Comparison of Classification Algorithms for COVID19 Detection using Cough Acoustic Signals
Yunus Emre Erdo\u{g}an, Ali Nar\.in

TL;DR
This study compares various classification algorithms to detect COVID-19 from cough sounds using acoustic data, finding that ensemble methods achieve the highest accuracy, demonstrating the potential of audio-based diagnosis.
Contribution
It introduces a comparative analysis of multiple classifiers on cough acoustic data for COVID-19 detection, highlighting the effectiveness of ensemble algorithms.
Findings
Ensemble-Bagged-Trees achieved 90.6% accuracy.
Support Vector Machines and other classifiers showed lower performance.
Cough acoustic data can effectively identify COVID-19 positive cases.
Abstract
The epidemic disease, called the new coronavirus (COVID19), firstly occurred in Wuhan, China in December 2019. COVID19 was announced as an epidemic by World Health Organization soon after. Some of the symptoms of this disease are fever, cough, shortness of breath and difficulty in breathing. In more severe cases, death may occur as a result of infection. The most significant question in fighting the pandemic and controlling the epidemic is the early diagnosis of COVID19(+) patients and the follow-up of these patients. Therefore, various diagnostic mechanisms are used. Additionally to the RT-PCR test, medical imaging methods have been utilized, especially in the detection of COVID19(+) patients. In this study, an alternative approach was proposed by using cough data, which is one of the most prominent symptoms of COVID19(+) patients. The cough acoustic public dataset on the Virufy…
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Taxonomy
TopicsCOVID-19 diagnosis using AI · Respiratory and Cough-Related Research · Infant Health and Development
MethodsLogistic Regression
