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Stochastic search and joint fine-mapping increases accuracy and identifies previously unreported associations in immune-mediated diseases

机译:随机搜索和关节精细映射提高了准确性,并识别以前未报告的免疫介导疾病的联系

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Thousands of genetic variants are associated with human disease risk, but linkage disequilibrium (LD) hinders fine-mapping the causal variants. Both lack of power, and joint tagging of two or more distinct causal variants by a single non-causal SNP, lead to inaccuracies in fine-mapping, with stochastic search more robust than stepwise. We develop a computationally efficient multinomial fine-mapping (MFM) approach that borrows information between diseases in a Bayesian framework. We show that MFM has greater accuracy than single disease analysis when shared causal variants exist, and negligible loss of precision otherwise. MFM analysis of six immune-mediated diseases reveals causal variants undetected in individual disease analysis, including in IL2RA where we confirm functional effects of multiple causal variants using allele-specific expression in sorted CD4sup+/sup T cells from genotype-selected individuals. MFM has the potential to increase fine-mapping resolution in related diseases enabling the identification of associated cellular and molecular phenotypes.
机译:成千上万的遗传变异与人类疾病风险有关,但联动不平衡(LD)阻碍了精细绘制的因果变体。通过单个非因果SNP缺乏功率,以及两个或多个不同的因果变形的联合标记,导致细映射的不准确性,随机搜索比逐步更强。我们开发了一种计算上有效的多项微型映射(MFM)方法,即借用贝叶斯框架中疾病之间的信息。我们表明,当存在共同的因果变量时,MFM具有比单疾病分析更高的精度,并且否则可忽略的精度损失。六种免疫介导的疾病的MFM分析显示出在单个疾病分析中未检测到的因果变体,包括在IL2RA中,我们使用来自基因型的分选CD4 + T细胞中的等位基因特异性表达来确认多种因果变体的功能影响选定的个人。 MFM有可能增加相关疾病中的细映射分辨率,从而能够鉴定相关的细胞和分子表型。

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