An Initial Spatiotemporal Assessment of COVID-19 Clusters in Nepal

B. Acharya, S. K. Adhikari, Shreejana Pandit, B. Neupane, B. Paudel, L. Khanal
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Abstract

Nepal has been strongly influenced by the COVID-19 pandemic and struggling to contain it with multiple interventions. We assessed the spatiotemporal dynamics of COVID-19 in the context of various restrictions imposed to contain the disease transmission by employing prospective spatiotemporal analysis with SaTScan statistics. We explored active and emerging disease clusters using the prospective space-time scanning with the Discrete Poisson model for two time periods using COVID-19 cases reported to the Ministry of Health and Population (MoHP), Government of Nepal during 23 January – 21 July, and 23 January – 29 November 2020 taking the cutoff date of 21 July (end date of nationwide lockdown). The results revealed that COVID-19 dynamics in the early transmission stage were slower and confined to a few districts. However, since the third week of April, transmission spread rapidly across the districts of Madhesh and Sudurpaschim Provinces. Despite nationwide lockdown, nine statistically significant active and emerging clusters were detected between 23 January and 21 July 2020, whereas seven emerging clusters were observed for an extended period to 29 November. After lifting the nationwide lockdown, COVID-19 clusters developed had a many-fold higher relative risk than during the lockdown period. The most likely cluster was located in the capital city, the Kathmandu valley, making it the highest-risk active cluster since August. Movement restriction appears to be the most effective non-pharmaceutical intervention against the COVID-19 in countries with limited health care facilities. Our findings could be valuable to the health authorities within Nepal and beyond to better allocate resources and improve interventions on the pandemic for containing it efficiently.
尼泊尔COVID-19聚集性的初步时空评估
尼泊尔受到COVID-19大流行的严重影响,正在努力通过多种干预措施遏制疫情。我们利用SaTScan统计数据进行前瞻性时空分析,评估了在控制疾病传播的各种限制背景下COVID-19的时空动态。我们利用2020年1月23日至7月21日和1月23日至11月29日期间向尼泊尔政府卫生和人口部(MoHP)报告的COVID-19病例,以7月21日(全国封锁结束日期)为截止日期,使用离散泊松模型对两个时间段的前瞻性时空扫描,探索了活跃的和新出现的疾病聚集性。结果表明,新冠病毒早期传播动态较慢,且局限于少数地区。然而,自4月第三周以来,传播在马德赫什和苏杜尔帕西姆省各区迅速蔓延。尽管在全国范围内进行了封锁,但在2020年1月23日至7月21日期间发现了9个具有统计意义的活跃和新聚集性病例,而在11月29日之前的较长时间内观察到7个新聚集性病例。在全国范围内解除封锁后,新冠病毒聚集性的相对风险比封锁期间高出许多倍。最有可能的群集位于首都加德满都山谷,使其成为自8月以来风险最高的活跃群集。在卫生保健设施有限的国家,限制行动似乎是应对COVID-19最有效的非药物干预措施。我们的研究结果可能对尼泊尔内外的卫生当局有价值,以更好地分配资源并改进对大流行的干预措施,以有效地控制它。
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