Automatic diagnosis of multiple cardiac diseases from PCG signals using convolutional neural network

Comput Methods Programs Biomed. 2020 Dec:197:105750. doi: 10.1016/j.cmpb.2020.105750. Epub 2020 Sep 10.

Abstract

Background and objectives: Cardiovascular diseases are critical diseases and need to be diagnosed as early as possible. There is a lack of medical professionals in remote areas to diagnose these diseases. Artificial intelligence-based automatic diagnostic tools can help to diagnose cardiac diseases. This work presents an automatic classification method using machine learning to diagnose multiple cardiac diseases from phonocardiogram signals.

Methods: The proposed system involves a convolutional neural network (CNN) model because of its high accuracy and robustness to automatically diagnose the cardiac disorders from the heart sounds. To improve the accuracy in a noisy environment and make the method robust, the proposed method has used data augmentation techniques for training and multi-classification of multiple cardiac diseases.

Results: The model has been validated both heart sound data and augmented data using n-fold cross-validation. Results of all fold have been shown reported in this work. The model has achieved accuracy on the test set up to 98.60% to diagnose multiple cardiac diseases.

Conclusions: The proposed model can be ported to any computing devices like computers, single board computing processors, android handheld devices etc. To make a stand-alone diagnostic tool that may be of help in remote primary health care centres. The proposed method is non-invasive, efficient, robust, and has low time complexity making it suitable for real-time applications.

Keywords: Cardiac signals; Data augmentation; Deep neural networks; Multi-label classification; Phonocardiogram.

MeSH terms

  • Artificial Intelligence
  • Heart Diseases* / diagnostic imaging
  • Heart Sounds*
  • Humans
  • Machine Learning
  • Neural Networks, Computer