德纳姆
全基因组关联研究
生物
连锁不平衡
遗传关联
数量性状位点
遗传学
表达数量性状基因座
遗传力
DNA甲基化
基因组学
人口
计算生物学
单核苷酸多态性
单倍型
基因组
基因
等位基因
医学
基因型
基因表达
环境卫生
作者
Jiyun Zhou,Qiang Chen,Patricia Braun,Kira A. Perzel Mandell,Andrew E. Jaffe,Hao Yang Tan,Thomas M. Hyde,Joel E. Kleinman,James B. Potash,Gen Shinozaki,Daniel R. Weinberger,Shizhong Han
标识
DOI:10.1073/pnas.2206069119
摘要
There is growing evidence for the role of DNA methylation (DNAm) quantitative trait loci (mQTLs) in the genetics of complex traits, including psychiatric disorders. However, due to extensive linkage disequilibrium (LD) of the genome, it is challenging to identify causal genetic variations that drive DNAm levels by population-based genetic association studies. This limits the utility of mQTLs for fine-mapping risk loci underlying psychiatric disorders identified by genome-wide association studies (GWAS). Here we present INTERACT, a deep learning model that integrates convolutional neural networks with transformer, to predict effects of genetic variations on DNAm levels at CpG sites in the human brain. We show that INTERACT-derived DNAm regulatory variants are not confounded by LD, are concentrated in regulatory genomic regions in the human brain, and are convergent with mQTL evidence from genetic association analysis. We further demonstrate that predicted DNAm regulatory variants are enriched for heritability of brain-related traits and improve polygenic risk prediction for schizophrenia across diverse ancestry samples. Finally, we applied predicted DNAm regulatory variants for fine-mapping schizophrenia GWAS risk loci to identify potential novel risk genes. Our study shows the power of a deep learning approach to identify functional regulatory variants that may elucidate the genetic basis of complex traits.
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