了解和量化网络对随机输入的鲁棒性

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
Hwai-Ray Tung, Sean D. Lawley
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引用次数: 0

摘要

各种生物医学系统都是由带有随机输入的确定性微分方程网络建模的。在某些情况下,尽管输入随机波动,但网络输出却非常恒定。在生物化学和细胞生物学中,具有这种特性的化学反应网络和多级过程被称为鲁棒性。同样,药理学中 "宽容性药物 "的概念是指一种药物,尽管病人不遵守处方疗程,但仍能保持疗效。是什么让网络对随机噪声具有鲁棒性?由于存在许多网络参数(大小、拓扑结构、速率常数)和多种类型的噪声输入,这个问题极具挑战性。在本文中,我们提出了一种描述线性微分方程网络(即一阶质量作用系统)鲁棒性的汇总统计量。该统计量是网络上某一随机行走通过时间的方差。该统计量可在现代计算机上快速计算,即使是对于拥有数千个节点的复杂网络也是如此。此外,我们还利用该统计量证明了某些网络图案如何提高鲁棒性的定理。重要的是,我们的分析提供了网络对噪声具有或不具有鲁棒性的直观原因。我们在数千个随机生成的网络上用各种随机输入说明了我们的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Understanding and Quantifying Network Robustness to Stochastic Inputs

Understanding and Quantifying Network Robustness to Stochastic Inputs

A variety of biomedical systems are modeled by networks of deterministic differential equations with stochastic inputs. In some cases, the network output is remarkably constant despite a randomly fluctuating input. In the context of biochemistry and cell biology, chemical reaction networks and multistage processes with this property are called robust. Similarly, the notion of a forgiving drug in pharmacology is a medication that maintains therapeutic effect despite lapses in patient adherence to the prescribed regimen. What makes a network robust to stochastic noise? This question is challenging due to the many network parameters (size, topology, rate constants) and many types of noisy inputs. In this paper, we propose a summary statistic to describe the robustness of a network of linear differential equations (i.e. a first-order mass-action system). This statistic is the variance of a certain random walk passage time on the network. This statistic can be quickly computed on a modern computer, even for complex networks with thousands of nodes. Furthermore, we use this statistic to prove theorems about how certain network motifs increase robustness. Importantly, our analysis provides intuition for why a network is or is not robust to noise. We illustrate our results on thousands of randomly generated networks with a variety of stochastic inputs.

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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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