Lan Yu, Delmelle Eric
Department of Geography and Earth Sciences, University of North Carolina at Charlotte, Charlotte, NC, 28223, USA.
Department of Geography and Earth Sciences, University of North Carolina at Charlotte, Charlotte, NC, 28223, USA; Department of Geographical and Historical Studies, University of Eastern Finland, Finland.
Spat Spatiotemporal Epidemiol. 2023 Feb;44:100563. doi: 10.1016/j.sste.2022.100563. Epub 2022 Dec 16.
Public health organizations have increasingly harnessed geospatial technologies for disease surveillance, health services allocation, and targeting place-based health promotion initiatives.
We conducted a systematic review around the theme of space-time clustering detection techniques for infectious diseases using PubMed, Web of Science, and Scopus. Two reviewers independently determined inclusion and exclusion.
Of 2,887 articles identified, 354 studies met inclusion criteria, the majority of which were application papers. Studies of airborne diseases were dominant, followed by vector-borne diseases. Most research used aggregated data instead of point data, and a significant proportion of articles used a repetition of a spatial clustering method, instead of using a "true" space-time detection approach, potentially leading to the detection of false positives. Noticeably, most articles did not make their data available, limiting replicability.
This review underlines recent trends in the application of space-time clustering methods to the field of infectious disease, with a rapid increase during the COVID-19 pandemic.
公共卫生组织越来越多地利用地理空间技术进行疾病监测、卫生服务分配以及针对特定地点的健康促进举措。
我们围绕传染病时空聚集检测技术这一主题,使用PubMed、科学网和Scopus进行了系统综述。两名评审员独立确定纳入和排除标准。
在识别出的2887篇文章中,354项研究符合纳入标准,其中大多数是应用论文。空气传播疾病的研究占主导地位,其次是媒介传播疾病。大多数研究使用的是汇总数据而非点数据,并且相当一部分文章重复使用空间聚类方法,而非采用“真正的”时空检测方法,这可能导致误报的检测。值得注意的是,大多数文章未提供其数据,限制了可重复性。
本综述强调了时空聚类方法在传染病领域应用的近期趋势,在新冠疫情期间迅速增加。