Literature DB >> 29892844

Fine mapping and candidate gene analysis of the quantitative trait locus gw8.1 associated with grain length in rice.

Yun-Joo Kang1, Kyu-Chan Shim1, Hyun-Sook Lee1, Yun-A Jeon1, Sun-Ha Kim1, Ju-Won Kang2, Yeo-Tae Yun3, In-Kyu Park4, Sang-Nag Ahn5.   

Abstract

A quantitative trait locus (QTL) gw8.1 was detected in the population derived from a cross between the elite japonica cultivar, 'Hwaseong' and Oryza rufipogon (IRGC 105491). Near isogenic lines (NILs) harboring the O. rufipogon segment on chromosome 8 showed increased grain length and weight compared to those of the recurrent parent, Hwaseong. This QTL was mapped to a 175.3-kb region containing 28 genes, of which four were considered as candidates based on the presence of mutations in their coding regions and as per the RNA expression pattern during the inflorescence stage. Leaves and panicles obtained from plants harvested 5 days after heading showed differences in gene expression between Hwaseong and gw8.1-NILs. Most genes were upregulated in O. rufipogon and gw8.1-NIL than in Hwaseong. Scanning electron microscopy analysis of the lemma inner epidermal cells indicated that cell length was higher in gw8.1 NIL than in Hwaseong, indicating that gw8.1 might regulate cell elongation. Among the candidate genes, LOC_Os08g34380 encoding a putative receptor-like kinase and LOC_Os08g34550 encoding putative RING-H2 finger protein were considered as possible candidates based on their functional similarity.

Entities:  

Keywords:  Grain weight; Near isogenic line; Oryza rufipogon; Quantitative trait loci; Rice

Mesh:

Year:  2017        PMID: 29892844     DOI: 10.1007/s13258-017-0640-6

Source DB:  PubMed          Journal:  Genes Genomics        ISSN: 1976-9571            Impact factor:   1.839


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