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首页> 外文期刊>Journal of Experimental Botany >To clean or not to clean phenotypic datasets for outlier plants in genetic analyses?
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To clean or not to clean phenotypic datasets for outlier plants in genetic analyses?

机译:清洁或不清洁遗传分析中的异常植物表型数据集?

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Based on case studies, we discuss the extent to which genome-wide association studies (GWAS) are affected by outlier plants, i.e. those deviating from the expected distribution on a multi-criteria basis. Using a raw dataset consisting of daily measurements of leaf area, biomass, and plant height for thousands of plants, we tested three different cleaning methods for their effects on genetic analyses. No-cleaning resulted in the highest number of dubious quantitative trait loci, especially at loci with highly unbalanced allelic frequencies. A trade-off was identified between the risk of false-positives (with no-cleaning and/or a low threshold for minor allele frequency) and the risk of missing interesting rare alleles. Cleaning can lower the risk of the latter by making it possible to choose a higher threshold in GWAS.
机译:基于案例研究,我们讨论了基因组关联研究(GWAS)的程度受到异常植物的影响,即偏离了多标准的预期分布。 使用由叶面积,生物量和植物高度的日测量组成的原始数据集进行成千上万的植物,我们测试了三种不同的清洁方法,以便它们对遗传分析的影响。 无清洁导致最大数量的可疑定量特质基因座,特别是在具有高度不平衡的等位基因频率的基因座。 在假阳性的风险之间确定了权衡(没有清洁和/或轻微的等位基因频率的低阈值)以及缺失有趣的罕见等位基因的风险。 通过使可以在GWAS中选择更高的阈值,清洁可以降低后者的风险。

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