Institute for Data, Systems, and Society, Massachusetts Institute of Technology, Cambridge, Massachusetts, United States of America.
Rotman School of Management, University of Toronto, Toronto, Canada.
PLoS One. 2020 Oct 5;15(10):e0240007. doi: 10.1371/journal.pone.0240007. eCollection 2020.
About 50% of individuals infected with the novel Coronavirus (SARS-CoV-2) suffer from intestinal infection as well as respiratory infection. They shed virus in their stool. Municipal sewage systems carry the virus and its genetic remnants. These viral traces can be detected in the sewage entering a wastewater treatment plant (WTP). Such virus signals indicate community infections but not locations of the infection within the community. In this paper, we frame and formulate the problem in a way that leads to algorithmic procedures homing in on locations and/or neighborhoods within the community that are most likely to have infections. Our data source is wastewater sampled and real-time tested from selected manholes. Our algorithms dynamically and adaptively develop a sequence of manholes to sample and test. The algorithms are often finished after 5 to 10 manhole samples, meaning that-in the field-the procedure can be carried out within one day. The goal is to provide timely information that will support faster more productive human testing for viral infection and thus reduce community disease spread. Leveraging the tree graph structure of the sewage system, we develop two algorithms, the first designed for a community that is certified at a given time to have zero infections and the second for a community known to have many infections. For the first, we assume that wastewater at the WTP has just revealed traces of SARS-CoV-2, indicating existence of a "Patient Zero" in the community. This first algorithm identifies the city block in which the infected person resides. For the second, we home in on a most infected neighborhood of the community, where a neighborhood is usually several city blocks. We present extensive computational results, some applied to a small New England city.
约 50%感染新型冠状病毒(SARS-CoV-2)的个体同时患有肠道感染和呼吸道感染。他们的粪便中会排出病毒。城市污水系统携带病毒及其遗传痕迹。这些病毒痕迹可以在进入废水处理厂(WTP)的污水中检测到。这些病毒信号表明存在社区感染,但不能确定社区内感染的位置。在本文中,我们以一种能够引导算法程序确定社区内最有可能发生感染的位置和/或邻里的方式来构建和制定问题。我们的数据源是从选定的沙井中抽取和实时测试的污水。我们的算法动态地和自适应地开发一系列要采样和测试的沙井。这些算法通常在完成 5 到 10 个沙井样本后结束,这意味着在现场,该程序可以在一天内完成。我们的目标是提供及时的信息,以支持更快、更有效的针对病毒感染的人体检测,从而减少社区疾病传播。利用污水系统的树图结构,我们开发了两种算法,第一种算法针对在给定时间被认证为零感染的社区,第二种算法针对已知有许多感染的社区。对于第一种情况,我们假设 WTP 的废水刚刚显示出 SARS-CoV-2 的痕迹,表明社区中存在“零号病人”。第一种算法确定了感染者居住的城市街区。对于第二种情况,我们将目标锁定在社区中感染最严重的邻里,一个邻里通常由几个城市街区组成。我们展示了广泛的计算结果,其中一些应用于新英格兰的一个小城市。