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Development of an Agent-Based Model (ABM) to Simulate the Immune System and Integration of a Regression Method to Estimate the Key ABM Parameters by Fitting the Experimental Data

机译:开发基于主体的模型(ABM)来模拟免疫系统并集成回归方法以拟合实验数据来估计关键的ABM参数

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摘要

Agent-based models (ABM) and differential equations (DE) are two commonly used methods for immune system simulation. However, it is difficult for ABM to estimate key parameters of the model by incorporating experimental data, whereas the differential equation model is incapable of describing the complicated immune system in detail. To overcome these problems, we developed an integrated ABM regression model (IABMR). It can combine the advantages of ABM and DE by employing ABM to mimic the multi-scale immune system with various phenotypes and types of cells as well as using the input and output of ABM to build up the Loess regression for key parameter estimation. Next, we employed the greedy algorithm to estimate the key parameters of the ABM with respect to the same experimental data set and used ABM to describe a 3D immune system similar to previous studies that employed the DE model. These results indicate that IABMR not only has the potential to simulate the immune system at various scales, phenotypes and cell types, but can also accurately infer the key parameters like DE model. Therefore, this study innovatively developed a complex system development mechanism that could simulate the complicated immune system in detail like ABM and validate the reliability and efficiency of model like DE by fitting the experimental data.
机译:基于代理的模型(ABM)和微分方程(DE)是免疫系统仿真的两种常用方法。但是,ABM难以通过合并实验数据来估计模型的关键参数,而微分方程模型无法详细描述复杂的免疫系统。为了克服这些问题,我们开发了一个集成的ABM回归模型(IABMR)。它可以通过使用ABM模仿具有各种表型和细胞类型的多尺度免疫系统,以及使用ABM的输入和输出来建立Loess回归以进行关键参数估计,从而结合ABM和DE的优势。接下来,我们采用贪婪算法估算相对于相同实验数据集的ABM关键参数,并使用ABM来描述3D免疫系统,与采用DE模型的先前研究相似。这些结果表明,IABMR不仅具有模拟各种规模,表型和细胞类型的免疫系统的潜力,而且还可以准确地推断出诸如DE模型之类的关键参数。因此,本研究创新地开发了一种复杂的系统开发机制,该机制可以详细模拟复杂的免疫系统(如ABM),并通过拟合实验数据来验证模型(如DE)的可靠性和效率。

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