Dissecting the genetic architecture of seed protein and oil content in soybean from the yangtze and huaihe river valleys using multi-locus genome- wide association studies

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Abstract

Soybean is a globally important legume crop that provides a primary source of highquality vegetable protein and oil. Seed protein and oil content are two valuable quality traits controlled by multiple genes in soybean. In this study, the restricted two-stage multi-locus genomewide association analysis (RTM-GWAS) procedure was performed to dissect the genetic architecture of seed protein and oil content in a diverse panel of 279 soybean accessions from the Yangtze and Huaihe River Valleys in China. We identified 26 quantitative trait loci (QTLs) for seed protein content and 23 for seed oil content, including five associated with both traits. Among these, 39 QTLs corresponded to previously reported QTLs, whereas 10 loci were novel. As reported previously, the QTL on chromosome 20 was associated with both seed protein and oil content. This QTL exhibited opposing effects on these traits and contributed the most to phenotype variation. From the detected QTLs, 55 and 51 candidate genes were identified for seed protein and oil content, respectively. Among these genes, eight may be promising candidate genes for improving soybean nutritional quality. These results will facilitate marker-assisted selective breeding for soybean protein and oil content traits.

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Li, S., Xu, H., Yang, J., & Zhao, T. (2019). Dissecting the genetic architecture of seed protein and oil content in soybean from the yangtze and huaihe river valleys using multi-locus genome- wide association studies. International Journal of Molecular Sciences, 20(12). https://doi.org/10.3390/ijms20123041

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