Startseite Machine Learning for Medical Applications Vol 1+2
multi-volume work: Machine Learning for Medical Applications Vol 1+2
Mehrbändiges Werk

Machine Learning for Medical Applications Vol 1+2

  • Herausgegeben von: Ranjith Rajamanickam , Amit Sharma , Dhivya Ranjith und J. Paulo Davim
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Buch Erfordert eine Authentifizierung Nicht lizenziert Lizenziert 2025
Band 14/1 der Reihe Advanced Mechanical Engineering

Machine Learning for Medical Applications – Volume I provides an in-depth look into the frontier of artificial intelligence in healthcare, bringing together contributions from leading researchers and innovators. This volume focuses on three critical areas: computational drug discovery, advanced bioimaging techniques, and the development of smart biomaterials for medical use. Readers will discover how machine learning is revolutionizing personalized medicine, improving diagnostic accuracy, and enabling the design of AI-driven biomedical sensors and therapeutic systems. With practical insights into algorithmic modeling, drug toxicity prediction, and materials screening, this book bridges the gap between data science and clinical applications. Ideal for professionals, academics, and students in biomedical engineering, computer science, and medical informatics, this book highlights the synergistic potential of machine learning and modern medicine in shaping the future of healthcare.

Buch Erfordert eine Authentifizierung Nicht lizenziert Lizenziert 2025
Band 14/2 der Reihe Advanced Mechanical Engineering

Machine Learning for Medical Applications – Volume II delves into the intersection of artificial intelligence, computer vision, and healthcare, offering a comprehensive exploration of how machine learning is revolutionizing disease detection and diagnostics. With a focus on deep learning methods, the volume covers a wide spectrum of innovations including medical image segmentation, predictive modeling, tissue engineering, smart biomaterials, and personalized implant design through 3D printing. Contributors from academia and industry present state-of-the-art applications involving quantum dot functionalization, AI-enhanced diagnostic materials, and real-time image analysis. Each chapter provides both foundational knowledge and practical insight into how advanced algorithms can drive medical breakthroughs. Ideal for medical technologists, data scientists, biomedical engineers, and clinical practitioners, this volume emphasizes the role of machine learning in developing faster, smarter, and more accurate diagnostic tools for the next generation of personalized medicine.

Heruntergeladen am 7.11.2025 von https://www.degruyterbrill.com/serial/mlma-b/html
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