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Computational models of signaling processes in cells with applications: Influence of stochastic and spatial effects

机译:细胞中信号传递过程的计算模型及其应用:随机和空间效应的影响

摘要

The usual approach to the study of signaling pathways in biological systems is to assume that high numbers of cells and of perfectly mixed molecules within cells are involved. To study the temporal evolution of the system averaged over the cell population, ordinary differential equations are usually used. However, this approach has been shown to be inadequate if few copies of molecules and/or cells are present. In such situation, a stochastic or a hybrid stochastic/deterministic approach needs to be used. Moreover, considering a perfectly mixed system in cases where spatial effects are present can be an over-simplifying assumption. This can be corrected by adding diffusion terms to the ordinary differential equations describing chemical reactions and proliferation kinetics. However, there exist cases in which both stochastic and spatial effects have to be considered. We study the relevance of differential equations, stochastic Gillespie algorithm, and deterministic and stochastic reaction-diffusion models for the study of important biological processes, such as viral infection and early carcinogenesis. To that end we have developed two optimized libraries of C functions for R (r-project.org) to simulate biological systems using Petri Nets, in a pure deterministic, pure stochastic, or hybrid deterministic/stochastic fashion, with and without spatial effects. We discuss our findings in the terms of specific biological systems including signaling in innate immune response, early carcinogenesis and spatial spread of viral infection.
机译:研究生物系统中信号传导途径的常用方法是假设涉及大量细胞以及细胞内分子的完美混合。为了研究在细胞群体上平均的系统的时间演化,通常使用常微分方程。但是,如果分子和/或细胞的拷贝很少,这种方法将被证明是不够的。在这种情况下,需要使用随机的或混合的随机/确定性方法。此外,在存在空间效应的情况下考虑完全混合的系统可能是一个过于简化的假设。这可以通过在描述化学反应和扩散动力学的常微分方程中增加扩散项来纠正。但是,在某些情况下,必须同时考虑随机效应和空间效应。我们研究微分方程,随机Gillespie算法以及确定性和随机反应扩散模型对重要生物过程(如病毒感染和早期致癌作用)的研究的相关性。为此,我们开发了两个针对R的C函数的优化库(r-project.org),以使用Petri Nets以纯确定性,纯随机或混合确定性/随机方式模拟具有或不具有空间效应的生物系统。我们讨论特定生物学系统方面的发现,包括先天免疫反应,早期致癌作用和病毒感染的空间传播。

著录项

  • 作者

    Bertolusso Roberto;

  • 作者单位
  • 年度 2012
  • 总页数
  • 原文格式 PDF
  • 正文语种 eng
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