Boys Richard J, Giles Philip R
School of Mathematics and Statistics, University of Newcastle upon Tyne, Newcastle upon Tyne, UK.
J Math Biol. 2007 Aug;55(2):223-47. doi: 10.1007/s00285-007-0081-y. Epub 2007 Mar 15.
Stochastic compartmental models of the SEIR type are often used to make inferences on epidemic processes from partially observed data in which only removal times are available. For many epidemics, the assumption of constant removal rates is not plausible. We develop methods for models in which these rates are a time-dependent step function. A reversible jump MCMC algorithm is described that permits Bayesian inferences to be made on model parameters, particularly those associated with the step function. The method is applied to two datasets on outbreaks of smallpox and a respiratory disease. The analyses highlight the importance of allowing for time dependence by contrasting the predictive distributions for the removal times and comparing them with the observed data.
SEIR 类型的随机 compartmental 模型常用于从仅可获得移除时间的部分观测数据推断流行过程。对于许多流行病而言,恒定移除率的假设并不合理。我们针对这些速率为时间依赖阶跃函数的模型开发了方法。描述了一种可逆跳跃 MCMC 算法,该算法允许对模型参数进行贝叶斯推断,特别是与阶跃函数相关的参数。该方法应用于关于天花和一种呼吸道疾病爆发的两个数据集。分析通过对比移除时间的预测分布并将其与观测数据进行比较,突出了考虑时间依赖性的重要性。