Genome-wide association studies (GWAS) have identified thousands of genetic variants associated with human traits or diseases in the past decade. Nevertheless, much of the heritability of many traits is still unaccounted for. Commonly used single-trait analysis methods are conservative, while multi-trait methods improve statistical power by integrating association evidence across multiple traits. In contrast to individual-level data, GWAS summary statistics are usually publicly available, and thus methods using only summary statistics have greater usage. Although many methods have been developed for joint analysis of multiple traits using summary statistics, there are many issues, including inconsistent performance, computational inefficiency, and numerical problems when considering lots of traits. To address these challenges, we propose a multi-trait adaptive Fisher method for summary statistics (MTAFS), a computationally efficient method with robust power performance. We applied MTAFS to two sets of brain image-derived phenotypes (IDPs) from the UK Biobank, including a set of 58 Volumetric IDPs and a set of 212 Area IDPs. Together with results from a simulation study, MTAFS shows its advantage over existing multi-trait methods, with robust performance across a range of underlying settings. It controls type 1 error well, and can efficiently handle a large number of traits.
翻译:在过去十年里,基因组全协会研究(GWAS)查明了与人类特性或疾病有关的数千种基因变异,然而,许多特性的遗传性仍然下落不明。常用的单轨分析方法比较保守,而多轨方法则通过综合多种特性的关联证据来提高统计力量。与个人数据不同,全球环球协会的汇总统计数据通常公开,因此,仅使用摘要统计数据的方法使用得更多。虽然已经制定了许多方法,利用摘要统计数据对多种特性进行联合分析,但有许多问题,包括性能不一、计算效率不高和数字问题。为了应对这些挑战,我们建议采用多轨适应型渔业方法进行简要统计,这是一种计算效率高的方法,具有强力性能。我们从英国生物银行对两套脑图像衍生的型型号,包括一套由58个量级国内流离失所者和一组212个地区国内流离失所者组成的方法。此外,模拟研究的结果是,MTAFS显示其优于现有多轨制基本方法的优势,可以跨越大型类型。