SDASDec 14, 2021

A literature review on COVID-19 disease diagnosis from respiratory sound data

arXiv:2112.07670v140 citations
Originality Synthesis-oriented
AI Analysis

It addresses the need for scalable diagnostic tools during the COVID-19 pandemic, but is incremental as a review.

This paper reviews literature on diagnosing COVID-19 from respiratory sound data, analyzing parameters like cough, voice, and breath to support clinical and research efforts.

The World Health Organization (WHO) has announced a COVID-19 was a global pandemic in March 2020. It was initially started in china in the year 2019 December and affected an expanding number of nations in various countries in the last few months. In this particular situation, many techniques, methods, and AI-based classification algorithms are put in the spotlight in reacting to fight against it and reduce the rate of such a global health crisis. COVID-19's main signs are heavy temperature, different cough, cold, breathing shortness, and a combination of loss of sense of smell and chest tightness. The digital world is growing day by day, in this context digital stethoscope can read all of these symptoms and diagnose respiratory disease. In this study, we majorly focus on literature reviews of how SARS-CoV-2 is spreading and in-depth analysis of the diagnosis of COVID-19 disease from human respiratory sounds like cough, voice, and breath by analyzing the respiratory sound parameters. We hope this review will provide an initiative for the clinical scientists and researcher's community to initiate open access, scalable, and accessible work in the collective battle against COVID-19.

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