MaSk-LMM:关联研究中线性混合模型的矩阵素描框架

Myson C Burch, Aritra Bose, Gregory Dexter, LAXMI PARIDA, Petros Drineas
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引用次数: 0

摘要

线性混合模型(lmm)在全基因组关联研究(GWAS)中被广泛用于控制群体分层和隐性亲缘关系。不幸的是,估计LMM参数的计算成本很高,需要大规模的矩阵运算来构建遗传相关性矩阵(GRM)。在过去的25年里,随机线性代数通过利用矩阵草图提供了这种矩阵运算的替代方法,这通常会导致可证明的准确、快速和有效的近似。我们利用矩阵草图开发了一种快速高效的LMM方法,称为矩阵草图LMM (MaSk-LMM),通过绘制基因型矩阵来降低其维数并加快计算速度。与当前最先进的技术相比,我们的框架具有理论保证和强大的经验性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MaSk-LMM: A Matrix Sketching Framework for Linear Mixed Models in Association Studies
Linear mixed models (LMMs) have been widely used in genome-wide association studies (GWAS) to control for population stratification and cryptic relatedness. Unfortunately, estimating LMM parameters is computationally expensive, necessitating large-scale matrix operations to build the genetic relatedness matrix (GRM). Over the past 25 years, Randomized Linear Algebra has provided alternative approaches to such matrix operations by leveraging matrix sketching, which often results in provably accurate fast and efficient approximations. We leverage matrix sketching to develop a fast and efficient LMM method called Matrix-Sketching LMM (MaSk-LMM) by sketching the genotype matrix to reduce its dimensions and speed up computations. Our framework comes with both theoretical guarantees and a strong empirical performance compared to current state-of-the-art.
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