Document details

COVID-19 activity screening by a smart-data-driven multi-band voice analysis

Author(s): Silva, Gabriel ; Batista, Patrícia ; Rodrigues, Pedro Miguel

Date: 2022

Persistent ID: http://hdl.handle.net/10400.14/41625

Origin: Veritati - Repositório Institucional da Universidade Católica Portuguesa

Subject(s): Breathing; Classification; Cough; COVID-19; Non-linear patterns; Speech signals


Description

COVID-19 is a disease caused by the new coronavirus SARS-COV-2 which can lead to severe respiratory infections. Since its first detection it caused more than six million worldwide deaths. COVID-19 diagnosis non-invasive and low-cost methods with faster and accurate results are still needed for a fast disease control. In this research, 3 different signal analyses have been applied (per broadband, per sub-bands and per broadband & sub-bands) to Cough, Breathing & Speech signals of Coswara dataset to extract non-linear patterns (Energy, Entropies, Correlation Dimension, Detrended Fluctuation Analysis, Lyapunov Exponent & Fractal Dimensions) for feeding a XGBoost classifier to discriminate COVID-19 activity on its different stages. Classification accuracies ranged between 83.33% and 98.46% have been achieved, surpassing the state-of-art methods in some comparisons. It should be empathized the 98.46% of accuracy reached on pair Healthy Controls vs all COVID-19 stages. The results shows that the method may be adequate for COVID-19 diagnosis screening assistance.

Document Type Journal article
Language English
Contributor(s) Veritati
CC Licence
facebook logo  linkedin logo  twitter logo 
mendeley logo

Related documents