Abstract

Heart valve disorder (HVD) analysis from heart sound is being well known for a long period of time, and use of digital stethoscope gives opportunity to diagnose HVDs from phonocardiographic (PCG) signal. An automated HVD detection technique from PCG signal can play a key role as a first-hand diagnostic tool for the physicians. In this paper, in order to classify different HVDs, we propose to utilize the formant characteristic of the PCG signal, which is an acoustic property of the heart sound. PCG signals exhibit significant variations depending on different types of HVDs and thus conventional time frequency domain features or statistical features are extracted from PCG signal for disease classification. However, direct PCG signals are also used in sequential networks to classify HVDs. Similar to the formant peaks of voiced speech signal, the spectrum corresponding to the PCG signal exhibits distinguishable peaks, especially in the voiced part of the heart sound (lub-dub). Keeping this notable key point in consideration, Burg’s autoregressive model is used to find the parametric spectrum of the PCG signal. The first two formants of the PCG signal, that carry the most informative acoustic properties of the heart sound, are estimated from the Burg’s spectrum, and are used for feature extraction. The magnitude, frequency and phase of each formant are considered to evaluate these features. Instead of considering a long duration of PCG signal at a time, we consider the overlapping sub-frames, and extract formants from each sub-frame, which generates a temporal variation of the formants. Finally, we propose a PDF model fitting of the formant variation, and utilize the estimated model parameters along with some statistical features to classify the HVDs. Two famous publicly available PCG datasets are used to demonstrate the performance of the proposed method, that efficiently classify the binary/five classes of heart sounds. The results reveal that the proposed method has the overall accuracy values of 93.46% and 99.28% for the two datasets, which is better in comparison to other previously reported state-of-the-art techniques.

Highlights

  • E ARLY detection of heart valve disorder (HVD) may reduce almost one-third mortality rate of our planet due to various cardiac failures [1]

  • The physicians usually listen to the variation of the intensity, softness and loudness of the heart sound to get an optimistic clue on valve disorders

  • The unique idea proposed in this paper is to utilize the temporal variation of formants of the PCG signal for HVD classification

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Summary

Introduction

E ARLY detection of heart valve disorder (HVD) may reduce almost one-third mortality rate of our planet due to various cardiac failures [1]. Stethoscopes are still used as a popular instrument to hear heart sounds from the chest to primarily diagnose the cardiac health. In case of a healthy person, two major heart sounds, namely S1 (lub). The first/fundamental heart sound (FHS), S1 (lub) occurs during the systole, because of ventricular contraction, the instant of mitral and tricuspid valves’ closure [3]. The instant of the closure of the aortic and pulmonic valves generates a second FHS, S2 (dub) during the diastole. There are some very weak heart sounds, such as S3, S4, murmurs caused by turbulence of blood flow in the arteries, ejection clicks (EC) during systole, opening snap (OS) during diastole, and mid-systolic clicks (MC) [4].

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