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Estimating the reproductive number in the presence of spatial heterogeneity of transmission patterns

机译:在存在传播模式空间异质性的情况下估计生殖数

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Background Estimates of parameters for disease transmission in large-scale infectious disease outbreaks are often obtained to represent large groups of people, providing an average over a potentially very diverse area. For control measures to be more effective, a measure of the heterogeneity of the parameters is desirable. Methods We propose a novel extension of a network-based approach to estimating the reproductive number. With this we can incorporate spatial and/or demographic information through a similarity matrix. We apply this to the 2009 Influenza pandemic in South Africa to understand the spatial variability across provinces. We explore the use of five similarity matrices to illustrate their impact on the subsequent epidemic parameter estimates. Results When treating South Africa as a single entity with homogeneous transmission characteristics across the country, the basic reproductive number, R0, (and imputation range) is 1.33 (1.31, 1.36). When fitting a new model for each province with no inter-province connections this estimate varies little (1.23-1.37). Using the proposed method with any of the four similarity measures yields an overall R0 that varies little across the four new models (1.33 to 1.34). However, when allowed to vary across provinces, the estimated R0 is greater than one consistently in only two of the nine provinces, the most densely populated provinces of Gauteng and Western Cape. Conclusions Our results suggest that the spatial heterogeneity of influenza transmission was compelling in South Africa during the 2009 pandemic. This variability makes a qualitative difference in our understanding of the epidemic. While the cause of this fluctuation might be partially due to reporting differences, there is substantial evidence to warrant further investigation.
机译:背景技术通常会获得代表大型人群的大规模传染病暴发中疾病传播参数的估计值,从而提供可能非常不同的区域的平均值。为了使控制措施更有效,需要测量参数的异质性。方法我们提出了一种基于网络的方法的新颖扩展,用于估计生殖数量。这样,我们可以通过相似性矩阵合并空间和/或人口统计信息。我们将此方法应用于2009年南非流感大流行,以了解各省之间的空间变异性。我们探索使用五个相似性矩阵来说明它们对随后的流行病参数估计的影响。结果当将南非视为一个在全国范围内具有同质传播特征的单一实体时,基本生殖数R0(和估算范围)为1.33(1.31、1.36)。当为没有省际联系的每个省安装新模型时,此估计值变化很小(1.23-1.37)。将建议的方法与四个相似性度量中的任何一个一起使用,都会产生总体R0,在四个新模型(1.33至1.34)之间差异很小。但是,如果允许各省之间的差异较大,则R0估计值仅在九个省中的两个省(豪登省和西开普省最密集的省)中始终大于一个。结论我们的结果表明,在2009年大流行期间,南非流行的流感传播空间异质性令人信服。这种可变性在我们对流行病的理解上产生了质的差异。尽管造成这种波动的部分原因可能是报告差异,但有充分的证据值得进一步调查。

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