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全基因组关联研究作为剖析豆科植物竞争性状的有力工具。

Genome-wide association study as a powerful tool for dissecting competitive traits in legumes.

作者信息

Susmitha Pusarla, Kumar Pawan, Yadav Pankaj, Sahoo Smrutishree, Kaur Gurleen, Pandey Manish K, Singh Varsha, Tseng Te Ming, Gangurde Sunil S

机构信息

Regional Agricultural Research Station, Acharya N.G. Ranga Agricultural University, Andhra Pradesh, India.

Department of Genetics and Plant Breeding, College of Agriculture, Chaudhary Charan Singh (CCS) Haryana Agricultural University, Hisar, India.

出版信息

Front Plant Sci. 2023 Aug 14;14:1123631. doi: 10.3389/fpls.2023.1123631. eCollection 2023.

Abstract

Legumes are extremely valuable because of their high protein content and several other nutritional components. The major challenge lies in maintaining the quantity and quality of protein and other nutritional compounds in view of climate change conditions. The global need for plant-based proteins has increased the demand for seeds with a high protein content that includes essential amino acids. Genome-wide association studies (GWAS) have evolved as a standard approach in agricultural genetics for examining such intricate characters. Recent development in machine learning methods shows promising applications for dimensionality reduction, which is a major challenge in GWAS. With the advancement in biotechnology, sequencing, and bioinformatics tools, estimation of linkage disequilibrium (LD) based associations between a genome-wide collection of single-nucleotide polymorphisms (SNPs) and desired phenotypic traits has become accessible. The markers from GWAS could be utilized for genomic selection (GS) to predict superior lines by calculating genomic estimated breeding values (GEBVs). For prediction accuracy, an assortment of statistical models could be utilized, such as ridge regression best linear unbiased prediction (rrBLUP), genomic best linear unbiased predictor (gBLUP), Bayesian, and random forest (RF). Both naturally diverse germplasm panels and family-based breeding populations can be used for association mapping based on the nature of the breeding system (inbred or outbred) in the plant species. MAGIC, MCILs, RIAILs, NAM, and ROAM are being used for association mapping in several crops. Several modifications of NAM, such as doubled haploid NAM (DH-NAM), backcross NAM (BC-NAM), and advanced backcross NAM (AB-NAM), have also been used in crops like rice, wheat, maize, barley mustard, etc. for reliable marker-trait associations (MTAs), phenotyping accuracy is equally important as genotyping. Highthroughput genotyping, phenomics, and computational techniques have advanced during the past few years, making it possible to explore such enormous datasets. Each population has unique virtues and flaws at the genomics and phenomics levels, which will be covered in more detail in this review study. The current investigation includes utilizing elite breeding lines as association mapping population, optimizing the choice of GWAS selection, population size, and hurdles in phenotyping, and statistical methods which will analyze competitive traits in legume breeding.

摘要

豆类因其高蛋白含量和其他几种营养成分而极具价值。鉴于气候变化条件,主要挑战在于维持蛋白质和其他营养化合物的数量和质量。全球对植物性蛋白质的需求增加了对富含包括必需氨基酸在内的高蛋白种子的需求。全基因组关联研究(GWAS)已发展成为农业遗传学中用于研究此类复杂性状的标准方法。机器学习方法的最新进展显示了在降维方面的应用前景,而降维是GWAS中的一项重大挑战。随着生物技术、测序和生物信息学工具的进步,基于连锁不平衡(LD)估计全基因组单核苷酸多态性(SNP)集合与所需表型性状之间的关联已成为可能。GWAS中的标记可用于基因组选择(GS),通过计算基因组估计育种值(GEBV)来预测优良品系。为了提高预测准确性,可以使用多种统计模型,如岭回归最佳线性无偏预测(rrBLUP)、基因组最佳线性无偏预测器(gBLUP)、贝叶斯模型和随机森林(RF)。根据植物物种的育种系统性质(自交或异交),自然多样的种质群体和基于家系的育种群体均可用于关联作图。MAGIC、MCILs、RIAILs、NAM和ROAM正在多种作物中用于关联作图。NAM的几种改良形式,如双单倍体NAM(DH-NAM)、回交NAM(BC-NAM)和高级回交NAM(AB-NAM),也已用于水稻、小麦、玉米、大麦芥菜等作物中,以获得可靠的标记-性状关联(MTA),表型分析的准确性与基因分型同样重要。在过去几年中,高通量基因分型、表型组学和计算技术取得了进展,使得探索如此庞大的数据集成为可能。每个群体在基因组学和表型组学层面都有独特的优点和缺点,本综述研究将对此进行更详细的阐述。当前的研究包括利用优良育种系作为关联作图群体、优化GWAS选择、群体大小的选择以及表型分析中的障碍,以及将分析豆类育种中竞争性状的统计方法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c061/10461012/4a2e2cc9d1a8/fpls-14-1123631-g001.jpg

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