转录调控网络的通用模型:在非生物胁迫下植物的应用

A. Tchagang, Sieu Phan, Fazel Famili, Youlian Pan, A. Cutler, Jitao Zou
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引用次数: 2

摘要

了解植物在非生物胁迫响应、耐受和适应逆境条件下转录因子与基因之间的关系,对培育抗逆性作物品种具有重要意义。虽然表征应激反应性tf及其靶标的实验方法非常准确,但在给定的应激反应事件中识别和表征给定基因的作用通常是费力和耗时的。另一方面,计算方法通过集成高通量组学数据和数学方法/模型,提供了一个识别新知识的平台。在这项研究中,我们开发了一个转录调控网络(trn)的通用线性模型和一个伴随算法来识别和表征应激反应基因及其在给定应激反应事件中的作用。以拟南芥为例,将该方法应用于非生物胁迫下的植物研究。在非生物胁迫条件下,我们推断出了已知的相互作用,并推测出了新的相互作用,这些相互作用可能在植物中发挥重要作用,并得到了统计和文献证据的证实。
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A generic model of transcriptional regulatory networks: Application to plants under abiotic stress
Understanding the relationships between transcription factors (TFs) and genes in plants under abiotic stress responses, tolerance and adaptation to adverse environments is very important in developing resilient crop varieties. While experimental methods to characterize stress responsive TFs and their targets are highly accurate, identification and characterization of the role of a given gene in a given stress response event are often laborious and time consuming. Computational approaches, on the other hand, offer a platform to identify new knowledge by integrating high throughput omics data and mathematical methods/models. In this research, we have developed a generic linear model of transcriptional regulatory networks (TRNs) and a companion algorithm to identify and to characterize stress responsive genes and their roles in a given stress response event. The proposed methodology was applied to plants, by using Arabidopsis thaliana as an example, under abiotic stress. Well known interactions were inferred as well as putative novel ones that may play important roles in plants under abiotic stress conditions as confirmed by statistical and literature evidences.
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