An opinion on Wastewater-Based Epidemiological Monitoring (WBEM) with Clinical Diagnostic Test (CDT) for detecting high-prevalence areas of community COVID-19 Infections

关于使用基于废水的流行病学监测 (WBEM) 和临床诊断测试 (CDT) 检测社区 COVID-19 感染高发区域的意见

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作者:Aminul Islam, Foysal Hossen, Arifur Rahman, Khandokar Fahmida Sultana, Mohammad Nayeem Hasan, Atiqul Haque, Juan Eduardo Sosa-Hernández, Mariel Araceli Oyervides-Muñoz, Roberto Parra-Saldívar, Tanvir Ahmed, Tahmidul Islam, Kuldeep Dhama, Sarawut Sangkham, Newaz Mohammed Bahadur, Hasan Mahmud Reza, J

Abstract

Wastewater-Based Epidemiological Monitoring (WBEM) is an efficient surveillance tool during the COVID-19 pandemic as it meets all requirements of a complete monitoring system including early warning, tracking the current trend, prevalence of the disease, detection of genetic diversity as well asthe up-surging SARS-CoV-2 new variants with mutations from the wastewater samples. Subsequently, Clinical Diagnostic Test is widely acknowledged as the global gold standard method for disease monitoring, despite several drawbacks such as high diagnosis cost, reporting bias, and the difficulty of tracking asymptomatic patients (silent spreaders of the COVID-19 infection who manifest nosymptoms of the disease). In this current reviewand opinion-based study, we first propose a combined approach) for detecting COVID-19 infection in communities using wastewater and clinical sample testing, which may be feasible and effective as an emerging public health tool for the long-term nationwide surveillance system. The viral concentrations in wastewater samples can be used as indicatorsto monitor ongoing SARS-CoV-2 trends, predict asymptomatic carriers, and detect COVID-19 hotspot areas, while clinical sampleshelp in detecting mostlysymptomaticindividuals for isolating positive cases in communities and validate WBEM protocol for mass vaccination including booster doses for COVID-19.

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