Abstract

Automated heart sound signal quality assessment is a necessary step for reliable analysis of heart sound signal. An unavoidable processing step for this objective is the heart sound segmentation, which is still a challenging task from a technical viewpoint. In this study, ten features are defined to evaluate the quality of heart sound signal without segmentation. The ten features come from kurtosis, energy ratio, frequency-smoothed envelope, and degree of sound periodicity, where five of them are novel in signal quality assessment. We have collected a total of 7893 recordings from open public heart sound databases and performed manual annotation for each recording as gold standard quality label. The signal quality is classified based on two schemes: binary classification (“unacceptable” and “acceptable”) and triple classification (“unacceptable”, “good,” and “excellent”). Sequential forward feature selection shows that the feature “the degree of periodicity” gives an accuracy rate of 73.1% in binary SVM classification. The top five features dominate the classification performance and give an accuracy rate of 92%. The binary classifier has excellent generalization ability since the accuracy rate reaches to (90.4 ± 0.5) % even if 10% of the data is used to train the classifier. The rate increases to (94.3 ± 0.7) % in 10-fold validation. The triple classification has an accuracy rate of (85.7 ± 0.6) % in 10-fold validation. The results verify the effectiveness of the signal quality assessment, which could serve as a potential candidate as a preprocessing in future automatic heart sound analysis in clinical application.

Highlights

  • Heart sounds are acoustic vibrations generated due to the beating of the heart and blood flow therein

  • There is a natural link exits between the heart sound and the condition of the heart, and it was established after the invention of the stethoscope by Rene Laennec in 1816

  • This paper has presented a method for the heart sound signal quality assessment

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Summary

Introduction

Heart sounds are acoustic vibrations generated due to the beating of the heart and blood flow therein. The sounds reflect the hemodynamic changes associated with heart valves snapping shut [1, 2]. Computeraided algorithms are necessary to avoid the limitations of the human listening system and manual work in screening cardiovascular diseases using digital heart sound signal. A lot of research work has been done on segmentation, feature extraction, and classification, it is still an open area for researchers to develop automatic and robust algorithms for the identification and classification of various events in cardiac sound signals. The key problem associated with this approach is the recording of less informative heart sounds by an unskilled people. The quality of heart sound signal has an obvious impact on the output of the automatic diagnostic system. We need a high quality heart sound signal to avoid misinterpretation of heart diseases and for more accurate classification of heart sounds

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