LDAK-KVIK 可对定量和二元表型进行快速、强大的混合模型关联分析

Jasper Hof, Doug Speed
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摘要

混合模型关联分析(MMAA)是进行全基因组关联研究的首选工具,因为它能稳健地控制1型误差,提高检测性状相关位点的统计能力。然而,现有的 MMAA 工具往往存在运行时间长、内存要求高的问题。我们介绍了 LDAK-KVIK,这是一种用于分析定量和二元表型的新型 MMAA 工具。通过模拟表型,我们发现 LDAK-KVIK 可以生成校准良好的测试统计量,无论是同质数据集还是异质数据集。LDAK-KVIK 的计算效率很高,分析 350k 个个体的全基因组数据只需不到 20 个 CPU 小时和 8Gb 内存。这些要求与现有最高效的 MMAA 工具之一 REGENIE 相似,比目前最强大的 MMAA 工具 BOLT-LMM 低 30 倍。当应用于真实表型时,LDAK-KVIK 是所有工具中功能最强的。例如,在英国生物库(平均样本量为 349k)的 40 个定量表型中,LDAK-KVIK 发现的重要基因位点比经典线性回归多 16%,而 BOLT-LMM 和 REGENIE 发现的重要基因位点分别多 15% 和 11%。LDAK-KVIK 还可以进行基于基因的测试;在英国生物样本库的 40 种定量表型中,LDAK-KVIK 发现的重要基因比现有的主要工具多 18%。
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LDAK-KVIK performs fast and powerful mixed-model association analysis of quantitative and binary phenotypes
Mixed-model association analysis (MMAA) is the preferred tool for performing a genome-wide association study, because it enables robust control of type 1 error and increased statistical power to detect trait-associated loci. However, existing MMAA tools often suffer from long runtimes and high memory requirements. We present LDAK-KVIK, a novel MMAA tool for analyzing quantitative and binary phenotypes. Using simulated phenotypes, we show that LDAK-KVIK produces well-calibrated test statistics, both for homogeneous and heterogeneous datasets. LDAK-KVIK is computationally-efficient, requiring less than 20 CPU hours and 8Gb memory to analyse genome-wide data for 350k individuals. These demands are similar to those of REGENIE, one of the most efficient existing MMAA tools, and up to 30 times less than those of BOLT-LMM, currently the most powerful MMAA tool. When applied to real phenotypes, LDAK-KVIK has the highest power of all tools considered. For example, across 40 quantitative phenotypes from the UK Biobank (average sample size 349k), LDAK-KVIK finds 16% more significant loci than classical linear regression, whereas BOLT-LMM and REGENIE find 15% and 11% more, respectively. LDAK-KVIK can also perform gene-based tests; across the 40 quantitative UK Biobank phenotypes, LDAK-KVIK finds 18% more significant genes than the leading existing tool.
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