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Main Authors: Hassanuzzaman, Md, Hasan, Nurul Akhtar, Mamun, Mohammad Abdullah Al, Ahmed, Khawza I, Khandoker, Ahsan H, Mostafa, Raqibul
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2404.00470
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author Hassanuzzaman, Md
Hasan, Nurul Akhtar
Mamun, Mohammad Abdullah Al
Ahmed, Khawza I
Khandoker, Ahsan H
Mostafa, Raqibul
author_facet Hassanuzzaman, Md
Hasan, Nurul Akhtar
Mamun, Mohammad Abdullah Al
Ahmed, Khawza I
Khandoker, Ahsan H
Mostafa, Raqibul
contents Congenital anomalies arising as a result of a defect in the structure of the heart and great vessels are known as congenital heart diseases or CHDs. A PCG can provide essential details about the mechanical conduction system of the heart and point out specific patterns linked to different kinds of CHD. This study aims to investigate the minimum signal duration required for the automatic classification of heart sounds. This study also investigated the optimum signal quality assessment indicator (Root Mean Square of Successive Differences) RMSSD and (Zero Crossings Rate) ZCR value. Mel-frequency cepstral coefficients (MFCCs) based feature is used as an input to build a Transformer-Based residual one-dimensional convolutional neural network, which is then used for classifying the heart sound. The study showed that 0.4 is the ideal threshold for getting suitable signals for the RMSSD and ZCR indicators. Moreover, a minimum signal length of 5s is required for effective heart sound classification. It also shows that a shorter signal (3 s heart sound) does not have enough information to categorize heart sounds accurately, and the longer signal (15 s heart sound) may contain more noise. The best accuracy, 93.69%, is obtained for the 5s signal to distinguish the heart sound.
format Preprint
id arxiv_https___arxiv_org_abs_2404_00470
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Classification of Short Segment Pediatric Heart Sounds Based on a Transformer-Based Convolutional Neural Network
Hassanuzzaman, Md
Hasan, Nurul Akhtar
Mamun, Mohammad Abdullah Al
Ahmed, Khawza I
Khandoker, Ahsan H
Mostafa, Raqibul
Sound
Machine Learning
Audio and Speech Processing
Congenital anomalies arising as a result of a defect in the structure of the heart and great vessels are known as congenital heart diseases or CHDs. A PCG can provide essential details about the mechanical conduction system of the heart and point out specific patterns linked to different kinds of CHD. This study aims to investigate the minimum signal duration required for the automatic classification of heart sounds. This study also investigated the optimum signal quality assessment indicator (Root Mean Square of Successive Differences) RMSSD and (Zero Crossings Rate) ZCR value. Mel-frequency cepstral coefficients (MFCCs) based feature is used as an input to build a Transformer-Based residual one-dimensional convolutional neural network, which is then used for classifying the heart sound. The study showed that 0.4 is the ideal threshold for getting suitable signals for the RMSSD and ZCR indicators. Moreover, a minimum signal length of 5s is required for effective heart sound classification. It also shows that a shorter signal (3 s heart sound) does not have enough information to categorize heart sounds accurately, and the longer signal (15 s heart sound) may contain more noise. The best accuracy, 93.69%, is obtained for the 5s signal to distinguish the heart sound.
title Classification of Short Segment Pediatric Heart Sounds Based on a Transformer-Based Convolutional Neural Network
topic Sound
Machine Learning
Audio and Speech Processing
url https://arxiv.org/abs/2404.00470