"Ecg Pattern Analysis and Classification for Human Recognition" is an extensive guide to the field of electrocardiography (ECG) and its potential applications in healthcare. The book, authored by Ranjeet Srivastva, provides a comprehensive overview of ECG, covering topics such as pattern analysis, classification, and human recognition. It explores the complexities of the electrocardiogram, delving into the mechanics of the heartbeat, arrhythmia, and heart rate variability. The book discusses various techniques for feature extraction, machine learning, and deep learning, as well as signal processing algorithms for analyzing ECG data. These techniques are applied to diagnose and classify different cardiac diseases, monitor patients, and detect anomalies in heart rhythm. The book also covers the use of ECG for cardiovascular health, including detecting cardiac abnormalities, analyzing heart rate variability, and diagnosing heart disease. With a focus on biomedical engineering, the book offers a detailed understanding of ECG, including the various machine learning techniques and artificial intelligence applications used in data analysis. It also covers the clinical applications of ECG, such as medical imaging, cardiac electrophysiology, and patient data analysis. Overall, "Ecg Pattern Analysis and Classification for Human Recognition" is a valuable resource for researchers, healthcare professionals, and anyone interested in understanding the potential of ECG for medical diagnostics and patient monitoring. It presents a comprehensive overview of ECG and its applications, making it a must-read for those seeking to advance their knowledge in this field.
Hinweis: Dieser Artikel kann nur an eine deutsche Lieferadresse ausgeliefert werden.
Hinweis: Dieser Artikel kann nur an eine deutsche Lieferadresse ausgeliefert werden.