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COVID-19 cough classification using machine learning and global smartphone recordings

Computers in biology and medicine, 2021-08, Vol.135, p.104572-104572, Article 104572 [Peer Reviewed Journal]

2021 Elsevier Ltd ;Copyright © 2021 Elsevier Ltd. All rights reserved. ;2021. Elsevier Ltd ;2021 Elsevier Ltd. All rights reserved. 2021 Elsevier Ltd ;ISSN: 0010-4825 ;EISSN: 1879-0534 ;DOI: 10.1016/j.compbiomed.2021.104572 ;PMID: 34182331

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  • Title:
    COVID-19 cough classification using machine learning and global smartphone recordings
  • Author: Pahar, Madhurananda ; Klopper, Marisa ; Warren, Robin ; Niesler, Thomas
  • Subjects: Artificial neural networks ; Classification ; Classifiers ; Computer architecture ; Convolutional neural network (CNN) ; Coronaviruses ; Cough ; Cough - diagnosis ; Cough classification ; COVID-19 ; COVID-19 - diagnosis ; Datasets ; Humans ; K-nearest neighbour (KNN) ; Laboratory tests ; Learning algorithms ; Logistic regression (LR) ; Long short-term memory (LSTM) ; Machine Learning ; Multilayer perceptron (MLP) ; Multilayer perceptrons ; Neural networks ; Oversampling ; Resnet50 ; Screening ; Short term memory ; Smartphone ; Smartphones ; Support Vector Machine ; Support vector machine (SVM) ; Support vector machines
  • Is Part Of: Computers in biology and medicine, 2021-08, Vol.135, p.104572-104572, Article 104572
  • Description: We present a machine learning based COVID-19 cough classifier which can discriminate COVID-19 positive coughs from both COVID-19 negative and healthy coughs recorded on a smartphone. This type of screening is non-contact, easy to apply, and can reduce the workload in testing centres as well as limit transmission by recommending early self-isolation to those who have a cough suggestive of COVID-19. The datasets used in this study include subjects from all six continents and contain both forced and natural coughs, indicating that the approach is widely applicable. The publicly available Coswara dataset contains 92 COVID-19 positive and 1079 healthy subjects, while the second smaller dataset was collected mostly in South Africa and contains 18 COVID-19 positive and 26 COVID-19 negative subjects who have undergone a SARS-CoV laboratory test. Both datasets indicate that COVID-19 positive coughs are 15%–20% shorter than non-COVID coughs. Dataset skew was addressed by applying the synthetic minority oversampling technique (SMOTE). A leave-p-out cross-validation scheme was used to train and evaluate seven machine learning classifiers: logistic regression (LR), k-nearest neighbour (KNN), support vector machine (SVM), multilayer perceptron (MLP), convolutional neural network (CNN), long short-term memory (LSTM) and a residual-based neural network architecture (Resnet50). Our results show that although all classifiers were able to identify COVID-19 coughs, the best performance was exhibited by the Resnet50 classifier, which was best able to discriminate between the COVID-19 positive and the healthy coughs with an area under the ROC curve (AUC) of 0.98. An LSTM classifier was best able to discriminate between the COVID-19 positive and COVID-19 negative coughs, with an AUC of 0.94 after selecting the best 13 features from a sequential forward selection (SFS). Since this type of cough audio classification is cost-effective and easy to deploy, it is potentially a useful and viable means of non-contact COVID-19 screening. •A machine learning based COVID-19 cough classifier has been developed.•This classifier achieves the highest AUC of 0.98 from a residual based architecture.•Cough audio recordings are collected from all six continents of the globe.•COVID-19 positive coughs are 15% to 20% shorter than non-COVID coughs.•A special feature extraction technique preserves end-to-end time-domain patterns.
  • Publisher: United States: Elsevier Ltd
  • Language: English
  • Identifier: ISSN: 0010-4825
    EISSN: 1879-0534
    DOI: 10.1016/j.compbiomed.2021.104572
    PMID: 34182331
  • Source: MEDLINE
    ProQuest Central

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