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Inference for Stochastic Chemical Kinetics Using Moment Equations and System Size Expansion

机译:利用矩方程和系统尺寸展开推论随机化学动力学

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摘要

Quantitative mechanistic models are valuable tools for disentangling biochemical pathways and for achieving a comprehensive understanding of biological systems. However, to be quantitative the parameters of these models have to be estimated from experimental data. In the presence of significant stochastic fluctuations this is a challenging task as stochastic simulations are usually too time-consuming and a macroscopic description using reaction rate equations (RREs) is no longer accurate. In this manuscript, we therefore consider moment-closure approximation (MA) and the system size expansion (SSE), which approximate the statistical moments of stochastic processes and tend to be more precise than macroscopic descriptions. We introduce gradient-based parameter optimization methods and uncertainty analysis methods for MA and SSE. Efficiency and reliability of the methods are assessed using simulation examples as well as by an application to data for Epo-induced JAK/STAT signaling. The application revealed that even if merely population-average data are available, MA and SSE improve parameter identifiability in comparison to RRE. Furthermore, the simulation examples revealed that the resulting estimates are more reliable for an intermediate volume regime. In this regime the estimation error is reduced and we propose methods to determine the regime boundaries. These results illustrate that inference using MA and SSE is feasible and possesses a high sensitivity.
机译:定量力学模型是解开生化途径和获得对生物系统的全面理解的宝贵工具。但是,要定量,必须从实验数据中估算这些模型的参数。在存在较大的随机波动的情况下,这是一项具有挑战性的任务,因为随机模拟通常太耗时,并且使用反应速率方程式(RRE)进行的宏观描述不再准确。因此,在本手稿中,我们考虑了矩闭合法(MA)和系统尺寸扩展(SSE),它们近似于随机过程的统计矩,并且比宏观描述更趋于精确。我们介绍了基于梯度的MA和SSE参数优化方法和不确定性分析方法。使用仿真示例以及通过Epo诱导的JAK / STAT信号的数据应用来评估方法的效率和可靠性。该应用程序显示,即使仅可获得总体平均数据,与RRE相比,MA和SSE仍可改善参数可识别性。此外,仿真示例表明,对于中间体积方案,所得估计值更为可靠。在这种情况下,估计误差得以减小,我们提出了确定方案边界的方法。这些结果说明使用MA和SSE进行推理是可行的,并且具有很高的敏感性。

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