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使用SuSiE和h2-D2对原发性胆汁性胆管炎全基因组关联研究结果进行精细定位。

Fine-Mapping the Results From Genome-Wide Association Studies of Primary Biliary Cholangitis Using SuSiE and h2-D2.

作者信息

Gjoka Aida, Cordell Heather J

机构信息

Population Health Sciences Institute, Newcastle University, Newcastle upon Tyne, UK.

出版信息

Genet Epidemiol. 2025 Jan;49(1):e22592. doi: 10.1002/gepi.22592. Epub 2024 Oct 6.

Abstract

The main goal of fine-mapping is the identification of relevant genetic variants that have a causal effect on some trait of interest, such as the presence of a disease. From a statistical point of view, fine mapping can be seen as a variable selection problem. Fine-mapping methods are often challenging to apply because of the presence of linkage disequilibrium (LD), that is, regions of the genome where the variants interrogated have high correlation. Several methods have been proposed to address this issue. Here we explore the 'Sum of Single Effects' (SuSiE) method, applied to real data (summary statistics) from a genome-wide meta-analysis of the autoimmune liver disease primary biliary cholangitis (PBC). Fine-mapping in this data set was previously performed using the FINEMAP program; we compare these previous results with those obtained from SuSiE, which provides an arguably more convenient and principled way of generating 'credible sets', that is set of predictors that are correlated with the response variable. This allows us to appropriately acknowledge the uncertainty when selecting the causal effects for the trait. We focus on the results from SuSiE-RSS, which fits the SuSiE model to summary statistics, such as z-scores, along with a correlation matrix. We also compare the SuSiE results to those obtained using a more recently developed method, h2-D2, which uses the same inputs. Overall, we find the results from SuSiE-RSS and, to a lesser extent, h2-D2, to be quite concordant with those previously obtained using FINEMAP. The resulting genes and biological pathways implicated are therefore also similar to those previously obtained, providing valuable confirmation of these previously reported results. Detailed examination of the credible sets identified suggests that, although for the majority of the loci (33 out of 56) the results from SuSiE-RSS seem most plausible, there are some loci (5 out of 56 loci) where the results from h2-D2 seem more compelling. Computer simulations suggest that, overall, SuSiE-RSS generally has slightly higher power, better precision, and better ability to identify the true number of causal variants in a region than h2-D2, although there are some scenarios where the power of h2-D2 is higher. Thus, in real data analysis, the use of complementary approaches such as both SuSiE and h2-D2 is potentially warranted.

摘要

精细定位的主要目标是识别对某些感兴趣的性状(如疾病的存在)具有因果效应的相关基因变异。从统计学角度来看,精细定位可被视为一个变量选择问题。由于存在连锁不平衡(LD),即基因组中被检测的变异具有高度相关性的区域,精细定位方法的应用往往具有挑战性。已经提出了几种方法来解决这个问题。在这里,我们探讨了“单效应之和”(SuSiE)方法,并将其应用于自身免疫性肝病原发性胆汁性胆管炎(PBC)全基因组荟萃分析的真实数据(汇总统计量)。该数据集中的精细定位先前是使用FINEMAP程序进行的;我们将这些先前的结果与通过SuSiE获得的结果进行比较,SuSiE提供了一种可以说是更方便且更有原则的生成“可信集”的方法,即与响应变量相关的预测变量集。这使我们在选择性状的因果效应时能够适当地认识到不确定性。我们关注SuSiE-RSS的结果,它将SuSiE模型应用于汇总统计量,如z分数以及相关矩阵。我们还将SuSiE的结果与使用一种更新开发的方法h2-D2获得的结果进行比较,h2-D2使用相同的输入。总体而言,我们发现SuSiE-RSS的结果,以及在较小程度上h2-D2的结果,与先前使用FINEMAP获得的结果相当一致。因此,所涉及的基因和生物学途径也与先前获得的相似,为这些先前报道的结果提供了有价值的证实。对所确定的可信集的详细检查表明,尽管对于大多数位点(56个中的33个),SuSiE-RSS的结果似乎最合理,但在一些位点(56个位点中的5个),h2-D2的结果似乎更有说服力。计算机模拟表明,总体而言,SuSiE-RSS通常比h2-D2具有略高的功效、更好的精度以及更好的识别区域中因果变异真实数量的能力,尽管在某些情况下h2-D2的功效更高。因此,在实际数据分析中,可能有必要使用SuSiE和h2-D2等互补方法。

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