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一种更精确的共定位分析方法,可用于多个因果变体。

A more accurate method for colocalisation analysis allowing for multiple causal variants.

机构信息

Cambridge Institute of Therapeutic Immunology and Infectious Disease, University of Cambridge, Cambridge, United Kingdom.

MRC Biostatistics Unit, University of Cambridge, Cambridge, United Kingdom.

出版信息

PLoS Genet. 2021 Sep 29;17(9):e1009440. doi: 10.1371/journal.pgen.1009440. eCollection 2021 Sep.

Abstract

In genome-wide association studies (GWAS) it is now common to search for, and find, multiple causal variants located in close proximity. It has also become standard to ask whether different traits share the same causal variants, but one of the popular methods to answer this question, coloc, makes the simplifying assumption that only a single causal variant exists for any given trait in any genomic region. Here, we examine the potential of the recently proposed Sum of Single Effects (SuSiE) regression framework, which can be used for fine-mapping genetic signals, for use with coloc. SuSiE is a novel approach that allows evidence for association at multiple causal variants to be evaluated simultaneously, whilst separating the statistical support for each variant conditional on the causal signal being considered. We show this results in more accurate coloc inference than other proposals to adapt coloc for multiple causal variants based on conditioning. We therefore recommend that coloc be used in combination with SuSiE to optimise accuracy of colocalisation analyses when multiple causal variants exist.

摘要

在全基因组关联研究(GWAS)中,现在通常会搜索并找到位于接近位置的多个因果变异。现在也已经成为标准做法,询问不同的特征是否共享相同的因果变异,但回答这个问题的一种流行方法 coloc 假设在任何给定的基因组区域中,任何给定的特征只有一个因果变异。在这里,我们研究了最近提出的 Sum of Single Effects(SuSiE)回归框架的潜力,该框架可用于精细映射遗传信号,可与 coloc 一起使用。SuSiE 是一种新颖的方法,允许同时评估多个因果变异的关联证据,同时根据所考虑的因果信号分离每个变异的统计支持。我们表明,与基于条件的其他适应多个因果变异的 coloc 建议相比,这会导致更准确的 coloc 推断。因此,我们建议在存在多个因果变异时,将 coloc 与 SuSiE 结合使用,以优化 colocalisation 分析的准确性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/fbfb/8504726/f17f032464d3/pgen.1009440.g001.jpg

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