D'Souza Nishita, Porter Alexis M, Rose Joan B, Dreelin Erin, Peters Susan E, Nowlin Penny J, Carbonell Samantha, Cissell Kyle, Wang Yili, Flood Matthew T, Rachmadi Andri T, Xi Chuanwu, Song Peter, Briggs Shannon
Department of Fisheries and Wildlife, Michigan State University, East Lansing, MI, USA.
Annis Water Resources Insititute, Grand Valley State University, Muskegon, MI, USA.
Heliyon. 2024 Aug 3;10(16):e35790. doi: 10.1016/j.heliyon.2024.e35790. eCollection 2024 Aug 30.
The global SARS-CoV-2 monitoring effort has been extensive, resulting in many states and countries establishing wastewater-based epidemiology programs to address the spread of the virus during the pandemic. Challenges for programs include concurrently optimizing methods, training new laboratories, and implementing successful surveillance programs that can rapidly translate results for public health, and policy making. Surveillance in Michigan early in the pandemic in 2020 highlights the importance of quality-controlled data and explores correlations with wastewater and clinical case data aggregated at the state level. The lessons learned and potential measures to improve public utilization of results are discussed. The Michigan Network for Environmental Health and Technology (MiNET) established a network of laboratories that partnered with local health departments, universities, wastewater treatment plants (WWTPs) and other stakeholders to monitor SARS-CoV-2 in wastewater at 214 sites in Michigan. MiNET consisted of nineteen laboratories, twenty-nine local health departments, 6 Native American tribes, and 60 WWTPs monitoring sites representing 45 % of Michigan's population from April 6 and December 29, 2020. Three result datasets were created based on quality control criteria. Wastewater results that met all quality assurance criteria (Dataset Mp) produced strongest correlations with reported clinical cases at 16 days lag (rho = 0.866, ). The project demonstrated the ability to successfully track SARS-CoV-2 on a large, state-wide scale, particularly data that met the outlined quality criteria and provided an early warning of increasing COVID-19 cases. MiNET is currently poised to leverage its competency to complement public health surveillance networks through environmental monitoring for new and emerging pathogens of concern and provides a valuable resource to state and federal agencies to support future responses.
全球对严重急性呼吸综合征冠状病毒2(SARS-CoV-2)的监测工作广泛开展,许多州和国家都建立了基于废水的流行病学项目,以应对疫情期间该病毒的传播。这些项目面临的挑战包括同时优化方法、培训新实验室,以及实施能够迅速将结果转化为公共卫生和政策制定依据的成功监测项目。2020年疫情初期密歇根州的监测工作凸显了质量控制数据的重要性,并探索了废水数据与州级汇总的临床病例数据之间的相关性。文中讨论了所吸取的经验教训以及提高公众对结果利用率的潜在措施。密歇根环境卫生与技术网络(MiNET)建立了一个实验室网络,该网络与当地卫生部门、大学、污水处理厂(WWTPs)及其他利益相关者合作,对密歇根州214个地点的废水中的SARS-CoV-2进行监测。MiNET由19个实验室、29个当地卫生部门、6个美国原住民部落以及60个污水处理厂监测点组成,从2020年4月6日至12月29日监测了代表密歇根州45%人口的区域。根据质量控制标准创建了三个结果数据集。符合所有质量保证标准的废水结果(数据集Mp)与报告的临床病例在滞后16天时相关性最强(rho = 0.866)。该项目展示了在全州范围内成功追踪SARS-CoV-2的能力,特别是符合既定质量标准的数据,并为COVID-19病例增加提供了早期预警。MiNET目前准备利用其能力,通过对新出现的和令人关注的病原体进行环境监测来补充公共卫生监测网络,并为州和联邦机构提供宝贵资源,以支持未来的应对措施。