遗传调控网络随机主方程模型的平均行为近似控制

R. Pal, M. Caglar
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引用次数: 4

摘要

随机主方程(SME)模型可以提供遗传调控系统的详细描述,但其应用受到参数推理的大数据需求和模拟过程中固有的计算复杂性的限制。本文用确定性微分方程(DE)模型的输出来近似估计中小企业的输出分布的期望值。映射提供了一种技术,以一种计算成本低廉的方式模拟系统的平均行为,并使我们能够使用现有的DE模型工具来控制系统。通过一个生物实例评估了绘制地图和随后干预政策设计的有效性。
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Control of stochastic master equation models of genetic regulatory networks by approximating their average behavior
Stochastic master equation (SME) models can provide detailed representation of genetic regulatory system but their use is restricted by the large data requirements for parameter inference and inherent computational complexity involved in its simulation. In this paper, we approximate the expected value of the output distribution of the SME by the output of a deterministic Differential Equation (DE) model. The mapping provides a technique to simulate the average behavior of the system in a computationally inexpensive manner and enables us to use existing tools for DE models to control the system. The effectiveness of the mapping and the subsequent intervention policy design was evaluated through a biological example.
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