Gene network modules associated with abiotic stress response in tolerant rice genotypes identified by transcriptome meta-analysis

被引:0
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作者
Shuchi Smita
Amit Katiyar
Sangram Keshari Lenka
Monika Dalal
Amish Kumar
Sanjeet Kumar Mahtha
Gitanjali Yadav
Viswanathan Chinnusamy
Dev Mani Pandey
Kailash Chander Bansal
机构
[1] Indian Agricultural Research Institute Campus,ICAR
[2] Birla Institute of Technology,National Bureau of Plant Genetic Resources
[3] University of Pittsburgh School of Medicine,Department of Bio
[4] University of Pittsburgh School of Medicine,Engineering
[5] Indian Council of Medical Research,Department of Immunology
[6] The Energy and Resources Institute,Department of Computational and Systems Biology
[7] Indian Agricultural Research Institute Campus,ICMR
[8] National Institute of Plant Genome Research,AIIMS Computational Genomics Center, Div. of I.S.R.M.
[9] Indian Agricultural Research Institute,TERI
来源
Functional & Integrative Genomics | 2020年 / 20卷
关键词
Rice (; ); Gene network module; Abiotic stress; QTLs; Tolerant genotype; Meta-analysis; Transcriptome;
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中图分类号
学科分类号
摘要
Abiotic stress tolerance is a complex trait regulated by multiple genes and gene networks in plants. A range of abiotic stresses are known to limit rice productivity. Meta-transcriptomics has emerged as a powerful approach to decipher stress-associated molecular network in model crops. However, retaining specificity of gene expression in tolerant and susceptible genotypes during meta-transcriptome analysis is important for understanding genotype-dependent stress tolerance mechanisms. Addressing this aspect, we describe here “abiotic stress tolerant” (ASTR) genes and networks specifically and differentially expressing in tolerant rice genotypes in response to different abiotic stress conditions. We identified 6,956 ASTR genes, key hub regulatory genes, transcription factors, and functional modules having significant association with abiotic stress–related ontologies and cis-motifs. Out of the 6956 ASTR genes, 73 were co-located within the boundary of previously identified abiotic stress trait–related quantitative trait loci. Functional annotation of 14 uncharacterized ASTR genes is proposed using multiple computational methods. Around 65% of the top ASTR genes were found to be differentially expressed in at least one of the tolerant genotypes under different stress conditions (cold, salt, drought, or heat) from publicly available RNAseq data comparison. The candidate ASTR genes specifically associated with tolerance could be utilized for engineering rice and possibly other crops for broad-spectrum tolerance to abiotic stresses.
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页码:29 / 49
页数:20
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