Federated Learning for Healthcare, (9781032978109) — Readings Books

Become a Readings Member to make your shopping experience even easier. Sign in or sign up for free!

Become a Readings Member. Sign in or sign up for free!

Hello Readings Member! Go to the member centre to view your orders, change your details, or view your lists, or sign out.

Hello Readings Member! Go to the member centre or sign out.

Federated Learning for Healthcare
Hardback

Federated Learning for Healthcare

$336.00
Sign in or become a Readings Member to add this title to your wishlist.

The book offers an in-depth exploration of federated learning and its transformative impact on the healthcare industry. It begins by introducing the foundational concepts of federated learning, including its methods and applications within various healthcare domains. It explores how federated learning allows for model training using decentralised data, such as patient records, medical imaging, and wearable sensor data, without centralising sensitive information. This approach ensures patient privacy and addresses critical challenges in healthcare data management.

  • A detailed overview of federated learning, its principles, and its relevance to the healthcare sector.

  • Insights into how federated learning enhances clinical decision-making, disease prediction, diagnosis, and personalised treatment through decentralised data sources.

  • Examination of issues such as communication overhead, model heterogeneity, and data distribution imbalance, with strategies to overcome these challenges.

  • Practical examples of successful federated learning implementations in healthcare demonstrate its impact on patient care and operational efficiency.

  • Discussions on maintaining data privacy, ensuring compliance with regulations, and addressing ethical concerns.

This book is for researchers, healthcare professionals, data scientists, and policymakers interested in leveraging federated learning to enhance healthcare.

Read More
In Shop
Out of stock
Shipping & Delivery

$9.00 standard shipping within Australia
FREE standard shipping within Australia for orders over $100.00
Express & International shipping calculated at checkout

MORE INFO

Stock availability can be subject to change without notice. We recommend calling the shop or contacting our online team to check availability of low stock items. Please see our Shopping Online page for more details.

Format
Hardback
Publisher
Taylor & Francis Ltd
Country
United Kingdom
Date
31 March 2026
Pages
296
ISBN
9781032978109

The book offers an in-depth exploration of federated learning and its transformative impact on the healthcare industry. It begins by introducing the foundational concepts of federated learning, including its methods and applications within various healthcare domains. It explores how federated learning allows for model training using decentralised data, such as patient records, medical imaging, and wearable sensor data, without centralising sensitive information. This approach ensures patient privacy and addresses critical challenges in healthcare data management.

  • A detailed overview of federated learning, its principles, and its relevance to the healthcare sector.

  • Insights into how federated learning enhances clinical decision-making, disease prediction, diagnosis, and personalised treatment through decentralised data sources.

  • Examination of issues such as communication overhead, model heterogeneity, and data distribution imbalance, with strategies to overcome these challenges.

  • Practical examples of successful federated learning implementations in healthcare demonstrate its impact on patient care and operational efficiency.

  • Discussions on maintaining data privacy, ensuring compliance with regulations, and addressing ethical concerns.

This book is for researchers, healthcare professionals, data scientists, and policymakers interested in leveraging federated learning to enhance healthcare.

Read More
Format
Hardback
Publisher
Taylor & Francis Ltd
Country
United Kingdom
Date
31 March 2026
Pages
296
ISBN
9781032978109