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了解和管理大流行后污水监测中的不确定性和变异性:英国国家 COVID-19 监测计划的经验教训。

Understanding and managing uncertainty and variability for wastewater monitoring beyond the pandemic: Lessons learned from the United Kingdom national COVID-19 surveillance programmes.

机构信息

UK Health Security Agency, Environmental Monitoring for Health Protection, Windsor House, Victoria Street, London SW1H 0TL, UK; Newcastle University, School of Engineering, Cassie Building, Newcastle-upon-Tyne NE1 7RU, UK.

UK Health Security Agency, Environmental Monitoring for Health Protection, Windsor House, Victoria Street, London SW1H 0TL, UK; Bristol University, Department of Engineering Mathematics, Bristol BS8 1TW, UK.

出版信息

J Hazard Mater. 2022 Feb 15;424(Pt B):127456. doi: 10.1016/j.jhazmat.2021.127456. Epub 2021 Oct 8.

DOI:10.1016/j.jhazmat.2021.127456
PMID:34655869
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC8498793/
Abstract

The COVID-19 pandemic has put unprecedented pressure on public health resources around the world. From adversity, opportunities have arisen to measure the state and dynamics of human disease at a scale not seen before. In the United Kingdom, the evidence that wastewater could be used to monitor the SARS-CoV-2 virus prompted the development of National wastewater surveillance programmes. The scale and pace of this work has proven to be unique in monitoring of virus dynamics at a national level, demonstrating the importance of wastewater-based epidemiology (WBE) for public health protection. Beyond COVID-19, it can provide additional value for monitoring and informing on a range of biological and chemical markers of human health. A discussion of measurement uncertainty associated with surveillance of wastewater, focusing on lessons-learned from the UK programmes monitoring COVID-19 is presented, showing that sources of uncertainty impacting measurement quality and interpretation of data for public health decision-making, are varied and complex. While some factors remain poorly understood, we present approaches taken by the UK programmes to manage and mitigate the more tractable sources of uncertainty. This work provides a platform to integrate uncertainty management into WBE activities as part of global One Health initiatives beyond the pandemic.

摘要

COVID-19 大流行给全球公共卫生资源带来了前所未有的压力。逆境中也出现了机会,可以以前所未有的规模和速度来衡量人类疾病的状况和动态。在英国,废水可用于监测 SARS-CoV-2 病毒的证据促使制定了国家废水监测计划。这项工作的规模和速度在全国范围内监测病毒动态方面被证明是独一无二的,展示了基于废水的流行病学(WBE)在公共卫生保护方面的重要性。除 COVID-19 之外,它还可以为监测和告知一系列人类健康的生物和化学标志物提供额外的价值。本文讨论了与废水监测相关的测量不确定度,重点介绍了英国监测 COVID-19 计划所获得的经验教训,表明影响测量质量和公共卫生决策数据解释的不确定度来源多种多样且复杂。虽然一些因素仍未得到很好的理解,但我们提出了英国计划采取的方法来管理和减轻更易于处理的不确定度来源。这项工作为将不确定性管理纳入 WBE 活动提供了一个平台,作为大流行后全球“同一健康”倡议的一部分。

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