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Detection of Epistatic and Gene-Environment Interactions Underlying Three Quality Traits in Rice Using High-Throughput Genome-Wide Data

机译:利用高通量基因组数据检测水稻三种质量特征的基因和基因环境相互作用

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摘要

With development of sequencing technology, dense single nucleotide polymorphisms (SNPs) have been available, enabling uncovering genetic architecture of complex traits by genome-wide association study (GWAS). However, the current GWAS strategy usually ignores epistatic and gene-environment interactions due to absence of appropriate methodology and heavy computational burden. This study proposed a new GWAS strategy by combining the graphics processing unit- (GPU-) based generalized multifactor dimensionality reduction (GMDR) algorithm with mixed linear model approach. The reliability and efficiency of the analytical methods were verified through Monte Carlo simulations, suggesting that a population size of nearly 150 recombinant inbred lines (RILs) had a reasonable resolution for the scenarios considered. Further, a GWAS was conducted with the above two-step strategy to investigate the additive, epistatic, and gene-environment associations between 701,867 SNPs and three important quality traits, gelatinization temperature, amylose content, and gel consistency, in a RIL population with 138 individuals derived from super-hybrid rice Xieyou9308 in two environments. Four significant SNPs were identified with additive, epistatic, and gene-environment interaction effects. Our study showed that the mixed linear model approach combining with the GPU-based GMDR algorithm is a feasible strategy for implementing GWAS to uncover genetic architecture of crop complex traits.
机译:随着测序技术的发展,已有致密的单核苷酸多态性(SNP)可用,通过基因组 - 宽协会研究(GWA)来实现复杂性状的遗传结构。然而,由于缺乏适当的方法和重型计算负担,目前的GWAS策略通常会忽略由于缺乏适当的方法和重大计算负担而忽略了论证和基因环境相互作用。本研究提出了一种通过混合线性模型方法组合基于图形处理单元(GPU-)的广义多因素维数减少(GMDR)算法来实现新的GWAS策略。通过Monte Carlo模拟验证了分析方法的可靠性和效率,表明近150个重组自交系(RILS)的人口大小对考虑的情景具有合理的决议。此外,通过上述两步策略进行Gwas,以研究701,867个SNP和三种重要的品质性状,糊化温度,直链淀粉含量和凝胶稠度的添加剂,从事认证和基因 - 环境关联,其中RIL群体中有138个在两个环境中源于超杂交水稻Xieyou9308的个体。用添加剂,外观和基因环境相互作用鉴定四种重要的SNP。我们的研究表明,与基于GPU的GMDR算法相结合的混合线性模型方法是实现GWA揭示作物复杂性状的遗传架构的可行策略。

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