Le Thien-Minh, Onnela Jukka-Pekka
Department of Mathematics, The University of Tennessee at Chattanooga, Chattanooga, Tennessee, United States of America.
Department of Biostatistics, Harvard T.H. Chan School of Public Health, Boston, Massachusetts, United States of America.
PLoS Comput Biol. 2025 Aug 18;21(8):e1013373. doi: 10.1371/journal.pcbi.1013373. eCollection 2025 Aug.
Infectious disease modeling is used to forecast epidemics and assess the effectiveness of intervention strategies. Although the core assumption of mass-action models of homogeneously mixed population is often implausible, they are nevertheless routinely used in studying epidemics and provide useful insights. Network models can account for the heterogeneous mixing of populations, which is especially important for studying sexually transmitted diseases. Despite the abundance of research on mass-action and network models, the relationship between them is not well understood. Here, we attempt to bridge the gap by first identifying a spreading rule that results in an exact match between disease spreading on a fully connected network and the classic mass-action models. We then propose a method for mapping epidemic spread on arbitrary networks to a form similar to that of mass-action models. We also provide a theoretical justification for the procedure. Finally, we demonstrate the application of the proposed method in the theoretical analysis of reproduction numbers and the estimation of model parameters using synthetic data based on an empirical network. The method proves advantageous in explicitly handling both finite and infinite networks, significantly reducing the computation time required to estimate model parameters for spreading processes on networks. These findings help us understand when mass-action models and network models are expected to provide similar results and identify reasons when they do not.
传染病建模用于预测流行病并评估干预策略的有效性。尽管均匀混合人群的质量作用模型的核心假设通常不太合理,但它们仍经常用于研究流行病并提供有用的见解。网络模型可以考虑人群的异质混合,这对于研究性传播疾病尤为重要。尽管对质量作用模型和网络模型有大量研究,但它们之间的关系尚未得到很好的理解。在这里,我们试图通过首先确定一个传播规则来弥合差距,该规则导致在完全连接的网络上疾病传播与经典质量作用模型之间的精确匹配。然后,我们提出一种方法,将任意网络上的流行病传播映射到类似于质量作用模型的形式。我们还为该过程提供了理论依据。最后,我们展示了所提出方法在繁殖数的理论分析以及使用基于经验网络的合成数据估计模型参数方面的应用。该方法在明确处理有限和无限网络方面证明是有利的,显著减少了估计网络上传播过程的模型参数所需的计算时间。这些发现有助于我们理解何时质量作用模型和网络模型预计会提供相似的结果,并确定它们不提供相似结果的原因。