2647 College of Public Health, The Ohio State University, Columbus, OH, USA.
Translational Data Analytics Institute, The Ohio State University, Columbus, OH, USA.
Public Health Rep. 2021 Jul-Aug;136(4):403-412. doi: 10.1177/00333549211018203. Epub 2021 May 12.
Data-informed decision making is valued among school districts, but challenges remain for local health departments to provide data, especially during a pandemic. We describe the rapid planning and deployment of a school-based COVID-19 surveillance system in a metropolitan US county.
In 2020, we used several data sources to construct disease- and school-based indicators for COVID-19 surveillance in Franklin County, an urban county in central Ohio. We collected, processed, analyzed, and visualized data in the COVID-19 Analytics and Targeted Surveillance System for Schools (CATS). CATS included web-based applications (public and secure versions), automated alerts, and weekly reports for the general public and decision makers, including school administrators, school boards, and local health departments.
We deployed a pilot version of CATS in less than 2 months (August-September 2020) and added 21 school districts in central Ohio (15 in Franklin County and 6 outside the county) into CATS during the subsequent months. Public-facing web-based applications provided parents and students with local information for data-informed decision making. We created an algorithm to enable local health departments to precisely identify school districts and school buildings at high risk of an outbreak and active SARS-CoV-2 transmission in school settings.
Piloting a surveillance system with diverse school districts helps scale up to other districts. Leveraging past relationships and identifying emerging partner needs were critical to rapid and sustainable collaboration. Valuing diverse skill sets is key to rapid deployment of proactive and innovative public health practices during a global pandemic.
数据驱动的决策在学区中很有价值,但地方卫生部门在提供数据方面仍面临挑战,尤其是在大流行期间。我们描述了在美国大都市区的一个县中,快速规划和部署基于学校的 COVID-19 监测系统。
在 2020 年,我们使用了多个数据源来构建针对 COVID-19 的疾病和基于学校的监测指标,用于俄亥俄州中部富兰克林县。我们在 COVID-19 分析和学校针对性监测系统(CATS)中收集、处理、分析和可视化数据。CATS 包括基于网络的应用程序(公共和安全版本)、自动警报以及针对公众和决策者(包括学校管理人员、学校董事会和地方卫生部门)的每周报告。
我们在不到 2 个月的时间内(2020 年 8 月至 9 月)部署了 CATS 的试点版本,并在随后的几个月中在俄亥俄州中部增加了 21 个学区(富兰克林县 15 个,县外 6 个)。面向公众的基于网络的应用程序为家长和学生提供了用于数据驱动决策的本地信息。我们创建了一种算法,使地方卫生部门能够精确识别存在暴发风险和在学校环境中 SARS-CoV-2 传播活跃的学区和学校建筑。
与不同学区一起试用监测系统有助于扩展到其他学区。利用过去的关系并确定新出现的合作伙伴需求对于快速和可持续的合作至关重要。重视多样化的技能组合是在全球大流行期间快速部署积极创新的公共卫生实践的关键。