Research on Heart and Lung Sound Separation Method Based on DAE-NMF-VMD

Author:

sun wenhui1,CHEN Fuming2ORCID,ZHANG Yipeng3,CHEN Fenlan4

Affiliation:

1. Gansu University of Chinese Medicine

2. : Chinese People's Liberation Army Lanzhou General Hospital

3. Gansu University of Traditional Chinese Medicine: Gansu University of Chinese Medicine

4. Lanzhou Rail Transit

Abstract

Abstract Auscultation is the most effective method for diagnosing cardiovascular and respiratory diseases. However, stethoscopes typically capture mixed signals of heart and lung sounds, which can affect the auscultation effect of doctors.Therefore, the efficient separation of mixed heart and lung sound signals plays a crucial role in improving the diagnosis of cardiovascular and respiratory diseases. In this paper, we propose a blind source separation method for heart and lung sounds based on Deep Autoencoder (DAE), Non-Negative Matrix Factorization (NMF), and Variational Mode Decomposition (VMD).Firstly, DAE is employed to extract highly informative features from the heart and lung sound signals. Subsequently, NMF clustering is applied to group the heart and lung sounds based on their distinct periodicities, achieving the separation of the mixed heart and lung sounds. Finally, Variational Mode Decomposition is used for denoising the separated signals. Experimental results demonstrate that the proposed method effectively separates heart and lung sound signals and exhibits significant advantages in terms of standardized evaluation metrics when compared to Non-Negative Matrix Factorization methods and DAE-NMF algorithms without denoising.

Publisher

Research Square Platform LLC

Reference21 articles.

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3. Identification of asthma severity levels through wheeze sound characterization and classification using integrated power features;Nabi FG;Biomed. Signal Process. Control,2019

4. Analysis of pulmonary sounds for the diagnosis of interstitial lung diseases secondary to rheumatoid arthritis.Computers in;Pancaldi F;Biology and Medicine,2018

5. Respiratory sound based classification of chronic obstructive pulmonary disease:a risk stratification approach in machine learning paradigm;Haider NS;J. Med. Syst.,2019

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