具有时变参数和时不变参数的随机分区模型的贝叶斯模型校准框架

IF 8.8 3区 医学 Q1 Medicine Infectious Disease Modelling Pub Date : 2024-05-03 DOI:10.1016/j.idm.2024.04.002
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引用次数: 0

摘要

我们考虑了具有时变参数和时不变参数的分区模型的状态和参数估计。在本手稿中,我们首先详细介绍了一个通用的贝叶斯计算框架,这是我们之前工作的延续。该模型通过一个耦合非线性微分方程系统描述了传染病传播的基本机制。SIR 模型由三种状态组成,即易感区、感染区和移除区。这些状态之间的耦合由感染率和恢复率这两个参数控制。SIR 模型和类似的分室模型非常简单,因此适用于多种传染病。然而,确定性模型假设和模型参数的时间不变性是两个重要的障碍,严重限制了它们在长期预测中的应用。由于季节性趋势、非药物干预和其他随机效应,某些模型参数有随时间变化的趋势,这就需要一个在结构上允许纳入这些时变效应的模型。与此相辅相成的是,我们需要一种稳健的机制,以便从数据中估算出模型的参数。为此,我们考虑了一种增强状态向量,它将时变参数附加到原始系统状态中,而时变参数的时间演变是由人工噪声过程以标准方式驱动的。以这种方式区分时变参数和时不变参数,限制了系统中人工动力学的引入,并为估计时不变系统参数以及过程噪声协方差矩阵的元素提供了一种稳健、完全贝叶斯的方法。利用马尔科夫链蒙特卡洛算法的鲁棒性,可以在嵌套非线性滤波器同时对系统状态和时变参数进行联合估计的情况下,实现这一计算框架。我们首先通过一系列使用合成数据的示例展示了该框架的性能,随后对安大略省收集的公共卫生数据进行了阐述。
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A Bayesian model calibration framework for stochastic compartmental models with both time-varying and time-invariant parameters

We consider state and parameter estimation for compartmental models having both time-varying and time-invariant parameters. In this manuscript, we first detail a general Bayesian computational framework as a continuation of our previous work. Subsequently, this framework is specifically tailored to the susceptible-infectious-removed (SIR) model which describes a basic mechanism for the spread of infectious diseases through a system of coupled nonlinear differential equations. The SIR model consists of three states, namely, the susceptible, infectious, and removed compartments. The coupling among these states is controlled by two parameters, the infection rate and the recovery rate. The simplicity of the SIR model and similar compartmental models make them applicable to many classes of infectious diseases. However, the combined assumption of a deterministic model and time-invariance among the model parameters are two significant impediments which critically limit their use for long-term predictions. The tendency of certain model parameters to vary in time due to seasonal trends, non-pharmaceutical interventions, and other random effects necessitates a model that structurally permits the incorporation of such time-varying effects. Complementary to this, is the need for a robust mechanism for the estimation of the parameters of the resulting model from data. To this end, we consider an augmented state vector, which appends the time-varying parameters to the original system states whereby the time evolution of the time-varying parameters are driven by an artificial noise process in a standard manner. Distinguishing between time-varying and time-invariant parameters in this fashion limits the introduction of artificial dynamics into the system, and provides a robust, fully Bayesian approach for estimating the time-invariant system parameters as well as the elements of the process noise covariance matrix. This computational framework is implemented by leveraging the robustness of the Markov chain Monte Carlo algorithm permits the estimation of time-invariant parameters while nested nonlinear filters concurrently perform the joint estimation of the system states and time-varying parameters. We demonstrate performance of the framework by first considering a series of examples using synthetic data, followed by an exposition on public health data collected in the province of Ontario.

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来源期刊
Infectious Disease Modelling
Infectious Disease Modelling Mathematics-Applied Mathematics
CiteScore
17.00
自引率
3.40%
发文量
73
审稿时长
17 weeks
期刊介绍: Infectious Disease Modelling is an open access journal that undergoes peer-review. Its main objective is to facilitate research that combines mathematical modelling, retrieval and analysis of infection disease data, and public health decision support. The journal actively encourages original research that improves this interface, as well as review articles that highlight innovative methodologies relevant to data collection, informatics, and policy making in the field of public health.
期刊最新文献
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