Comprehensive functional genomic resource and integrative model for the human brain.
- Authors
- Wang, Daifeng; Liu, Shuang; Warrell, Jonathan; Won, Hyejung; Shi, Xu; Navarro, Fabio C P; Clarke, Declan; Gu, Mengting; Emani, Prashant; Yang, Yucheng T; Xu, Min; Gandal, Michael J; Lou, Shaoke; Zhang, Jing; Park, Jonathan J; Yan, Chengfei; Rhie, Suhn Kyong; Manakongtreecheep, Kasidet; Zhou, Holly; Nathan, Aparna; Peters, Mette; Mattei, Eugenio; Fitzgerald, Dominic; Brunetti, Tonya; Moore, Jill; Jiang, Yan; Girdhar, Kiran; Hoffman, Gabriel E; Kalayci, Selim; GΓΌmΓΌΕ, Zeynep H; Crawford, Gregory E; PsychENCODE Consortium; Roussos, Panos; Akbarian, Schahram; Jaffe, Andrew E; White, Kevin P; Weng, Zhiping; Sestan, Nenad; Geschwind, Daniel H; Knowles, James A; Gerstein, Mark B
- Year
- 2018
- Journal
- Science (New York, N.Y.)
- PMID
- 30545857
- DOI
- 10.1126/science.aat8464
- PMCID
- PMC6413328
Despite progress in defining genetic risk for psychiatric disorders, their molecular mechanisms remain elusive. Addressing this, the PsychENCODE Consortium has generated a comprehensive online resource for the adult brain across 1866 individuals. The PsychENCODE resource contains ~79,000 brain-active enhancers, sets of Hi-C linkages, and topologically associating domains; single-cell expression profiles for many cell types; expression quantitative-trait loci (QTLs); and further QTLs associated with chromatin, splicing, and cell-type proportions. Integration shows that varying cell-type proportions largely account for the cross-population variation in expression (with >88% reconstruction accuracy). It also allows building of a gene regulatory network, linking genome-wide association study variants to genes (e.g., 321 for schizophrenia). We embed this network into an interpretable deep-learning model, which improves disease prediction by ~6-fold versus polygenic risk scores and identifies key genes and pathways in psychiatric disorders.
Comprehensive data resource for functional genomics of the human brain.The functional genomics data generated by the PsychENCODE Consortium (PEC) constitute a multidimensional exploration across tissue, developmental stage, disorder, species, assay, and sex. The central data cube represents the results of our data integration for the three dimensions of disorder, assay, and tissue, where the numbers of datasets in the analysis are depicted. Projections of the data onto each of these three parameters are shown as graphs for assay and disorder and as a schematic for the primary brain regions of interest. Assay: Dataset numbers for a subset of assays are shown, including RNA-seq (2040 PsychENCODE samples and 1632 GTEx samples, used in multiple downstream analyses), genotypes (1362 PsychENCODE and 25 GTEx individuals for a total of 1387 individuals matched to RNA-seq samples for QTL analysis after quality control filtering), and H3K27ac ChIP-seq (408 PsychENCODE and 5 Roadmap samples). The number of cells assayed by small conditional RNA sequencing (scRNA-seq) (right-hand y axis) is 18,025 for PsychENCODE and 14,012 for external (ext.) datasets. Disorder: Across all assays, there are 113 GTEx and 926 PsychENCODE control individuals and 558 SCZ, 217 BPD, 44 ASD, and 8 affective disorder (AFF) individuals from PsychENCODE, resulting in 1866 individuals. Tissue: Three brain regions are consideredβthe PFC (n = 26,769 samples), TC (n = 2153 samples), and CB (n = 348 samples). See table S11 and (19) for more details. HBCC, Human Brain Collection Core.
Deconvolution analysis of bulk and single-cell transcriptomics reveals cell fraction changes across the population.(A) Genes had significantly higher expression variability across single cells sampled from different types of brain cells than across equivalent tissue samples taken from a population of individuals. (Left) Dopamine gene DRD3. (B) The heatmap shows the Pearson correlation coefficients of gene expression between the NMF-TCs and single-cell signatures (for n = 457 biomarker genes) (15). Micro, microglia; OPC, oligodendrocyte progenitor cells; endo, endothelial cells; astro, astrocytes; oligo, oligodendrocytes; peri, pericytes; quies, quiescent cells; repl, replicating cells. (C) (Top) The bulk tissue gene expression matrix (B, genes by individuals) can be decomposed by NMF (see fig. S52). (Bottom) The bulk tissue gene expression matrix B can be also deconvolved by the single-cell gene expression matrix (C, genes by cell types) to estimate the cell fractions across individuals (the matrix W); i.e., B β CW. The three major cell types analyzed are depicted with neuronal cells in red, nonneuronal cells in blue, and developmental cells in green, as highlighted by column groups in matrix C (also row groups in W). frac, fraction. (D) The estimated cell fractions can account for >88% of the bulk tissue expression variation across the population. (E) Cell fraction changes across genders and brain disorders. **Differences from control samples are significant (via a Kolmogorov-Smirnov test) after accounting for age distributions. See table S12 for more detail. CTL, control. (F) Changing cell fractions (for Ex3), gene expression (for SST), and promoter methylation level (median level, for SST) across age groups are shown. With increasing age, the fractions of Ex3 and Ex4 significantly increase, and some nonneuronal types decrease (Ex3 trend analysis, P < 6.3 Γ 10β10).
Comparative analysis of transcriptomics and epigenomics between the brain and other tissues.(A) Epigenetics signals of the reference brain (purple) were used to identify active enhancers with the ENCODE enhancer pipeline. The H3K27ac signal tracks at the corresponding enhancer region from each individual in the cohort are shown in green, with the gradient showing the normalized signal value for each H3K27ac peak. (B) The overlap of the H3K27ac peaks from an individual in the population with the reference brain enhancers is shown as a Venn diagram. The histogram shows the varying percentages of overlapped H3K27ac peaks across individuals. (C) The tissue clusters of RCA coefficients [principal component 1 (PC1) versus PC2] for chromatin data of any potential regulatory elements are shown. Clusters of PsychENCODE samples (dark green ellipses), external brain samples (light green ellipses), and other non-brain tissues (magenta ellipses) are plotted. (D) The extent of transcription for coding (arrowhead) and noncoding (diamond) regions. The average transcription extent (x axis) is shown compared with the cumulative extent of transcription across a cohort of individuals (y axis) for select tissue types, including the CB, cortex, lung, skin, and testis, by using polyadenylate RNA-seq data. (E and F) Similar to (C), but now for transcription rather than epigenetics. (E) RCA coefficients for gene expression data from PsychENCODE, GTEx brains, and other tissue samples are shown in dark green, light green, and magenta, respectively. (F) The center (cross) and ranges of different tissue clusters (dashed ellipses) are shown on an RCA scatterplot of (E).
QTLs in the adult brain.(A) The frequency of genes with at least one eQTL (eGenes) is shown across different studies. The number of eGenes increased as the sample size increased. PsychENCODE eGenes are close to saturation for protein-coding genes. The estimated replication Ο1 values for GTEx and CMC eQTLs versus PsychENCODE are shown (36). (B) The similarity between PsychENCODE brain dorsolateral PFC (DLPFC) eQTLs and GTEx eQTLs of other tissues are evaluated by Ο1 values and SNP-eGene overlap rates. Both Ο1 values and SNP-eGene overlap rates are higher for brain DLPFC than for the other tissues. (C) An example of an H3K27ac signal across individuals in a representative genomic region, showing largely congruent identification of regions of open chromatin. The region within the dashed rectangle represents a cQTL; the signal magnitudes for individuals with a G/G or G/Tgenotype were lower than those for individuals with a T/Tgenotype. chr1, chromosome 1; rs, reference SNP. (D) An example of the mechanism by which an fQTL may affect phenotype. This fQTL overlaps with an eQTL for FZD9, a gene located in the 7q11.23 region that is deleted in Williams syndrome. The fQTL may affect the fraction of Ex3 by regulating FZD9 expression. Only Ex3 constitutes a statistically significant fQTL with this SNP (as designated by the asterisk). ref, reference; alt, alternate. (E) The enrichment of QTLs in different genomic annotations is shown. Pink circles indicate highly significant enrichment (P < 1 Γ 10β25 and OR > 2.5). OR, odds ratio; TFBS, TF binding site; UTR, untranslated region. (F) Numbers of identified QTL-associated elements (eGenes, enhancers, and cell types) and QTL SNPs are shown in the bottom left table. Asterisks indicate that, for cQTLs, we show only the number of top SNPs for each enhancer. Overlaps of all QTL SNPs are shown in heatmaps (square rows). The linked circles show the overlap of QTL types. The intersections of other QTLs with eQTLs are evaluated by using Ο1 values in the orange bar plot. The greatest intersection is between cQTLs and eQTLs. An example is displayed on the right: the intersection of eQTL SNPs (for the MTOR gene) and cQTL SNPs (for the H3K27ac signal on an enhancer ~50 kb upstream of the gene). Hi-C interactions (bottom) indicate that the enhancer interacts with the promoter of MTOR, suggesting that the cQTL SNPs potentially mediate the expression modulation manifest by the eQTL SNPs.
Building a gene regulatory network (GRN) from Hi-C and data integration.(A) A full Hi-C dataset from adult brain reveals the higher-order structure of the genome, ranging from contact maps (top) to TADs and promoter-based interactions. (Bottom) A schematic of how we leveraged gene regulatory linkages involving TADs, TFs, enhancers (Enh), and target genes (TG) to build a full GRN (fig. S42) and a high-confidence subnetwork consisting of 43,181 TFβtoβtarget gene promoter and 42,681 enhancerβtoβtarget gene promoter linkages (21). (B) We compared the number of genes (left y axis, dotted line) and the normalized gene expression levels (right y axis, boxes) with the number of enhancers that interact with the gene promoters. Boxes show means and SDs. (C) QTLs that were supported by Hi-C evidence (174,719) showed more significant P values than those that were not (promoter or exonic QTLs, 130,155; nonsupported QTLs, 1,065,311). (D) Cross-tissue comparison of chromatin architecture indicates that adult brains in PsychENCODE and Roadmap (e.g., DLPFC and hippocampus tissues) share chromatin architecture more than nonrelated tissue types. Fetal brain shows chromatin architecture distinct from that in adult brain, indicating extensive rewiring of chromatin structures during brain development. ES, embryonic stem cell. (E) Genes assigned to fetal active elements are prenatally enriched, whereas genes assigned to adult active elements are postnatally enriched. (F) Genes assigned to fetal active elements are relatively more enriched in neurons in the adult brain and fetal (developmental) brain, whereas genes assigned to adult active elements are relatively more enriched in glia (adult astrocytes, endothelial cells, and oligodendrocytes). Ex. N, excitatory neuron; Int. N, inhibitory neuron; IPC, intermediate progenitor cells; NEP, neuroepithelial cells; trans, transient cell type. (G) The circos plots show the linkages from the full regulatory network targeting the cell-typeβspecific biomarker genes. The biomarker genes for excitatory or inhibitory neuronal type are the biomarker genes shared by at least five excitatory or inhibitory subtypes (20). Selected TFs for particular cell types are highlighted.
GRNs assign genes to GWAS loci for psychiatric disorders.(A) A schematic depicting how SCZ GWAS loci were assigned to putative genes. The number of SCZ GWAS loci and their putative target genes (SCZ genes) annotated by each assignment strategy is indicated (top). The overlap between SCZ genes defined by QTL associations (QTL), chromatin interactions (Hi-C), and activity relationships (activity) is depicted in a Venn diagram (bottom). SCZ genes with more than two evidence sources were defined as high-confidence (high conf.) genes. (B) A GRN of TFs, enhancers, and 321 SCZ high-confidence genes, on the basis of TF activity linkages. A subnetwork for CACNA1C is highlighted on the right. (C) An example of the evidence indicating that GWAS SNPs that overlap with CHRNA2 eQTLs also have chromatin interactions and activity correlations with the same gene. Orange dots refer to SNPs that overlap between eQTLs and GWAS plots. (D) TFs that are significantly enriched in enhancers (left) and promoters (right) of SCZ genes. FDR, false discovery rate. (E) SCZ genes show higher expression levels in neurons (particularly excitatory neurons) than in other cell types. (F) Brain disorder GWAS show stronger heritability enrichment in brain regulatory variants (eQTLs) and elements (enhancers) than nonβbrain disorder GWAS. ADHD, attention-deficit/hyperactivity disorder; T2D, type 2 diabetes; CAD, coronary artery disease; IBD, inflammatory bowel disease.
DSPN deep-learning model links genetic variation to psychiatric disorders and other traits.(A) The schematic outlines the structure of the following models: logistic regression (LR), conditional Restricted Boltzmann Machine (cRBM), conditional Deep Boltzmann Machine (cDBM), and DSPN. Nodes are partitioned into four layers (L0 to L3) and colored according to their status as visible, visible or imputed (depending on whether nodes were observed or not at test time), or hidden. (B) DSPN structure is shown in further detail, with the biological interpretation of layers L0, L1, and L3 highlighted. The GRN structure learned previously (Fig. 5A) is embedded in layers L0 and L1, with different types of regulatory linkages and functional elements shown. Co-expr. mods., coexpression modules. (C) The performance of different models is summarized, with comparisons of performance across models of different complexity and of transcriptome versus genome predictors, corresponding to being with or without imputation for the DSPN (colors highlight relevant models for each comparison). Performance accuracy is shown first, with variance explained on the liability scale in brackets. All models were tested on identical data splits, which were balanced for predicted trait and covariates (including gender, ethnicity, age, and assay). RNA-seq, cell fraction, and H3K27ac data were binarized by thresholding at median values (per gene, cell type, and enhancer, respectively), as was age (median, 51 years) when predicted. LR-gene and LR-trans are logistic models using genetic and transcriptomic predictors, respectively; DSPN-impute and DSPN-full are models with imputed intermediate phenotypes (genotype predictors only) and fully observed intermediate phenotypes (transcriptome predictors), respectively. Differential performance is shown in terms of improvement above chance, with liability variance score increases in brackets. GEN, gender; ETH, ethnicity; AOD, age of individual at death.
Interpretation of the DSPN model highlights functional associations and shared disease mechanisms.(A) The schematic illustrates the module (MOD) and higher-order grouping (HOG) prioritization schemes. Red and blue lines represent positive and negative weights, respectively, and full and dotted lines represent first and second ranks by absolute value [creating a directed acyclic graph (DAG) with branching factor 4, rooted at L3]. Highlighted nodes (gray) in L1d show positive prioritized MODs, for which a positive path (containing an even number of negative links) exists connecting the module to the SCZ node. a1/a2 and b1/b2 highlight βbest positive pathsβ from a and b, respectively, to SCZ in terms of absolute rank score. Associated HOGs are defined for a1/a2, containing all nodes in L1d having a path in the DAG to a1 (respectively a2), which is identically signed to the best path from a to a1 (respectively a2) (21). Positive prioritized HOGs are associated with nodes on best paths from all positive prioritized MODs; negative prioritized MODs and HOGs are calculated similarly. (B) Summary of the functional annotation scheme. (i) A total of 5024 weighted gene coexpression network analysis (WGCNA) MODs (modules and submodules) are derived from multiple data splits. (ii) MODs are prioritized as in (A) for each disorder, and (iii) associated HOGs are calculated. (iv) Gene set enrichment analysis associates functional terms with all MODs and HOGs. (v) Terms are ranked per disorder by counting the number of prioritized MODs or HOGs they associate with, and broad functional categories are defined; (vi) prioritized MODs and HOGs are linked to potentially interesting genes, enhancers, and SNPs by using GRN connectivity. proc., processing. (C) Upper segment of cross-disorder ranking of Gene Ontology (GO) and Kyoto Encyclopedia of Genes and Genomes (KEGG) functional terms, where cross-disorder ranks are assigned by using the average per-disorder rank ordering. Ranking score levels and functional categories are as in the key in (B). Highlighted ranks and terms correspond to examples shown in (D). See fig. S49 for extended ranking. sig., signaling; staph., staphylococcus; inf., infection; dop., dopamine; cGMP-PKG, guanosine 3β²,5β²-monophosphateβcGMP-dependent protein kinase; int., interaction. (D) Examples of associations between prioritized MODs or HOGs and genes, enhancers, and SNPs for each disorder and age model. Associated functional terms and categories are as in (B). A table providing coordinates of eQTLs and cQTLs for all examples shown is provided in table S13. Chem. syn. trans., chemical synaptic transmission.
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In this knowledge base
External
| Title | Authors | Journal | Year | Link |
|---|---|---|---|---|
| 3D genetic architecture of schizophrenia risk across three neuronal subtypes. | Powell SK et al. | β | 2026 | β |
| Accurate detection of somatic single-nucleotide variants from bulk RNA-seq data using RNA-MosaicHunter. | Huang AY et al. | β | 2026 | β |
| A Comprehensive Analysis of Inflammation Regulatory Biomarkers among three Neuropsychiatric Disorders using Transcriptomic Approach. | Chakraborty I et al. | β | 2026 | β |
| Artificial Intelligence in Mental Health: Promises and Perils. | Earnhardt AV et al. | β | 2026 | β |
| A study of gene expression in the living human brain. | Liharska LE et al. | β | 2026 | β |
| A transcriptional program associated with neurotransmission in the living human brain. | Charney AW et al. | β | 2026 | β |
| A transcriptomic dimension of neuronal and immune gene programs within the subgenual anterior cingulate cortex in schizophrenia. | Smith RL et al. | β | 2026 | β |
| Bridging the variant-to-function gap in type 2 diabetes: advances and challenges. | Maynard AG et al. | β | 2026 | β |
| Computational modelling of cell identity. | Shim WJ et al. | β | 2026 | β |
| Convergent genetic pathways linking neuropsychiatric and ocular disorders in children. | Pan M et al. | β | 2026 | β |
| Decoding causal m6A: a bioinformatics roadmap for psychiatric disorders. | Liu S et al. | β | 2026 | β |
| Epromoters bind key stress-related transcription factors to regulate clusters of stress response genes. | Malfait J et al. | β | 2026 | β |
| Functional implications of polygenic risk for schizophrenia in human neurons. | Michael Deans PJ et al. | β | 2026 | β |
| Genetically prioritized druggable targets for amyloid-Ξ² pathology highlight <i>ACE</i> as a therapeutic candidate in Alzheimer's disease. | Kim JP et al. | β | 2026 | β |
| Genetic control of non-coding RNAs in the human brain and their implications for complex traits. | Chen L et al. | β | 2026 | β |
| Genetic studies of psychosocial disability establish correlations and causal relationships with neuropsychiatric disorders. | Doherty E et al. | β | 2026 | β |
| Genome-wide association study reveals genetic architecture and evolution of human retinal pigmentation. | Yuan J et al. | β | 2026 | β |
| Genome-wide meta-analyses of cross substance use disorders in diverse populations. | Lai D et al. | β | 2026 | β |
| Homomorphic encryption enables privacy preserving polygenic risk scores. | Knight E et al. | β | 2026 | β |
| Identification of potential biomarkers and therapeutic targets for cerebral venous thrombosis. | Song J et al. | β | 2026 | β |
| In silico genome transplants and the cis-regulatory basis of biodiversity. | Starr AL et al. | β | 2026 | β |
| Integrating multiomic layers to decode psychiatric disease mechanisms. | Sheu L et al. | β | 2026 | β |
| Mapping the genetic landscape across 14 psychiatric disorders. | Grotzinger AD et al. | β | 2026 | β |
| Molecular regulatory mechanisms of schizophrenia-associated functional non-coding variants. | Dai SS et al. | β | 2026 | β |
| Neurodevelopmentally rooted epicenters in schizophrenia: sensorimotor-association spatial axis of cortical thickness alterations. | Fan YS et al. | β | 2026 | β |
| Neuroimaging-genetic integration reveals shared structural and functional brain alterations in major depressive disorder. | Zhai Y et al. | β | 2026 | β |
| Recent developments in imaging transcriptomics for psychiatric disorders. | Liu J et al. | β | 2026 | β |
| Rethinking schizophrenia: insights from genomics and implications for research. | Owen MJ et al. | β | 2026 | β |
| S100A8 dysregulation as a neuroimmune nexus: Bridging childhood inflammatory infections to adult schizophrenia-like behaviors via the ELNI model. | Tengfei C et al. | β | 2026 | β |
| Sex-specific interaction effects of Syntaxin 1A coexpression network and childhood trauma on adult depressive symptoms. | Arcego DM et al. | β | 2026 | β |
| Systematic post-translational modification genome wide identifies therapeutic targets for Alzheimer's disease: evidence from multi-cohort analysis. | Wang X et al. | β | 2026 | β |
| The China Brain Multi-omics Atlas Project (CBMAP). | Zhou D et al. | β | 2026 | β |
| The genetic relationships between post-traumatic stress disorder and its corresponding neural circuit structures. | Gong Q et al. | β | 2026 | β |
| Trans-ancestry genome-wide analyses of bipolar disorder in East Asian and European populations improve genetic discovery. | Zhang CY et al. | β | 2026 | β |
| Transdiagnostic and Disorder-Level Genome-Wide Association Studies Enhance Precision of Substance Use and Psychiatric Genetic Risk Profiles in African and European Ancestries. | Khan Y et al. | β | 2026 | β |
| A contextual genomic perspective on physical activity and its relationship to health, well being and illness. | Galimberti M et al. | β | 2025 | β |
| A genetically informed brain atlas for enhancing brain imaging genomics. | Bao J et al. | β | 2025 | β |
| A genome-wide analysis of the shared genetic risk architecture of complex neurological and psychiatric disorders. | Smeland OB et al. | β | 2025 | β |
| A Genome-Wide Association Study of First-Episode Psychosis: A Genetic Exploration in an Italian Cohort. | Treccani M et al. | β | 2025 | β |
| A map of enhancer regions in primary human neural progenitor cells using capture STARR-seq. | Gaynor-Gillett SC et al. | β | 2025 | β |
| Analysis of biased allelic enhancer activity of schizophrenia-linked common variants. | Gao C et al. | β | 2025 | β |
| Assessment and ascertainment in psychiatric molecular genetics: challenges and opportunities for cross-disorder research. | Cai N et al. | β | 2025 | β |
| Association of antihypertensive drug target genes with alzheimer's disease: a mendelian randomization study. | Zheng H et al. | β | 2025 | β |
| Astrocytic RNA editing regulates the host immune response to alpha-synuclein. | D'Sa K et al. | β | 2025 | β |
| A survey on deep learning for polygenic risk scores. | Schuran M et al. | β | 2025 | β |
| Brain Organoids: Tools for Understanding the Uniqueness and Individual Variability of the Human Brain. | Faravelli I et al. | β | 2025 | β |
| Cell type-specific inference from bulk RNA-sequencing data by integrating single-cell reference profiles via EPIC-unmix. | Tang C et al. | β | 2025 | β |
| Characterizing Genetic-Predisposed Proteins Involving Insomnia by Integrating Genome-Wide Association Study Summary Statistics. | Long J et al. | β | 2025 | β |
| Comprehensive mapping of genetic variation at Epromoters reveals pleiotropic association with multiple disease traits. | Wan J et al. | β | 2025 | β |
| Copy number variations in RNF216 and postsynaptic membrane-associated genes are associated with bipolar disorder: a case-control study in the Japanese population. | Nakatochi M et al. | β | 2025 | β |
| Cross-ancestry genome-wide association study and systems-level integrative analyses implicate new risk genes and therapeutic targets for depression. | Li Y et al. | β | 2025 | β |
| Decoding the genomic symphony: unravelling brain disorders through data integration and machine learning. | Bracher-Smith M et al. | β | 2025 | β |
| DeepAnnotation: A novel interpretable deep learning-based genomic selection model that integrates comprehensive functional annotations. | Ma W et al. | β | 2025 | β |
| Detecting genetic interactions with visible neural networks. | van Hilten A et al. | β | 2025 | β |
| Digital phenotyping from wearables using AI characterizes psychiatric disorders and identifies genetic associations. | Liu JJ et al. | β | 2025 | β |
| Epigenetics Modulators as Therapeutics for Neurological Disorders. | Gaba M et al. | β | 2025 | β |
| Exon-variant interplay and multi-modal evidence identify endocrine dysregulation in severe psychiatric disorders impacting excitatory neurons. | Worf K et al. | β | 2025 | β |
| Exploring Synaptic Pathways in Traumatic Brain Injury: A Cross-Phenotype Genomics Approach. | Prapiadou S et al. | β | 2025 | β |
| From trigeminal ganglion to cortex: ATG7 emerges as a key integrator of migraine pathways via multi-omics profiling. | Zhang C et al. | β | 2025 | β |
| From variants to mechanisms: Neurogenomics in the post-GWAS era. | Margolis MP et al. | β | 2025 | β |
| Functional characterization of OXTR-associated enhancers. | Laboy CintrΓ³n D et al. | β | 2025 | β |
| GBA1 Gene-Associated Transcriptomic Signatures Reveal Risk Genes in Parkinson's Disease. | Liu Y et al. | β | 2025 | β |
| Genetically supported targets and drug repurposing for brain aging: A systematic study in the UK Biobank. | Yi F 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 Markers of Postmortem Brain Iron. | Cornelis MC et al. | β | 2025 | β |
| Genetic modulation of protein expression in rat brain. | Li L et al. | β | 2025 | β |
| Genome data based deep learning identified new genes predicting pharmacological treatment response of attention deficit hyperactivity disorder. | Zhao Y et al. | β | 2025 | β |
| Genome-wide analyses identify 30 loci associated with obsessive-compulsive disorder. | Strom NI et al. | β | 2025 | β |
| Genome-wide analysis of the biophysical properties of chromatin and nuclear proteins in living cells with Hi-D. | Valades-Cruz CA et al. | β | 2025 | β |
| Human mood disorder risk gene Synaptotagmin-14 contributes to mania-like behaviors in mice. | Zhang Y et al. | β | 2025 | β |
| Identification of novel therapeutic targets for cognitive performance and associations with brain health. | Zhang LY et al. | β | 2025 | β |
| Identification of potential therapeutic targets for problematic alcohol use using multi-omics data. | Lee DJ et al. | β | 2025 | β |
| Integrating Genetic and Single-Cell Genomic Data to Reveal Brain Cell-Specific Regulation of Attention-Deficit/Hyperactivity Disorder Risk in the Prefrontal Cortex. | Gui J et al. | β | 2025 | β |
| Integrating rare variant genetics and brain transcriptome data implicates novel schizophrenia putative risk genes. | Han S et al. | β | 2025 | β |
| Integrative analysis of the 3D genome and epigenome in mouse embryonic tissues. | Yu M et al. | β | 2025 | β |
| Integrative bioinformatics and machine learning approaches reveal oxidative stress and glucose metabolism related genes as therapeutic targets and drug candidates in Alzheimer's disease. | Noor F et al. | β | 2025 | β |
| Integrative multi-omics analysis reveal novel therapeutic targets for glioblastoma. | Li J et al. | β | 2025 | β |
| Integrative multi-omics data from early development to identify the genes and cell types underlying attention-deficit/hyperactivity disorder. | Jiao S et al. | β | 2025 | β |
| Interpretable AI for inference of causal molecular relationships from omics data. | Dibaeinia P et al. | β | 2025 | β |
| Involvement of virus infections and antiviral agents in schizophrenia. | Borrego-Ruiz A et al. | β | 2025 | β |
| iSoMAs: Finding isoform expression and somatic mutation associations in human cancers. | Tan H et al. | β | 2025 | β |
| Just a SNP away: The future of <i>in vivo</i> massively parallel reporter assay. | Degner KN et al. | β | 2025 | β |
| Kynurenic Acid and Promotion of Activity-Dependent Synapse Elimination in Schizophrenia. | Orhan F 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 |
| 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 |
| Leveraging multiomic approaches to elucidate mechanisms of heterogeneity in Alzheimer's disease: Neuropsychiatric symptoms, co-pathologies, and sex differences. | Shwab EK et al. | β | 2025 | β |
| Mapping the microRNA landscape in the older adult brain and its genetic contribution to neuropsychiatric conditions. | Vattathil SM et al. | β | 2025 | β |
| Massively parallel reporter assay investigates shared genetic variants of eight psychiatric disorders. | Lee S et al. | β | 2025 | β |
| Measurement characteristics and genome-wide correlates of lifetime brain atrophy estimated from a single MRI. | FΓΌrtjes AE et al. | β | 2025 | β |
| Meta-Analysis of Transcriptomic Studies of Blood and Six Brain Regions Identifies a Consensus of 15 Cross-Tissue Mechanisms in Alzheimer's Disease and Suggests an Origin of Cross-Study Heterogeneity. | Hou J et al. | β | 2025 | β |
| Molecular Signatures of Schizophrenia and Insights into Potential Biological Convergence. | Saada M et al. | β | 2025 | β |
| Multi-omics analysis of druggable genes to facilitate Alzheimer's disease therapy: A multi-cohort machine learning study. | Hu J et al. | β | 2025 | β |
| Navigating the 3D genome at single-cell resolution: techniques, computation, and mechanistic landscapes. | Hong F et al. | β | 2025 | β |
| NetREm: Network Regression Embeddings reveal cell-type transcription factor coordination for gene regulation. | Khullar S et al. | β | 2025 | β |
| Polygenic enrichment analysis in multi-omics levels identifies cell/tissue specific associations with schizophrenia based on single-cell RNA sequencing data. | Cheng B et al. | β | 2025 | β |
| Possible linking and treatment between Parkinson's disease and inflammatory bowel disease: a study of Mendelian randomization based on gut-brain axis. | Wang B et al. | β | 2025 | β |
| Psychiatric Genomics 2025: State of the Art and the Path Forward. | Liu C et al. | β | 2025 | β |
| Redefining cognitive neurodynamics through transdisciplinary innovation. | Villa AEP | β | 2025 | β |
| Regulation of RNA splicing in endometrial tissue and its association with endometriosis. | Yang F et al. | β | 2025 | β |
| Relationship Between Problematic Alcohol Use and Various Psychiatric Disorders: A Genetically Informed Study. | Ahn Y et al. | β | 2025 | β |
| Schizophrenia-associated changes in neuronal subpopulations in the human midbrain. | Alsema AM et al. | β | 2025 | β |
| Schizophrenia is associated with altered DNA methylation variance. | Kiltschewskij DJ et al. | β | 2025 | β |
| SCIG: Machine learning uncovers cell identity genes in single cells by genetic sequence codes. | Arulsamy K et al. | β | 2025 | β |
| Seeding-competent early tau multimers are associated with cell type-specific transcriptional signatures. | Feleke R et al. | β | 2025 | β |
| Sex-stratified genome-wide association meta-analysis of major depressive disorder. | Thomas JT et al. | β | 2025 | β |
| Single-cell eQTL mapping reveals cell-type-specific genes associated with the risk of gastric cancer. | Bian L et al. | β | 2025 | β |
| Single-cell multiregion epigenomic rewiring in Alzheimer's disease progression and cognitive resilience. | Liu Z et al. | β | 2025 | β |
| Single nucleus RNA sequencing of the cerebral cortex from genetically diverse inbred mouse strains reveals differences in pericyte and endothelial cell composition. | Park J et al. | β | 2025 | β |
| Spatiotemporal 3D chromatin organization across multiple brain regions during human fetal development. | Sun Y et al. | β | 2025 | β |
| Structural MRI of brain similarity networks. | Sebenius I 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 |
| Systematic Exploration of Potential Druggable Genes for Ischemic Stroke Employing Genome-Wide Mendelian Randomization Analysis. | Zhang P et al. | β | 2025 | β |
| The brief resilience scale: a genome-wide association study in the UK Biobank. | Cornelis MC et al. | β | 2025 | β |
| The Genetic Architecture of the Human Corpus Callosum and its Subregions. | Bhatt RR et al. | β | 2025 | β |
| The INO80E at 16p11.2 locus increases risk of schizophrenia in humans and induces schizophrenia-like phenotypes in mice. | Hu B et al. | β | 2025 | β |
| The shared genetic architecture and evolution of human language and musical rhythm. | AlagΓΆz G et al. | β | 2025 | β |
| Transcriptomic Analysis of the Human Habenula in Schizophrenia. | Yalcinbas EA et al. | β | 2025 | β |
| Unveiling the clinical and genetic impact of neuropsychiatric involvement in systemic lupus erythematosus. | Cha S et al. | β | 2025 | β |
| Accounting for isoform expression increases power to identify genetic regulation of gene expression. | LaPierre N et al. | β | 2024 | β |
| Accurate identification of genes associated with brain disorders by integrating heterogeneous genomic data into a Bayesian framework. | He D et al. | β | 2024 | β |
| A latent clinical-anatomical dimension relating metabolic syndrome to brain structure and cognition. | Petersen M et al. | β | 2024 | β |
| Alteration of DNA Methylation and Epigenetic Scores Associated With Features of Schizophrenia and Common Variant Genetic Risk. | Kiltschewskij DJ et al. | β | 2024 | β |
| Alzheimer's disease-linked risk alleles elevate microglial cGAS-associated senescence and neurodegeneration in a tauopathy model. | Carling GK et al. | β | 2024 | β |
| Analyses of GWAS signal using GRIN identify additional genes contributing to suicidal behavior. | Sullivan KA et al. | β | 2024 | β |
| APOE2 protects against AΞ² pathology by improving neuronal mitochondrial function through ERRΞ± signaling. | Ning Z et al. | β | 2024 | β |
| [A role of transcription factors in pathogenic processes associated with schizophrenia]. | Karpov DS et al. | β | 2024 | β |
| Artificial Intelligence: Fundamentals and Breakthrough Applications in Epilepsy. | Kerr W et al. | β | 2024 | β |
| A systems biology-based identification and inΒ vivo functional screening of Alzheimer's disease risk genes reveal modulators of memory function. | Hudgins AD et al. | β | 2024 | β |
| Characterization of Gene Regulatory Elements in Human Fetal Cortical Development: Enhancing Our Understanding of Neurodevelopmental Disorders and Evolution. | Guo Q et al. | β | 2024 | β |
| Cognitive resilience to Alzheimer's disease characterized by cell-type abundance. | O'Neill N et al. | β | 2024 | β |
| Convergence of the dysregulated regulome in schizophrenia with polygenic risk and evolutionarily constrained enhancers. | Dong P et al. | β | 2024 | β |
| Critical reasoning on the co-expression module QTL in the dorsolateral prefrontal cortex. | Cote AC et al. | β | 2024 | β |
| Cross-ancestry atlas of gene, isoform, and splicing regulation in the developing human brain. | Wen C et al. | β | 2024 | β |
| Deciphering the Role of Rapidly Evolving Conserved Elements in Primate Brain Development and Exploring Their Potential Involvement in Alzheimer's Disease. | Hu B et al. | β | 2024 | β |
| Decreased CNNM2 expression in prefrontal cortex affects sensorimotor gating function, cognition, dendritic spine morphogenesis and risk of schizophrenia. | Zhou DY et al. | β | 2024 | β |
| Disease clusters subsequent to anxiety and stress-related disorders and their genetic determinants. | Han X et al. | β | 2024 | β |
| Distinct biological signature and modifiable risk factors underlie the comorbidity between major depressive disorder and cardiovascular disease. | Bergstedt J et al. | β | 2024 | β |
| Druggable targets for Parkinson's disease: transcriptomics based Mendelian randomization study. | Lyu Q et al. | β | 2024 | β |
| Effect of age and sex differences on the abundances of neuronal, glial, and endothelial cells in non-diseased brain tissue. | Autio-Kimura A et al. | β | 2024 | β |
| Evaluating performance and applications of sample-wise cell deconvolution methods on human brain transcriptomic data. | Dai R et al. | β | 2024 | β |
| Functional classes of SNPs related to psychiatric disorders and behavioral traits contrast with those related to neurological disorders. | Reimers MA et al. | β | 2024 | β |
| Gene expression and brain imaging association study reveals gene signatures in major depressive disorder. | Liu W et al. | β | 2024 | β |
| Genetic architectures of cerebral ventricles and their overlap with neuropsychiatric traits. | Ge YJ et al. | β | 2024 | β |
| Genetic effects of sequence-conserved enhancer-like elements on human complex traits. | Zhu X et al. | β | 2024 | β |
| Genetic insights into drug targets for sporadic Creutzfeldt-Jakob disease: Integrative multi-omics analysis. | Jiang D et al. | β | 2024 | β |
| Genetic regulation of cell type-specific chromatin accessibility shapes brain disease etiology. | Zeng B et al. | β | 2024 | β |
| Genetic regulation of human brain proteome reveals proteins implicated in psychiatric disorders. | Luo J et al. | β | 2024 | β |
| Genetics of cell-type-specific post-transcriptional gene regulation during human neurogenesis. | AygΓΌn N 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 determinants of mortality and motor progression in Parkinson's disease. | Tan MMX et al. | β | 2024 | β |
| Genome-Wide Mendelian Randomization Identifies Ferroptosis-Related Drug Targets for Alzheimer's Disease. | Wang Y et al. | β | 2024 | β |
| Genomic insights into the comorbidity between type 2 diabetes and schizophrenia. | Arruda AL 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 |
| Hemochromatosis neural archetype reveals iron disruption in motor circuits. | Loughnan R et al. | β | 2024 | β |
| Identification of Brain Cell Type-Specific Therapeutic Targets for Glioma From Genetics. | Gui J et al. | β | 2024 | β |
| Identification of novel proteins in inflammatory bowel disease based on the gut-brain axis: a multi-omics integrated analysis. | Xu Y et al. | β | 2024 | β |
| Identifying novel proteins for suicide attempt by integrating proteomes from brain and blood with genome-wide association data. | Zhao H et al. | β | 2024 | β |
| Identifying therapeutic target genes for migraine by systematic druggable genome-wide Mendelian randomization. | Zhang C et al. | β | 2024 | β |
| Interactive effect of air pollution and genetic risk of depression on processing speed by resting-state functional connectivity of occipitoparietal network. | Zhang Y et al. | β | 2024 | β |
| Lack of genetic evidence for NLRP3 inflammasome involvement in Parkinson's disease pathogenesis. | Senkevich K et al. | β | 2024 | β |
| Latin American Trans-ancestry INitiative for OCD genomics (LATINO): Study protocol. | Crowley JJ et al. | β | 2024 | β |
| Loss of Ezh2 in the medial ganglionic eminence alters interneuron fate, cell morphology and gene expression profiles. | Rhodes CT et al. | β | 2024 | β |
| Lower complement C1q levels in first-episode psychosis and in schizophrenia. | Koskuvi M et al. | β | 2024 | β |
| Machine Learning and Deep Learning in Synthetic Biology: Key Architectures, Applications, and Challenges. | Goshisht MK | β | 2024 | β |
| Massively parallel characterization of regulatory elements in the developing human cortex. | Deng C et al. | β | 2024 | β |
| Microglial function interacts with the environment to affect sex-specific depression risk. | Fitzgerald E et al. | β | 2024 | β |
| Microglia regulate cortical remyelination via TNFR1-dependent phenotypic polarization. | Boutou A et al. | β | 2024 | β |
| Mitochondrial dysfunction in psychiatric disorders. | Ni P et al. | β | 2024 | β |
| Molecular cascades and cell type-specific signatures in ASD revealed by single-cell genomics. | Wamsley B et al. | β | 2024 | β |
| Network-based artificial intelligence approaches for advancing personalized psychiatry. | Rajan S et al. | β | 2024 | β |
| Neuronal enhancers fine-tune adaptive circuit plasticity. | Griffith EC et al. | β | 2024 | β |
| omicSynth: An open multi-omic community resource for identifying druggable targets across neurodegenerative diseases. | Alvarado CX et al. | β | 2024 | β |
| Overview: Research on the Genetic Architecture of the Developing Cerebral Cortex in Norms and Diseases. | Momoi MY | β | 2024 | β |
| Phenotype prediction using biologically interpretable neural networks on multi-cohort multi-omics data. | van Hilten A et al. | β | 2024 | β |
| PICALO: principal interaction component analysis for the identification of discrete technical, cell-type, and environmental factors that mediate eQTLs. | Vochteloo M et al. | β | 2024 | β |
| Polygenic profiles define aspects of clinical heterogeneity in attention deficit hyperactivity disorder. | LaBianca S et al. | β | 2024 | β |
| Private information leakage from single-cell count matrices. | Walker CR et al. | β | 2024 | β |
| Regional homogeneity patterns reveal the genetic and neurobiological basis of State-Trait Anxiety. | Li Y et al. | β | 2024 | β |
| Regional patterns of human cortex development correlate with underlying neurobiology. | Lotter LD et al. | β | 2024 | β |
| SATB2 organizes the 3D genome architecture of cognition in cortical neurons. | Wahl N et al. | β | 2024 | β |
| Sex affects transcriptional associations with schizophrenia across the dorsolateral prefrontal cortex, hippocampus, and caudate nucleus. | Benjamin KJM et al. | β | 2024 | β |
| Sex-Stratified Genome-Wide Association Study in the Spanish Population Identifies a Novel Locus for Lacunar Stroke. | CΓ‘rcel-MΓ‘rquez J et al. | β | 2024 | β |
| Should Artificial Intelligence Play a Durable Role in Biomedical Research and Practice? | Bongrand P | β | 2024 | β |
| Single-cell multi-cohort dissection of the schizophrenia transcriptome. | Ruzicka WB et al. | β | 2024 | β |
| Single chromatin fiber profiling and nucleosome position mapping in the human brain. | Peter CJ et al. | β | 2024 | β |
| Sleep regulation and host genetics. | Odriozola A et al. | β | 2024 | β |
| Smoking-informed methylation and expression QTLs in human brain and colocalization with smoking-associated genetic loci. | Carnes MU et al. | β | 2024 | β |
| Splicing-specific transcriptome-wide association uncovers genetic mechanisms for schizophrenia. | Hervoso JL et al. | β | 2024 | β |
| TBK1, a prioritized drug repurposing target for amyotrophic lateral sclerosis: evidence from druggable genome Mendelian randomization and pharmacological verification in vitro. | Duan QQ et al. | β | 2024 | β |
| The genetic architecture of the human hypothalamus and its involvement in neuropsychiatric behaviours and disorders. | Chen SD et al. | β | 2024 | β |
| Topologically associating domains define the impact of de novo promoter variants on autism spectrum disorder risk. | Nakamura T et al. | β | 2024 | β |
| Transcriptional determinism and stochasticity contribute to the complexity of autism-associated SHANK family genes. | Lu X et al. | β | 2024 | β |
| Transcriptomic dysregulation and autistic-like behaviors in Kmt2c haploinsufficient mice rescued by an LSD1 inhibitor. | Nakamura T et al. | β | 2024 | β |
| Transcriptomic sex differences in postmortem brain samples from patients with psychiatric disorders. | Xia Y et al. | β | 2024 | β |
| A characteristic cerebellar biosignature for bipolar disorder, identified with fully automatic machine learning. | Thomaidis GV et al. | β | 2023 | β |
| A computational method for cell type-specific expression quantitative trait loci mapping using bulk RNA-seq data. | Little P et al. | β | 2023 | β |
| Alcohol reverses the effects of KCNJ6 (GIRK2) noncoding variants on excitability of human glutamatergic neurons. | Popova D 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 |
| Ankyrin B promotes developmental spine regulation in the mouse prefrontal cortex. | Murphy KE et al. | β | 2023 | β |
| Annotating genetic variants to target genes using H-MAGMA. | Sey NYA et al. | β | 2023 | β |
| Applications of deep learning in understanding gene regulation. | Li Z et al. | β | 2023 | β |
| Artificial intelligence for dementia genetics and omics. | Bettencourt C et al. | β | 2023 | β |
| Association between the LRP1B and APOE loci and the development of Parkinson's disease dementia. | Real R et al. | β | 2023 | β |
| Brain expression quantitative trait locus and network analyses reveal downstream effects and putative drivers for brain-related diseases. | de Klein N et al. | β | 2023 | β |
| Cellular Diversity in Human Subgenual Anterior Cingulate and Dorsolateral Prefrontal Cortex by Single-Nucleus RNA-Sequencing. | Kim B et al. | β | 2023 | β |
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