Mathematical immunology: processes, models and data assimilation

D. Grebennikov, Valeriya V. Zheltkova, R. Savinkov, G. Bocharov
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Abstract

The immune system is a complex multiscale multiphysical object. Understanding its functioning in the frame of systemic analysis implies the use of mathematical modelling, formulation of data consistency criterion, estimation of parameters, uncertainty analysis, and optimal model selection. In this work, we present some promising approaches to modelling the multi-physics immune processes, i.e., cell migration in lymph nodes (LN), lymph flow, homeostatic regulation of immune responses in chronic infections. To describe the spatial-temporal dynamics of immune responses in lymph LN, we propose a model of lymphocyte migration, based on the second Newtons law and considering three kinds of forces. The empirical distributions of three lymphocytes motility characteristics were used for model calibration using the KolmogorovSmirnov metric. Prediction of lymph flow in a lymph node requires costly computations, due to diversity of sizes, forms, inner structure of LNs and boundary conditions. We proposed an approach to lymph flow modelling based on replacing the full-fledged computational physics-based model with an artificial neural network (ANN), trained on the set of pre-formed results computed using an initial mechanistic model. The ANN-based model reduces the computational time for some lymph flow characteristics by four orders of magnitude. Calibration of MarchukPetrov model of antiviral immune response for SARS-CoV-2 infection was performed. To this end, we used previously published data on the viral load kinetics in nasopharynx of volunteers, and data on the observed ranges of interferon, antibodies and CTLs in the blood. The parameters, which have the most significant impact at different stages of infection process, were identified. Inhibition of immune mechanisms, e.g., T cell exhaustion, is a distinctive feature of chronic viral infections and malignant diseases. We propose a mathematical model for the studies of regulation parameters of four exhausted T cell subsets in order to examine the balance of their proliferation and differentiation determined by interaction with SIRPa+ PD-L1+ and XCR+1 dendritic cells. The model parameters are evaluated, in order to study the reinvigoration effect of aPD-L1 therapy on the homeostasis of exhausted cells.
数学免疫学:过程、模型和数据同化
免疫系统是一个复杂的多尺度多物理对象。在系统分析的框架中理解其功能意味着使用数学建模,制定数据一致性标准,参数估计,不确定性分析和最佳模型选择。在这项工作中,我们提出了一些有前途的方法来模拟多物理场免疫过程,即淋巴结中的细胞迁移(LN),淋巴流动,慢性感染中免疫反应的稳态调节。为了描述淋巴LN中免疫反应的时空动态,我们提出了一个基于第二牛顿定律并考虑三种力的淋巴细胞迁移模型。利用三种淋巴细胞运动特征的经验分布,使用KolmogorovSmirnov度量进行模型校准。由于淋巴结的大小、形态、内部结构和边界条件的多样性,预测淋巴结的淋巴流动需要昂贵的计算。我们提出了一种基于人工神经网络(ANN)取代成熟的基于计算物理的模型的淋巴液流建模方法,该方法是在使用初始机制模型计算的预形成结果集上进行训练的。基于人工神经网络的模型将一些淋巴流特征的计算时间减少了四个数量级。对SARS-CoV-2感染抗病毒免疫应答的MarchukPetrov模型进行校正。为此,我们使用了先前发表的志愿者鼻咽部病毒载量动力学数据,以及血液中干扰素、抗体和ctl的观察范围数据。确定了在感染过程的不同阶段影响最大的参数。抑制免疫机制,如T细胞衰竭,是慢性病毒感染和恶性疾病的一个显著特征。我们提出了一个数学模型,用于研究四种耗竭T细胞亚群的调节参数,以检验它们与SIRPa+ PD-L1+和XCR+1树突状细胞相互作用决定的增殖和分化平衡。评估模型参数,以研究aPD-L1治疗对衰竭细胞内稳态的振兴作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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