학술논문

Comprehensive functional genomic resource and integrative model for the human brain
Document Type
article
Author
Wang, DaifengLiu, ShuangWarrell, JonathanWon, HyejungShi, XuNavarro, Fabio CPClarke, DeclanGu, MengtingEmani, PrashantYang, Yucheng TXu, MinGandal, Michael JLou, ShaokeZhang, JingPark, Jonathan JYan, ChengfeiRhie, Suhn KyongManakongtreecheep, KasidetZhou, HollyNathan, AparnaPeters, MetteMattei, EugenioFitzgerald, DominicBrunetti, TonyaMoore, JillJiang, YanGirdhar, KiranHoffman, Gabriel EKalayci, SelimGümüş, Zeynep HCrawford, Gregory ERoussos, PanosAkbarian, SchahramJaffe, Andrew EWhite, Kevin PWeng, ZhipingSestan, NenadGeschwind, Daniel HKnowles, James AGerstein, Mark BAshley-Koch, Allison EGarrett, Melanie ESong, LingyunSafi, AlexiasJohnson, Graham DWray, Gregory AReddy, Timothy EGoes, Fernando SZandi, PeterBryois, JulienPrice, Amanda JIvanov, Nikolay ACollado-Torres, LeonardoHyde, Thomas MBurke, Emily EKleiman, Joel ETao, RanShin, Joo HeonKundakovic, MarijaBrown, LeanneKassim, Bibi SPark, Royce BWiseman, Jennifer RZharovsky, ElizabethJacobov, RivkaDevillers, OliviaFlatow, ElieLipska, Barbara KLewis, David AHaroutunian, VahramHahn, Chang-GyuCharney, Alexander WDracheva, StellaKozlenkov, AlexeyBelmont, JudsonDelValle, DianeFrancoeur, NancyHadjimichael, EviPinto, Dalilavan Bakel, HarmFullard, John FBendl, JaroslavHauberg, Mads EMangravite, Lara MPeters, Mette AChae, YooreePeng, JunminNiu, MingmingWang, XushengWebster, Maree JBeach, Thomas GChen, ChaoJiang, Yi
Source
Science. 362(6420)
Subject
Human Genome
Biotechnology
Schizophrenia
Mental Health
Brain Disorders
Genetics
Neurosciences
1.1 Normal biological development and functioning
2.1 Biological and endogenous factors
Underpinning research
Aetiology
Mental health
Brain
Datasets as Topic
Deep Learning
Enhancer Elements
Genetic
Epigenesis
Genetic
Epigenomics
Gene Expression Regulation
Gene Regulatory Networks
Genome-Wide Association Study
Humans
Mental Disorders
Quantitative Trait Loci
Single-Cell Analysis
Transcriptome
PsychENCODE Consortium
General Science & Technology
Language
Abstract
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.