Publication | Open Access
Positively Correlated Samples Save Pooled Testing Costs
27
Citations
37
References
2021
Year
Epidemiological DynamicIndividual Testing ApproachCovid-19Experimental EconomicsEconomic AnalysisTesting CostsEpidemiologic MethodPublic HealthStatisticsSocial Network AnalysisMassive TestingEconomicsStatistical GeneticsSampling (Statistics)Cost EffectivenessSocial GraphEpidemiologyCost IssueBusinessEconometricsSocial Distancing
The group testing approach, which achieves significant cost reduction over the individual testing approach, has received a lot of interest lately for massive testing of COVID-19. Many studies simply assume samples mixed in a group are independent. However, this assumption may not be reasonable for a contagious disease like COVID-19. Specifically, people within a family tend to infect each other and thus are likely to be positively correlated. By exploiting positive correlation, we make the following two main contributions. One is to provide a rigorous proof that further cost reduction can be achieved by using the Dorfman two-stage method when samples within a group are positively correlated. The other is to propose a hierarchical agglomerative algorithm for pooled testing with a social graph, where an edge in the social graph connects frequent social contacts between two persons. Such an algorithm leads to notable cost reduction (roughly 20-35%) compared to random pooling when the Dorfman two-stage algorithm is applied.
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