Biotechnology & Biotechnological Equipment (Jul 2018)

QTL mapping and candidate gene mining for soybean seed weight per plant

  • Meng Yu,
  • Zhangxiong Liu,
  • Shanshan Jiang,
  • Ning Xu,
  • Qingshan Chen,
  • Zhaoming Qi,
  • Wenhe Lv

DOI
https://doi.org/10.1080/13102818.2018.1438851
Journal volume & issue
Vol. 32, no. 4
pp. 908 – 914

Abstract

Read online

In this study, 147 recombinant inbred soybean lines constructed from the parents Charleston and Dongnong594, were used to map quantitative trait loci (QTLs) for seed weight per plant in multiple years (2006 to 2010 and 2013). QTL mapping was done using a simple sequence repeat (SSR) map combined with specific-locus amplified fragment (SLAF) map and the composite interval mapping (CIM), multiple interval mapping (MIM) and inclusive complete interval mapping method (ICIM) algorithms. By combining QTLs with the QTL physical locations, two QTL intervals located in the D1a and C2 linkage groups were found in different years. KEGG and GO annotations of the 413 genes located within these QTL intervals were used to screen for candidate genes potentially involved in seed production. Based on WeGo online genetic classification, we ultimately selected four genes related to yield traits, Glyma.01G158700, Glyma.01G156800, Glyma.01G125400 and Glyma.01G147800, as candidate genes.

Keywords