Towards Parallel Large-Scale Genomic Prediction by Coupling Sparse and Dense Matrix Algebra

Arne De Coninck, D. Kourounis, F. Verbosio, O. Schenk, B. Baets, S. Maenhout, J. Fostier
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引用次数: 4

Abstract

Genomic prediction for plant breeding requires taking into account environmental effects and variations of genetic effects across environments. The latter can be modelled by estimating the effect of each genetic marker in every possible environmental condition, which leads to a huge amount of effects to be estimated. Nonetheless, the information about these effects is only sparsely present, due to the fact that plants are only tested in a limited number of environmental conditions. In contrast, the genotypes of the plants are a dense source of information and thus the estimation of both types of effects in one single step would require as well dense as sparse matrix formalisms. This paper presents a way to efficiently apply a high performance computing infrastructure for dealing with large-scale genomic prediction settings, relying on the coupling of dense and sparse matrix algebra.
稀疏与密集矩阵代数耦合的并行大规模基因组预测
植物育种的基因组预测需要考虑环境效应和遗传效应在不同环境中的变化。后者可以通过估计每个遗传标记在每种可能的环境条件下的影响来建模,这导致需要估计大量的影响。然而,由于植物只在有限的环境条件下进行了测试,有关这些影响的信息只是很少出现。相比之下,植物的基因型是一个密集的信息来源,因此在一个步骤中估计两种类型的效应将需要密集和稀疏的矩阵形式。本文提出了一种高效应用高性能计算基础设施来处理大规模基因组预测设置的方法,该方法依赖于密集和稀疏矩阵代数的耦合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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