Buch, Englisch, 430 Seiten, Format (B × H): 191 mm x 235 mm
Buch, Englisch, 430 Seiten, Format (B × H): 191 mm x 235 mm
ISBN: 978-0-443-49276-1
Verlag: Elsevier Science
Signal Processing-Driven AI for Healthcare examines how AI techniques can be applied across four major biosignals—EEG, EMG, EOG, and ECG—to derive clinically meaningful insights. As biomedical data becomes increasingly multimodal, there is a rising need for integrated methodologies that unite these signals within robust, explainable AI pipelines suitable for healthcare environments. This book provides a unified framework that spans data acquisition, preprocessing, feature extraction, modeling, evaluation, and deployment, with an emphasis on reproducibility, practical Python-based implementations, and real-world translation to clinical workflows.
Autoren/Hrsg.
Weitere Infos & Material
Part I — Foundations
1. Introduction: AI, biosignals, and healthcare workflows
2. Sensors, acquisition, and data characteristics
Part II — Signal Processing for Biomedical Time Series
3. Preprocessing & cleaning
4. Time-frequency and feature transforms
5. Spatial and multichannel processing
Part III — Machine Learning & Deep Learning Methods
6. Classical ML for biosignals
7. Deep learning approaches
8. Explainability, uncertainty, and interpretability
Part IV — Modality-Focused Chapters (EEG, EMG, EOG, ECG)
9. EEG: brain signals, pipelines, and applications
10. ECG: cardiac signal analytics and arrhythmia detection
11. EMG: muscle activation, prosthetics, and fatigue monitoring
12. EOG: eye movement, drowsiness, and human factors
Part V — Multimodal Fusion, Deployment & Systems
13. Multimodal learning and sensor fusion
14. Real-time systems, edge AI, and hardware considerations
15. Data engineering, annotation, and labelling strategies




