Automatic diagnosis of COVID-19 related respiratory diseases from speech

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Date

2023

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Springer

Abstract

In this work, an attempt is made to propose an intelligent and automatic system to recognize COVID-19 related illnesses from mere speech samples by using automatic speech processing techniques. We used a standard crowd-sourced dataset which was collected by the University of Cambridge through a web based application and an android/iPhone app. We worked on cough and breath datasets individually, and also with a combination of both the datasets. We trained the datasets on two sets of features, one consisting of only standard audio features such as spectral and prosodic features and one combining excitation source features with standard audio features extracted, and trained our model on shallow classifiers such as ensemble classifiers and SVM classification methods. Our model has shown better performance on both breath and cough datasets, but the best results in each of the cases was obtained through different combinations of features and classifiers. We got our best result when we used only standard audio features, and combined both cough and breath data. In this case, we achieved an accuracy of 84% and an Area Under Curve (AUC) score of 84%. Intelligent systems have already started to make a mark in medical diagnosis, and this type of study can help better the health system by providing much needed assistance to the health workers. © 2023, The Author(s), under exclusive licence to Springer Science+Business Media, LLC, part of Springer Nature.

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Keywords

Classification (of information), Diagnosis, Intelligent systems, Speech processing, Speech recognition, Support vector machines, Audio features, Automatic diagnosis, Breath, Cough, Excitation source feature, Excitation sources, Source features, Spectral feature, Speech-based COVID analyse, Support vectors machine, COVID-19

Citation

Multimedia Tools and Applications, 2023, 82, 23, pp. 36599-36614

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