Department of Chemistry, University of Bath, BA2 7AY, UK.
Department of Mathematical Sciences, University of Bath, BA2 7AY, UK.
Environ Int. 2022 Mar;161:107143. doi: 10.1016/j.envint.2022.107143. Epub 2022 Feb 14.
With the advent of the SARS-CoV-2 pandemic, Wastewater-Based Epidemiology (WBE) has been applied to track community infection in cities worldwide and has proven succesful as an early warning system for identification of hotspots and changingprevalence of infections (both symptomatic and asymptomatic) at a city or sub-city level. Wastewater is only one of environmental compartments that requires consideration. In this manuscript, we have critically evaluated the knowledge-base and preparedness for building early warning systems in a rapidly urbanising world, with particular attention to Africa, which experiences rapid population growth and urbanisation. We have proposed a Digital Urban Environment Fingerprinting Platform (DUEF) - a new approach in hazard forecasting and early-warning systems for global health risks and an extension to the existing concept of smart cities. The urban environment (especially wastewater) contains a complex mixture of substances including toxic chemicals, infectious biological agents and human excretion products. DUEF assumes that these specific endo- and exogenous residues, anonymously pooled by communities' wastewater, are indicative of community-wide exposure and the resulting effects. DUEF postulates that the measurement of the substances continuously and anonymously pooled by the receiving environment (sewage, surface water, soils and air), can provide near real-time dynamic information about the quantity and type of physical, biological or chemical stressors to which the surveyed systems are exposed, and can create a risk profile on the potential effects of these exposures. Successful development and utilisation of a DUEF globally requires a tiered approach including: Stage I: network building, capacity building, stakeholder engagement as well as a conceptual model, followed by Stage II: DUEF development, Stage III: implementation, and Stage IV: management and utilization. We have identified four key pillars required for the establishment of a DUEF framework: (1) Environmental fingerprints, (2) Socioeconomic fingerprints, (3) Statistics and modelling and (4) Information systems. This manuscript critically evaluates the current knowledge base within each pillar and provides recommendations for further developments with an aim of laying grounds for successful development of global DUEF platforms.
随着 SARS-CoV-2 大流行的出现,基于污水的流行病学(WBE)已被应用于追踪全球城市的社区感染,并已被证明是一种成功的预警系统,可以识别城市或城市以下级别的感染热点和感染(包括有症状和无症状)的变化趋势。污水只是需要考虑的环境组合之一。在本文中,我们批判性地评估了在快速城市化世界中建立预警系统的知识库和准备情况,特别关注非洲,非洲正在经历快速的人口增长和城市化。我们提出了数字城市环境指纹识别平台(DUEF)——一种用于全球健康风险的预测和预警系统的新方法,也是对现有智慧城市概念的扩展。城市环境(特别是污水)包含有毒化学物质、传染性生物制剂和人类排泄产物等复杂的物质混合物。DUEF 假设,这些特定的内源性和外源性残留物被社区的污水匿名汇集,表明了社区的暴露情况和由此产生的影响。DUEF 假设,通过接收环境(污水、地表水、土壤和空气)连续匿名汇集的物质,可以提供有关调查系统暴露于物理、生物或化学应激源的数量和类型的实时动态信息,并可以创建潜在影响的风险概况这些暴露。在全球范围内成功开发和利用 DUEF 需要采用分层方法,包括:第一阶段:网络建设、能力建设、利益相关者参与以及概念模型,然后是第二阶段:DUEF 开发、第三阶段:实施以及第四阶段:管理和利用。我们确定了建立 DUEF 框架所需的四个关键支柱:(1)环境指纹,(2)社会经济指纹,(3)统计和建模,以及(4)信息系统。本文批判性地评估了每个支柱内的现有知识库,并为进一步发展提供了建议,旨在为成功开发全球 DUEF 平台奠定基础。