Gamado Kokouvi, Marion Glenn, Porphyre Thibaud
Biomathematics and Statistics Scotland , Edinburgh , UK.
Epidemiology Research Group, Center for Immunity, Infection and Evolution, University of Edinburgh, Edinburgh, UK; The Roslin Institute, University of Edinburgh, Easter Bush Campus, Edinburgh, UK.
Front Vet Sci. 2017 Feb 28;4:16. doi: 10.3389/fvets.2017.00016. eCollection 2017.
Livestock epidemics have the potential to give rise to significant economic, welfare, and social costs. Incursions of emerging and re-emerging pathogens may lead to small and repeated outbreaks. Analysis of the resulting data is statistically challenging but can inform disease preparedness reducing potential future losses. We present a framework for spatial risk assessment of disease incursions based on data from small localized historic outbreaks. We focus on between-farm spread of livestock pathogens and illustrate our methods by application to data on the small outbreak of Classical Swine Fever (CSF) that occurred in 2000 in East Anglia, UK. We apply models based on continuous time semi-Markov processes, using data-augmentation Markov Chain Monte Carlo techniques within a Bayesian framework to infer disease dynamics and detection from incompletely observed outbreaks. The spatial transmission kernel describing pathogen spread between farms, and the distribution of times between infection and detection, is estimated alongside unobserved exposure times. Our results demonstrate inference is reliable even for relatively small outbreaks when the data-generating model is known. However, associated risk assessments depend strongly on the form of the fitted transmission kernel. Therefore, for real applications, methods are needed to select the most appropriate model in light of the data. We assess standard Deviance Information Criteria (DIC) model selection tools and recently introduced latent residual methods of model assessment, in selecting the functional form of the spatial transmission kernel. These methods are applied to the CSF data, and tested in simulated scenarios which represent field data, but assume the data generation mechanism is known. Analysis of simulated scenarios shows that latent residual methods enable reliable selection of the transmission kernel even for small outbreaks whereas the DIC is less reliable. Moreover, compared with DIC, model choice based on latent residual assessment correlated better with predicted risk.
牲畜流行病有可能造成巨大的经济、福利和社会成本。新出现和再次出现的病原体入侵可能导致小规模的反复疫情爆发。对由此产生的数据进行分析在统计上具有挑战性,但可为疾病防范提供信息,减少未来可能的损失。我们基于小规模局部历史疫情爆发的数据,提出了一个疾病入侵空间风险评估框架。我们关注牲畜病原体在农场间的传播,并通过应用于2000年发生在英国东安格利亚的古典猪瘟(CSF)小规模疫情的数据来说明我们的方法。我们应用基于连续时间半马尔可夫过程的模型,在贝叶斯框架内使用数据增强马尔可夫链蒙特卡罗技术来推断疾病动态并从不完全观察到的疫情爆发中进行检测。描述病原体在农场间传播的空间传播核,以及感染与检测之间的时间分布,与未观察到的暴露时间一起进行估计。我们的结果表明,当数据生成模型已知时,即使对于相对较小的疫情爆发,推断也是可靠的。然而,相关的风险评估在很大程度上取决于拟合的传播核的形式。因此,对于实际应用,需要根据数据选择最合适模型的方法。我们评估了标准偏差信息准则(DIC)模型选择工具以及最近引入的潜在残差模型评估方法,以选择空间传播核的函数形式。这些方法应用于CSF数据,并在代表实地数据的模拟场景中进行测试,但假设数据生成机制是已知的。对模拟场景的分析表明,潜在残差方法即使对于小规模疫情爆发也能可靠地选择传播核,而DIC则不太可靠。此外,与DIC相比,基于潜在残差评估的模型选择与预测风险的相关性更好。