首页> 美国卫生研究院文献>International Journal of Molecular Sciences >Developing a Novel Parameter Estimation Method for Agent-Based Model in Immune System Simulation under the Framework of History Matching: A Case Study on Influenza A Virus Infection
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Developing a Novel Parameter Estimation Method for Agent-Based Model in Immune System Simulation under the Framework of History Matching: A Case Study on Influenza A Virus Infection

机译:在历史匹配框架下开发基于代理模型的免疫系统仿真模型参数估计新方法:以甲型流感病毒感染为例

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摘要

Since they can provide a natural and flexible description of nonlinear dynamic behavior of complex system, Agent-based models (ABM) have been commonly used for immune system simulation. However, it is crucial for ABM to obtain an appropriate estimation for the key parameters of the model by incorporating experimental data. In this paper, a systematic procedure for immune system simulation by integrating the ABM and regression method under the framework of history matching is developed. A novel parameter estimation method by incorporating the experiment data for the simulator ABM during the procedure is proposed. First, we employ ABM as simulator to simulate the immune system. Then, the dimension-reduced type generalized additive model (GAM) is employed to train a statistical regression model by using the input and output data of ABM and play a role as an emulator during history matching. Next, we reduce the input space of parameters by introducing an implausible measure to discard the implausible input values. At last, the estimation of model parameters is obtained using the particle swarm optimization algorithm (PSO) by fitting the experiment data among the non-implausible input values. The real Influeza A Virus (IAV) data set is employed to demonstrate the performance of our proposed method, and the results show that the proposed method not only has good fitting and predicting accuracy, but it also owns favorable computational efficiency.
机译:由于它们可以提供复杂系统非线性动态行为的自然而灵活的描述,因此基于代理的模型(ABM)已广泛用于免疫系统仿真。但是,对于ABM而言,通过合并实验数据来获得对模型关键参数的适当估计至关重要。本文在历史匹配的框架下,通过结合ABM和回归方法,开发了一种免疫系统模拟的系统程序。提出了一种新的参数估计方法,该方法通过在仿真过程中结合仿真器ABM的实验数据。首先,我们采用ABM作为模拟器来模拟免疫系统。然后,使用降维类型的广义加性模型(GAM)通过使用ABM的输入和输出数据来训练统计回归模型,并在历史匹配期间充当仿真器。接下来,我们通过引入难以置信的措施来丢弃不可信的输入值来减少参数的输入空间。最后,使用粒子群优化算法(PSO)通过将实验数据拟合到不可信的输入值中来获得模型参数的估计。利用真实的Influeza A Virus(IAV)数据集来证明该方法的性能,结果表明该方法不仅具有良好的拟合和预测精度,而且具有良好的计算效率。

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