Abstract
ContextGenotype-specific parameters (GSP) are the fundamental elements for phenotypic prediction in the DSSAT-CROPGRO soybean phenology simulation model (DCS-PSM). Yet, it is unclear about the quantitative relationship between GSP and genomics, which limits the crop models used for breeding research. ObjectiveExploring the genetic composition of GSP related to four soybean phenological traits in DCS-PSM for providing a basis for whether GSP are genetic coefficient. Highlighting the breeding value of DCS-PSM from a genetic perspective and strengthening its genetic understanding, which could support a further crop model-assisted molecular breeding. MethodsWe conducted a multi-genome-wide association study (GWAS) method by intrgrating the single-locus with multi-locus GWAS models for GSP associated quantitative trait nucleotides (QTN) detection. And the heritability, functional annotation of QTN and genotype-environment interaction (GEI) effect were further analyzed. Results(i). All GSP had high broad-sense heritability, ranging form 88.20–98.80%. (ii). Multi-locus GWAS significantly increased the QTN detection efficiency, the GSP associated QTN detected by multi-GWAS method contributed 22.11–50.25% phenotypic variation explained (PVE) of GSP. Besides, the GSP associated QTN accounted for a high PVE of four phenological traits, ranging from 54.25% to 74.75%. (iii). Most QTN overlapped with the function-known genes which regulate soybean phenology through photoperiod-temperature pathways. (iv). GSP associated QTN could reveal the GEI effect and contributed 1.45–6.27% PVE of soybean phenology. ConclusionsThis study indicated that the genetic factor was the primary source of GSP’s variation, and the multi-GWAS method could be an alternative way for the genetic analysis of GSP. Phenology-related GSP had genetic potential and could be regarded as genetic coefficients and breeding targets.
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