Signal Processing Driven Machine Learning Techniques for Cardiovascular Data Processing features recent advances in machine learning coupled with new signal processing-based methods for cardiovascular data analysis. Topics in this book include machine learning methods such as supervised learning, unsupervised learning, semi-supervised learning, and meta-learning combined with different signal processing techniques such as multivariate data analysis, time-frequency analysis, multiscale analysis, and feature extraction techniques for the detection of cardiovascular diseases, heart valve disorders, hypertension, and activity monitoring using ECG, PPG, and PCG signals.In addition, this book also includes the applications of digital signal processing (time-frequency analysis, multiscale decomposition, feature extraction, non-linear analysis, and transform domain methods), machine learning and deep learning (convolutional neural network (CNN), recurrent neural network (RNN), transformer and attention-based models, etc.) techniques for the analysis of cardiac signals. The interpretable machine learning and deep learning models combined with signal processing for cardiovascular data analysis are also covered.
- Provides details regarding the application of various signal processing and machine learning-based methods for cardiovascular signal analysis
- Covers methodologies as well as experimental results and studies
- Helps readers understand the use of different cardiac signals such as ECG, PCG, and PPG for the automated detection of heart ailments and other related biomedical applications
Sprache
Verlagsort
Verlagsgruppe
Elsevier Science & Techn.
Dateigröße
ISBN-13
978-0-443-14140-9 (9780443141409)
Schweitzer Klassifikation
1. Introduction to Cardiovascular Signals and Recording System2. Detection and localization of Myocardial Infarction from 12-channel ECG signals using signal processing and machine learning3. Machine Learning or deep learning combined with signal processing for the automated detection of atrial fibrillation using ECG signals4. Automated Detection of bundle branch block from 12-lead ECG signals using signal processing and machine learning5. Signal processing coupled with Machine learning or deep learning for the automated detection of shockable ventricular arrhythmia using ECG signals6. Automated detection of hypertrophy from ECG signals using machine learning-based signal processing techniques7. Machine learning coupled with the signal processing-based approach for the prediction of depression and anxiety using ECG signals8. Signal processing combined with machine learning for the automated prediction of blood pressure using PPG recordings9. Automated detection of hypertension from PPG signals using signal processing-based machine learning technique10. Signal Processing driven machine learning technique for automated emotion recognition using ECG/PPG signals11. Signal processing coupled with machine learning for heart sound activity detection using PCG signals12. Automated detection of various heart valve disorders from PCG signals using signal processing and deep learning techniques