4.6 Article

Deep learning based respiratory sound analysis for detection of chronic obstructive pulmonary disease

Journal

PEERJ COMPUTER SCIENCE
Volume -, Issue -, Pages -

Publisher

PEERJ INC
DOI: 10.7717/peerj-cs.369

Keywords

Deep learning; CNN based classification; Medical-assistive technology; Respiratory sound analysis; Machine learning

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Recent technologies such as machine learning and deep learning have significantly improved predictive accuracy for disease detection, especially in early diagnosis and treatment of respiratory diseases. The application of Convolutional Neural Network based methodologies in analyzing respiratory audio data has shown success in detecting Chronic Obstructive Pulmonary disease. The system's classification accuracy has been enhanced to 93% with the use of K-fold Cross-Validation in optimizing the deep learning approach.
In recent times, technologies such as machine learning and deep learning have played a vital role in providing assistive solutions to a medical domain's challenges. They also improve predictive accuracy for early and timely disease detection using medical imaging and audio analysis. Due to the scarcity of trained human resources, medical practitioners are welcoming such technology assistance as it provides a helping hand to them in coping with more patients. Apart from critical health diseases such as cancer and diabetes, the impact of respiratory diseases is also gradually on the rise and is becoming life-threatening for society. The early diagnosis and immediate treatment are crucial in respiratory diseases, and hence the audio of the respiratory sounds is proving very beneficial along with chest X-rays. The presented research work aims to apply Convolutional Neural Network based deep learning methodologies to assist medical experts by providing a detailed and rigorous analysis of the medical respiratory audio data for Chronic Obstructive Pulmonary detection. In the conducted experiments, we have used a Librosa machine learning library features such as MFCC, Mel-Spectrogram, Chroma, Chroma (Constant-Q) and Chroma CENS. The presented system could also interpret the severity of the disease identified, such as mild, moderate, or acute. The investigation results validate the success of the proposed deep learning approach. The system classification accuracy has been enhanced to an ICBHI score of 93%. Furthermore, in the conducted experiments, we have applied K-fold Cross-Validation with ten splits to optimize the performance of the presented deep learning approach.

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