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小麦冷驯化的计算基因组学见解

Computational genomics insights into cold acclimation in wheat.

作者信息

Pan Youlian, Li Yifeng, Liu Ziying, Zou Jitao, Li Qiang

机构信息

Digital Technologies, National Research Council Canada, Ottawa, ON, Canada.

Department of Computer Science, Department of Biological Science, Brock University, St. Catharines, ON, Canada.

出版信息

Front Genet. 2022 Oct 20;13:1015673. doi: 10.3389/fgene.2022.1015673. eCollection 2022.

Abstract

Development of cold acclimation in crops involves transcriptomic reprograming, metabolic shift, and physiological changes. Cold responses in transcriptome and lipid metabolism has been examined in separate studies for various crops. In this study, integrated computational approaches was employed to investigate the transcriptomics and lipidomics data associated with cold acclimation and vernalization in four wheat genotypes of distinct cold tolerance. Differential expression was investigated between cold treated and control samples and between the winter-habit and spring-habit wheat genotypes. Collectively, 12,676 differentially expressed genes (DEGs) were identified. Principal component analysis of these DEGs indicated that the first, second, and third principal components (PC1, PC2, and PC3) explained the variance in cold treatment, vernalization and cold hardiness, respectively. Differential expression feature extraction (DEFE) analysis revealed that the winter-habit wheat genotype Norstar had high number of unique DEGs (1884 up and 672 down) and 63 winter-habit genes, which were clearly distinctive from the 64 spring-habit genes based on PC1, PC2 and PC3. Correlation analysis revealed 64 cold hardy genes and 39 anti-hardy genes. Cold acclimation encompasses a wide spectrum of biological processes and the involved genes work cohesively as revealed through network propagation and collective association strength of local subnetworks. Integration of transcriptomics and lipidomics data revealed that the winter-habit genes, such as , and , together with the phosphatidylglycerol lipids, PG(34:3) and PG(36:6), played a pivotal role in cold acclimation and coordinated cohesively associated subnetworks to confer cold tolerance.

摘要

作物冷驯化的发展涉及转录组重编程、代谢转变和生理变化。在单独的研究中,已对各种作物的转录组和脂质代谢中的冷响应进行了研究。在本研究中,采用综合计算方法来研究与四种耐寒性不同的小麦基因型的冷驯化和春化相关的转录组学和脂质组学数据。研究了冷处理样品与对照样品之间以及冬性和春性小麦基因型之间的差异表达。总共鉴定出12676个差异表达基因(DEG)。对这些DEG进行主成分分析表明,第一、第二和第三主成分(PC1、PC2和PC3)分别解释了冷处理、春化和抗寒性方面的差异。差异表达特征提取(DEFE)分析表明,冬性小麦基因型Norstar具有大量独特的DEG(1884个上调和672个下调)以及63个冬性基因,基于PC1、PC2和PC3,这些基因与64个春性基因明显不同。相关性分析揭示了64个抗寒基因和39个不抗寒基因。冷驯化涵盖了广泛的生物过程,通过网络传播和局部子网的集体关联强度表明,所涉及的基因协同工作。转录组学和脂质组学数据的整合表明,冬性基因,如 、 和 ,与磷脂酰甘油脂质PG(34:3)和PG(36:6)一起,在冷驯化中起关键作用,并协调紧密相关的子网以赋予耐寒性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ee6e/9632429/681703b55a70/fgene-13-1015673-g001.jpg

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