Cardiac sound classification using a hybrid approach: MFCC-based feature fusion and CNN deep features

Abstract The detection of cardiovascular diseases through the analysis of phonocardiograms (PCGs), which are digital recordings of heartbeat sounds, is crucial for early diagnosis. Conventional feature extraction methods often face challenges in distinguishing non-stationary signals like healthy and...

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Main Authors: Mahbubeh Bahreini, Ramin Barati, Abbas Kamali
Format: Article
Language:English
Published: SpringerOpen 2025-01-01
Series:EURASIP Journal on Advances in Signal Processing
Subjects:
Online Access:https://doi.org/10.1186/s13634-025-01203-0
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author Mahbubeh Bahreini
Ramin Barati
Abbas Kamali
author_facet Mahbubeh Bahreini
Ramin Barati
Abbas Kamali
author_sort Mahbubeh Bahreini
collection DOAJ
description Abstract The detection of cardiovascular diseases through the analysis of phonocardiograms (PCGs), which are digital recordings of heartbeat sounds, is crucial for early diagnosis. Conventional feature extraction methods often face challenges in distinguishing non-stationary signals like healthy and pathological PCG signals. Our research addresses these challenges by adopting a hybrid feature extraction scheme that leverages deep learning and handcrafted techniques. This approach allows for a more effective analysis and classification of PCG signals. This paper presents a novel approach to PCG signal classification, leveraging a fusion of deep learning features and handcrafted features based on mutual information measurements. High-level features are obtained through a pretrained deep network applied to time-frequency representations of PCG signals. Additionally, Mel-Frequency Cepstral Coefficients of empirical wavelet subbands serve as handcrafted features. Canonical correlation analysis is employed for feature fusion, effectively combining crucial information from both feature types. Classification is performed using support vector machines, k-nearest neighbor, and multilayer perceptron (MLP) classifiers with a fivefold cross-validation approach. Evaluation using the Physionet Challenge 2016 database demonstrates the superior performance of our proposed approach compared to existing state-of-the-art studies, showcasing its efficacy in PCG signal classification.
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institution Kabale University
issn 1687-6180
language English
publishDate 2025-01-01
publisher SpringerOpen
record_format Article
series EURASIP Journal on Advances in Signal Processing
spelling doaj-art-dcaaae3a71ae4b75a59c0cf509cfca562025-02-02T12:47:31ZengSpringerOpenEURASIP Journal on Advances in Signal Processing1687-61802025-01-012025111510.1186/s13634-025-01203-0Cardiac sound classification using a hybrid approach: MFCC-based feature fusion and CNN deep featuresMahbubeh Bahreini0Ramin Barati1Abbas Kamali2Department of Electrical Engineering, Islamic Azad University, Shiraz BranchDepartment of Electrical Engineering, Islamic Azad University, Shiraz BranchDepartment of Electrical Engineering, Islamic Azad University, Shiraz BranchAbstract The detection of cardiovascular diseases through the analysis of phonocardiograms (PCGs), which are digital recordings of heartbeat sounds, is crucial for early diagnosis. Conventional feature extraction methods often face challenges in distinguishing non-stationary signals like healthy and pathological PCG signals. Our research addresses these challenges by adopting a hybrid feature extraction scheme that leverages deep learning and handcrafted techniques. This approach allows for a more effective analysis and classification of PCG signals. This paper presents a novel approach to PCG signal classification, leveraging a fusion of deep learning features and handcrafted features based on mutual information measurements. High-level features are obtained through a pretrained deep network applied to time-frequency representations of PCG signals. Additionally, Mel-Frequency Cepstral Coefficients of empirical wavelet subbands serve as handcrafted features. Canonical correlation analysis is employed for feature fusion, effectively combining crucial information from both feature types. Classification is performed using support vector machines, k-nearest neighbor, and multilayer perceptron (MLP) classifiers with a fivefold cross-validation approach. Evaluation using the Physionet Challenge 2016 database demonstrates the superior performance of our proposed approach compared to existing state-of-the-art studies, showcasing its efficacy in PCG signal classification.https://doi.org/10.1186/s13634-025-01203-0Cardiovascular disease detectionPhonocardiogramMachine learningFeature fusionHeart sound classification
spellingShingle Mahbubeh Bahreini
Ramin Barati
Abbas Kamali
Cardiac sound classification using a hybrid approach: MFCC-based feature fusion and CNN deep features
EURASIP Journal on Advances in Signal Processing
Cardiovascular disease detection
Phonocardiogram
Machine learning
Feature fusion
Heart sound classification
title Cardiac sound classification using a hybrid approach: MFCC-based feature fusion and CNN deep features
title_full Cardiac sound classification using a hybrid approach: MFCC-based feature fusion and CNN deep features
title_fullStr Cardiac sound classification using a hybrid approach: MFCC-based feature fusion and CNN deep features
title_full_unstemmed Cardiac sound classification using a hybrid approach: MFCC-based feature fusion and CNN deep features
title_short Cardiac sound classification using a hybrid approach: MFCC-based feature fusion and CNN deep features
title_sort cardiac sound classification using a hybrid approach mfcc based feature fusion and cnn deep features
topic Cardiovascular disease detection
Phonocardiogram
Machine learning
Feature fusion
Heart sound classification
url https://doi.org/10.1186/s13634-025-01203-0
work_keys_str_mv AT mahbubehbahreini cardiacsoundclassificationusingahybridapproachmfccbasedfeaturefusionandcnndeepfeatures
AT raminbarati cardiacsoundclassificationusingahybridapproachmfccbasedfeaturefusionandcnndeepfeatures
AT abbaskamali cardiacsoundclassificationusingahybridapproachmfccbasedfeaturefusionandcnndeepfeatures