生物
连锁不平衡
数量性状位点
表达数量性状基因座
全基因组关联研究
遗传学
计算生物学
单核苷酸多态性
遗传关联
转录因子
疾病
基因组
等位基因
基因
基因型
医学
病理
作者
Yakir Reshef,Hilary K. Finucane,David R. Kelley,Alexander Gusev,Dylan Kotliar,Jacob C. Ulirsch,Farhad Hormozdiari,Joseph Nasser,Luke J. O’Connor,Bryce van de Geijn,Po‐Ru Loh,Sharon R. Grossman,Gaurav Bhatia,Steven Gazal,Pier Francesco Palamara,Luca Pinello,Nick Patterson,Ryan P. Adams,Alkes L. Price
出处
期刊:Nature Genetics
[Springer Nature]
日期:2018-08-24
卷期号:50 (10): 1483-1493
被引量:65
标识
DOI:10.1038/s41588-018-0196-7
摘要
Biological interpretation of genome-wide association study data frequently involves assessing whether SNPs linked to a biological process, for example, binding of a transcription factor, show unsigned enrichment for disease signal. However, signed annotations quantifying whether each SNP allele promotes or hinders the biological process can enable stronger statements about disease mechanism. We introduce a method, signed linkage disequilibrium profile regression, for detecting genome-wide directional effects of signed functional annotations on disease risk. We validate the method via simulations and application to molecular quantitative trait loci in blood, recovering known transcriptional regulators. We apply the method to expression quantitative trait loci in 48 Genotype-Tissue Expression tissues, identifying 651 transcription factor-tissue associations including 30 with robust evidence of tissue specificity. We apply the method to 46 diseases and complex traits (average n = 290 K), identifying 77 annotation-trait associations representing 12 independent transcription factor-trait associations, and characterize the underlying transcriptional programs using gene-set enrichment analyses. Our results implicate new causal disease genes and new disease mechanisms. Signed linkage disequilibrium profile regression is a new method for detecting directional effects of genomic annotations on disease risk. The results implicate new causal disease genes and can suggest mechanisms underlying the effects of causal genes on disease.
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