Alamin Md, Sultana Most Humaira, Lou Xiangyang, Jin Wenfei, Xu Haiming
Institute of Bioinformatics, Zhejiang University, Hangzhou 310058, China.
Department of Biology, School of Life Sciences, Southern University of Science and Technology, Shenzhen 518055, China.
Plants (Basel). 2022 Nov 28;11(23):3277. doi: 10.3390/plants11233277.
Genome-wide association study (GWAS) is the most popular approach to dissecting complex traits in plants, humans, and animals. Numerous methods and tools have been proposed to discover the causal variants for GWAS data analysis. Among them, linear mixed models (LMMs) are widely used statistical methods for regulating confounding factors, including population structure, resulting in increased computational proficiency and statistical power in GWAS studies. Recently more attention has been paid to pleiotropy, multi-trait, gene-gene interaction, gene-environment interaction, and multi-locus methods with the growing availability of large-scale GWAS data and relevant phenotype samples. In this review, we have demonstrated all possible LMMs-based methods available in the literature for GWAS. We briefly discuss the different LMM methods, software packages, and available open-source applications in GWAS. Then, we include the advantages and weaknesses of the LMMs in GWAS. Finally, we discuss the future perspective and conclusion. The present review paper would be helpful to the researchers for selecting appropriate LMM models and methods quickly for GWAS data analysis and would benefit the scientific society.
全基因组关联研究(GWAS)是剖析植物、人类和动物复杂性状最常用的方法。人们已经提出了许多方法和工具来发现用于GWAS数据分析的因果变异。其中,线性混合模型(LMMs)是用于调节混杂因素(包括群体结构)的广泛使用的统计方法,从而提高了GWAS研究中的计算效率和统计功效。近年来,随着大规模GWAS数据和相关表型样本的日益增多,多效性、多性状、基因-基因相互作用、基因-环境相互作用和多位点方法受到了更多关注。在这篇综述中,我们展示了文献中所有基于LMMs的GWAS可用方法。我们简要讨论了GWAS中不同的LMM方法、软件包和可用的开源应用程序。然后,我们阐述了LMMs在GWAS中的优点和缺点。最后,我们讨论了未来展望和结论。本综述文章将有助于研究人员快速选择合适的LMM模型和方法进行GWAS数据分析,并将造福科学界。