Generative artificial intelligence and ethics for healthcare
by Loveleen Gaur, Ajith Abraham.
- First edition.
- xv, 264 pages ;
Includes bibliographical references and index.
1. Generative AI in Healthcare: Introduction, Concept, Applications, and Challenges 2. Understanding Training Data and Mitigating Biases in Training Data 3. Calibrating Generative AI Models for Healthcare 4. Explainability in Generative AI and LLMs 5. Ethical Considerations in Generative AI Development and Usage 6. Ethical Concerns of Generative AI in Healthcare Applications 7. Ethical Concern of Data Privacy and Patient Data Ownership 8. Trust, Accountability, and Informed Consent: Cornerstones of Ethical Practice in Clinical Medicine 9. Personalized Medicine and Data Privacy: Where to Draw the Boundary? 10. Autonomous Medical Diagnosis: How to Balance Accuracy and Accountability? 11. Health Equity and Generative AI: Role, Impact, and Challenges 12. Lawfulness and Generative AI 13. Empathy and Generative AI: Role and Ethical Challenges 14. Role of Governability and Generative AI for Healthcare
Generative Artificial Intelligence and Ethics for Healthcare conducts a deep dive into the potential issues and challenges associated with Generative AI applications. The book begins with foundational concepts of generative AI and then explores ethical theories, including specific case studies in healthcare, and concludes with discussions on.
9780443331244
Artificial intelligence--Medical applications Artificial intelligence--Medical applications--Moral and ethical aspects.