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Detecting genome-wide directional effects of transcription factor binding on polygenic disease risk

机译:检测转录因子结合对多基因疾病风险的全基因组方向性影响

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摘要

Biological interpretation of GWAS data frequently involves assessing whether SNPs linked to a biological process, e.g., binding of a transcription factor (TF), 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 LD 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 QTL in blood, recovering known transcriptional regulators. We apply the method to eQTL in 48 GTEx tissues, identifying 651 TF-tissue associations including 30 with robust evidence of tissue specificity. We apply the method to 46 diseases and complex traits (average N=290K), identifying 77 annotation-trait associations representing 12 independent TF-trait associations, and characterize the underlying transcriptional programs using gene-set enrichment analyses. Our results implicate new causal disease genes and new disease mechanisms.
机译:GWAS数据的生物学解释通常涉及评估与生物学过程相关的SNP,例如转录因子(TF)的结合,是否显示出对疾病信号的无符号富集。但是,签名的注释可以量化每个SNP等位基因是促进还是阻碍生物过程,从而可以使人们对疾病机理有更深入的了解。我们介绍了一种签名的LD轮廓回归方法,用于检测签名的功能注释对疾病风险的全基因组方向影响。我们通过模拟验证了该方法的有效性,并将其应用于血液中的分子QTL,回收了已知的转录调节因子。我们将该方法应用于48个GTEx组织中的eQTL,确定了651个TF组织关联,包括30个具有组织特异性的有力证据。我们将该方法应用于46种疾病和复杂性状(平均N = 290K),确定了代表12个独立TF-性状关联的77个注释-性状关联,并使用基因集富集分析表征了潜在的转录程序。我们的结果暗示了新的致病基因和新的疾病机制。

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