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In Frontiers in cardiovascular medicine

BACKGROUND : Cardiac auscultation is a traditional method that is most frequently used for identifying congenital heart disease (CHD). Failure to diagnose CHD may occur in patients with faint murmurs or obesity. We aimed to develop an intelligent diagnostic method of detecting heart murmurs in patients with ventricular septal defects (VSDs) and atrial septal defects (ASDs).

MATERIALS AND METHODS : Digital recordings of heart sounds and phonocardiograms of 184 participants were obtained. All participants underwent echocardiography by pediatric cardiologists to determine the type of CHD. The phonocardiogram data were classified as normal, ASD, or VSD. Then, the phonocardiogram signal was used to extract features to construct diagnostic models for disease classification using an advanced optical coherence tomography network (AOCT-NET). Cardiologists were asked to distinguish normal heart sounds from ASD/VSD murmurs after listening to the electronic sound recordings. Comparisons of the cardiologists' assessment and AOCT-NET performance were performed.

RESULTS : Echocardiography results revealed 88 healthy participants, 50 with ASDs, and 46 with VSDs. The AOCT-NET had no advantage in detecting VSD compared with cardiologist assessment. However, AOCT-NET performance was better than that of cardiologists in detecting ASD (sensitivity, 76.4 vs. 27.8%, respectively; specificity, 90 vs. 98.5%, respectively).

CONCLUSION : The proposed method has the potential to improve the ASD detection rate and could be an important screening tool for patients without symptoms.

Huang Po-Kai, Yang Ming-Chun, Wang Zi-Xuan, Huang Yu-Jung, Lin Wei-Chen, Pan Chung-Long, Guo Mei-Hui

2022

artificial intelligence, atrial septal defect, bispectrum, deep learning, heart murmur, ventricular septal defect