Department of Bioanalysis, Ghent University, 9000 Ghent, Belgium.
Epidemiology and Public Health, Epidemiology of Infectious Diseases, Sciensano, 1050 Brussels, Belgium.
Sci Total Environ. 2023 Nov 15;899:165603. doi: 10.1016/j.scitotenv.2023.165603. Epub 2023 Jul 19.
Wastewater-based epidemiology (WBE) has been implemented to monitor surges of COVID-19. Yet, multiple factors impede the usefulness of WBE and quantitative adjustment may be required.
We aimed to model the relationship between WBE data and incident COVID-19 cases, while adjusting for confounders and autocorrelation.
This nationwide WBE study includes data from 40 wastewater treatment plants (WWTPs) in Belgium (02/2021-06/2022). We applied ARIMA-based modelling to assess the effect of daily flow rate, pepper mild mottle virus (PMMoV) concentration, a measure of human faeces in wastewater, and variants (alpha, delta, and omicron strains) on SARS-CoV-2 RNA levels in wastewater. Secondly, adjusted WBE metrics at different lag times were used to predict incident COVID-19 cases. Model selection was based on AICc minimization.
In 33/40 WWTPs, RNA levels were best explained by incident cases, flow rate, and PMMoV. Flow rate and PMMoV were associated with -13.0 % (95 % prediction interval: -26.1 to +0.2 %) and +13.0 % (95 % prediction interval: +5.1 to +21.0 %) change in RNA levels per SD increase, respectively. In 38/40 WWTPs, variants did not explain variability in RNA levels independent of cases. Furthermore, our study shows that RNA levels can lead incident cases by at least one week in 15/40 WWTPs. The median population size of leading WWTPs was 85.1 % larger than that of non‑leading WWTPs. In 17/40 WWTPs, however, RNA levels did not lead or explain incident cases in addition to autocorrelation.
This study provides quantitative insights into key determinants of WBE, including the effects of wastewater flow rate, PMMoV, and variants. Substantial inter-WWTP variability was observed in terms of explaining incident cases. These findings are of practical importance to WBE practitioners and show that the early-warning potential of WBE is WWTP-specific and needs validation.
基于污水的流行病学(WBE)已被用于监测 COVID-19 的激增。然而,多种因素阻碍了 WBE 的实用性,可能需要进行定量调整。
我们旨在建立污水数据与 COVID-19 病例之间的关系模型,同时调整混杂因素和自相关。
本研究是一项全国性的 WBE 研究,包括来自比利时 40 个污水处理厂(WWTPs)的数据(2021 年 2 月至 2022 年 6 月)。我们应用基于 ARIMA 的模型来评估每日流量、辣椒轻斑驳病毒(PMMoV)浓度(废水中人类粪便的衡量标准)和变体(alpha、delta 和 omicron 株)对污水中 SARS-CoV-2 RNA 水平的影响。其次,使用不同滞后时间的调整后的 WBE 指标来预测 COVID-19 病例。模型选择基于 AICc 最小化。
在 33/40 个 WWTP 中,RNA 水平最能由病例、流量和 PMMoV 来解释。流量和 PMMoV 分别与 RNA 水平的 -13.0%(95%预测区间:-26.1 至 +0.2%)和 +13.0%(95%预测区间:+5.1 至 +21.0%)变化相关。在 38/40 个 WWTP 中,变体不能独立于病例解释 RNA 水平的变异性。此外,我们的研究表明,在 15/40 个 WWTP 中,RNA 水平至少可以提前一周预测病例。具有领先作用的 WWTP 的平均人口规模比非领先 WWTP 大 85.1%。然而,在 17/40 个 WWTP 中,除了自相关外,RNA 水平并没有导致或解释病例。
本研究提供了关于 WBE 的关键决定因素的定量见解,包括废水流量、PMMoV 和变体的影响。在解释病例方面,观察到 WWTP 之间存在很大的变异性。这些发现对 WBE 从业人员具有实际意义,表明 WBE 的早期预警潜力是 WWTP 特异性的,需要验证。