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Exploring drought-responsive crucial genes in Sorghum.


ABSTRACT: Drought severely affects global food production. Sorghum is a typical drought-resistant model crop. Based on RNA-seq data for Sorghum with multiple time points and the gray correlation coefficient, this paper firstly selects candidate genes via mean variance test and constructs weighted gene differential co-expression networks (WGDCNs); then, based on guilt-by-rewiring principle, the WGDCNs and the hidden Markov random field model, drought-responsive crucial genes are identified for five developmental stages respectively. Enrichment and sequence alignment analysis reveal that the screened genes may play critical functional roles in drought responsiveness. A multilayer differential co-expression network for the screened genes reveals that Sorghum is very sensitive to pre-flowering drought. Furthermore, a crucial gene regulatory module is established, which regulates drought responsiveness via plant hormone signal transduction, MAPK cascades, and transcriptional regulations. The proposed method can well excavate crucial genes through RNA-seq data, which have implications in breeding of new varieties with improved drought tolerance.

SUBMITTER: Bi Y 

PROVIDER: S-EPMC9619295 | biostudies-literature | 2022 Nov

REPOSITORIES: biostudies-literature

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Exploring drought-responsive crucial genes in <i>Sorghum</i>.

Bi Yilin Y   Wang Pei P  

iScience 20221014 11


Drought severely affects global food production. <i>Sorghum</i> is a typical drought-resistant model crop. Based on RNA-seq data for <i>Sorghum</i> with multiple time points and the gray correlation coefficient, this paper firstly selects candidate genes via mean variance test and constructs weighted gene differential co-expression networks (WGDCNs); then, based on guilt-by-rewiring principle, the WGDCNs and the hidden Markov random field model, drought-responsive crucial genes are identified fo  ...[more]

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