下采样GWAS汇总统计的可比性评估指南。

IF 2.6 4区 医学 Q2 BEHAVIORAL SCIENCES Behavior Genetics Pub Date : 2023-11-01 Epub Date: 2023-09-15 DOI:10.1007/s10519-023-10152-z
Camille M Williams, Holly Poore, Peter T Tanksley, Hyeokmoon Kweon, Natasia S Courchesne-Krak, Diego Londono-Correa, Travis T Mallard, Peter Barr, Philipp D Koellinger, Irwin D Waldman, Sandra Sanchez-Roige, K Paige Harden, Abraham A Palmer, Danielle M Dick, Richard Karlsson Linnér
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引用次数: 0

摘要

专有基因数据集对于提高全基因组关联研究(GWAS)的统计能力很有价值,但它们的使用可能会限制研究人员公开分享由此产生的汇总统计数据。尽管研究人员可以采用共享排除限制数据的下采样版本,但下采样会降低功率,并可能改变所研究表型的遗传病因。当使用多变量GWAS方法时,这些问题更加复杂,例如基因组结构方程建模(基因组SEM),该方法对多个性状之间的遗传相关性进行建模。在这里,我们提出了一种系统的方法来评估GWAS汇总统计数据的可比性,包括与排除限制数据。用外化因子的多变量GWAS来说明这种方法,我们评估了下采样对以下方面的影响:(1)单变量GWAS中遗传信号的强度,(2)多变量基因组SEM中的因子负载和模型拟合,(3)因子水平上遗传信号的强度,(4)基因特性分析的见解,(5)与其他性状的遗传相关性模式,以及(6)独立样本中的多基因得分分析。对于外化GWAS,尽管下采样导致遗传信号的丢失和全基因组显著基因座的减少;因子负荷和模型拟合、基因特性分析、遗传相关性和多基因评分分析都是稳健的。鉴于数据共享对开放科学发展的重要性,我们建议生成和共享下采样汇总统计数据的研究人员将这些分析报告为附带文件,以支持其他研究人员使用汇总统计数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Guidelines for Evaluating the Comparability of Down-Sampled GWAS Summary Statistics.

Proprietary genetic datasets are valuable for boosting the statistical power of genome-wide association studies (GWASs), but their use can restrict investigators from publicly sharing the resulting summary statistics. Although researchers can resort to sharing down-sampled versions that exclude restricted data, down-sampling reduces power and might change the genetic etiology of the phenotype being studied. These problems are further complicated when using multivariate GWAS methods, such as genomic structural equation modeling (Genomic SEM), that model genetic correlations across multiple traits. Here, we propose a systematic approach to assess the comparability of GWAS summary statistics that include versus exclude restricted data. Illustrating this approach with a multivariate GWAS of an externalizing factor, we assessed the impact of down-sampling on (1) the strength of the genetic signal in univariate GWASs, (2) the factor loadings and model fit in multivariate Genomic SEM, (3) the strength of the genetic signal at the factor level, (4) insights from gene-property analyses, (5) the pattern of genetic correlations with other traits, and (6) polygenic score analyses in independent samples. For the externalizing GWAS, although down-sampling resulted in a loss of genetic signal and fewer genome-wide significant loci; the factor loadings and model fit, gene-property analyses, genetic correlations, and polygenic score analyses were found robust. Given the importance of data sharing for the advancement of open science, we recommend that investigators who generate and share down-sampled summary statistics report these analyses as accompanying documentation to support other researchers' use of the summary statistics.

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来源期刊
Behavior Genetics
Behavior Genetics 生物-行为科学
CiteScore
4.90
自引率
7.70%
发文量
30
审稿时长
6-12 weeks
期刊介绍: Behavior Genetics - the leading journal concerned with the genetic analysis of complex traits - is published in cooperation with the Behavior Genetics Association. This timely journal disseminates the most current original research on the inheritance and evolution of behavioral characteristics in man and other species. Contributions from eminent international researchers focus on both the application of various genetic perspectives to the study of behavioral characteristics and the influence of behavioral differences on the genetic structure of populations.
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