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Cross-validation in association mapping and its relevance for the estimation of QTLparameters of complex traits

机译:关联映射中的交叉验证及其与QTL估计的相关性复杂性状的参数

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摘要

Association mapping has become a widely applied genomic approach to identify quantitative trait loci (QTL) and dissect the genetic architecture of complex traits. However, approaches to assess the quality of the obtained QTL results are lacking. We therefore evaluated the potential of cross-validation in association mapping based on a large sugar beet data set. Our results show that the proportion of the population that should be used as estimation and validation sets, respectively, depends on the size of the mapping population. Generally, a fivefold cross-validation, that is, 20% of the lines as independent validation set, appears appropriate for commonly used population sizes. The predictive power for the proportion of genotypic variance explained by QTL was overestimated by on average 38% indicating a strong bias in the estimated QTL effects. The cross-validated predictive power ranged between 4 and 50%, which are more realistic estimates of this parameter for complex traits. In addition, QTL frequency distributions can be used to assess the precision of QTL position estimates and the robustness of the detected QTL. In summary, cross-validation can be a valuable tool to assess the quality of QTL parameters in association mapping.
机译:关联映射已成为一种广泛应用的基因组方法,用于鉴定数量性状基因座(QTL)并分析复杂性状的遗传结构。但是,缺乏评估获得的QTL结果质量的方法。因此,我们基于大型甜菜数据集评估了关联映射中交叉验证的潜力。我们的结果表明,应分别用作估计集和验证集的总体比例取决于映射总体的大小。通常,五重交叉验证(即,作为独立验证集的行的20%)似乎适合于常用的人口规模。 QTL解释的基因型变异比例的预测能力平均高估了38%,这表明QTL估计效应有很大偏见。交叉验证的预测能力在4%到50%之间,对于复杂性状,此参数是更实际的估计。另外,QTL频率分布可用于评估QTL位置估计的精度和检测到的QTL的鲁棒性。总之,交叉验证可以是评估关联映射中QTL参数质量的有价值的工具。

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