Federated Learning in Health Care Technology
Produktnummer:
18f341394209cd48b78bc8da81f1ff7b13
Themengebiete: | Computational Intelligence Computer Vision Deep Learning Disease Classification Disease Identification Federated Learning Machine Learning Privacy Preserving |
---|---|
Veröffentlichungsdatum: | 22.09.2025 |
EAN: | 9789819683529 |
Sprache: | Englisch |
Seitenzahl: | 278 |
Produktart: | Gebunden |
Herausgeber: | Dey, Nilanjan Mridha, Muhammad Firoz |
Verlag: | Springer Singapore |
Produktinformationen "Federated Learning in Health Care Technology"
This book offers an in-depth exploration of federated learning (FL), a groundbreaking approach that facilitates collaborative data analysis while ensuring patient privacy and data security. As healthcare systems worldwide generate vast amounts of data, the challenge lies in harnessing this information without compromising confidentiality. Federated learning addresses this by allowing multiple institutions to collaborate on machine learning models without sharing sensitive data. In this context, the authors delve into the foundational principles of FL, illustrating how it enables the aggregation of decentralized data to improve diagnostic accuracy, develop personalized treatment plans, and enhance overall healthcare outcomes. The authors present real-world applications across various medical fields, from predictive analytics in chronic disease management to precision medicine and beyond. Additionally, the authors discuss the ethical and regulatory landscapes, providing insights into the challenges and solutions associated with implementing FL in healthcare. This book is designed for a diverse audience, including researchers, healthcare practitioners, data scientists, and policymakers. It aims to bridge the gap between cutting-edge technology and practical medical applications, offering a comprehensive guide to leveraging FL for healthcare innovation.

Sie möchten lieber vor Ort einkaufen?
Sie haben Fragen zu diesem oder anderen Produkten oder möchten einfach gerne analog im Laden stöbern? Wir sind gerne für Sie da und beraten Sie auch telefonisch.
Juristische Fachbuchhandlung
Georg Blendl
Parcellistraße 5 (Maxburg)
8033 München
Montag - Freitag: 8:15 -18 Uhr
Samstags geschlossen