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用于全基因组关联研究中检测 QTNs 及其与环境和 QTN 间互作的压缩方差组分混合模型。

A compressed variance component mixed model for detecting QTNs and QTN-by-environment and QTN-by-QTN interactions in genome-wide association studies.

机构信息

Crop Information Center, College of Plant Science and Technology, Huazhong Agricultural University, Wuhan 430070, China.

Crop Information Center, College of Plant Science and Technology, Huazhong Agricultural University, Wuhan 430070, China; State Key Laboratory of Cotton Biology, Anyang 455000, China.

出版信息

Mol Plant. 2022 Apr 4;15(4):630-650. doi: 10.1016/j.molp.2022.02.012. Epub 2022 Feb 22.

Abstract

Although genome-wide association studies are widely used to mine genes for quantitative traits, the effects to be estimated are confounded, and the methodologies for detecting interactions are imperfect. To address these issues, the mixed model proposed here first estimates the genotypic effects for AA, Aa, and aa, and the genotypic polygenic background replaces additive and dominance polygenic backgrounds. Then, the estimated genotypic effects are partitioned into additive and dominance effects using a one-way analysis of variance model. This strategy was further expanded to cover QTN-by-environment interactions (QEIs) and QTN-by-QTN interactions (QQIs) using the same mixed-model framework. Thus, a three-variance-component mixed model was integrated with our multi-locus random-SNP-effect mixed linear model (mrMLM) method to establish a new methodological framework, 3VmrMLM, that detects all types of loci and estimates their effects. In Monte Carlo studies, 3VmrMLM correctly detected all types of loci and almost unbiasedly estimated their effects, with high powers and accuracies and a low false positive rate. In re-analyses of 10 traits in 1439 rice hybrids, detection of 269 known genes, 45 known gene-by-environment interactions, and 20 known gene-by-gene interactions strongly validated 3VmrMLM. Further analyses of known genes showed more small (67.49%), minor-allele-frequency (35.52%), and pleiotropic (30.54%) genes, with higher repeatability across datasets (54.36%) and more dominance loci. In addition, a heteroscedasticity mixed model in multiple environments and dimension reduction methods in quite a number of environments were developed to detect QEIs, and variable selection under a polygenic background was proposed for QQI detection. This study provides a new approach for revealing the genetic architecture of quantitative traits.

摘要

虽然全基因组关联研究被广泛用于挖掘数量性状的基因,但要估计的效应是混杂的,并且检测相互作用的方法并不完善。为了解决这些问题,这里提出的混合模型首先估计 AA、Aa 和 aa 的基因型效应,基因型多基因背景取代加性和显性多基因背景。然后,使用单向方差分析模型将估计的基因型效应分为加性和显性效应。该策略进一步扩展到使用相同的混合模型框架涵盖 QTN-环境互作(QEIs)和 QTN-QTN 互作(QQIs)。因此,三方差成分混合模型与我们的多基因随机 SNP 效应混合线性模型(mrMLM)方法相结合,建立了一种新的方法框架 3VmrMLM,该方法可检测所有类型的基因座并估计其效应。在蒙特卡罗研究中,3VmrMLM 正确地检测到所有类型的基因座,并几乎无偏地估计了它们的效应,具有较高的功率和准确性以及较低的假阳性率。在对 1439 个水稻杂种的 10 个性状进行重新分析时,检测到 269 个已知基因、45 个已知基因-环境互作和 20 个已知基因-基因互作,强烈验证了 3VmrMLM。对已知基因的进一步分析表明,具有更多的小(67.49%)、次要等位基因频率(35.52%)和多效性(30.54%)基因,跨数据集的可重复性更高(54.36%)和更多的显性基因座。此外,开发了用于检测 QEIs 的多个环境中的异方差混合模型和许多环境中的降维方法,并提出了多基因背景下的变量选择用于 QQI 检测。本研究为揭示数量性状的遗传结构提供了一种新方法。

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