Abstract

Recognizing specific heart sound patterns is important for the diagnosis of structural heart diseases. However, the correct recognition of heart murmur depends largely on clinical experience. Accurately identifying abnormal heart sound patterns is challenging for young and inexperienced clinicians. This study is aimed at the development of a novel algorithm that can automatically recognize systolic murmurs in patients with ventricular septal defects (VSDs). Heart sounds from 51 subjects with VSDs and 25 subjects without a significant heart malformation were obtained in this study. Subsequently, the soundtracks were divided into different training and testing sets to establish the recognition system and evaluate the performance. The automatic murmur recognition system was based on a novel temporal attentive pooling-convolutional recurrent neural network (TAP-CRNN) model. On analyzing the performance using the test data that comprised 178 VSD heart sounds and 60 normal heart sounds, a sensitivity rate of 96.0% was obtained along with a specificity of 96.7%. When analyzing the heart sounds recorded in the second aortic and tricuspid areas, both the sensitivity and specificity were 100%. We demonstrated that the proposed TAP-CRNN system can accurately recognize the systolic murmurs of VSD patients, showing promising potential for the development of software for classifying the heart murmurs of several other structural heart diseases.

Highlights

  • Recognizing specific heart sound patterns is important for the diagnosis of structural heart diseases

  • Heart sounds from 76 subjects, including 51 ventricular septal defects (VSDs) patients and 25 patients without significant heart malformations, were included in this study

  • The results show that the use of the temporal attentive pooling (TAP)-CRNN model achieves a better accuracy for systolic murmur recognition when compared to the use of the Convolutional neural networks (CNNs) and CRNN models

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Summary

Introduction

Recognizing specific heart sound patterns is important for the diagnosis of structural heart diseases. This study is aimed at the development of a novel algorithm that can automatically recognize systolic murmurs in patients with ventricular septal defects (VSDs). Ventricular septal defect (VSD), a type of congenital heart disease (CHD) caused by developmental defects of the interventricular septum, is the most common type of heart malformation present at birth. It occurs in approximately 2–6 of every 1000 live births and accounts for approximately 30% of all CHDs in children/ adolescents[1,2,3,4].

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