Review of stochastic hybrid systems with applications in biological systems modeling and analysis.

Xiangfang Li, Oluwaseyi Omotere, Lijun Qian, Edward R Dougherty
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引用次数: 23

Abstract

Stochastic hybrid systems (SHS) have attracted a lot of research interests in recent years. In this paper, we review some of the recent applications of SHS to biological systems modeling and analysis. Due to the nature of molecular interactions, many biological processes can be conveniently described as a mixture of continuous and discrete phenomena employing SHS models. With the advancement of SHS theory, it is expected that insights can be obtained about biological processes such as drug effects on gene regulation. Furthermore, combining with advanced experimental methods, in silico simulations using SHS modeling techniques can be carried out for massive and rapid verification or falsification of biological hypotheses. The hope is to substitute costly and time-consuming in vitro or in vivo experiments or provide guidance for those experiments and generate better hypotheses.

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随机混合系统及其在生物系统建模和分析中的应用综述。
近年来,随机混合系统(SHS)引起了广泛的研究兴趣。本文综述了近年来SHS在生物系统建模和分析中的一些应用。由于分子相互作用的性质,许多生物过程可以方便地描述为使用SHS模型的连续和离散现象的混合。随着SHS理论的发展,有望对药物对基因调控的作用等生物学过程有更深入的了解。此外,结合先进的实验方法,使用SHS建模技术的计算机模拟可以进行大规模和快速的验证或伪造生物学假设。希望能够替代昂贵且耗时的体外或体内实验,或为这些实验提供指导,并产生更好的假设。
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