Frontiers in Artificial Intelligence (Feb 2023)

Coronavirus diagnosis using cough sounds: Artificial intelligence approaches

  • Kazem Askari Nasab,
  • Jamal Mirzaei,
  • Jamal Mirzaei,
  • Alireza Zali,
  • Alireza Zali,
  • Sarfenaz Gholizadeh,
  • Meisam Akhlaghdoust,
  • Meisam Akhlaghdoust

DOI
https://doi.org/10.3389/frai.2023.1100112
Journal volume & issue
Vol. 6

Abstract

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IntroductionThe Coronavirus disease 2019 (COVID-19) pandemic has caused irreparable damage to the world. In order to prevent the spread of pathogenicity, it is necessary to identify infected people for quarantine and treatment. The use of artificial intelligence and data mining approaches can lead to prevention and reduction of treatment costs. The purpose of this study is to create data mining models in order to diagnose people with the disease of COVID-19 through the sound of coughing.MethodIn this research, Supervised Learning classification algorithms have been used, which include Support Vector Machine (SVM), random forest, and Artificial Neural Networks, that based on the standard “Fully Connected” neural network, Convolutional Neural Networks (CNN) and Long Short-Term Memory (LSTM) recurrent neural networks have been established. The data used in this research was from the online site sorfeh.com/sendcough/en, which has data collected during the spread of COVID-19.ResultWith the data we have collected (about 40,000 people) in different networks, we have reached acceptable accuracies.ConclusionThese findings show the reliability of this method for using and developing a tool as a screening and early diagnosis of people with COVID-19. This method can also be used with simple artificial intelligence networks so that acceptable results can be expected. Based on the findings, the average accuracy was 83% and the best model was 95%.

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