Water Research and Environmental Biotechnology Laboratory, Riga Technical University, Kipsala 6A-263, Latvia.
Exponential Technologies Ltd, Dzerbenes 14, Riga, Latvia.
Sci Total Environ. 2023 Sep 15;891:164519. doi: 10.1016/j.scitotenv.2023.164519. Epub 2023 May 31.
Wastewater-based epidemiology (WBE) is a rapid and cost-effective method that can detect SARS-CoV-2 genomic components in wastewater and can provide an early warning for possible COVID-19 outbreaks up to one or two weeks in advance. However, the quantitative relationship between the intensity of the epidemic and the possible progression of the pandemic is still unclear, necessitating further research. This study investigates the use of WBE to rapidly monitor the SARS-CoV-2 virus from five municipal wastewater treatment plants in Latvia and forecast cumulative COVID-19 cases two weeks in advance. For this purpose, a real-time quantitative PCR approach was used to monitor the SARS-CoV-2 nucleocapsid 1 (N1), nucleocapsid 2 (N2), and E genes in municipal wastewater. The RNA signals in the wastewater were compared to the reported COVID-19 cases, and the strain prevalence data of the SARS-CoV-2 virus were identified by targeted sequencing of receptor binding domain (RBD) and furin cleavage site (FCS) regions employing next-generation sequencing technology. The model methodology for a linear model and a random forest was designed and carried out to ascertain the correlation between the cumulative cases, strain prevalence data, and RNA concentration in the wastewater to predict the COVID-19 outbreak and its scale. Additionally, the factors that impact the model prediction accuracy for COVID-19 were investigated and compared between linear and random forest models. The results of cross-validated model metrics showed that the random forest model is more effective in predicting the cumulative COVID-19 cases two weeks in advance when strain prevalence data are included. The results from this research help inform WBE and public health recommendations by providing valuable insights into the impact of environmental exposures on health outcomes.
基于污水的流行病学(WBE)是一种快速且具有成本效益的方法,可以检测污水中的 SARS-CoV-2 基因组成分,并可提前一到两周提供 COVID-19 暴发的预警。然而,疫情强度与大流行可能进展之间的定量关系尚不清楚,需要进一步研究。本研究调查了使用 WBE 从拉脱维亚的五个城市污水处理厂快速监测 SARS-CoV-2 病毒,并预测两周后累积的 COVID-19 病例。为此,使用实时定量 PCR 方法监测市政污水中的 SARS-CoV-2 核衣壳 1(N1)、核衣壳 2(N2)和 E 基因。将污水中的 RNA 信号与报告的 COVID-19 病例进行比较,并通过靶向测序受体结合域(RBD)和 furin 切割位点(FCS)区域,采用下一代测序技术鉴定 SARS-CoV-2 病毒的流行株数据。设计并实施了线性模型和随机森林模型的方法,以确定累积病例、流行株数据和污水中 RNA 浓度之间的相关性,从而预测 COVID-19 暴发及其规模。此外,还研究并比较了线性和随机森林模型之间影响 COVID-19 模型预测准确性的因素。经交叉验证的模型指标的结果表明,当包含流行株数据时,随机森林模型在预测两周后累积的 COVID-19 病例方面更为有效。本研究的结果通过提供有关环境暴露对健康结果的影响的宝贵见解,有助于为 WBE 和公共卫生建议提供信息。