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Qijian Song

Researcher at Agricultural Research Service

Publications -  173
Citations -  15802

Qijian Song is an academic researcher from Agricultural Research Service. The author has contributed to research in topics: Population & Quantitative trait locus. The author has an hindex of 42, co-authored 150 publications receiving 13226 citations. Previous affiliations of Qijian Song include United States Department of Agriculture & University of Maryland, College Park.

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A Population Structure and Genome-Wide Association Analysis on the USDA Soybean Germplasm Collection

TL;DR: The first comprehensive analysis of population structure on the collection of 14,000 soybean accessions using a 50K‐SNP chip provides a fuller understanding of the distribution of genetic variation contained within the USDA soybean collection and how it relates to phenotypic variation for economically important traits.
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Genome-Wide Association Mapping of Quantitative Resistance to Sudden Death Syndrome in Soybean

TL;DR: In this paper, two independent association panels of elite soybean cultivars, consisting of 392 and 300 unique accessions, respectively, were evaluated for SDS resistance in multiple environments and years.
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Genome-wide association study, genomic prediction and marker-assisted selection for seed weight in soybean ( Glycine max )

TL;DR: This study convincingly demonstrated that soybean SW is controlled by numerous minor-effect loci, and greatly enhances the understanding of the genetic basis of SW in soybean and facilitates the identification of genes controlling the trait.
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Molecular mapping and genomics of soybean seed protein: a review and perspective for the future.

TL;DR: The progress in mapping and genomics is described, the need for integrated approaches for integrating protein and amino acid QTL is highlighted, and advances in next-generation sequencing technologies for precise detection of natural variants and their integration with conventional and high-throughput genotyping technologies are described.