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Classification of Phonocardiogram Signals Using the Wavelet Scattering Transform and Equilibrium Optimization Approach | IEEE Journals & Magazine | IEEE Xplore

Classification of Phonocardiogram Signals Using the Wavelet Scattering Transform and Equilibrium Optimization Approach


The experiment incorporated carry out various tasks such as pre-processing, feature extraction through wavelet scattering transform, optimizing features using an EO optim...

Abstract:

Heartbeat sounds serve as biological signals that aid in the early identification of cardiovascular conditions. Phonocardiograms (PCG), which are recordings of digital he...Show More

Abstract:

Heartbeat sounds serve as biological signals that aid in the early identification of cardiovascular conditions. Phonocardiograms (PCG), which are recordings of digital heartbeat sounds, are employed for the identification and automated categorization of potential heart ailments. This research presents a technique for categorizing heart sounds by combining WST (Wavelet Scattering Transform) & EO (Equilibrium Optimization). Regarding the signal of phonocardiography (PCG), the cardiac sound signal can be categorized into two primary classifications: abnormal and normal. This work analyzes the characteristics of the phonocardiogram signal and subsequently employs machine learning methods to classify these features. During the feature-extracting process, we employed wavelet scattering in conjunction with the equilibrium optimizer method. We utilized the K-Nearest Neighbor (KNN) classifier for the purposes of learning and categorization. The experiments aimed to assess the impact of the optimization technique on the algorithm’s performance, demonstrating its effectiveness. The findings revealed that our method achieved an accuracy of 99.5% when applied to the PCG dataset in distinguishing abnormal heart sounds from normal ones, surpassing the performance of all previous methods.
The experiment incorporated carry out various tasks such as pre-processing, feature extraction through wavelet scattering transform, optimizing features using an EO optim...
Published in: IEEE Access ( Volume: 12)
Page(s): 191231 - 191242
Date of Publication: 16 December 2024
Electronic ISSN: 2169-3536

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