The whole-genome dissection of root system architecture provides new insights for the genetic improvement of alfalfa (Medicago sativa L.).

IF 7.6 Q1 GENETICS & HEREDITY
园艺研究(英文) Pub Date : 2025-01-11 eCollection Date: 2025-01-01 DOI:10.1093/hr/uhae271
Xueqian Jiang, Xiangcui Zeng, Ming Xu, Mingna Li, Fan Zhang, Fei He, Tianhui Yang, Chuan Wang, Ting Gao, Ruicai Long, Qingchuan Yang, Junmei Kang
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Abstract

Appropriate root system architecture (RSA) can improve alfalfa yield, yet its genetic basis remains largely unexplored. This study evaluated six RSA traits in 171 alfalfa genotypes grown under controlled greenhouse conditions. We also analyzed five yield-related traits in normal and drought stress environments and found a significant correlation (0.50) between root dry weight (RDW) and alfalfa dry weight under normal conditions (N_DW). A genome-wide association study (GWAS) was performed using 1 303 374 single-nucleotide polymorphisms (SNPs) to explore the relationships between RSA traits. Sixty significant SNPs (-log 10 (P) ≥ 5) were identified, with genes within the 50 kb upstream and downstream ranges primarily enriched in GO terms related to root development, hormone synthesis, and signaling, as well as morphological development. Further analysis identified 19 high-confidence candidate genes, including AUXIN RESPONSE FACTORs (ARFs), LATERAL ORGAN BOUNDARIES-DOMAIN (LBD), and WUSCHEL-RELATED HOMEOBOX (WOX). We verified that the forage dry weight under both normal and drought conditions exhibited significant differences among materials with different numbers of favorable haplotypes. Alfalfa containing more favorable haplotypes exhibited higher forage yields, whereas favorable haplotypes were not subjected to human selection during alfalfa breeding. Genomic prediction (GP) utilized SNPs from GWAS and machine learning for each RSA trait, achieving prediction accuracies ranging from 0.70 for secondary root position (SRP) to 0.80 for root length (RL), indicating robust predictive capability across the assessed traits. These findings provide new insights into the genetic underpinnings of root development in alfalfa, potentially informing future breeding strategies aimed at improving yield.

根系结构的全基因组剖析为紫花苜蓿(Medicago sativa L.)的遗传改良提供了新的见解。
适当的根系结构(RSA)可以提高苜蓿产量,但其遗传基础仍未得到充分的研究。本研究在温室控制条件下对171个苜蓿基因型的6个RSA性状进行了评价。对正常和干旱胁迫环境下苜蓿的5个产量相关性状进行了分析,发现正常条件下苜蓿的根干重(RDW)与根干重(N_DW)呈显著相关(0.50)。利用1 303 374个单核苷酸多态性(snp)进行全基因组关联研究(GWAS),探讨RSA性状之间的关系。共鉴定出60个显著snp (-log 10 (P)≥5),在上游和下游50 kb范围内的基因主要富集与根发育、激素合成、信号传导以及形态发育相关的氧化石墨烯。进一步分析确定了19个高置信度的候选基因,包括生长素反应因子(ARFs)、侧壁器官边界域(LBD)和wuschl相关HOMEOBOX (WOX)。结果表明,在正常和干旱条件下,不同有利单倍型数量的原料的干重存在显著差异。具有优势单倍型的紫花苜蓿具有较高的饲料产量,而优势单倍型在紫花苜蓿育种过程中不受人类选择的影响。基因组预测(GP)利用来自GWAS和机器学习的snp对每个RSA性状进行预测,实现了从次生根位置(SRP)的0.70到根长度(RL)的0.80的预测精度,表明在评估的性状中具有强大的预测能力。这些发现为苜蓿根系发育的遗传基础提供了新的见解,可能为未来旨在提高产量的育种策略提供信息。
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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CiteScore
12.90
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