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首页> 外文期刊>Journal of the Royal Society Interface >Bayesian data assimilation provides rapid decision support for vector-borne diseases
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Bayesian data assimilation provides rapid decision support for vector-borne diseases

机译:贝叶斯数据同化为媒介传播疾病提供快速决策支持

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Predicting the spread of vector-borne diseases in response to incursions requires knowledge of both host and vector demographics in advance of an outbreak. Although host population data are typically available, for novel disease introductions there is a high chance of the pathogen using a vector for which data are unavailable. This presents a barrier to estimating the parameters of dynamical models representing host vector pathogen interaction, and hence limits their ability to provide quantitative risk forecasts. The Theileria orientalis (Ikeda) outbreak in New Zealand cattle demonstrates this problem: even though the vector has received extensive laboratory study, a high degree of uncertainty persists over its national demographic distribution. Addressing this, we develop a Bayesian data assimilation approach whereby indirect observations of vector activity inform a seasonal spatio-temporal risk surface within a stochastic epidemic model. We provide quantitative predictions for the future spread of the epidemic, quantifying uncertainty in the model parameters, case infection times and the disease status of undetected infections. Importantly, we demonstrate how our model learns sequentially as the epidemic unfolds and provide evidence for changing epidemic dynamics through time. Our approach therefore provides a significant advance in rapid decision support for novel vector-borne disease outbreaks.
机译:预测入侵引起的媒介传播疾病的传播,需要在疫情爆发之前了解宿主和媒介的人口统计资料。尽管通常可以获得宿主种群数据,但对于引入新的疾病,使用无法获得其数据的载体,病原体的可能性很高。这为估计代表宿主载体病原体相互作用的动力学模型的参数提供了障碍,因此限制了它们提供定量风险预测的能力。新西兰牛的东方泰勒虫(Ikeda)爆发证明了这个问题:即使该病媒已得到广泛的实验室研究,其全国人口分布仍存在高度不确定性。为了解决这个问题,我们开发了一种贝叶斯数据同化方法,通过这种方法,对媒介活动的间接观察会告知随机流行模型内的季节性时空风险面。我们为流行病的未来传播提供定量预测,量化模型参数,病例感染时间和未发现感染的疾病状态的不确定性。重要的是,我们演示了随着流行病的发展,我们的模型如何顺序学习,并提供了随时间变化的流行病动态的证据。因此,我们的方法为新型媒介传播疾病暴发的快速决策支持提供了重大进展。

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