...
首页> 外文期刊>International journal of infectious diseases : >Spatiotemporal dynamics of the COVID-19 pandemic in the State of Kuwait
【24h】

Spatiotemporal dynamics of the COVID-19 pandemic in the State of Kuwait

机译:科威特州Covid-19流行病的时空动态

获取原文

摘要

Objectives Prompt understanding of the temporal and spatial patterns of the COVID-19 pandemic on a national level is a critical step for the timely allocation of surveillance resources. Therefore, this study explored the temporal and spatiotemporal dynamics of the COVID-19 pandemic in Kuwait using daily confirmed case data collected between the 23 February and 07 May 2020. Methods The pandemic progression was quantified using the time-dependent reproductive number (R(t)). The spatiotemporal scan statistic model was used to identify local clustering events. Variability in transmission dynamics was accounted for within and between two socioeconomic classes: citizens-residents and migrant workers. Results The pandemic size in Kuwait continues to grow (R(t)s ≥2), indicating significant ongoing spread. Significant spreading and clustering events were detected among migrant workers, due to their densely populated areas and poor living conditions. However, the government's aggressive intervention measures have substantially lowered pandemic growth in migrant worker areas. However, at a later stage of the study period, active spreading and clustering events among both socioeconomic classes were found. Conclusions This study provided deeper insights into the epidemiology of COVID-19 in Kuwait and provided an important platform for rapid guidance of decisions related to intervention activities.
机译:目标迅速了解民族一级Covid-19大流行的时间和空间模式是及时分配监测资源的关键步骤。因此,本研究探讨了在2月23日和07年5月23日之间收集的日常确认的案例数据在科威特在科威特的颞率和时空动态。方法使用时间依赖的生殖数量量化大流行进程(R(T )))。 Spatiotemporal扫描统计模型用于识别本地聚类事件。两个社会经济课程内部和之间的传输动态的可变性:公民居民和移民工人。结果科威特的大流行大小持续增长(R(t)≥2),表明显着的持续蔓延。由于其密集的地区和生活条件不佳,在移民工人中检测到了显着的传播和聚类事件。然而,政府的侵略性干预措施在移民工人地区大大降低了大流行增长。但是,在研究期间的稍后阶段,发现了社会经济课程之间的主动扩散和聚类事件。结论本研究提供了对科威特Covid-19流行病学的更深入的了解,并为与干预活动相关的决策进行了快速指导的重要平台提供了一个重要的平台。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号