Explainable AI in Healthcare
Chapman & Hall/CRC (Verlag)
978-1-032-36711-8 (ISBN)
This book combines technology and the medical domain. It covers advances in computer vision (CV) and machine learning (ML) that facilitate automation in diagnostics and therapeutic and preventive health care. The special focus on eXplainable Artificial Intelligence (XAI) uncovers the black box of ML and bridges the semantic gap between the technologists and the medical fraternity. Explainable AI in Healthcare: Unboxing Machine Learning for Biomedicine intends to be a premier reference for practitioners, researchers, and students at basic, intermediary levels and expert levels in computer science, electronics and communications, information technology, instrumentation and control, and electrical engineering.
This book will benefit readers in the following ways:
Explores state of art in computer vision and deep learning in tandem to develop autonomous or semi-autonomous algorithms for diagnosis in health care
Investigates bridges between computer scientists and physicians being built with XAI
Focuses on how data analysis provides the rationale to deal with the challenges of healthcare and making decision-making more transparent
Initiates discussions on human-AI relationships in health care
Unites learning for privacy preservation in health care
Mehul S Raval, Associate Dean – Experiential Learning and Professor, School of Engineering and Applied Science, Ahmedabad University, Ahmedabad, India Mohendra Roy, Assistant Professor, Information and Communication Technology Department, School of Technology, Pandit Deendayal Energy University, Gandhinagar, India Tolga Kaya, , Professor and Director of Engineering Programs, Sacred Heart University, Fairfield, CT, USA Rupal Kapdi, Assistant Professor, Computer Science and Engineering Department, Institute of Technology, Nirma University, Ahmedabad, India
1. Human–AI Relationship in Healthcare. 2. Deep Learning in Medical Image Analysis: Recent Models and Explainability. 3. An Overview of Functional Near-Infrared Spectroscopy and Explainable Artificial Intelligence in fNIRS. 4. An Explainable Method for Image Registration with Applications in Medical Imaging. 5. State-of-the-Art Deep Learning Method and Its Explainability for Computerized Tomography Image Segmentation. 6. Interpretability of Segmentation and Overall Survival for Brain Tumors. 7. Identification of MR Image Biomarkers in Brain Tumor Patients Using Machine Learning and Radiomics Features. 8. Explainable Artificial Intelligence in Breast Cancer Identification. 9. Interpretability of Self-Supervised Learning for Breast Cancer Image Analysis. 10. Predictive Analytics in Hospital Readmission for Diabetes Risk Patients. 11. Continuous Blood Glucose Monitoring Using Explainable AI Techniques. 12. Decision Support System for Facial Emotion-Based Progression Detection of Parkinson’s Patients. 13. Interpretable Machine Learning in Athletics for Injury Risk Prediction. 14. Federated Learning and Explainable AI in Healthcare.
Erscheinungsdatum | 20.07.2023 |
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Reihe/Serie | Analytics and AI for Healthcare |
Zusatzinfo | 27 Tables, black and white; 79 Line drawings, black and white; 57 Halftones, black and white; 136 Illustrations, black and white |
Sprache | englisch |
Maße | 156 x 234 mm |
Gewicht | 770 g |
Themenwelt | Informatik ► Theorie / Studium ► Künstliche Intelligenz / Robotik |
Informatik ► Weitere Themen ► Bioinformatik | |
Medizin / Pharmazie ► Allgemeines / Lexika | |
Medizin / Pharmazie ► Physiotherapie / Ergotherapie ► Orthopädie | |
Naturwissenschaften ► Biologie | |
Technik ► Medizintechnik | |
Technik ► Umwelttechnik / Biotechnologie | |
ISBN-10 | 1-032-36711-3 / 1032367113 |
ISBN-13 | 978-1-032-36711-8 / 9781032367118 |
Zustand | Neuware |
Informationen gemäß Produktsicherheitsverordnung (GPSR) | |
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