A cough-based covid-19 detection with gammatone and mel-frequency cepstral coefficients

被引:0
作者
Benmalek E. [1 ]
Mhamdi J.E. [1 ]
Jilbab A. [1 ]
Jbari A. [1 ]
机构
[1] E2SN, ENSAM de Rabat, Mohammed v University in Rabat
来源
Diagnostyka | 2023年 / 24卷 / 02期
关键词
cough recordings; COVID-19; feature selection; gammatone cepstral coefficients; machine learning; Mel-frequency cepstral coefficients;
D O I
10.29354/diag/166330
中图分类号
学科分类号
摘要
Many countries have adopted a public health approach that aims to address the particular challenges faced during the pandemic Coronavirus disease 2019 (COVID-19). Researchers mobilized to manage and limit the spread of the virus, and multiple artificial intelligence-based systems are designed to automatically detect the disease. Among these systems, voice-based ones since the virus have a major impact on voice production due to the respiratory system's dysfunction. In this paper, we investigate and analyze the effectiveness of cough analysis to accurately detect COVID-19. To do so, we distinguished positive COVID patients from healthy controls. After the gammatone cepstral coefficients (GTCC) and the Mel-frequency cepstral coefficients (MFCC) extraction, we have done the feature selection (FS) and classification with multiple machine learning algorithms. By combining all features and the 3-nearest neighbor (3NN) classifier, we achieved the highest classification results. The model is able to detect COVID-19 patients with accuracy and an f1-score above 98 percent. When applying FS, the higher accuracy and F1-score were achieved by the same model and the ReliefF algorithm, we lose 1 percent of accuracy by mapping only 12 features instead of the original 53. © 2023 Polish Society of Technical Diagnostics. All rights reserved.
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