Integrative analysis of seed morphology, geographic origin, and genetic structure in Medicago with implications for breeding and conservation.

IF 4.8 2区 生物学 Q1 PLANT SCIENCES BMC Plant Biology Pub Date : 2025-03-03 DOI:10.1186/s12870-025-06304-4
Seunghyun Lim, Sunchung Park, Insuck Baek, Jacob Botkin, Jae Hee Jang, Seok Min Hong, Brian M Irish, Moon S Kim, Lyndel W Meinhardt, Shaun J Curtin, Ezekiel Ahn
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引用次数: 0

Abstract

Background: Seed morphology and color are critical agronomic traits in Medicago spp., reflecting adaptations to diverse environments and influencing seedling establishment and vigor. Understanding the interplay between seed traits, geographic origin, and genetic diversity is crucial for effective germplasm conservation and breeding. This study presents a comprehensive analysis of these factors in a diverse collection of Medicago accessions, leveraging machine learning to illuminate these complex relationships.

Results: We analyzed seed size, shape, and color data from 318 Medicago accessions representing 29 species/subspecies from 31 countries. Machine learning models, including Neural Boost, Bootstrap Forest, and Support Vector Machines, effectively classified accessions based on seed traits and geographic origin, achieving up to 80% accuracy. Seed size was accurately predicted (R-squared > 0.80) using a combination of species, geographic origin, and shape descriptors. Hierarchical clustering of 189 M. sativa accessions based on 8,565 SNP markers revealed 20 distinct genetic clusters, indicating substantial population structure. A machine learning-based genome-wide association (GWA) analysis identified SNPs on chromosomes 1, 6, and 8 with high importance for predicting geographic origin. Notably, the most significant SNPs were located in or near genes involved in stress response and genome stability, suggesting their potential role in local adaptation. Finally, we successfully imputed missing M. sativa SNP genotypes using multiple machine learning approaches, achieving over 70% accuracy overall and over 80% for individual nucleotides (A, T, C, G), enhancing the utility of genomic datasets with missing data.

Conclusions: Our integrated analysis of phenotypic, genetic, and geographic data, coupled with a machine learning-based GWAS approach, provides valuable insights into the diverse patterns within Medicago spp. We demonstrate the power of machine learning for germplasm characterization, trait prediction, and imputation of missing genomic data. These findings have significant implications for seed trait improvement, germplasm management, and understanding adaptation in Medicago and other diverse crop species. The identified candidate genes associated with geographic origin provide a foundation for future investigations into the functional mechanisms of local adaptation. Furthermore, our imputation method offers a valuable data for maximizing the utility of genomic resources in Medicago and other species.

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对 Medicago 种子形态、地理起源和遗传结构的综合分析及其对育种和保护的影响。
背景:紫花苜蓿种子形态和颜色是其重要的农艺性状,反映了紫花苜蓿对不同环境的适应性,并影响秧苗的形成和生长。了解种子性状、地理来源和遗传多样性之间的相互作用对有效的种质资源保护和育种至关重要。本研究在不同的Medicago文献中对这些因素进行了全面的分析,利用机器学习来阐明这些复杂的关系。结果:我们分析了来自31个国家的318份紫花苜蓿的种子大小、形状和颜色数据,这些数据来自29个种/亚种。包括Neural Boost、Bootstrap Forest和支持向量机(Support Vector Machines)在内的机器学习模型,根据种子性状和地理来源对资料进行了有效分类,准确率高达80%。利用物种、地理来源和形状描述符的组合准确预测了种子大小(r平方> 0.80)。基于8565个SNP标记对189份苜蓿材料进行分层聚类,发现20个不同的遗传聚类,表明群体结构丰富。一项基于机器学习的全基因组关联(GWA)分析发现,染色体1、6和8上的snp对预测地理起源非常重要。值得注意的是,大多数重要的snp位于或靠近与应激反应和基因组稳定性有关的基因,这表明它们在局部适应中可能发挥作用。最后,我们使用多种机器学习方法成功地估算了缺失的芥花SNP基因型,总体准确率超过70%,单个核苷酸(A, T, C, G)的准确率超过80%,增强了缺失数据基因组数据集的实用性。结论:我们对表型、遗传和地理数据的综合分析,加上基于机器学习的GWAS方法,为紫花苜蓿的多种模式提供了有价值的见解。我们证明了机器学习在种质表征、性状预测和缺失基因组数据的代入方面的强大功能。这些发现对紫花苜蓿和其他不同作物的种子性状改良、种质资源管理和适应性认识具有重要意义。这些与地理起源相关的候选基因为进一步研究植物的本地适应功能机制奠定了基础。此外,我们的方法为最大限度地利用苜蓿和其他物种的基因组资源提供了有价值的数据。
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来源期刊
BMC Plant Biology
BMC Plant Biology 生物-植物科学
CiteScore
8.40
自引率
3.80%
发文量
539
审稿时长
3.8 months
期刊介绍: BMC Plant Biology is an open access, peer-reviewed journal that considers articles on all aspects of plant biology, including molecular, cellular, tissue, organ and whole organism research.
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