Soller Environmental, LLC, 3022 King St, Berkeley, CA 94703, USA.
Waterborne Disease Prevention Branch, Division of Foodborne, Waterborne, and Environmental Diseases, National Center for Emerging and Zoonotic Infectious Diseases, Centers for Disease Control and Prevention, Atlanta, Georgia, USA E-mail:
J Water Health. 2022 Aug;20(8):1197-1211. doi: 10.2166/wh.2022.094.
Estimating total infection levels, including unreported and asymptomatic infections, is important for understanding community disease transmission. Wastewater can provide a pooled community sample to estimate total infections that is independent of case reporting biases toward individuals with moderate to severe symptoms and by test-seeking behavior and access. We derive three mechanistic models for estimating community infection levels from wastewater measurements based on a description of the processes that generate SARS-CoV-2 RNA signals in wastewater and accounting for the fecal strength of wastewater through endogenous microbial markers, daily flow, and per-capita wastewater generation estimates. The models are illustrated through two case studies of wastewater data collected during 2020-2021 in Virginia Beach, VA, and Santa Clara County, CA. Median simulated infection levels generally were higher than reported cases, but at times, were lower, suggesting a discrepancy between the reported cases and wastewater data, or inaccurate modeling results. Daily simulated infection estimates showed large ranges, in part due to dependence on highly variable clinical viral fecal shedding data. Overall, the wastewater-based mechanistic models are useful for normalization of wastewater measurements and for understanding wastewater-based surveillance data for public health decision-making but are currently limited by lack of robust SARS-CoV-2 fecal shedding data.
估算总感染水平,包括未报告和无症状感染,对于了解社区疾病传播非常重要。废水可以提供一个综合的社区样本,用于估算总感染水平,而不受偏向于中度至重度症状个体的病例报告偏差、检测寻求行为和可及性的影响。我们根据在废水中产生 SARS-CoV-2 RNA 信号的过程的描述,并通过内源性微生物标志物、日流量和人均废水产生量估算来解释废水的粪便强度,从废水测量中得出了三种用于估算社区感染水平的机制模型。通过在弗吉尼亚海滩(VA)和加利福尼亚州圣克拉拉县(CA)收集的 2020-2021 年废水数据的两个案例研究说明了这些模型。模拟感染水平的中位数通常高于报告的病例,但有时较低,这表明报告的病例与废水数据之间存在差异,或者建模结果不准确。每日模拟感染估计值显示出较大的范围,部分原因是对高度可变的临床病毒粪便脱落数据的依赖。总体而言,基于废水的机制模型对于废水测量的归一化和理解基于废水的监测数据以用于公共卫生决策非常有用,但目前受到缺乏稳健的 SARS-CoV-2 粪便脱落数据的限制。