Group Testing for COVID-19: How to Stop Worrying and Test More
Lakshmi N. Theagarajan

TL;DR
This paper explores the application of group testing methods to COVID-19 diagnosis, demonstrating how pooling samples can increase testing efficiency and capacity despite dilution effects, thereby aiding large-scale screening efforts.
Contribution
It introduces and analyzes multiple group testing algorithms tailored for COVID-19 PCR testing, accounting for dilution effects and providing practical test plans to enhance testing capacity.
Findings
Group testing remains effective despite dilution effects.
Proposed algorithms can significantly reduce the number of tests needed.
Test plans can be scaled to increase diagnosis throughput.
Abstract
The corona virus disease 2019 (COVID-19) caused by the novel corona virus has an exponential rate of infection. COVID-19 is particularly notorious as the onset of symptoms in infected patients are usually delayed and there exists a large number of asymptomatic carriers. In order to prevent overwhelming of medical facilities and large fatality rate, early stage testing and diagnosis are key requirements. In this article, we discuss the methodologies from the group testing literature and its relevance to COVID-19 diagnosis. Specifically, we investigate the efficiency of group testing using polymerase chain reaction (PCR) for COVID-19. Group testing is a method in which multiple samples are pooled together in groups and fewer tests are performed on these groups to discern all the infected samples. We study the effect of dilution due to pooling in group testing and show that group tests can…
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Taxonomy
TopicsSARS-CoV-2 detection and testing · Respiratory viral infections research · Biosensors and Analytical Detection
