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使用因子分析模型和环境分型为泛非试验网络优化大豆品种选择。

Optimizing soybean variety selection for the Pan-African Trial network using factor analytic models and envirotyping.

作者信息

Araújo Maurício S, Pavan João P S, Stella André A, Fregonezi Bruno F, Lima Natally F, Leles Erica P, Santos Michelle F, Goldsmith Peter, Chigeza Godfree, Diers Brian W, Pinheiro José B

机构信息

Genetics Diversity and Breeding Laboratory, Department of Genetics, University of São Paulo, Piracicaba, São Paulo, Brazil.

Allogamous Plant Breeding Laboratory, Department of Genetics, University of São Paulo, Piracicaba, São Paulo, Brazil.

出版信息

Front Plant Sci. 2025 Jun 6;16:1594736. doi: 10.3389/fpls.2025.1594736. eCollection 2025.

Abstract

Soybean is a global food and industrial crop, however, climate change significantly affects its grain yield. Therefore, the selection of varieties with high adaptation to target population of environments is imperative in Sub-Saharan Africa. This study aimed to identify soybean varieties with high overall performance and stability using multi-environment trial data from the Pan-African Soybean Trial Network. Additionally, we sought to determine the environmental factors influencing yield through envirotyping tools. In two South-Eastern African countries, a total of 169 soybean varieties were evaluated across 83 environments in 19 locations in Malawi (47 trials) and 14 locations in Zambia (36 trials). The trials followed a randomized complete block design with three replications. Data for 37 environmental features were obtained from NASA POWER and SoilGrids. We fitted factor analytic models (FA) to estimate genotype adaptation across environments. Additionally, we applied an environmental kernel approach and the XGBoost method to assess the number of mega-environments. The FA model with four factors provided the best fit, explaining 82.44% and 81.95% of the variance and the average semi-variance ratio (ASVR), respectively. Approximately, 59.6% of the genotype-by-environment interaction were crossover. Varieties V025, V035, and V158 exhibited high yield potential and reliability but displayed moderate stability. Three mega-environments were identified, with growing degree days, mean temperature, and photosynthetically active radiation use efficiency being the most associated features for soybean grain yield. To enhance the identification of variety adaptation in these environments, integrating machine learning models with crop growth modeling is essential to assess associations between environmental features and soybean yield.

摘要

大豆是一种全球性的粮食和工业作物,然而,气候变化对其谷物产量有显著影响。因此,在撒哈拉以南非洲地区,选择对目标环境群体具有高度适应性的品种势在必行。本研究旨在利用泛非大豆试验网络的多环境试验数据,识别具有高综合性能和稳定性的大豆品种。此外,我们试图通过环境分型工具确定影响产量的环境因素。在东南部非洲的两个国家,在马拉维的19个地点(47个试验)和赞比亚的14个地点(36个试验)的83个环境中,对总共169个大豆品种进行了评估。试验采用随机完全区组设计,重复三次。从美国国家航空航天局动力系统和土壤网格获取了37个环境特征的数据。我们拟合因子分析模型(FA)来估计基因型在不同环境中的适应性。此外,我们应用环境核方法和XGBoost方法来评估大环境的数量。具有四个因子的FA模型拟合效果最佳,分别解释了方差的82.44%和平均半方差比(ASVR) 的81.95%。大约59.6%的基因型与环境互作为交叉型。品种V025、V035和V158表现出高产潜力和可靠性,但稳定性中等。识别出了三个大环境,其中生长度日、平均温度和光合有效辐射利用效率是与大豆籽粒产量最相关的特征。为了加强在这些环境中品种适应性的识别,将机器学习模型与作物生长模型相结合对于评估环境特征与大豆产量之间的关联至关重要。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c621/12179183/2eebf90883ce/fpls-16-1594736-g001.jpg

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