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Regional heritability advanced complex trait analysis for GPU and traditional parallel architectures

机译:针对GPU和传统并行架构的区域遗传力高级复杂特征分析

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Motivation:Quantification of the contribution of genetic variation to phenotypic variation for complex traits becomes increasingly computationally demanding with increasing numbers of single-nucleotide polymorphisms and individuals. To meet the challenges in making feasible large-scale studies, we present the REgional heritability advanced complex trait analysis software. Adapted from advanced complex trait analysis (and, in turn, genome-wide complex trait analysis), it is tailored to exploit the parallelism present in modern traditional and graphics processing unit (GPU)-accelerated machines, from workstations to supercomputers. Results: We adapt the genetic relationship matrix estimation algorithm to remove limitations on memory, allowing the analysis of large datasets. We build on this to develop a version of the code able to efficiently exploit GPU-accelerated systems for both the genetic relationship matrix andREstrictedmaximumlikelihood (REML) parts of the analysis, offering substantial speedup over the traditional central processing unit version. We develop the ability to analyze multiple small regions of the genome across multiple compute nodes in parallel, following the 'regional heritability' approach. We demonstrate the new software using 1024 GPUs in parallel on one of the world's fastest supercomputers.
机译:动机:随着单核苷酸多态性和个体数量的增加,对复杂性状遗传变异对表型变异的贡献进行量化的计算要求也越来越高。为了应对进行大规模研究的挑战,我们提供了区域遗传力先进的复杂性状分析软件。它改编自先进的复杂性状分析(进而是全基因组复杂性状分析),旨在利用现代传统和图形处理单元(GPU)加速的计算机(从工作站到超级计算机)中的并行性。结果:我们采用了遗传关系矩阵估计算法,以消除内存限制,从而可以分析大型数据集。我们以此为基础开发了一个代码版本,该代码版本可以有效利用GPU加速系统进行遗传关系矩阵和分析的受限最大似然(REML)部分,与传统的中央处理单元版本相比,可大幅提高速度。我们遵循“区域遗传力”方法,开发了跨多个计算节点并行分析基因组的多个小区域的能力。我们在世界上最快的超级计算机之一上并行使用1024个GPU演示了该新软件。

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