BookHironobu Matsushita, editor.
Summary: This book is the first to approach healthcare informatics from the perspective of innovation. Drawing on the unique pairing of information and innovation, it offers an analysis to help readers rethink information technology, knowledge management, interprofessional collaboration and the generation of wisdom in the context of healthcare. The concept of "translational" research stems from the medical and health sciences, and features bidirectional and recursive information-generation processes involving bed-to-bench and bench-to-bed approaches. Based partly on this, translational systems science has become a new trend within systems sciences, motivated by the need for practical applications that help people by offering holistic systems solutions for complex ideas. Today, numerous innovations are emerging in diversified clinical practices, and there has been a remarkable convergence of new technologies in disciplines like genome therapy, immunotherapy, iPS cells, imaging diagnosis, personalized medicine, molecular targeted drugs, surgical robots, and remote nursing. Innovation is also occurring in health management fields, including health records, insurance reimbursement methods, quality control, and safety. In these areas, big data and machine learning are accelerating innovation. Behind these innovations are the creation, sharing, bridging, and translation of data, information, knowledge, and wisdom, and as such health informatics is critical in promoting health innovations. The book explores the horizons of health informatics, introducing cutting-edge practical cases and theoretical frameworks, including but not limited to fields such as big data, machine learning, drug discovery, interprofessional collaboration, electronic health records, robotics, telenursing, quality improvement, and safety.
Contents:
Chapter 1. Theoretical Foundations: Informatics and Translational Systems Science
Chapter 2. Shared Context-in-motion: Translational and Transformational Aspects of Information
Chapter 3. Triad Translational continuum and Translational Leadership
Chapter 4. Informatics and Electronic Health Records and Patient Care
Chapter 5. Inter-Professional Approach to Health Informatics
Chapter 6. Tele Nursing and Health Informatics
Chapter 7. Communication Robot in the Care Provision
Chapter 8. Big Data and Machine Learning: Lessons from Intensive Care Medicine
Chapter 9. Medicine in the Age of Machine Learning and Artificial Intelligence
Chapter 10. Data Science to Improve Our Understanding of Health and Disease
Chapter 11. Big Data and Quality Improvement in Healthcare
Chapter 12. Application of Machine Learning Methods to Drug Discovery.-Chapter 13. Informatics of Intensive care Patient Database
Chapter 14. Nursing and Informatics: Fall Prevention Integration by Adjusting for the Risk of Falling with a Propensity Score
Chapter 15. Nursing and Informatics
Chapter 16. Academic Support for Effective Drug Development for Drug-resistant Bacteria-effects of Concomitant Drug Use of Clindamycin and Benzoyl Peroxide (BPO) on Propionibacterium acnes. -.