Abstract

Assessment of heart sounds which are generated by the beating heart and the resultant blood flow through it provides a valuable tool for cardiovascular disease (CVD) diagnostics. The cardiac auscultation using the classical stethoscope phonological cardiogram is known as the most famous exam method to detect heart anomalies. This exam requires a qualified cardiologist, who relies on the cardiac cycle vibration sound (heart muscle contractions and valves closure) to detect abnormalities in the heart during the pumping action. Phonocardiogram (PCG) signal represents the recording of sounds and murmurs resulting from the heart auscultation, typically with a stethoscope, as a part of medical diagnosis. For the sake of helping physicians in a clinical environment, a range of artificial intelligence methods was proposed to automatically analyze PCG signal to help in the preliminary diagnosis of different heart diseases. The aim of this research paper is providing an accurate CVD recognition model based on unsupervised and supervised machine learning methods relayed on convolutional neural network (CNN). The proposed approach is evaluated on heart sound signals from the well-known, publicly available PASCAL and PhysioNet datasets. Experimental results show that the heart cycle segmentation and segment selection processes have a direct impact on the validation accuracy, sensitivity (TPR), precision (PPV), and specificity (TNR). Based on PASCAL dataset, we obtained encouraging classification results with overall accuracy 0.87, overall precision 0.81, and overall sensitivity 0.83. Concerning Micro classification results, we obtained Micro accuracy 0.91, Micro sensitivity 0.83, Micro precision 0.84, and Micro specificity 0.92. Using PhysioNet dataset, we achieved very good results: 0.97 accuracy, 0.946 sensitivity, 0.944 precision, and 0.946 specificity.

Highlights

  • Sudden heart failure caused by cardiovascular diseases (CVDs) is one of the top causes of death globally

  • We presented an AI-based approach for automatic phonocardiogram (PCG) signal analysis to help in the preliminary diagnosis of different heart diseases

  • The discussed method is considered as a new cardiovascular disease recognition approach experimented on two PCG datasets: Pascal and PhysioNet

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Summary

Introduction

Sudden heart failure caused by cardiovascular diseases (CVDs) is one of the top causes of death globally. It causes about 17.3 million deaths per year, an amount that is estimated to rise to more than 23.6 million by 2030 according to the latest WHO report [1]. It causes 45% of deaths in Europe [2], 34.3% in America [3], and more than 75% in developing countries [4]. Earlier diagnosis of CVDs helps patients to decrease considerably the heart failure condition [6]

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