Schoen Mary E, Wolfe Marlene K, Li Linlin, Duong Dorothea, White Bradley J, Hughes Bridgette, Boehm Alexandria B
Soller Environmental, LLC, 3022 King Street, Berkeley, California 94703, United States.
Gangarosa Department of Environmental Health, Rollins School of Public Health, Emory University, 1518 Clifton Road, Atlanta, Georgia 30322, United States.
ACS ES T Water. 2022 Nov 11;2(11):2167-2174. doi: 10.1021/acsestwater.2c00074. Epub 2022 May 3.
Severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) RNA concentrations in wastewater settled solids correlate well with coronavirus disease 2019 (COVID-19) incidence rates (IRs). Here, we develop distributed lag models to estimate IRs using concentrations of SARS-CoV-2 RNA from wastewater solids and investigate the impact of sampling frequency on model performance. SARS-CoV-2 N gene and pepper mild mottle virus (PMMoV) RNA concentrations were measured daily at four wastewater treatment plants in California. Artificially reduced data sets were produced for each plant with sampling frequencies of once every 2, 3, 4, and 7 days. Sewershed-specific models that related daily N/PMMoV to IR were fit for each sampling frequency with data from mid-November 2020 through mid-July 2021, which included the period of time during which Delta emerged. Models were used to predict IRs during a subsequent out-of-sample time period. When sampling occurred at least once every 4 days, the in- and out-of-sample root-mean-square error changed by <7 cases/100 000 compared to daily sampling across sewersheds. This work illustrates that real-time, daily predictions of IR are possible with small errors, despite changes in circulating variants, when sampling frequency is once every 4 days or more. However, reduced sampling frequency may not serve other important wastewater surveillance use cases.
污水沉淀固体中的严重急性呼吸综合征冠状病毒2(SARS-CoV-2)RNA浓度与2019冠状病毒病(COVID-19)发病率密切相关。在此,我们开发了分布式滞后模型,以利用污水固体中SARS-CoV-2 RNA的浓度来估计发病率,并研究采样频率对模型性能的影响。在加利福尼亚州的四个污水处理厂,每天测量SARS-CoV-2 N基因和辣椒轻斑驳病毒(PMMoV)的RNA浓度。为每个工厂生成了人工减少的数据集,采样频率分别为每2天、3天、4天和7天一次。利用2020年11月中旬至2021年7月中旬的数据(包括德尔塔毒株出现的时间段),针对每个采样频率拟合了将每日N/PMMoV与发病率相关联的特定排水区域模型。这些模型用于预测随后样本外时间段的发病率。当采样频率至少为每4天一次时,与整个排水区域的每日采样相比,样本内和样本外的均方根误差变化小于7例/10万。这项工作表明,当采样频率为每4天或更长时间一次时,尽管流行毒株发生了变化,但仍可以以较小的误差对发病率进行实时每日预测。然而,降低采样频率可能无法满足其他重要的污水监测应用场景。