Laboratory of Geographic Information Systems (LASIG), School of Architecture, Civil and Environmental Engineering (ENAC), Ecole Polytechnique Fédérale de Lausanne (EPFL), Lausanne, Switzerland; Group of Geographic Information Research and Analysis in Population Health (GIRAPH), Switzerland.
Institute of Microbiology, University Hospital Centre and University of Lausanne, Switzerland.
Sci Total Environ. 2021 Sep 15;787:147483. doi: 10.1016/j.scitotenv.2021.147483. Epub 2021 May 15.
To understand the geographical and temporal spread of SARS-CoV-2 during the first documented wave of infection in the state of Vaud, Switzerland, we analyzed clusters of positive cases using the precise residential location of 33,651 individuals tested (RT-PCR) between January 10 and June 30, 2020. We used a prospective Poisson space-time scan statistic (SaTScan) and a Modified Space-Time Density-Based Spatial Clustering of Application with Noise (MST-DBSCAN) to identify both space-time and transmission clusters, and estimated cluster duration, transmission behavior (emergence, growth, reduction, etc.) and relative risk. For each cluster, we computed the number of individuals, the median age of individuals and their viral load. Among the 1684 space-time clusters identified, 457 (27.1%) were significant (p ≤ 0.05), such that they harbored a higher relative risk of infection within the cluster than compared to regions outside the cluster. Clusters lasted a median of 11 days (IQR 7-13) and included a median of 12 individuals per cluster (IQR 5-20). The majority of significant clusters (n = 260; 56.9%) had at least one person with an extremely high viral load (>1 billion copies/ml). Those clusters were considerably larger (median of 17 infected individuals, p < 0.001) than clusters with individuals showing a viral load below 1 million copies/ml (median of three infected individuals). The highest viral loads were found in clusters with the lowest average age group considered in the investigation, while clusters with the highest average age had low to middle viral load. In 20 significant clusters, the viral load of the three first cases was below 100,000 copies/ml, suggesting that subjects with fewer than 100,000 copies/ml may still be contagious. Notably, the dynamics of transmission clusters made it possible to identify three diffusion zones, which predominantly differentiated between rural and urban areas, the latter being more prone to persistence and expansion, which may result in the emergence of new clusters nearby. The use of geographic information is key for public health decision makers in mitigating the spread of the SARS-CoV-2 virus. This study suggests that early localization of clusters may help implement targeted protective measures limiting the spread of the virus.
为了了解瑞士沃州在有记录的第一波感染期间 SARS-CoV-2 的地理和时间分布,我们分析了 2020 年 1 月 10 日至 6 月 30 日期间对 33651 名接受 RT-PCR 检测的个体的精确居住位置,以确定阳性病例的集群。我们使用前瞻性泊松时空扫描统计(SaTScan)和改进的时空密度基于空间聚类的应用噪声(MST-DBSCAN)来识别时空和传播集群,并估计集群持续时间、传播行为(出现、增长、减少等)和相对风险。对于每个集群,我们计算了个体数量、个体的中位数年龄和他们的病毒载量。在确定的 1684 个时空集群中,有 457 个(27.1%)具有统计学意义(p ≤ 0.05),即与集群外区域相比,集群内的感染风险更高。集群持续时间中位数为 11 天(IQR 7-13),每个集群中位数为 12 人(IQR 5-20)。大多数显著集群(n = 260;56.9%)至少有一个人的病毒载量极高(>10 亿拷贝/ml)。这些集群明显更大(中位数为 17 名感染者,p < 0.001),而病毒载量低于 100 万拷贝/ml 的集群(中位数为 3 名感染者)。在考虑的调查中年龄最小的平均年龄组中发现了最高的病毒载量,而平均年龄最高的集群则具有低到中等的病毒载量。在 20 个显著集群中,前三个病例的病毒载量低于 10 万拷贝/ml,这表明病毒载量低于 10 万拷贝/ml 的患者仍可能具有传染性。值得注意的是,传播集群的动态变化使得确定三个扩散区成为可能,这些扩散区主要区分农村和城市地区,后者更容易持续存在和扩张,这可能导致附近出现新的集群。利用地理信息对于公共卫生决策者来说是减轻 SARS-CoV-2 病毒传播的关键。本研究表明,早期定位集群可能有助于实施有针对性的保护措施,限制病毒的传播。