par Abdessater, Elza
;Balali, Paniz
;Pawlowski, Jimmy;Rabineau, Jérémy
;Tordeur, Cyril
;Faoro, Vitalie
;Van De Borne, Philippe
;Hossein, Amin 
Référence Sensors, 25, 11, page (3360)
Publication Publié, 2025-06-01







Référence Sensors, 25, 11, page (3360)
Publication Publié, 2025-06-01
Article révisé par les pairs
Résumé : | Severe aortic valve diseases (AVD) cause changes in heart sounds, making phonocardiogram (PCG) analyses challenging. This study presents a novel method for segmenting heart sounds without relying on an electrocardiogram (ECG), specifically targeting patients with severe AVD. Our algorithm enhances traditional Hidden Semi-Markov Models by incorporating signal envelope calculations and statistical tests to improve the detection of the first and second heart sounds (S1 and S2). We evaluated the method on the PhysioNet/CinC 2016 Challenge dataset and a newly acquired AVD-specific dataset. The method was tested on a total of 27,400 cardiac cycles. The proposed approach outperformed the existing methods, achieving a higher sensitivity and positive predictive value for S2, especially in the presence of severe heart murmurs. Notably, in patients with severe aortic stenosis, our proposed ECG-free method improved S2 sensitivity from 41% to 70%. |