Molecular mapping of quantitative trait loci for grain moisture at harvest and field grain drying rate in maize (Zea mays L.).

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2019
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Abstract
Maize (Zea mays L.) grain moisture (GM) at harvest is an important trait that affects seed preservation during storage, grain quality, and artificial drying costs. To date, most of the work on understanding GM dynamics in maize has focused on the grain filling period, while the period of post-maturity grain drying remains unexplored. The field grain drying rate (FDR) is one of the most important factors in determining GM at harvest. Therefore, understanding the genetic basis of FDR will be useful for obtaining low-GM varieties. In this study, a single-cross population (330 F -generation plants) derived from a cross of two divergent inbred lines was evaluated in two planting environments with a measurement method - Area under the Dry Down Curve (AUDDC). A high-density genetic linkage map of 2491 SNP loci covering 2415.56 cM was constructed. Using composite interval mapping, four quantitative trait loci (QTL), q45dGM1-1, qHTGM2-2, qAUDDC2-1, and qAUDDC10-1, which were detected on chromosomes 1, 2, and 10, were stable across environments and could explain more than 10% of phenotypic variance. These may be the major QTLs, with non-significant environmental interactions for GM at 45 days, GM at harvest, and FDR, respectively. Additionally, several predicted candidate genes for FDR were identified, including several transcription factors, hormone responsive genes, energy-related, and DNA replication-related genes. These results will provide useful information for our understanding of the genetic basis of FDR, as well as providing tools for marker-assisted selection in maize breeding. This article is protected by copyright. All rights reserved.
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zhang2019molecularphysiologia Use this key to autocite in the manuscript while using SciMatic Manuscript Manager or Thesis Manager
Authors Zhang, Jun;Zhang, Fengqi;Tang, Baojun;Ding, Yong;Xia, Laikun;Qi, Jianshuang;Mu, Xinyuan;Gu, Liming;Lu, Daowen;Chen, Yanhui;
Journal physiologia plantarum
Year 2019
DOI
10.1111/ppl.13048
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