Structural and Practical Identifiability of Phenomenological Growth Models for Epidemic Forecasting.

ArXiv Pub Date : 2025-03-27
Yuganthi R Liyanage, Gerardo Chowell, Gleb Pogudin, Necibe Tuncer
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Abstract

Phenomenological models are highly effective tools for forecasting disease dynamics using real world data, particularly in scenarios where detailed knowledge of disease mechanisms is limited. However, their reliability depends on the model parameters' structural and practical identifiability. In this study, we systematically analyze the identifiability of six commonly used growth models in epidemiology:the generalized growth model, the generalized logistic model, the Richards model, the generalized Richards model, the Gompertz model, and a modified SEIR model with inhomogeneous mixing. To address challenges posed by non-integer power exponents in these models, we reformulate them by introducing additional state variables. This enables rigorous structural identifiability analysis using the StructuralIdentifiability.jl package in JULIA. We validate the structural identifiability results by performing parameter estimation and forecasting using the GrowthPredict MATLAB toolbox. This toolbox is designed to fit and forecast time series trajectories based on phenomenological growth models. We applied it to three epidemiological datasets: weekly incidence data for monkeypox, COVID 19, and Ebola. Additionally, we assess practical identifiability through Monte Carlo simulations to evaluate parameter estimation robustness under varying levels of observational noise. Our results confirm that all six models are structurally identifiable under the proposed reformulation. Furthermore, practical identifiability analyses demonstrate that parameter estimates remain robust across different noise levels, though sensitivity varies by model and dataset. These findings provide critical insights into the strengths and limitations of phenomenological models to characterize epidemic trajectories, emphasizing their adaptability to real world challenges and their role in informing public health interventions.

流行病预测的现象学增长模型的结构和实际可识别性。
现象学模型是利用真实世界数据预测疾病动态的非常有效的工具,特别是在对疾病机制的详细了解有限的情况下。然而,它们的可靠性取决于模型参数的结构和实际可识别性。本文系统分析了流行病学中常用的6种生长模型的可识别性:广义生长模型、广义logistic模型、Richards模型、广义Richards模型、Gompertz模型和一种改进的非均匀混合SEIR模型。为了解决这些模型中非整数幂指数带来的挑战,我们通过引入额外的状态变量来重新表述它们。这使得使用StructuralIdentifiability进行严格的结构可识别性分析成为可能。JULIA中的jl包。我们通过使用GrowthPredict MATLAB工具箱进行参数估计和预测来验证结构可识别性结果。这个工具箱旨在拟合和预测基于现象学增长模型的时间序列轨迹。我们将其应用于三个流行病学数据集:猴痘、COVID - 19和埃博拉的每周发病率数据。此外,我们通过蒙特卡罗模拟评估实际可识别性,以评估参数估计在不同水平的观测噪声下的鲁棒性。我们的研究结果证实,所有六个模型在结构上是可识别的。此外,实际的可识别性分析表明,参数估计在不同的噪声水平上仍然保持鲁棒性,尽管灵敏度因模型和数据集而异。这些发现对现象学模型表征流行病轨迹的优势和局限性提供了重要见解,强调了它们对现实世界挑战的适应性及其在为公共卫生干预提供信息方面的作用。
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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