Group Testing-Based Robust Algorithm for Diagnosis of COVID-19

Título

Group Testing-Based Robust Algorithm for Diagnosis of COVID-19

Autor

Jin-Taek Seong

Descripción

At the time of writing, the COVID-19 infection is spreading rapidly. Currently, there is no vaccine or treatment, and researchers around the world are attempting to fight the infection. In this paper, we consider a diagnosis method for COVID-19, which is characterized by a very rapid rate of infection and is widespread. A possible method for avoiding severe infections is to stop the spread of the infection in advance by the prompt and accurate diagnosis of COVID-19. To this end, we exploit a group testing (GT) scheme, which is used to find a small set of confirmed cases out of a large population. For the accurate detection of false positives and negatives, we propose a robust algorithm (RA) based on the maximum a posteriori probability (MAP). The key idea of the proposed RA is to exploit iterative detection to propagate beliefs to neighbor nodes by exchanging marginal probabilities between input and output nodes. As a result, we show that our proposed RA provides the benefit of being robust against noise in the GT schemes. In addition, we demonstrate the performance of our proposal with a number of tests and successfully find a set of infected samples in both noiseless and noisy GT schemes with different COVID-19 incidence rates.

Fecha

2020

Materia

diagnosis, Robust algorithm, posterior probability, Group Testing, COVID-19

Identificador

DOI: 10.3390/diagnostics10060396

Fuente

Diagnostics

Editor

MDPI AG

Cobertura

Medicine (General)

Archivos

https://socictopen.socict.org/files/to_import/pdfs/5112386.pdf

Colección

Citación

Jin-Taek Seong, “Group Testing-Based Robust Algorithm for Diagnosis of COVID-19,” SOCICT Open, consulta 22 de abril de 2026, https://socictopen.socict.org/items/show/3875.

Formatos de Salida

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