| Literature DB >> 35783009 |
Yi-Jheng Lin1, Che-Hao Yu1, Tzu-Hsuan Liu1, Cheng-Shang Chang1, Wen-Tsuen Chen1.
Abstract
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.Entities:
Keywords: COVID-19; Markov modulated processes; group testing; regenerative processes; social networks
Year: 2021 PMID: 35783009 PMCID: PMC8769016 DOI: 10.1109/TNSE.2021.3081759
Source DB: PubMed Journal: IEEE Trans Netw Sci Eng ISSN: 2327-4697