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AI-DRIVEN HEALTHCARE
0
Zitationen
4
Autoren
2026
Jahr
Abstract
AI-Driven Healthcare: Machine Learning, Deep Learning, and Medical Innovation explores the transformative impact of artificial intelligence on modern medicine, offering a comprehensive overview of how cutting-edge technologies are reshaping clinical practice, diagnostics, and patient care. The book delves into the historical evolution of AI in healthcare, illustrating how traditional analytics have progressed to sophisticated AI-driven systems capable of learning from complex data and enhancing medical decision-making. Readers are guided through the healthcare data ecosystem, including electronic health records, medical imaging, genomic and multi-omics datasets, and real-time data from wearable devices. The text introduces foundational concepts of machine learning and deep learning, with practical applications in clinical prediction, patient stratification, imaging diagnostics, and personalized treatment planning. Specialized chapters examine natural language processing for clinical text, predictive analytics for disease risk modeling, and cognitive healthcare applications such as brain-computer interfaces and neurological disorder detection. The book also highlights advanced and emerging research topics, including federated learning, digital twins, integration of AI with IoT, explainable AI, and the potential for artificial general intelligence in medicine. With a blend of theory, practical insights, and case studies, this work equips healthcare professionals, data scientists, researchers, and students with the knowledge needed to harness AI technologies effectively, address challenges in deployment, and drive innovation in the evolving landscape of healthcare. Whether exploring diagnostic imaging, predictive modeling, or cognitive healthcare solutions, the book emphasizes both the opportunities and ethical considerations associated with integrating AI into patient-centered care, making it an essential guide for anyone interested in the intersection of technology and medicine.
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