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Estimation and prediction for a mechanistic model of measles transmission using particle filtering and maximum likelihood estimation

机译:粒子滤波和最大似然估计测量麻疹传输机械模型的估计与预测

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Disease incidence reported directly within health systems frequently reflects a partial observation relative to the true incidence in the population. State‐space models present a general framework for inferring both the dynamics of infectious disease processes and the unobserved burden of disease in the population. Here, we present a state‐space model of measles transmission and vaccine‐based interventions at the country‐level and a particle filter‐based estimation procedure. Our dynamic transmission model builds on previous work by incorporating population age‐structure to allow explicit representation of age‐targeted vaccine interventions. We illustrate the performance of estimators of model parameters and predictions of unobserved states on simulated data from two dynamic models: one on the annual time‐scale of observations and one on the biweekly time‐scale of the epidemiological dynamics. We show that our model results in approximately unbiased estimates of unobserved burden and the underreporting rate. We further illustrate the performance of the fitted model for prediction of future disease burden in the next one to 15 years.
机译:直接在卫生系统内报告的疾病发病率经常反映相对于人口真正发病率的部分观察。状态空间模型为推断传染病过程的动态和人口中不观察到的疾病负担的一般框架。在这里,我们在国家级和基于粒子滤波器的估计过程中介绍了麻疹传输和基于疫苗的干预措施的状态空间模型。我们的动态传输模型通过纳入人口年龄结构来构建以前的工作,以便明确表示年龄靶向疫苗干预措施。我们说明了模型参数估算器的估算和未观察状态的预测,在两个动态模型中的模拟数据上:一个关于年度时间范围的观察,一个关于流行病学动态的双周时间范围。我们表明,我们的模型导致了大致无偏见的不偏见对未观察到的负担和潜在额外估算率。我们进一步说明了在未来一到15年内预测未来疾病负担的拟合模型的性能。

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