Supervised model for Cochleagram feature based fundamental heart sound identification

In this study, an acoustic feature based heart sound segmentation algorithm has been proposed for automatic identification of the fundamental heart sounds (FHS). Gammatone filter bank energy has been introduced to represent the heart sound distinctive features. A supervised artificial neural network (ANN) model is used to detect S1-S2 and non S1-S2 segments of the cardiac cycle. Finally time based information is utilized to identify S1 and S2 positions. Performance of the system is evaluated using 764 real and noisy heart sound cycles (both normal and abnormal domains) from the 2016 PhysioNet/CinC challenge database with annotations provided for heart sound states. The accuracy achieved using Cochleagram feature is more than 95% for both first and second heart sound identification. Proposed technique shows that multilayer perceptron (MLP) neural network using Cochleagram feature improvises the overall S1-S2 identification accuracy compared to the other acoustic features reported earlier.
Source: Biomedical Signal Processing and Control - Category: Biomedical Science Source Type: research