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一项关于理解水稻耐盐机制的计算系统生物学研究。

A computational systems biology study for understanding salt tolerance mechanism in rice.

机构信息

College of Computer Science and Technology, Jilin University, Changchun, China.

出版信息

PLoS One. 2013 Jun 7;8(6):e64929. doi: 10.1371/journal.pone.0064929. Print 2013.

Abstract

Salinity is one of the most common abiotic stresses in agriculture production. Salt tolerance of rice (Oryza sativa) is an important trait controlled by various genes. The mechanism of rice salt tolerance, currently with limited understanding, is of great interest to molecular breeding in improving grain yield. In this study, a gene regulatory network of rice salt tolerance is constructed using a systems biology approach with a number of novel computational methods. We developed an improved volcano plot method in conjunction with a new machine-learning method for gene selection based on gene expression data and applied the method to choose genes related to salt tolerance in rice. The results were then assessed by quantitative trait loci (QTL), co-expression and regulatory binding motif analysis. The selected genes were constructed into a number of network modules based on predicted protein interactions including modules of phosphorylation activity, ubiquity activity, and several proteinase activities such as peroxidase, aspartic proteinase, glucosyltransferase, and flavonol synthase. All of these discovered modules are related to the salt tolerance mechanism of signal transduction, ion pump, abscisic acid mediation, reactive oxygen species scavenging and ion sequestration. We also predicted the three-dimensional structures of some crucial proteins related to the salt tolerance QTL for understanding the roles of these proteins in the network. Our computational study sheds some new light on the mechanism of salt tolerance and provides a systems biology pipeline for studying plant traits in general.

摘要

盐度是农业生产中最常见的非生物胁迫之一。水稻(Oryza sativa)的耐盐性是由多种基因控制的重要性状。目前,对水稻耐盐性机制的了解有限,但它对提高粮食产量的分子育种具有重要意义。在这项研究中,我们采用系统生物学方法构建了一个水稻耐盐性的基因调控网络,结合了一些新的计算方法。我们开发了一种改进的火山图方法,并结合了一种新的基于基因表达数据的基因选择机器学习方法,用于选择与水稻耐盐性相关的基因。然后通过数量性状位点(QTL)、共表达和调控结合基序分析来评估结果。选择的基因根据预测的蛋白质相互作用构建成多个网络模块,包括磷酸化活性、泛素化活性模块以及几种蛋白酶活性,如过氧化物酶、天冬氨酸蛋白酶、葡萄糖基转移酶和类黄酮合酶。所有这些发现的模块都与信号转导、离子泵、脱落酸介导、活性氧清除和离子螯合的耐盐性机制有关。我们还预测了与耐盐性 QTL 相关的一些关键蛋白质的三维结构,以了解这些蛋白质在网络中的作用。我们的计算研究为耐盐性机制提供了一些新的见解,并为一般植物性状的系统生物学研究提供了一个管道。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/04ea/3676415/ba26b8804407/pone.0064929.g001.jpg

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