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StochPy: A Comprehensive User-Friendly Tool for Simulating Stochastic Biological Processes

机译:StochPy:用于模拟随机生物过程的全面用户友好的工具

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摘要

Single-cell and single-molecule measurements indicate the importance of stochastic phenomena in cell biology. Stochasticity creates spontaneous differences in the copy numbers of key macromolecules and the timing of reaction events between genetically-identical cells. Mathematical models are indispensable for the study of phenotypic stochasticity in cellular decision-making and cell survival. There is a demand for versatile, stochastic modeling environments with extensive, preprogrammed statistics functions and plotting capabilities that hide the mathematics from the novice users and offers low-level programming access to the experienced user. Here we present StochPy (Stochastic modeling in Python), which is a flexible software tool for stochastic simulation in cell biology. It provides various stochastic simulation algorithms, SBML support, analyses of the probability distributions of molecule copy numbers and event waiting times, analyses of stochastic time series, and a range of additional statistical functions and plotting facilities for stochastic simulations. We illustrate the functionality of StochPy with stochastic models of gene expression, cell division, and single-molecule enzyme kinetics. StochPy has been successfully tested against the SBML stochastic test suite, passing all tests. StochPy is a comprehensive software package for stochastic simulation of the molecular control networks of living cells. It allows novice and experienced users to study stochastic phenomena in cell biology. The integration with other Python software makes StochPy both a user-friendly and easily extendible simulation tool.
机译:单细胞和单分子的测量表明随机现象在细胞生物学中的重要性。随机性在关键大分子的拷贝数和遗传相同细胞之间的反应事件的时间上产生自发的差异。数学模型对于研究细胞决策和细胞存活中的表型随机性是必不可少的。需要具有广泛的,预编程的统计功能和绘图功能的多功能,随机建模环境,这些功能可将数学知识从新手用户那里隐藏起来,并为有经验的用户提供低级编程访问权限。在这里,我们介绍StochPy(Python中的随机建模),它是用于细胞生物学随机模拟的灵活软件工具。它提供了各种随机模拟算法,SBML支持,分子拷贝数和事件等待时间的概率分布分析,随机时间序列分析以及一系列用于随机模拟的统计功能和绘图工具。我们用基因表达,细胞分裂和单分子酶动力学的随机模型说明了StochPy的功能。 StochPy已针对SBML随机测试套件成功通过了所有测试的测试。 StochPy是用于随机模拟活细胞分子控制网络的综合软件包。它允许新手和有经验的用户研究细胞生物学中的随机现象。与其他Python软件的集成使StochPy成为用户友好且易于扩展的仿真工具。

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