Reverse engineering of gene regulatory networks: A systems approach

Zhen Wang, P. Mousavi
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Abstract

In the last decade many computational approaches have been introduced to model networks of molecular interactions from gene expression data. Such networks can provide an understanding of the regulatory mechanisms in the cells. System identification algorithms refer to a group of approaches that capture the dynamic relationship between the input and output of a system, and provide a deterministic model of its function. These approaches have been extensively developed for engineering systems, and have reasonable computational requirements. In this paper, we present two system identification methods applied to reverse engineering of gene regulatory networks. Gene regulatory networks are constructed as systems where the output to be estimated is an expression profile of a gene, and the inputs are the potential regulators of that gene. The first reverse engineering method is based on orthogonal search and selects terms from a predefined set of gene expression profiles to best fit the expression levels of a given output gene. The second method consists of multiple cascade models; each cascade includes a dynamic component and a static component. Several cascades are used in parallel to reduce the difference of the estimated expression profiles with the actual ones. To assess the performance of the proposed methods, they are applied to a temporal synthetic dataset, a simulated gene expression time series of songbird brain, and yeast Saccharomyces Cerevisiae cell cycle. Results are compared to known mechanisms of the underlying data and the literature, and demonstrate that the proposed approaches capture the underlying interactions as networks.
基因调控网络的逆向工程:系统方法
在过去的十年中,许多计算方法被引入到从基因表达数据中模拟分子相互作用网络。这样的网络可以提供对细胞调节机制的理解。系统识别算法是指捕捉系统输入和输出之间动态关系的一组方法,并提供其功能的确定性模型。这些方法已经广泛应用于工程系统,并且具有合理的计算要求。本文提出了两种用于基因调控网络逆向工程的系统识别方法。基因调控网络被构建成一个系统,其中要估计的输出是一个基因的表达谱,输入是该基因的潜在调节因子。第一种逆向工程方法是基于正交搜索,从预定义的基因表达谱集中选择最适合给定输出基因的表达水平的项。第二种方法由多个级联模型组成;每个级联包括一个动态组件和一个静态组件。为了减少估计的表达谱与实际表达谱的差异,采用了多个级联并行的方法。为了评估所提出的方法的性能,将它们应用于时间合成数据集、模拟鸣禽大脑的基因表达时间序列和酵母酵母细胞周期。结果与已知的基础数据机制和文献进行了比较,并证明了所提出的方法将基础相互作用作为网络捕获。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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