Wellcome Centre for Human Genetics.
Division of Cardiovascular Medicine, Radcliffe Department of Medicine.
Bioinformatics. 2020 Jan 15;36(2):552-557. doi: 10.1093/bioinformatics/btz590.
Common small-effect genetic variants that contribute to human complex traits and disease are typically identified using traditional fixed-effect (FE) meta-analysis methods. However, the power to detect genetic associations under FE models deteriorates with increasing heterogeneity, so that some small-effect heterogeneous loci might go undetected. A modified random-effects meta-analysis approach (RE2) was previously developed that is more powerful than traditional fixed and random-effects methods at detecting small-effect heterogeneous genetic associations, the method was updated (RE2C) to identify small-effect heterogeneous variants overlooked by traditional fixed-effect meta-analysis. Here, we re-appraise a large-scale meta-analysis of coronary disease with RE2C to search for small-effect genetic signals potentially masked by heterogeneity in a FE meta-analysis.
Our application of RE2C suggests a high sensitivity but low specificity of this approach for discovering small-effect heterogeneous genetic associations. We recommend that reports of small-effect heterogeneous loci discovered with RE2C are accompanied by forest plots and standardized predicted random-effects statistics to reveal the distribution of genetic effect estimates across component studies of meta-analyses, highlighting overly influential outlier studies with the potential to inflate genetic signals.
Scripts to calculate standardized predicted random-effects statistics and generate forest plots are available in the getspres R package entitled from https://magosil86.github.io/getspres/.
Supplementary data are available at Bioinformatics online.
通常使用传统的固定效应 (FE) 荟萃分析方法来鉴定有助于人类复杂性状和疾病的常见小效应遗传变异。然而,FE 模型下检测遗传关联的能力随着异质性的增加而恶化,因此一些小效应异质基因座可能未被检测到。先前开发了一种改良的随机效应荟萃分析方法 (RE2),该方法在检测小效应异质遗传关联方面比传统的固定和随机效应方法更有效,该方法已被更新 (RE2C),以鉴定传统固定效应荟萃分析忽略的小效应异质变异。在这里,我们重新评估了冠状动脉疾病的大规模荟萃分析,以使用 RE2C 搜索可能被 FE 荟萃分析中的异质性掩盖的小效应遗传信号。
我们对 RE2C 的应用表明,该方法发现小效应异质遗传关联的灵敏度高,但特异性低。我们建议,使用 RE2C 发现的小效应异质基因座的报告应附有森林图和标准化预测随机效应统计数据,以揭示荟萃分析中各个组成研究的遗传效应估计值的分布,突出具有潜在夸大遗传信号能力的过度有影响力的异常值研究。
计算标准化预测随机效应统计数据和生成森林图的脚本可在名为 from https://magosil86.github.io/getspres/ 的 getspres R 包中获得。
补充数据可在生物信息学在线获得。