba N et al. | β | 2020 | β |
| Heritability and genome-wide association analyses of fasting plasma glucose in Chinese adult twins. | Wang W et al. | β | 2020 | β |
| Identification of therapeutic targets from genetic association studies using hierarchical component analysis. | Lee HC 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 |
| MONET: a toolbox integrating top-performing methods for network modularization. | Tomasoni M et al. | β | 2020 | β |
| Multiscale community detection in Cytoscape. | Singhal A et al. | β | 2020 | β |
| Network and pathway expansion of genetic disease associations identifies successful drug targets. | MacNamara A et al. | β | 2020 | β |
| Partitioning gene-based variance of complex traits by gene score regression. | Zhang W et al. | β | 2020 | β |
| PAST: The Pathway Association Studies Tool to Infer Biological Meaning from GWAS Datasets. | Thrash A et al. | β | 2020 | β |
| Polygenic architecture informs potential vulnerability to drug-induced liver injury. | Koido M et al. | β | 2020 | β |
| Polygenic risk scores indicates genetic overlap between peripheral pain syndromes and chronic postsurgical pain. | van Reij RRI et al. | β | 2020 | β |
| Radiogenomics Consortium Genome-Wide Association Study Meta-Analysis of Late Toxicity After Prostate Cancer Radiotherapy. | Kerns SL et al. | β | 2020 | β |
| Sex-dependent autosomal effects on clinical progression of Alzheimer's disease. | Fan CC 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 |
| 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 |
| Adapting Community Detection Algorithms for Disease Module Identification in Heterogeneous Biological Networks. | Tripathi B et al. | β | 2019 | β |
| A generalized model for combining dependent SNP-level summary statistics and its extensions to statistics of other levels. | Svishcheva GR | β | 2019 | β |
| A Genome-Wide Functional Genomics Approach Identifies Susceptibility Pathways to Fungal Bloodstream Infection in Humans. | Jaeger M et al. | β | 2019 | β |
| A network-based approach to identify deregulated pathways and drug effects in metabolic syndrome. | Misselbeck K et al. | β | 2019 | β |
| Assessment of network module identification across complex diseases. | Choobdar S et al. | β | 2019 | β |
| Assessment of Novel Genome-Wide Significant Gene Loci and Lesion Growth in Geographic Atrophy Secondary to Age-Related Macular Degeneration. | Grassmann F et al. | β | 2019 | β |
| Association studies of up to 1.2 million individuals yield new insights into the genetic etiology of tobacco and alcohol use. | Liu M et al. | β | 2019 | β |
| A systems biology approach uncovers cell-specific gene regulatory effects of genetic associations in multiple sclerosis. | International Multiple Sclerosis Genetics Consortium | β | 2019 | β |
| Benchmarker: An Unbiased, Association-Data-Driven Strategy to Evaluate Gene Prioritization Algorithms. | Fine RS et al. | β | 2019 | β |
| Biological and clinical insights from genetics of insomnia symptoms. | Lane JM et al. | β | 2019 | β |
| Characterizing rare and low-frequency height-associated variants in the Japanese population. | Akiyama M et al. | β | 2019 | β |
| CNet: a multi-omics approach to detecting clinically associated, combinatory genomic signatures. | Jia P et al. | β | 2019 | β |
| Cross-species functional modules link proteostasis to human normal aging. | Komljenovic A et al. | β | 2019 | β |
| DeepTACT: predicting 3D chromatin contacts via bootstrapping deep learning. | Li W et al. | β | 2019 | β |
| Developing a network view of type 2 diabetes risk pathways through integration of genetic, genomic and functional data. | FernΓ‘ndez-Tajes J et al. | β | 2019 | β |
| Differential expression of microRNAs in Alzheimer's disease brain, blood, and cerebrospinal fluid. | Takousis P et al. | β | 2019 | β |
| Enriching Human Interactome with Functional Mutations to Detect High-Impact Network Modules Underlying Complex Diseases. | Cui H et al. | β | 2019 | β |
| Exome-Derived Adiponectin-Associated Variants Implicate Obesity and Lipid Biology. | Spracklen CN et al. | β | 2019 | β |
| Exploring the underlying biology of intrinsic cardiorespiratory fitness through integrative analysis of genomic variants and muscle gene expression profiling. | Ghosh S et al. | β | 2019 | β |
| Functional Annotation of Genetic Loci Associated With Sepsis Prioritizes Immune and Endothelial Cell Pathways. | Le KTT et al. | β | 2019 | β |
| Gene-based analysis of ADHD using PASCAL: a biological insight into the novel associated genes. | Alonso-Gonzalez A et al. | β | 2019 | β |
| Genome-wide association analyses of chronotype in 697,828 individuals provides insights into circadian rhythms. | Jones SE et al. | β | 2019 | β |
| Genome-wide association analysis of self-reported daytime sleepiness identifies 42 loci that suggest biological subtypes. | Wang H et al. | β | 2019 | β |
| Genome-wide association studies identify polygenic effects for completed suicide in the Japanese population. | Otsuka I et al. | β | 2019 | β |
| Genome-wide association study identifies 14 previously unreported susceptibility loci for adolescent idiopathic scoliosis in Japanese. | Kou I et al. | β | 2019 | β |
| Genome-wide association study identifies genetic loci for self-reported habitual sleep duration supported by accelerometer-derived estimates. | Dashti HS 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 |
| Genome-wide interaction and pathway-based identification of key regulators in multiple myeloma. | Chattopadhyay S et al. | β | 2019 | β |
| Genomics of 1 million parent lifespans implicates novel pathways and common diseases and distinguishes survival chances. | Timmers PR et al. | β | 2019 | β |
| GWAS of mosaic loss of chromosome Y highlights genetic effects on blood cell differentiation. | Terao C et al. | β | 2019 | β |
| Identifying Crohn's disease signal from variome analysis. | Wang Y et al. | β | 2019 | β |
| Investigation of multi-trait associations using pathway-based analysis of GWAS summary statistics. | Pei G et al. | β | 2019 | β |
| Mega-analysis of Odds Ratio: A Convergent Method for a Deep Understanding of the Genetic Evidence in Schizophrenia. | Jia P et al. | β | 2019 | β |
| Meta-analyses identify differentially expressed micrornas in Parkinson's disease. | Schulz J et al. | β | 2019 | β |
| Novel Gene-Based Analysis of ASD GWAS: Insight Into the Biological Role of Associated Genes. | Alonso-Gonzalez A et al. | β | 2019 | β |
| PLD4 is a genetic determinant to systemic lupus erythematosus and involved in murine autoimmune phenotypes. | Akizuki S et al. | β | 2019 | β |
| Post genome-wide association analysis: dissecting computational pathway/network-based approaches. | Chimusa ER et al. | β | 2019 | β |
| Prediction of causal genes and gene expression analysis of attention-deficit hyperactivity disorder in the different brain region, a comprehensive integrative analysis of ADHD. | Fahira A et al. | β | 2019 | β |
| Protein-coding variants implicate novel genes related to lipid homeostasis contributing to body-fat distribution. | Justice AE et al. | β | 2019 | β |
| Sex-specific gene and pathway modeling of inherited glioma risk. | Ostrom QT et al. | β | 2019 | β |
| The molecular genetics of hand preference revisited. | de Kovel CGF et al. | β | 2019 | β |
| A Bayesian framework for multiple trait colocalization from summary association statistics. | Giambartolomei C et al. | β | 2018 | β |
| ANCO-GeneDB: annotations and comprehensive analysis of candidate genes for alcohol, nicotine, cocaine and opioid dependence. | Hu R et al. | β | 2018 | β |
| A sibling method for identifying vQTLs. | Conley D et al. | β | 2018 | β |
| Comparison of novel and existing methods for detecting differentially methylated regions. | Lent S et al. | β | 2018 | β |
| Constructing tissue-specific transcriptional regulatory networks via a Markov random field. | Ma S et al. | β | 2018 | β |
| Detecting phenotype-driven transitions in regulatory network structure. | Padi M et al. | β | 2018 | β |
| Enrichment of B cell receptor signaling and epidermal growth factor receptor pathways in monoclonal gammopathy of undetermined significance: a genome-wide genetic interaction study. | Chattopadhyay S et al. | β | 2018 | β |
| Evidence for a potential role of miR-1908-5p and miR-3614-5p in autoimmune disease risk using integrative bioinformatics. | Wohlers I et al. | β | 2018 | β |
| Gene-level differential analysis at transcript-level resolution. | Yi L et al. | β | 2018 | β |
| Genetic determinants and an epistasis of <i>LILRA3</i> and HLA-B*52 in Takayasu arteritis. | Terao C et al. | β | 2018 | β |
| Genetic interaction effects reveal lipid-metabolic and inflammatory pathways underlying common metabolic disease risks. | Woo HJ et al. | β | 2018 | β |
| Genetics of human autoimmunity: From genetic information to functional insights. | Ishigaki K et al. | β | 2018 | β |
| Genome-wide association study meta-analysis identifies five new loci for systemic lupus erythematosus. | JuliΓ A et al. | β | 2018 | β |
| Heritability and Genome-Wide Association Study of Plasma Cholesterol in Chinese Adult Twins. | Liu H et al. | β | 2018 | β |
| Identifying communities from multiplex biological networks by randomized optimization of modularity. | Didier G et al. | β | 2018 | β |
| Large-scale genome-wide enrichment analyses identify new trait-associated genes and pathways across 31 human phenotypes. | Zhu X et al. | β | 2018 | β |
| Leveraging multiple gene networks to prioritize GWAS candidate genes via network representation learning. | Wu M et al. | β | 2018 | β |
| POLARIS: Polygenic LD-adjusted risk score approach for set-based analysis of GWAS data. | Baker E et al. | β | 2018 | β |
| Proper joint analysis of summary association statistics requires the adjustment of heterogeneity in SNP coverage pattern. | Zhang H et al. | β | 2018 | β |
| Recursive module extraction using Louvain and PageRank. | Perrin D et al. | β | 2018 | β |
| Shared activity patterns arising at genetic susceptibility loci reveal underlying genomic and cellular architecture of human disease. | Baillie JK et al. | β | 2018 | β |
| Stratification of candidate genes for Parkinson's disease using weighted protein-protein interaction network analysis. | Ferrari R et al. | β | 2018 | β |
| The integrated landscape of causal genes and pathways in schizophrenia. | Ma C et al. | β | 2018 | β |
| Analysis of the human monocyte-derived macrophage transcriptome and response to lipopolysaccharide provides new insights into genetic aetiology of inflammatory bowel disease. | Baillie JK et al. | β | 2017 | β |
| An efficient and flexible test for rare variant effects. | Sugasawa S et al. | β | 2017 | β |
| Bayesian association scan reveals loci associated with human lifespan and linked biomarkers. | McDaid AF et al. | β | 2017 | β |
| cis-Acting Complex-Trait-Associated lincRNA Expression Correlates with Modulation of Chromosomal Architecture. | Tan JY et al. | β | 2017 | β |
| Convergence between biological, behavioural and genetic determinants of obesity. | Ghosh S et al. | β | 2017 | β |
| Functional mapping and annotation of genetic associations with FUMA. | Watanabe K et al. | β | 2017 | β |
| Gene co-opening network deciphers gene functional relationships. | Li W et al. | β | 2017 | β |
| GWAS of self-reported mosquito bite size, itch intensity and attractiveness to mosquitoes implicates immune-related predisposition loci. | Jones AV et al. | β | 2017 | β |
| Inferring Relevant Cell Types for Complex Traits by Using Single-Cell Gene Expression. | Calderon D et al. | β | 2017 | β |
| Left-Right Asymmetry of Maturation Rates in Human Embryonic Neural Development. | de Kovel CGF et al. | β | 2017 | β |
| Network-assisted analysis of GWAS data identifies a functionally-relevant gene module for childhood-onset asthma. | Liu Y et al. | β | 2017 | β |
| Rare and low-frequency coding variants alter human adult height. | Marouli E et al. | β | 2017 | β |
| Simultaneous inference of phenotype-associated genes and relevant tissues from GWAS data via Bayesian integration of multiple tissue-specific gene networks. | Wu M et al. | β | 2017 | β |
| SZDB: A Database for Schizophrenia Genetic Research. | Wu Y et al. | β | 2017 | β |
| The Genetics of Multiple Sclerosis: From 0 to 200 in 50 Years. | Baranzini SE et al. | β | 2017 | β |
| A Powerful Procedure for Pathway-Based Meta-analysis Using Summary Statistics Identifies 43 Pathways Associated with Type II Diabetes in European Populations. | Zhang H et al. | β | 2016 | β |
| Fast set-based association analysis using summary data from GWAS identifies novel gene loci for human complex traits. | Bakshi A et al. | β | 2016 | β |
| Pathway-based approach using hierarchical components of collapsed rare variants. | Lee S et al. | β | 2016 | β |
| Protein function in precision medicine: deep understanding with machine learning. | Rost B et al. | β | 2016 | β |
| Tissue-specific regulatory circuits reveal variable modular perturbations across complex diseases. | Marbach D et al. | β | 2016 | β |