Robust classification of heart valve sound based on adaptive EMD and feature fusion

Cardiovascular disease (CVD) is considered one of the leading causes of death worldwide. In recent years, this research area has attracted researchers’ attention to investigate heart sounds to diagnose the disease. To effectively distinguish heart valve defects from normal heart sounds, adaptive emp...

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Main Authors: Weibo Wang, Jin Yuan, Bingrong Wang, Yu Fang, Yongkang Zheng, Xingping Hu
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2022-01-01
Series:PLoS ONE
Online Access:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9731417/?tool=EBI
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author Weibo Wang
Jin Yuan
Bingrong Wang
Yu Fang
Yongkang Zheng
Xingping Hu
author_facet Weibo Wang
Jin Yuan
Bingrong Wang
Yu Fang
Yongkang Zheng
Xingping Hu
author_sort Weibo Wang
collection DOAJ
description Cardiovascular disease (CVD) is considered one of the leading causes of death worldwide. In recent years, this research area has attracted researchers’ attention to investigate heart sounds to diagnose the disease. To effectively distinguish heart valve defects from normal heart sounds, adaptive empirical mode decomposition (EMD) and feature fusion techniques were used to analyze the classification of heart sounds. Based on the correlation coefficient and Root Mean Square Error (RMSE) method, adaptive EMD was proposed under the condition of screening the intrinsic mode function (IMF) components. Adaptive thresholds based on Hausdorff Distance were used to choose the IMF components used for reconstruction. The multidimensional features extracted from the reconstructed signal were ranked and selected. The features of waveform transformation, energy and heart sound signal can indicate the state of heart activity corresponding to various heart sounds. Here, a set of ordinary features were extracted from the time, frequency and nonlinear domains. To extract more compelling features and achieve better classification results, another four cardiac reserve time features were fused. The fusion features were sorted using six different feature selection algorithms. Three classifiers, random forest, decision tree, and K-nearest neighbor, were trained on open source and our databases. Compared to the previous work, our extensive experimental evaluations show that the proposed method can achieve the best results and have the highest accuracy of 99.3% (1.9% improvement in classification accuracy). The excellent results verified the robustness and effectiveness of the fusion features and proposed method.
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spelling doaj.art-2a05c3cc66fe4303b0130605421e36c32022-12-22T04:41:07ZengPublic Library of Science (PLoS)PLoS ONE1932-62032022-01-011712Robust classification of heart valve sound based on adaptive EMD and feature fusionWeibo WangJin YuanBingrong WangYu FangYongkang ZhengXingping HuCardiovascular disease (CVD) is considered one of the leading causes of death worldwide. In recent years, this research area has attracted researchers’ attention to investigate heart sounds to diagnose the disease. To effectively distinguish heart valve defects from normal heart sounds, adaptive empirical mode decomposition (EMD) and feature fusion techniques were used to analyze the classification of heart sounds. Based on the correlation coefficient and Root Mean Square Error (RMSE) method, adaptive EMD was proposed under the condition of screening the intrinsic mode function (IMF) components. Adaptive thresholds based on Hausdorff Distance were used to choose the IMF components used for reconstruction. The multidimensional features extracted from the reconstructed signal were ranked and selected. The features of waveform transformation, energy and heart sound signal can indicate the state of heart activity corresponding to various heart sounds. Here, a set of ordinary features were extracted from the time, frequency and nonlinear domains. To extract more compelling features and achieve better classification results, another four cardiac reserve time features were fused. The fusion features were sorted using six different feature selection algorithms. Three classifiers, random forest, decision tree, and K-nearest neighbor, were trained on open source and our databases. Compared to the previous work, our extensive experimental evaluations show that the proposed method can achieve the best results and have the highest accuracy of 99.3% (1.9% improvement in classification accuracy). The excellent results verified the robustness and effectiveness of the fusion features and proposed method.https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9731417/?tool=EBI
spellingShingle Weibo Wang
Jin Yuan
Bingrong Wang
Yu Fang
Yongkang Zheng
Xingping Hu
Robust classification of heart valve sound based on adaptive EMD and feature fusion
PLoS ONE
title Robust classification of heart valve sound based on adaptive EMD and feature fusion
title_full Robust classification of heart valve sound based on adaptive EMD and feature fusion
title_fullStr Robust classification of heart valve sound based on adaptive EMD and feature fusion
title_full_unstemmed Robust classification of heart valve sound based on adaptive EMD and feature fusion
title_short Robust classification of heart valve sound based on adaptive EMD and feature fusion
title_sort robust classification of heart valve sound based on adaptive emd and feature fusion
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9731417/?tool=EBI
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AT yufang robustclassificationofheartvalvesoundbasedonadaptiveemdandfeaturefusion
AT yongkangzheng robustclassificationofheartvalvesoundbasedonadaptiveemdandfeaturefusion
AT xingpinghu robustclassificationofheartvalvesoundbasedonadaptiveemdandfeaturefusion