Qatar Environment and Energy Research Institute (QEERI), Hamad Bin Khalifa University, Qatar Foundation, P. O. Box 34110, Doha, Qatar.
Genomics Laboratory, Weill Cornell Medicine-Qatar (WCM-Q), Cornell University, Doha, Qatar.
Sci Total Environ. 2021 Jun 20;774:145608. doi: 10.1016/j.scitotenv.2021.145608. Epub 2021 Feb 9.
Raw municipal wastewater from five wastewater treatment plants representing the vast majority of the Qatar population was sampled between the third week of June 2020 and the end of August 2020, during the period of declining cases after the peak of the first wave of infection in May 2020. The N1 region of the SARS-CoV-2 genome was used to quantify the viral load in the wastewater using RT-qPCR. The trend in Ct values in the wastewater samples mirrored the number of new daily positive cases officially reported for the country, confirmed by RT-qPCR testing of naso-pharyngeal swabs. SARS-CoV-2 RNA was detected in 100% of the influent wastewater samples (7889 ± 1421 copy/L - 542,056 ± 25,775 copy/L, based on the N1 assay). A mathematical model for wastewater-based epidemiology was developed and used to estimate the number of people in the population infected with COVID-19 from the N1 Ct values in the wastewater samples. The estimated number of infected population on any given day using the wastewater-based epidemiology approach declined from 542,313 ± 51,159 to 31,181 ± 3081 over the course of the sampling period, which was significantly higher than the officially reported numbers. However, seroprevalence data from Qatar indicates that diagnosed infections represented only about 10% of actual cases. The model estimates were lower than the corrected numbers based on application of a static diagnosis ratio of 10% to the RT-qPCR identified cases, which is assumed to be due to the difficulty in quantifying RNA losses as a model term. However, these results indicate that the presented WBE modeling approach allows for a realistic assessment of incidence trend in a given population, with a more reliable estimation of the number of infected people at any given point in time than can be achieved using human biomonitoring alone.
从五个代表卡塔尔绝大多数人口的污水处理厂采集了原始市政废水,时间跨度为 2020 年 6 月第三周到 8 月底,此时正值 2020 年 5 月第一波感染高峰过后病例数下降期间。使用 RT-qPCR 从废水样本中定量 SARS-CoV-2 基因组的 N1 区,以确定病毒载量。废水样本中 Ct 值的趋势反映了该国每天新确诊阳性病例的数量,这些病例通过对鼻咽拭子进行 RT-qPCR 检测得到证实。在 100%的进水废水样本中检测到 SARS-CoV-2 RNA(基于 N1 检测,7889±1421 拷贝/L-542056±25775 拷贝/L)。开发了一种基于废水的流行病学数学模型,并用于根据废水样本中 N1 Ct 值估算感染 COVID-19 的人群数量。使用基于废水的流行病学方法估算的任何特定日期的感染人群数量从采样期间的 542313±51159 下降到 31181±3081,这明显高于官方报告的数字。然而,卡塔尔的血清流行率数据表明,诊断出的感染仅占实际病例的 10%左右。模型估计值低于根据将 10%的静态诊断比应用于 RT-qPCR 确定的病例得出的校正数字,这可能是由于难以量化 RNA 损失作为模型项。然而,这些结果表明,所提出的 WBE 建模方法可用于对特定人群的发病趋势进行现实评估,并可更可靠地估计任何特定时间点的感染人数,这比仅使用人体生物监测所能实现的效果更好。