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首页> 外文期刊>Journal of computational biology: A journal of computational molecular cell biology >A Bayesian Network-Based Approach to Selection of Intervention Points in the Mitogen-Activated Protein Kinase Plant Defense Response Pathway
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A Bayesian Network-Based Approach to Selection of Intervention Points in the Mitogen-Activated Protein Kinase Plant Defense Response Pathway

机译:基于百叶菌基于网络的基于网络的介入性蛋白激酶植物防御响应途径选择方法

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摘要

An important problem in computational biology is the identification of potential points of intervention that can lead to modified network behavior in a genetic regulatory network. We consider the problem of deducing the effect of individual genes on the behavior of the network in a statistical framework. In this article, we make use of biological information from the literature to develop a Bayesian network and introduce a method to estimate parameters of this network using data that are relevant to the biological phenomena under study. Then, we give a novel approach to select significant nodes in the network using a decision-theoretic approach. The proposed method is applied to the analysis of the mitogenactivated protein kinase pathway in the plant defense response to pathogens. Results from applying the method to experimental data show that the proposed approach is effective in selecting genes that play crucial roles in the biological phenomenon being studied.
机译:计算生物学中的一个重要问题是识别可能导致遗传监管网络中的修改网络行为的潜在干预点。 我们认为在统计框架中迈出了对网络对网络行为的影响的问题。 在本文中,我们利用文献中的生物信息来开发贝叶斯网络,并使用与研究中的生物现象相关的数据来介绍该网络参数的方法。 然后,我们使用决策理论方法给出一种新的方法来选择网络中的重要节点。 该方法用于分析植物防御响应对病原体的促催化蛋白激酶途径。 将该方法应用于实验数据结果表明,该方法在选择所研究的生物现象中起重要作用的基因是有效的。

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