Reverse Engineering Non-Linear Gene Regulatory Networks Based on the Bacteriophage λ cI Circuit

J. Supper, C. Spieth, A. Zell
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引用次数: 3

Abstract

The ability to measure the transcriptional response of cells has drawn much attention to the underlying transcriptional networks. To untangle the network, numerous models with corresponding reverse engineering methods have been applied. In this work, we propose a non-linear model with adjustable degrees of complexity. The corresponding reverse engineering method uses a probabilistic scheme to reduce the reconstruction problem to subnetworks. Adequate models for gene regulatory networks must be anchored on sufficient biological knowledge. Here, the cI auto-inhibition circuit (cI circuit) is used to validate our reverse engineering method. Simulations of the cI circuit are used for the reconstruction, whereas a simplified cI circuit model assists the modeling phase. Several levels of complexity are evaluated, subsequently the reconstructed models show different properties. As a result, we reconstruct an abstract model, capturing the dynamic behavior of the cI circuit to a high degree.
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基于噬菌体的逆向工程非线性基因调控网络λcI电路
测量细胞转录反应的能力引起了人们对潜在转录网络的关注。为了解开网络的纠缠,许多模型和相应的逆向工程方法被应用。在这项工作中,我们提出了一个复杂程度可调的非线性模型。相应的逆向工程方法使用概率方案将重构问题减少到子网。基因调控网络的适当模型必须以足够的生物学知识为基础。在这里,cI自抑制电路(cI电路)被用来验证我们的逆向工程方法。cI电路的仿真用于重建,而简化的cI电路模型有助于建模阶段。评估了不同层次的复杂性,然后重建模型显示出不同的性质。因此,我们重建了一个抽象模型,在很大程度上捕捉了cI电路的动态行为。
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