UK Health Security Agency, Infectious Disease Modelling Team, London, United Kingdom.
The University of Columbia, Institute for Social and Economic Research and Policy, New York, New York, United States of America.
PLoS Comput Biol. 2023 Nov 13;19(11):e1011580. doi: 10.1371/journal.pcbi.1011580. eCollection 2023 Nov.
In the early phases of growth, resurgent epidemic waves of SARS-CoV-2 incidence have been characterised by localised outbreaks. Therefore, understanding the geographic dispersion of emerging variants at the start of an outbreak is key for situational public health awareness. Using telecoms data, we derived mobility networks describing the movement patterns between local authorities in England, which we have used to inform the spatial structure of a Bayesian BYM2 model. Surge testing interventions can result in spatio-temporal sampling bias, and we account for this by extending the BYM2 model to include a random effect for each timepoint in a given area. Simulated-scenario modelling and real-world analyses of each variant that became dominant in England were conducted using our BYM2 model at local authority level in England. Simulated datasets were created using a stochastic metapopulation model, with the transmission rates between different areas parameterised using telecoms mobility data. Different scenarios were constructed to reproduce real-world spatial dispersion patterns that could prove challenging to inference, and we used these scenarios to understand the performance characteristics of the BYM2 model. The model performed better than unadjusted test positivity in all the simulation-scenarios, and in particular when sample sizes were small, or data was missing for geographical areas. Through the analyses of emerging variant transmission across England, we found a reduction in the early growth phase geographic clustering of later dominant variants as England became more interconnected from early 2022 and public health interventions were reduced. We have also shown the recent increased geographic spread and dominance of variants with similar mutations in the receptor binding domain, which may be indicative of convergent evolution of SARS-CoV-2 variants.
在 SARS-CoV-2 发病率的早期增长阶段,以局部暴发为特征的疫情呈复苏态势。因此,了解疫情爆发初期新出现变异株的地理分布对于公共卫生状况的了解至关重要。我们利用电信数据推导出描述英格兰地方当局之间移动模式的移动网络,我们将其用于为贝叶斯 BYM2 模型的空间结构提供信息。激增检测干预措施可能导致时空采样偏差,我们通过将 BYM2 模型扩展到包含给定区域内每个时间点的随机效应来对此进行处理。我们在英格兰地方当局一级使用 BYM2 模型对在英格兰占主导地位的每种变异株进行模拟情景建模和真实世界分析。使用随机元种群模型创建模拟数据集,使用电信移动数据对不同区域之间的传播率进行参数化。构建了不同的情景来再现真实世界的空间扩散模式,这些模式对于推断可能具有挑战性,我们使用这些情景来了解 BYM2 模型的性能特征。在所有模拟情景中,该模型的表现均优于未经调整的检测阳性率,尤其是在样本量较小或数据缺失的地理区域时。通过对英格兰新兴变异株传播的分析,我们发现随着英格兰在 2022 年初变得更加互联,以及公共卫生干预措施减少,后期主导变异株在早期增长阶段的地理聚类程度降低。我们还发现,受体结合域具有相似突变的变异株的地理传播和主导地位最近有所增加,这可能表明 SARS-CoV-2 变异株的趋同进化。