Enhanced Heart Sound Classification Using Mel Frequency Cepstral Coefficients and Comparative Analysis of Single vs. Ensemble Classifier Strategies
This paper explores the efficacy of Mel Frequency Cepstral Coefficients (MFCCs) in detecting abnormal heart sounds using two classification strategies: a single classifier and an ensemble classifier approach. Heart sounds were first pre-processed to remove noise and then segmented into S1, systole,...
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Zusammenfassung: | This paper explores the efficacy of Mel Frequency Cepstral Coefficients
(MFCCs) in detecting abnormal heart sounds using two classification strategies:
a single classifier and an ensemble classifier approach. Heart sounds were
first pre-processed to remove noise and then segmented into S1, systole, S2,
and diastole intervals, with thirteen MFCCs estimated from each segment,
yielding 52 MFCCs per beat. Finally, MFCCs were used for heart sound
classification. For that purpose, in the single classifier strategy, the MFCCs
from nine consecutive beats were averaged to classify heart sounds by a single
classifier (either a support vector machine (SVM), the k nearest neighbors
(kNN), or a decision tree (DT)). Conversely, the ensemble classifier strategy
employed nine classifiers (either nine SVMs, nine kNN classifiers, or nine DTs)
to individually assess beats as normal or abnormal, with the overall
classification based on the majority vote. Both methods were tested on a
publicly available phonocardiogram database. The heart sound classification
accuracy was 91.95% for the SVM, 91.9% for the kNN, and 87.33% for the DT in
the single classifier strategy. Also, the accuracy was 93.59% for the SVM,
91.84% for the kNN, and 92.22% for the DT in the ensemble classifier strategy.
Overall, the results demonstrated that the ensemble classifier strategy
improved the accuracies of the DT and the SVM by 4.89% and 1.64%, establishing
MFCCs as more effective than other features, including time, time-frequency,
and statistical features, evaluated in similar studies. |
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DOI: | 10.48550/arxiv.2406.00702 |