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邻近基因关联研究:将邻近基因型纳入田间食草性的全基因组关联研究中。

Neighbor GWAS: incorporating neighbor genotypic identity into genome-wide association studies of field herbivory.

机构信息

PRESTO, Japan Science and Technology Agency, Kawaguchi, 332-0012, Japan.

Research Institute for Food and Agriculture, Ryukoku University, Yokotani 1-5, Seta Oe-cho, Otsu, Shiga, 520-2194, Japan.

出版信息

Heredity (Edinb). 2021 Apr;126(4):597-614. doi: 10.1038/s41437-020-00401-w. Epub 2021 Jan 29.

Abstract

An increasing number of field studies have shown that the phenotype of an individual plant depends not only on its genotype but also on those of neighboring plants; however, this fact is not taken into consideration in genome-wide association studies (GWAS). Based on the Ising model of ferromagnetism, we incorporated neighbor genotypic identity into a regression model, named "Neighbor GWAS". Our simulations showed that the effective range of neighbor effects could be estimated using an observed phenotype when the proportion of phenotypic variation explained (PVE) by neighbor effects peaked. The spatial scale of the first nearest neighbors gave the maximum power to detect the causal variants responsible for neighbor effects, unless their effective range was too broad. However, if the effective range of the neighbor effects was broad and minor allele frequencies were low, there was collinearity between the self and neighbor effects. To suppress the false positive detection of neighbor effects, the fixed effect and variance components involved in the neighbor effects should be tested in comparison with a standard GWAS model. We applied neighbor GWAS to field herbivory data from 199 accessions of Arabidopsis thaliana and found that neighbor effects explained 8% more of the PVE of the observed damage than standard GWAS. The neighbor GWAS method provides a novel tool that could facilitate the analysis of complex traits in spatially structured environments and is available as an R package at CRAN ( https://cran.rproject.org/package=rNeighborGWAS ).

摘要

越来越多的田间研究表明,个体植物的表型不仅取决于其基因型,还取决于其邻近植物的基因型;然而,这一事实在全基因组关联研究(GWAS)中并未得到考虑。基于铁磁体的伊辛模型,我们将邻近基因型信息纳入回归模型,命名为“邻近 GWAS”。我们的模拟表明,当由邻近效应解释的表型变异比例(PVE)达到峰值时,可以使用观察到的表型来估计邻近效应的有效范围。第一近邻的空间尺度可以最大程度地检测到导致邻近效应的因果变异,除非它们的有效范围太广。然而,如果邻近效应的有效范围很广且次要等位基因频率较低,则自身和邻近效应之间存在共线性。为了抑制邻近效应的假阳性检测,应将涉及邻近效应的固定效应和方差分量与标准 GWAS 模型进行比较,以测试其有效性。我们将邻域 GWAS 应用于拟南芥 199 个品系的田间草食性数据,发现邻域效应比标准 GWAS 多解释了 8%的观察到的损伤 PVE。邻域 GWAS 方法提供了一种新工具,可以促进对空间结构环境中复杂性状的分析,并可在 CRAN(https://cran.r-project.org/package=rNeighborGWAS)上作为 R 包获得。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5557/8115658/cfe18b6a7cec/41437_2020_401_Fig1_HTML.jpg

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