数量性状位点
生物
基因-环境相互作用
遗传建筑学
人口
特质
适应性
遗传学
基因型
生态学
基因
计算机科学
社会学
人口学
程序设计语言
作者
Xiong Guo,Liwei Wang,Mahmoud Naser,Mingchao Zhao,J.L. Chen,Bingjun Jiang,Shan Yuan,Chao Qin,Tianfu Han,Shi Sun,Tingting Wu
摘要
ABSTRACT Flowering time, determined by genetic loci and environmental cues, is crucial for soybeans' geographic distribution and regional adaptability. This study aimed to generate a workflow of genetic and environmental analysis for determinants of soybean flowering time. By investigating flowering time in both natural populations and recombinant inbred lines (RIL) across eight environments spanning from 18°15′10″ N to 43°49′02″ N across two years, we found that photothermal ratio (PTR) strongly correlated with early‐ and mid‐pre‐flowering stages (16–23 days after planting). We detected 298 Quantitative Trait Locus (QTLs) in the natural population and 20 QTLs in the RIL for trait mean and 6 plasticity indicators, with 6 QTLs and 58 QTLs overlapping. Notably, seven quantitative trait nucleotide (QTNs) and eight QTN by environment interactions were colocalised with the above plasticity QTLs. By integrating 82 main‐effect, plasticity and genotype‐by‐environment (G×E) interaction loci and environmental index PTR 16–23 , we proposed a simplified and stable prediction model with an average 4.40% and 2.42% increase in accuracy for flowering time in a single environment and across environments over that of 1726 genome‐wide flowering time loci, respectively. This study propels the field of adapting diverse genotypes to dynamic environments and addressing the challenges posed by climate change.
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