Blind monaural source separation on heart and lung sounds based on periodic-coded deep autoencoder
Journal
IEEE Journal of Biomedical and Health Informatics
Journal Volume
24
Journal Issue
11
Pages
3203-3214
Date Issued
2020
Author(s)
Abstract
Auscultation is the most efficient way to diagnose cardiovascular and respiratory diseases. To reach accurate diagnoses, a device must be able to recognize heart and lung sounds from various clinical situations. However, the recorded chest sounds are mixed by heart and lung sounds. Thus, effectively separating these two sounds is critical in the pre-processing stage. Recent advances in machine learning have progressed on monaural source separations, but most of the well-known techniques require paired mixed sounds and individual pure sounds for model training. As the preparation of pure heart and lung sounds is difficult, special designs must be considered to derive effective heart and lung sound separation techniques. In this study, we proposed a novel periodicity-coded deep auto-encoder (PC-DAE) approach to separate mixed heart-lung sounds in an unsupervised manner via the assumption of different periodicities between heart rate and respiration rate. The PC-DAE benefits from deep-learning-based models by extracting representative features and considers the periodicity of heart and lung sounds to carry out the separation. We evaluated PC-DAE on two datasets. The first one includes sounds from the Student Auscultation Manikin (SAM), and the second is prepared by recording chest sounds in real-world conditions. Experimental results indicate that PC-DAE outperforms several well-known separation works in terms of standardized evaluation metrics. Moreover, waveforms and spectrograms demonstrate the effectiveness of PC-DAE compared to existing approaches. It is also confirmed that by using the proposed PC-DAE as a pre-processing stage, the heart sound recognition accuracies can be notably boosted. The experimental results confirmed the effectiveness of PC-DAE and its potential to be used in clinical applications. ? 2013 IEEE.
Subjects
Blind monaural source separation; deep autoencoder; deep neural networks; heart sound; lung sound; periodic analysis; phonocardiogram
SDGs
Other Subjects
Biological organs; Blind source separation; Deep learning; Diagnosis; Learning systems; Petroleum reservoir evaluation; Separation; Clinical application; Clinical situations; Evaluation metrics; Heart-Lung Sounds; Learning Based Models; Pre-processing; Respiration rate; Separation work; Heart; acoustic spectroscopy; adolescent; adult; aged; Article; auscultation; autoencoder; child; deep learning; deep neural network; diagnostic test accuracy study; discrete Fourier transform; discriminant analysis; electrocardiography; female; heart rate; heart sound; human; learning algorithm; machine learning; male; mathematical model; non-negative matrix factorization; periodicity; phonocardiography; photoelectric plethysmography; separation technique; short time Fourier transform; signal noise ratio; signal processing; support vector machine; abnormal respiratory sound; auscultation; heart; lung; Auscultation; Heart; Heart Sounds; Humans; Lung; Respiratory Sounds
Publisher
Institute of Electrical and Electronics Engineers Inc.
Type
journal article