Department of Statistics, Rice University, 6100 Main St., Houston, TX, 77005, USA.
Houston Health Department, 8000 N. Stadium Dr., Houston, TX, 77054, USA.
Sci Rep. 2024 Mar 6;14(1):5575. doi: 10.1038/s41598-024-56175-2.
Wastewater surveillance has proven a cost-effective key public health tool to understand a wide range of community health diseases and has been a strong source of information on community levels and spread for health departments throughout the SARS- CoV-2 pandemic. Studies spanning the globe demonstrate the strong association between virus levels observed in wastewater and quality clinical case information of the population served by the sewershed. Few of these studies incorporate the temporal dependence present in sampling over time, which can lead to estimation issues which in turn impact conclusions. We contribute to the literature for this important public health science by putting forward time series methods coupled with statistical process control that (1) capture the evolving trend of a disease in the population; (2) separate the uncertainty in the population disease trend from the uncertainty due to sampling and measurement; and (3) support comparison of sub-sewershed population disease dynamics with those of the population represented by the larger downstream treatment plant. Our statistical methods incorporate the fact that measurements are over time, ensuring correct statistical conclusions. We provide a retrospective example of how sub-sewersheds virus levels compare to the upstream wastewater treatment plant virus levels. An on-line algorithm supports real-time statistical assessment of deviations of virus level in a population represented by a sub-sewershed to the virus level in the corresponding larger downstream wastewater treatment plant. This information supports public health decisions by spotlighting segments of the population where outbreaks may be occurring.
污水监测已被证明是一种具有成本效益的公共卫生工具,可以了解广泛的社区健康疾病,并为整个 SARS-CoV-2 大流行期间的卫生部门提供有关社区水平和传播的重要信息。全球范围内的研究表明,污水中观察到的病毒水平与污水流域服务人群的临床病例信息之间存在很强的关联。这些研究中很少有研究包含随时间采样的时间依赖性,这可能导致估计问题,从而影响结论。我们通过提出时间序列方法和统计过程控制来为这一重要的公共卫生科学做出贡献,这些方法:(1) 捕捉人群中疾病的演变趋势;(2) 将人群疾病趋势中的不确定性与采样和测量引起的不确定性分开;(3) 支持与较大下游处理厂所代表的人群相比,对亚流域人群疾病动态的比较。我们的统计方法考虑到了测量是随时间进行的这一事实,从而确保了正确的统计结论。我们提供了一个回溯性的例子,说明亚流域的病毒水平如何与上游污水处理厂的病毒水平进行比较。在线算法支持实时统计评估亚流域所代表的人群中病毒水平相对于相应较大的下游污水处理厂中病毒水平的偏差。这些信息通过突出可能发生疫情的人群部分,为公共卫生决策提供支持。