Classification of respiratory diseases and COVID-19 from respiratory and cough sound using deep learning techniques
Date
2022-01Publisher
Brac UniversityAuthor
Ahasan, Md. MubtasimFahim, Mohammad
Mazumder, Himadri
Fatema, Nur E
Rahman, Sheikh Mustafizur
Metadata
Show full item recordAbstract
Infectious and non-infectious respiratory diseases are among the major reasons for
deaths, financial and social crises around the world. However, medical personnel
still find it very difficult to detect the diseases using conventional methods to combat
this global crisis. We propose a respiratory disease identification method from
respiratory auscultation sounds and COVID-19 infected and healthy patients from
cough sound recordings. Our experiments demonstrate that artificial intelligence
can be utilized as an alternative method to detect respiratory illnesses. We extract
image representations of audio features such as Mel-frequency Cepstral Coefficients
(MFCCs) and Mel-Spectrogram from each audio recording and use convolutional
neural network models for our experiments. Also, we compare the two audio features
and ten different convolutional neural network architecture’s performance on
disease classification. We conduct experiments with various model training procedures’
such as transfer learning and 1cycle policy, and balanced mini-batch training.
In our experiment, we classified respiratory diseases with 94.57 percent accuracy
and 0.93 ROC-AUC scores and COVID-19 affected and healthy patients’ cough
recordings with 85.96 percent accuracy and 0.84 ROC-AUC scores.