An overview of statistical methods to detect and understand genotype-by-environment interaction and QTL-by-environment interaction

P. Rodrigues
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引用次数: 9

Abstract

Summary Genotype-by-environment interaction (GEI) is frequently encountered in multi-environment trials, and represents differential responses of genotypes across environments. With the development of molecular markers and mapping techniques, researchers can go one step further and analyse the whole genome to detect specific locations of genes which influence a quantitative trait such as yield. Such a location is called a quantitative trait locus (QTL), and when these QTLs have different expression across environments we talk about QTL-by-environment interaction (QEI), which is the basis of GEI. Good understanding of these interactions enables researchers to select better genotypes across different environmental conditions, and consequently to improve crops in developed and developing countries. In this paper we present an overview of statistical methods and models commonly used to detect and to understand GEI and QEI, ranging from the simple joint regression model to complex eco-physiological genotype-to-phenotype simulation models.
基因型与环境相互作用和qtl与环境相互作用的统计检测方法综述
基因型-环境相互作用(GEI)是多环境试验中经常遇到的问题,它代表了基因型在不同环境下的差异反应。随着分子标记和定位技术的发展,研究人员可以进一步分析整个基因组,以检测影响产量等数量性状的基因的特定位置。这样的位置被称为数量性状位点(QTL),当这些QTL在不同的环境中有不同的表达时,我们谈论QTL-by-environment interaction (QEI),这是GEI的基础。对这些相互作用的良好理解使科学家能够在不同的环境条件下选择更好的基因型,从而改善发达国家和发展中国家的作物。本文综述了用于检测和理解GEI和QEI的统计方法和模型,从简单的联合回归模型到复杂的生态生理基因型-表型模拟模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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