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MSCCov19Net: multi-branch deep learning model for COVID-19 detection from cough sounds.

Sezer Ulukaya1, Ahmet Alp Sarıca2, Oğuzhan Erdem2

  • 1Department of Electrical and Electronics Engineering, Trakya University, Edirne, 22030, Turkey. sezerulukaya@trakya.edu.tr.

Medical & Biological Engineering & Computing
|February 24, 2023
PubMed
Summary
This summary is machine-generated.

A novel deep learning model, MSCCov19Net, detects COVID-19 from cough sounds. This fast, remote, and side-effect-free method shows promise in diagnosing coronavirus variants, offering a cost-effective alternative to traditional tests.

Keywords:
CoronavirusCoughingDeep learningEnsemble learningTelehealth

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Area of Science:

  • Artificial Intelligence
  • Medical Diagnostics
  • Bioacoustics

Background:

  • Coronavirus (COVID-19) poses a significant global health threat, necessitating rapid and accessible diagnostic tools.
  • Current COVID-19 detection methods like RT-PCR, chest X-ray, and CT scans have limitations including cost, radiation exposure, and detection rates.
  • Respiratory transmission of COVID-19 underscores the need for non-invasive and remote diagnostic solutions.

Purpose of the Study:

  • To develop and evaluate a deep neural network-based model for detecting COVID-19 using only cough sounds.
  • To create a fast, remotely operable, and non-invasive diagnostic system for COVID-19.
  • To assess the model's performance against existing deep learning architectures and traditional diagnostic methods.

Main Methods:

  • A multi-branch deep neural network, MSCCov19Net, was designed to analyze cough sounds.
  • The model utilizes Mel Frequency Cepstral Coefficients (MFCC), Spectrogram, and Chromagram as input features.
  • Training was performed on publicly available crowdsourced datasets, with testing on unseen clinical and non-clinical datasets.

Main Results:

  • MSCCov19Net demonstrated superior performance compared to six popular deep learning architectures across four datasets.
  • The model achieved an accuracy of 61.5% on the Virufy dataset and 90.4% on the NoCoCoDa dataset for unseen test data.
  • The proposed system exhibited strong generalization capabilities on diverse datasets.

Conclusions:

  • Deep neural network analysis of cough sounds presents a viable and effective method for COVID-19 detection.
  • MSCCov19Net offers a promising, low-cost, and accessible alternative for remote COVID-19 screening.
  • Further research and validation are warranted to integrate cough-based AI diagnostics into public health strategies.