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Simulation and inference algorithms for stochastic biochemical reaction networks: from basic concepts to state-of-the-art

机译:随机生化反应网络的模拟和推理算法:从基本概念到最新技术

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摘要

Stochasticity is a key characteristic of intracellular processes such as gene regulation and chemical signalling. Therefore, characterizing stochastic effects in biochemical systems is essential to understand the complex dynamics of living things. Mathematical idealizations of biochemically reacting systems must be able to capture stochastic phenomena. While robust theory exists to describe such stochastic models, the computational challenges in exploring these models can be a significant burden in practice since realistic models are analytically intractable. Determining the expected behaviour and variability of a stochastic biochemical reaction network requires many probabilistic simulations of its evolution. Using a biochemical reaction network model to assist in the interpretation of time-course data from a biological experiment is an even greater challenge due to the intractability of the likelihood function for determining observation probabilities. These computational challenges have been subjects of active research for over four decades. In this review, we present an accessible discussion of the major historical developments and state-of-the-art computational techniques relevant to simulation and inference problems for stochastic biochemical reaction network models. Detailed algorithms for particularly important methods are described and complemented with Matlab® implementations. As a result, this review provides a practical and accessible introduction to computational methods for stochastic models within the life sciences community.
机译:随机性是细胞内过程(如基因调控和化学信号转导)的关键特征。因此,表征生化系统中的随机效应对于理解生物的复杂动力学至关重要。生化反应系统的数学理想化必须能够捕获随机现象。尽管存在描述此类随机模型的强大理论,但由于现实模型在分析上难以解决,因此探索这些模型的计算难题可能在实践中构成重大负担。确定随机生化反应网络的预期行为和可变性需要对其演化进行许多概率模拟。由于要确定观测概率的似然函数的难处理性,使用生化反应网络模型来帮助解释生物学实验中的时程数据是一个更大的挑战。这些计算挑战已成为四十年来积极研究的主题。在这篇综述中,我们提出了关于随机生物化学反应网络模型的主要历史发展和与模拟和推理问题相关的最新计算技术的无障碍讨论。描述了特别重要的方法的详细算法,并补充了Matlab ®实现。因此,本综述为生命科学界内的随机模型的计算方法提供了实用且易于访问的介绍。

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