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An assessment of the performance of the logistic mixed model for analyzing binary traits in maize and sorghum diversity panels

机译:逻辑和混合模型的性能评估用于分析玉米和高粱多样性面板中的二元性状

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摘要

The logistic mixed model (LMM) is well-suited for the genome-wide association study (GWAS) of binary agronomic traits because it can include fixed and random effects that account for spurious associations. The recent implementation of a computationally efficient model fitting and testing approach now makes it practical to use the LMM to search for markers associated with such binary traits on a genome-wide scale. Therefore, the purpose of this work was to assess the applicability of the LMM for GWAS in crop diversity panels. We dichotomized three publicly available quantitative traits in a maize diversity panel and two quantitative traits in a sorghum diversity panel, and them performed a GWAS using both the LMM and the unified mixed linear model (MLM) on these dichotomized traits. Our results suggest that the LMM is capable of identifying statistically significant marker-trait associations in the same genomic regions highlighted in previous studies, and this ability is consistent across both diversity panels. We also show how subpopulation structure in the maize diversity panel can underscore the LMM’s superior control for spurious associations compared to the unified MLM. These results suggest that the LMM is a viable model to use for the GWAS of binary traits in crop diversity panels and we therefore encourage its broader implementation in the agronomic research community.
机译:逻辑混合模型(LMM)非常适合于二元农艺性状的全基因组关联研究(GWAS),因为它可以包括造成假关联的固定效应和随机效应。计算效率高的模型拟合和测试方法的最新实现现在使使用LMM在全基因组范围内搜索与此类二元性状相关的标记变得切实可行。因此,这项工作的目的是评估LMM在GWAS中在作物多样性专家组中的适用性。我们将玉米多样性面板中的三个可公开获得的数量性状分为两部分,将高粱多样性面板中的两个可量化性状分为两部分,他们对这些二分性状使用LMM和统一混合线性模型(MLM)进行了GWAS。我们的结果表明,LMM能够在以前的研究中突出显示的相同基因组区域中识别具有统计学意义的标记-性状关联,并且这种能力在两个多样性小组中都一致。我们还展示了与统一MLM相比,玉米多样性面板中的亚种群结构如何强调LMM对虚假关联的出色控制。这些结果表明,LMM是用于作物多样性研究组二元性状的GWAS的可行模型,因此我们鼓励在农业研究领域更广泛地实施LMM。

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