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A systematic review on cough sound analysis for Covid-19 diagnosis and screening: is my cough sound COVID-19?

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posted on 2022-01-01, 00:00 authored by K C Santosh, Nicholas Rasmussen, Muntasir Mamun, Sunil AryalSunil Aryal
For COVID-19, the need for robust, inexpensive, and accessible screening becomes critical. Even though symptoms present differently, cough is still taken as one of the primary symptoms in severe and non-severe infections alike. For mass screening in resource-constrained regions, artificial intelligence (AI)-guided tools have progressively contributed to detect/screen COVID-19 infections using cough sounds. Therefore, in this article, we review state-of-the-art works in both years 2020 and 2021 by considering AI-guided tools to analyze cough sound for COVID-19 screening primarily based on machine learning algorithms. In our study, we used PubMed central repository and Web of Science with key words: (Cough OR Cough Sounds OR Speech) AND (Machine learning OR Deep learning OR Artificial intelligence) AND (COVID-19 OR Coronavirus). For better meta-analysis, we screened for appropriate dataset (size and source), algorithmic factors (both shallow learning and deep learning models) and corresponding performance scores. Further, in order not to miss up-to-date experimental research-based articles, we also included articles outside of PubMed and Web of Science, but pre-print articles were strictly avoided as they are not peer-reviewed.

History

Journal

PeerJ Computer Science

Volume

8

Article number

e958

Pagination

1 - 20

Publisher

PeerJ

Location

London, Eng.

eISSN

2376-5992

Language

eng

Publication classification

C1 Refereed article in a scholarly journal