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From association to prediction: statistical methods for the dissection and selection of complex traits in plants

机译:从关联到预测:解剖和选择植物复杂性状的统计方法

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摘要

Quantification of genotype-to-phenotype associations is central to many scientific investigations, yet the ability to obtain consistent results may be thwarted without appropriate statistical analyses. Models for association can consider confounding effects in the materials and complex genetic interactions. Selecting optimal models enables accurate evaluation of associations between marker loci and numerous phenotypes including gene expression. Significant improvements in QTL discovery via association mapping and acceleration of breeding cycles through genomic selection are two successful applications of models using genome-wide markers. Given recent advances in genotyping and phenotyping technologies, further refinement of these approaches is needed to model genetic architecture more accurately and run analyses in a computationally efficient manner, all while accounting for false positives and maximizing statistical power.
机译:基因型与表型之间的关联的量化是许多科学研究的核心,但是如果没有适当的统计分析,获得一致结果的能力可能会受到阻碍。关联模型可以考虑材料中的混杂效应和复杂的遗传相互作用。选择最佳模型可以准确评估标记基因座与包括基因表达在内的众多表型之间的关联。通过关联映射和通过基因组选择加速育种周期在QTL发现方面的重大改进是使用全基因组标记的模型的两个成功应用。鉴于基因分型和表型技术的最新进展,需要进一步完善这些方法,以更准确地对遗传结构进行建模,并以计算有效的方式运行分析,同时考虑到假阳性和最大化统计能力。

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