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Importance of Input Perturbations and Stochastic Gene Expression in the Reverse Engineering of Genetic Regulatory Networks: Insights From an Identifiability Analysis of an In Silico Network

机译:在基因调控网络的逆向工程中输入扰动和随机基因表达的重要性:对计算机网络的可识别性分析的见解

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摘要

Gene expression profiles are an increasingly common data source that can yield insights into the functions of cells at a system-wide level. The present work considers the limitations in information content of gene expression data for reverse engineering regulatory networks. An in silico genetic regulatory network was constructed for this purpose. Using the in silico network, a formal identifiability analysis was performed that considered the accuracy with which the parameters in the network could be estimated using gene expression data and prior structural knowledge (which transcription factors regulate which genes) as a function of the input perturbation and stochastic gene expression. The analysis yielded experimentally relevant results. It was observed that, in addition to prior structural knowledge, prior knowledge of kinetic parameters, particularly mRNA degradation rate constants, was necessary for the network to be identifiable. Also, with the exception of cases where the noise due to stochastic gene expression was high, complex perturbations were more favorable for identifying the network than simple ones. Although the results may be specific to the network considered, the present study provides a framework for posing similar questions in other systems.
机译:基因表达谱是一种越来越普遍的数据源,可以在系统范围内深入了解细胞的功能。本工作考虑了逆向工程调控网络的基因表达数据信息内容的局限性。为此目的,建立了计算机遗传调控网络。使用计算机网络,进行了正式的可识别性分析,考虑了使用基因表达数据和先前的结构知识(哪些转录因子调节哪些基因)作为输入扰动的函数来估计网络中参数的准确性。随机基因表达。该分析产生了实验相关的结果。观察到,除了先验的结构知识之外,动力学参数的先验知识,特别是mRNA降解速率常数,对于网络的识别是必需的。另外,除了随机基因表达引起的噪声高的情况以外,复杂的扰动比简单的扰动更易于识别网络。尽管结果可能特定于所考虑的网络,但本研究提供了一个框架,用于在其他系统中提出类似的问题。

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