生物
电池类型
表达数量性状基因座
基因
精神分裂症(面向对象编程)
数量性状位点
遗传学
表型
全基因组关联研究
神经科学
遗传关联
遗传力
计算生物学
疾病
细胞
单核苷酸多态性
基因型
病理
医学
精神科
作者
Hilary K. Finucane,Yakir Reshef,Verneri Anttila,Kamil Slowikowski,Alexander Gusev,Andrea Byrnes,Steven Gazal,Po−Ru Loh,Caleb A. Lareau,Noam Shoresh,Giulio Genovese,Arpiar Saunders,Evan Z. Macosko,Samuela Pollack,John R. B. Perry,Jason D. Buenrostro,B Bernstein,Soumya Raychaudhuri,Steven A. McCarroll,Benjamin M. Neale
摘要
ABSTRACT Genetics can provide a systematic approach to discovering the tissues and cell types relevant for a complex disease or trait. Identifying these tissues and cell types is critical for following up on non-coding allelic function, developing ex-vivo models, and identifying therapeutic targets. Here, we analyze gene expression data from several sources, including the GTEx and PsychENCODE consortia, together with genome-wide association study (GWAS) summary statistics for 48 diseases and traits with an average sample size of 169,331, to identify disease-relevant tissues and cell types. We develop and apply an approach that uses stratified LD score regression to test whether disease heritability is enriched in regions surrounding genes with the highest specific expression in a given tissue. We detect tissue-specific enrichments at FDR < 5% for 34 diseases and traits across a broad range of tissues that recapitulate known biology. In our analysis of traits with observed central nervous system enrichment, we detect an enrichment of neurons over other brain cell types for several brain-related traits, enrichment of inhibitory over excitatory neurons for bipolar disorder but excitatory over inhibitory neurons for schizophrenia and body mass index, and enrichments in the cortex for schizophrenia and in the striatum for migraine. In our analysis of traits with observed immunological enrichment, we identify enrichments of T cells for asthma and eczema, B cells for primary biliary cirrhosis, and myeloid cells for Alzheimer's disease, which we validated with independent chromatin data. Our results demonstrate that our polygenic approach is a powerful way to leverage gene expression data for interpreting GWAS signal.
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