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Modeling stochasticity and robustness in gene regulatory networks

机译:基因监管网络中的旋转分类性和鲁棒性

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Motivation: Understanding gene regulation in biological processes and modeling the robustness of underlying regulatory networks is an important problem that Is currently being addressed by computational systems biologists. Lately, there has been a renewed interest in Boolean modeling techniques for gene regulatory networks (GRNs). However, due to their deterministic nature, it is often difficult to identify whether these modeling approaches are robust to the addition of stochastic noise that is widespread in gene regulatory processes. Stochasticity in Boolean models of GRNs has been addressed relatively sparingly in the past, mainly by flipping the expression of genes between different expression levels with a predefined probability. This stochasticity in nodes (SIN) model leads to over representation of noise in GRNs and hence non-correspondence with biological observations. Results: In this article, we introduce the stochasticity in functions (S1F) model for simulating stochasticity in Boolean models of GRNs. By providing biological motivation behind the use of the SIF model and applying it to the T-helper and T-cell activation networks, we show that the SIF model provides more biologically robust results than the existing SIN model of stochasticity in GRNs.
机译:动机:了解生物过程中的基因调节,建模潜在的监管网络的稳健性是目前通过计算系统生物学家解决的重要问题。最近,对基因调节网络(GRNS)的布尔建模技术进行了重新开采。然而,由于它们的确定性性质,通常难以识别这些建模方法是否对添加在基因调节过程中广泛的随机噪声是稳健的。 GRNS的布尔斯模型的瞬间已经相对谨慎地解决了过去,主要通过在不同的表达水平与预定概率之间翻转基因的表达。节点(SIN)模型中的这种随机性导致GRNS中的噪声的表示,因此与生物观察的非对应关系。结果:在本文中,我们在GRNS的布尔模型中仿真时机的功能(S1F)模型介绍了函数(S1F)模型。通过提供SIF模型的使用背后的生物动机并将其应用于T-Helper和T-Cell激活网络,我们表明SIF模型提供比GRNS中存在的SIN模型更具生物学上稳健的结果。

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