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MedTech 5.0: AI, Digital Twins, and the Future of Clinical Intelligence
2
Zitationen
1
Autoren
2025
Jahr
Abstract
The healthcare sector is going through a radical change one that is rooted in the interplay of artificial intelligence, digital twins, robotics, IoT, and new-generation data ecosystems. The more the medical problems become more complicated, the more intelligent, predictive, and highly customized solutions become necessary. In order to shed light on this changing state of affairs, MedTech 5.0: AI, Digital Twins, and the Future of Clinical Intelligence is written to show readers the next phase of medicine where technology and human expertise are united in harmony. This book discusses how AI-based solutions are transforming the nature of diagnostics, therapeutics, hospital operations, and patient care. It illuminates digital twins as virtual organs, patients, and clinical processes that enable health care professionals to simulate conditions and optimize treatments and predict outcomes with unprecedented accuracy. The book illustrates how precision medicine, remote monitoring, drug discovery, and smart clinical environments are being defined by data-driven intelligence using real-life examples and the emerging trends. This book targets students, clinicians, researchers, innovators, and healthcare leaders with an aim of offering a broad but friendly insight on the development of MedTech, as an automation to intelligence tool. It also unravels the opportunities as well as the ethical issues that come along with this tech revolution. Finally, MedTech 5.0 is a way to the future, in which intelligent systems do not only assist in making medical decisions but also place healthcare on a new level of predictive, custom-made, and accessible health care worldwide. The book is a call to think about the future of medicine, in which digital health and human care collaborate to design safer, smarter, and more responsive clinical systems to serve the future generations.
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