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番茄全基因组选择系统的多因素分析

Multifactor Analysis of a Genome-Wide Selection System in L.

作者信息

Tan Wanqing, Wang Zhiyuan, Wang Jia, Bilgrami Sayedehsaba, Liu Liezhao

机构信息

Integrative Science Center of Germplasm Creation in Western China (CHONGQING) Science City, College of Agronomy and Biotechnology, Southwest University, Chongqing 400715, China.

Academy of Agricultural Sciences, Southwest University, Chongqing 400715, China.

出版信息

Plants (Basel). 2025 Jul 8;14(14):2095. doi: 10.3390/plants14142095.

Abstract

is one of the most important oil crops. Rapid breeding of excellent genotypes is an important aspect of breeding. As a cutting-edge and reliable technique, genome-wide selection (GS) has been widely used and is influenced by many factors. In this study, ten phenotypic traits of two populations were studied, including oleic acid (C18:1), linoleic acid (C18:2), linolenic acid (C18:3), glucosinolate (GSL), seed oil content (SOC), and seed protein content (SPC), silique length (SL), days to initial flowering (DIF), days to final flowering (DFF), and the flowering period (FP). The effects of different GS models, marker densities, population designs, and the inclusion of nonadditive effects, trait-specific SNPs, and deleterious mutations on GS were evaluated. The results highlight the superior prediction accuracy (PA) under the RF model. Among the ten traits, the PA of glucosinolate was the highest, and that of linolenic acid was the lowest. At the same time, 5000 markers and a population of 400 samples, or a training population three times the size of an applied breeding population, can achieve optimal performance for most traits. The application of nonadditive effects and deleterious mutations had a weak effect on the improvement of traits with high PA but was effective for traits with low PA. The use of trait-specific SNPs can effectively improve the PA, especially when using markers with -values less than 0.1. In addition, we found that the PA of traits was significantly and positively correlated with the number of markers, according to -values less than 0.01. In general, based on the associated population, a GS system suitable for was established in this study, which can provide a reference for the improvement of GS and is conducive to the subsequent application of GS in , especially in the aspects of model selection of GS, the application of markers, and the setting of population sizes.

摘要

是最重要的油料作物之一。优良基因型的快速选育是育种的一个重要方面。作为一种前沿且可靠的技术,全基因组选择(GS)已被广泛应用,且受多种因素影响。在本研究中,对两个群体的十个表型性状进行了研究,包括油酸(C18:1)、亚油酸(C18:2)、亚麻酸(C18:3)、硫代葡萄糖苷(GSL)、种子油含量(SOC)、种子蛋白含量(SPC)、角果长度(SL)、初花天数(DIF)、终花天数(DFF)以及花期(FP)。评估了不同的GS模型、标记密度、群体设计以及非加性效应、性状特异性单核苷酸多态性(SNP)和有害突变对GS的影响。结果突出了随机森林(RF)模型下优越的预测准确性(PA)。在这十个性状中,硫代葡萄糖苷的PA最高,亚麻酸的PA最低。同时,5000个标记和400个样本的群体,或者应用育种群体规模三倍大小的训练群体,对大多数性状可实现最优表现。非加性效应和有害突变的应用对高PA性状的改良作用较弱,但对低PA性状有效。使用性状特异性SNP可有效提高PA,尤其是使用P值小于0.1的标记时。此外,我们发现性状的PA与标记数量显著正相关,基于P值小于0.01。总体而言,本研究基于关联群体建立了适合[具体作物名称未提及]的GS系统,可为GS的改进提供参考,有利于GS在[具体作物名称未提及]中的后续应用,特别是在GS模型选择、标记应用和群体大小设置方面。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/153e/12300503/aaa8097506a2/plants-14-02095-g001.jpg

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