Voice Features of Sustained Phoneme as COVID-19 Biomarker

Pah, Nemuel Daniel and Indrawati, Veronica and Kumar, Dinesh Kant (2022) Voice Features of Sustained Phoneme as COVID-19 Biomarker. IEEE Journal of Translational Engineering in Health and Medicine, 10. p. 4901309. ISSN 2168-2372

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Official URL / DOI: https://ieeexplore.ieee.org/document/9895437

Abstract

Background: The COVID-19 pandemic has resulted in enormous costs to our society. Besides finding medicines to treat those infected by the virus, it is important to find effective and efficient strategies to prevent the spreading of the disease. One key factor to prevent transmission is to identify COVID-19 biomarkers that can be used to develop an efficient, accurate, noninvasive, and self-administered screening procedure. Several COVID-19 variants cause significant respiratory symptoms, and thus a voice signal may be a potential biomarker for COVID-19 infection. Aim: This study investigated the effectiveness of different phonemes and a range of voice features in differentiating people infected by COVID-19 with respiratory tract symptoms. Method: This cross-sectional, longitudinal study recorded six phonemes (i.e., /a/, /e/, /i/, /o/, /u/, and /m/) from 40 COVID-19 patients and 48 healthy subjects for 22 days. The signal features were obtained for the recordings, which were statistically analyzed and classified using Support Vector Machine (SVM). Results: The statistical analysis and SVM classification show that the voice features related to the vocal tract filtering (e.g., MFCC, VTL, and formants) and the stability of the respiratory muscles and lung volume (Intensity-SD) were the most sensitive to voice change due to COVID-19. The result also shows that the features extracted from the vowel /i/ during the first 3 days after admittance to the hospital were the most effective. The SVM classification accuracy with 18 ranked features extracted from /i/ was 93.5% (with F1 score of 94.3%). Conclusion: A measurable difference exists between the voices of people with COVID-19 and healthy people, and the phoneme /i/ shows the most pronounced difference. This supports the potential for using computerized voice analysis to detect the disease and consider it a biomarker.

Item Type: Article
Uncontrolled Keywords: COVID-19, voice features, sustained phoneme, support vector machine
Subjects: T Technology > T Technology (General)
Divisions: Faculty of Engineering > Department of Electrical Engineering
Depositing User: Ester Sri W. 196039
Date Deposited: 13 Oct 2022 05:26
Last Modified: 30 Mar 2023 04:48
URI: http://repository.ubaya.ac.id/id/eprint/42733

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