Literature DB >> 29159422

Fine-mapping of QTLs for individual and total isoflavone content in soybean (Glycine max L.) using a high-density genetic map.

Zhandong Cai1,2,3, Yanbo Cheng1,2,3, Zhuwen Ma1,2,4, Xinguo Liu1,2, Qibin Ma1,2,3, Qiuju Xia5, Gengyun Zhang5, Yinghui Mu6,7,8, Hai Nian9,10,11.   

Abstract

KEY MESSAGE: Fifteen stable QTLs were identified using a high-density soybean genetic map across multiple environments. One major QTL, qIF5-1, contributing to total isoflavone content explained phenotypic variance 49.38, 43.27, 46.59, 45.15 and 52.50%, respectively. Soybeans (Glycine max L.) are a major source of dietary isoflavones. To identify novel quantitative trait loci (QTL) underlying isoflavone content, and to improve the accuracy of marker-assisted breeding in soybean, a valuable mapping population comprised of 196 F7:8-10 recombinant inbred lines (RILs, Huachun 2 × Wayao) was utilized to evaluate individual and total isoflavone content in plants grown in four different environments in Guangdong. A high-density genetic linkage map containing 3469 recombination bin markers based on 0.2 × restriction site-associated DNA tag sequencing (RAD-seq) technology was used to finely map QTLs for both individual and total isoflavone contents. Correlation analyses showed that total isoflavone content, and that of five individual isoflavone, was significantly correlated across the four environments. Based on the high-density genetic linkage map, a total of 15 stable quantitative trait loci (QTLs) associated with isoflavone content across multiple environments were mapped onto chromosomes 02, 05, 07, 09, 10, 11, 13, 16, 17, and 19. Further, one of them, qIF5-1, localized to chromosomes 05 (38,434,171-39,045,620 bp) contributed to almost all isoflavone components across all environments, and explained 6.37-59.95% of the phenotypic variance, especially explained 49.38, 43.27, 46.59, 45.15 and 52.50% for total isoflavone. The results obtained in the present study will pave the way for a better understanding of the genetics of isoflavone accumulation and reveals the scope available for improvement of isoflavone content through marker-assisted selection.

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Year:  2017        PMID: 29159422     DOI: 10.1007/s00122-017-3018-x

Source DB:  PubMed          Journal:  Theor Appl Genet        ISSN: 0040-5752            Impact factor:   5.699


  42 in total

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6.  Identification of QTL underlying isoflavone contents in soybean seeds among multiple environments.

Authors:  Guoliang Zeng; Dongmei Li; Yingpeng Han; Weili Teng; Jian Wang; Liquan Qiu; Wenbin Li
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7.  Intricate environment-modulated genetic networks control isoflavone accumulation in soybean seeds.

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  12 in total

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9.  Acid phosphatase gene GmHAD1 linked to low phosphorus tolerance in soybean, through fine mapping.

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10.  QTL mapping for aluminum tolerance in RIL population of soybean (Glycine max L.) by RAD sequencing.

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