Variable-Depth Simulation of Most Permissive Boolean Networks

T. Roncalli, Loic Paulev'e
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Abstract

. In systems biology, Boolean networks (BNs) aim at modeling the qualitative dynamics of quantitative biological systems. Contrary to their (a)synchronous interpretations, the Most Permissive (MP) interpretation guarantees capturing all the trajectories of any quantitative system compatible with the BN, without additional parameters. Notably, the MP mode has the ability to capture transitions related to the heterogeneity of time scales and concentration scales in the abstracted quantitative system and which are not captured by asynchronous modes. So far, the analysis of MPBNs has focused on Boolean dynamical properties, such as the existence of particular trajectories or attractors. This paper addresses the sampling of trajectories from MPBNs in order to quantify the propensities of attractors reachable from a given initial BN configuration. The computation of MP transitions from a configuration is performed by iteratively discovering possible state changes. The number of iterations is referred to as the permissive depth , where the first depth corresponds to the asynchronous transitions. This permissive depth reflects the potential concentration and time scales heterogeneity along the abstracted quantitative process. The simulation of MPBNs is illustrated on several models from the literature, on which the depth parametrization can help to assess the robustness of predictions on attractor propensities changes triggered by model perturbations.
最允许布尔网络的变深度模拟
. 在系统生物学中,布尔网络(BNs)旨在对定量生物系统的定性动力学进行建模。与他们的(a)同步解释相反,最允许(MP)解释保证捕获与BN兼容的任何定量系统的所有轨迹,而不需要额外的参数。值得注意的是,MP模式能够捕获抽象定量系统中与时间尺度和浓度尺度的异质性相关的转换,而异步模式无法捕获这些转换。到目前为止,对mpbn的分析主要集中在布尔动力学性质上,如特定轨迹或吸引子的存在。本文讨论了从mpbn的轨迹采样,以便量化从给定初始BN配置可到达的吸引子的倾向。通过迭代地发现可能的状态变化来执行从一个配置的MP转换的计算。迭代的次数称为允许深度,其中第一个深度对应于异步转换。这一允许深度反映了抽象定量过程中潜在的浓度和时间尺度的异质性。本文用文献中的几个模型进行了mpbn的模拟,在这些模型上,深度参数化可以帮助评估模型扰动引发的吸引子倾向变化预测的鲁棒性。
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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