Abstract

BackgroundDrought is the most disastrous abiotic stress that severely affects agricultural productivity worldwide. Understanding the biological basis of drought-regulated traits, requires identification and an in-depth characterization of genetic determinants using model organisms and high-throughput technologies. However, studies on drought tolerance have generally been limited to traditional candidate gene approach that targets only a single gene in a pathway that is related to a trait. In this study, we used sorghum, one of the model crops that is well adapted to arid regions, to mine genes and define determinants for drought tolerance using drought expression libraries and RNA-seq data.ResultsWe provide an integrated and comparative in silico candidate gene identification, characterization and annotation approach, with an emphasis on genes playing a prominent role in conferring drought tolerance in sorghum. A total of 470 non-redundant functionally annotated drought responsive genes (DRGs) were identified using experimental data from drought responses by employing pairwise sequence similarity searches, pathway and interpro-domain analysis, expression profiling and orthology relation. Comparison of the genomic locations between these genes and sorghum quantitative trait loci (QTLs) showed that 40% of these genes were co-localized with QTLs known for drought tolerance. The genome reannotation conducted using the Program to Assemble Spliced Alignment (PASA), resulted in 9.6% of existing single gene models being updated. In addition, 210 putative novel genes were identified using AUGUSTUS and PASA based analysis on expression dataset. Among these, 50% were single exonic, 69.5% represented drought responsive and 5.7% were complete gene structure models. Analysis of biochemical metabolism revealed 14 metabolic pathways that are related to drought tolerance and also had a strong biological network, among categories of genes involved. Identification of these pathways, signifies the interplay of biochemical reactions that make up the metabolic network, constituting fundamental interface for sorghum defence mechanism against drought stress.ConclusionsThis study suggests untapped natural variability in sorghum that could be used for developing drought tolerance. The data presented here, may be regarded as an initial reference point in functional and comparative genomics in the Gramineae family.

Highlights

  • Drought is the most disastrous abiotic stress that severely affects agricultural productivity worldwide

  • Reannotation of sorghum drought responsive genes Sorghum genome annotation was improved by the Program to Assemble Spliced Alignment (PASA) pipeline

  • The reliability and validity of our data contributed to the identification of a large array of functionally enriched Drought Responsive Gene (DRG) which were not ascribed in previous annotation

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Summary

Introduction

Drought is the most disastrous abiotic stress that severely affects agricultural productivity worldwide. We used sorghum, one of the model crops that is well adapted to arid regions, to mine genes and define determinants for drought tolerance using drought expression libraries and RNA-seq data. Other methodologies include whole genome sequencing, genome scanning, comparative genomics and transcriptomics to describe the biological mechanisms and functional information so as to identify and understand the functional basis of sorghum inherited traits [8,9,10]. All findings using the above methodologies suggest that there is relatively limited work that has been reported on candidate gene identification for drought tolerance in sorghum as compared to most studied plants such as Arabidopsis [11], Maize [12] and Rice [13]. Assigning drought tolerance phenotype to any of these genes is apparently not just important for plant transformation to improve sorghum drought tolerance and yield stability and for marker-assisted breeding, especially in a non-genetically modified crops

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