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Temporal Variability and Social Heterogeneity in Disease Transmission: The Case of SARS in Hong Kong

机译:疾病传播中的时间变异和社会异质性:以香港SARS为例

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The extent to which self-adopted or intervention-related changes in behaviors affect the course of epidemics remains a key issue for outbreak control. This study attempted to quantify the effect of such changes on the risk of infection in different settings, i.e., the community and hospitals. The 2002–2003 severe acute respiratory syndrome (SARS) outbreak in Hong Kong, where 27% of cases were healthcare workers, was used as an example. A stochastic compartmental SEIR (susceptible-exposed-infectious-removed) model was used: the population was split into healthcare workers, hospitalized people and general population. Super spreading events (SSEs) were taken into account in the model. The temporal evolutions of the daily effective contact rates in the community and hospitals were modeled with smooth functions. Data augmentation techniques and Markov chain Monte Carlo (MCMC) methods were applied to estimate SARS epidemiological parameters. In particular, estimates of daily reproduction numbers were provided for each subpopulation. The average duration of the SARS infectious period was estimated to be 9.3 days (±0.3 days). The model was able to disentangle the impact of the two SSEs from background transmission rates. The effective contact rates, which were estimated on a daily basis, decreased with time, reaching zero inside hospitals. This observation suggests that public health measures and possible changes in individual behaviors effectively reduced transmission, especially in hospitals. The temporal patterns of reproduction numbers were similar for healthcare workers and the general population, indicating that on average, an infectious healthcare worker did not infect more people than any other infectious person. We provide a general method to estimate time dependence of parameters in structured epidemic models, which enables investigation of the impact of control measures and behavioral changes in different settings.
机译:自我采用或与干预有关的行为改变在多大程度上影响流行病的流行,仍然是控制爆发的关键问题。这项研究试图量化这种变化对不同环境(即社区和医院)感染风险的影响。以香港2002年至2003年的严重急性呼吸道综合症(SARS)爆发为例,其中27%的病例是医护人员。使用随机隔室SEIR(易感接触传染病去除)模型:将人群分为医护人员,住院患者和普通人群。在模型中考虑了超级传播事件(SSE)。每天在社区和医院中有效接触率的时间变化均以平滑函数为模型。数据增强技术和马尔可夫链蒙特卡洛(MCMC)方法应用于估计SARS流行病学参数。特别是,为每个亚群提供了每日繁殖数量的估计。 SARS感染期的平均持续时间估计为9.3天(±0.3天)。该模型能够将两个SSE的影响与背景传输速率区分开。每天估计的有效联系率随时间而下降,在医院内部达到零。该观察结果表明,公共卫生措施以及个人行为的可能改变有效地减少了传播,尤其是在医院。医护人员和一般人群的繁殖数量时间规律相似,这表明,平均而言,传染性医护人员感染的人数没有其他传染性病人多。我们提供了一种估计结构化流行病模型中参数随时间变化的通用方法,该方法可以调查控制措施的影响以及不同环境中的行为变化。

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