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基于污水的监测可用于对与 COVID-19 相关的劳动力缺勤情况进行建模。

Wastewater-based surveillance can be used to model COVID-19-associated workforce absenteeism.

机构信息

Department of Microbiology, Immunology and Infectious Diseases, University of Calgary, 3330 Hospital Drive NW, Calgary, Alberta T2N 4N1, Canada.

Department of Mathematics and Statistics, University of Calgary, 2500 University Drive NW, Calgary, Alberta T2N 1N4, Canada.

出版信息

Sci Total Environ. 2023 Nov 20;900:165172. doi: 10.1016/j.scitotenv.2023.165172. Epub 2023 Jun 26.

Abstract

Wastewater-based surveillance (WBS) of infectious diseases is a powerful tool for understanding community COVID-19 disease burden and informing public health policy. The potential of WBS for understanding COVID-19's impact in non-healthcare settings has not been explored to the same degree. Here we examined how SARS-CoV-2 measured from municipal wastewater treatment plants (WWTPs) correlates with workforce absenteeism. SARS-CoV-2 RNA N1 and N2 were quantified three times per week by RT-qPCR in samples collected at three WWTPs servicing Calgary and surrounding areas, Canada (1.4 million residents) between June 2020 and March 2022. Wastewater trends were compared to workforce absenteeism using data from the largest employer in the city (>15,000 staff). Absences were classified as being COVID-19-related, COVID-19-confirmed, and unrelated to COVID-19. Poisson regression was performed to generate a prediction model for COVID-19 absenteeism based on wastewater data. SARS-CoV-2 RNA was detected in 95.5 % (85/89) of weeks assessed. During this period 6592 COVID-19-related absences (1896 confirmed) and 4524 unrelated absences COVID-19 cases were recorded. A generalized linear regression using a Poisson distribution was performed to predict COVID-19-confirmed absences out of the total number of absent employees using wastewater data as a leading indicator (P < 0.0001). The Poisson regression with wastewater as a one-week leading signal has an Akaike information criterion (AIC) of 858, compared to a null model (excluding wastewater predictor) with an AIC of 1895. The likelihood-ratio test comparing the model with wastewater signal with the null model shows statistical significance (P < 0.0001). We also assessed the variation of predictions when the regression model was applied to new data, with the predicted values and corresponding confidence intervals closely tracking actual absenteeism data. Wastewater-based surveillance has the potential to be used by employers to anticipate workforce requirements and optimize human resource allocation in response to trackable respiratory illnesses like COVID-19.

摘要

基于污水的传染病监测(WBS)是了解社区 COVID-19 疾病负担并为公共卫生政策提供信息的有力工具。WBS 用于了解非医疗环境中 COVID-19 影响的潜力尚未得到同等程度的探索。在这里,我们研究了从市政污水处理厂(WWTP)中测量到的 SARS-CoV-2 如何与劳动力缺勤相关。在 2020 年 6 月至 2022 年 3 月期间,在加拿大卡尔加里及其周边地区(140 万居民)的三个 WWTP 每周三次通过 RT-qPCR 定量检测 SARS-CoV-2 RNA N1 和 N2。使用该市最大雇主(>15000 名员工)的数据,将污水趋势与劳动力缺勤进行比较。缺勤被归类为与 COVID-19 相关、COVID-19 确诊和与 COVID-19 无关。使用泊松回归生成基于污水数据的 COVID-19 缺勤预测模型。在评估的 89 周中,有 95.5%(85/89)检测到 SARS-CoV-2 RNA。在此期间,记录了 6592 例与 COVID-19 相关的缺勤(1896 例确诊)和 4524 例与 COVID-19 无关的缺勤。使用泊松分布的广义线性回归来预测 COVID-19 确诊缺勤人数(P < 0.0001),将污水数据用作领先指标。与废水作为一周领先信号的泊松回归相比,具有废水预测器的空模型(AIC)为 1895。比较具有废水信号的模型与空模型的似然比检验显示具有统计学意义(P < 0.0001)。我们还评估了将回归模型应用于新数据时预测的变化,预测值和相应的置信区间与实际缺勤数据密切相关。污水监测有可能被雇主用于预测劳动力需求,并根据可追踪的呼吸道疾病(如 COVID-19)优化人力资源配置。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f0d3/10292917/03dd8404e2cb/ga1_lrg.jpg

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