Federated Deep Learning for Healthcare
A Practical Guide with Challenges and Opportunities
Herausgeber: Kaur, Amandeep; Hassan, MD Mehedi; Kaushal, Chetna
Federated Deep Learning for Healthcare
A Practical Guide with Challenges and Opportunities
Herausgeber: Kaur, Amandeep; Hassan, MD Mehedi; Kaushal, Chetna
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This book provides a practical guide to federated deep learning for healthcare including fundamental concepts, framework, and the applications comprising of domain adaptation, model distillation, and transfer learning. It covers concerns in model fairness, data bias, regulatory compliance, and ethical dilemmas.
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This book provides a practical guide to federated deep learning for healthcare including fundamental concepts, framework, and the applications comprising of domain adaptation, model distillation, and transfer learning. It covers concerns in model fairness, data bias, regulatory compliance, and ethical dilemmas.
Hinweis: Dieser Artikel kann nur an eine deutsche Lieferadresse ausgeliefert werden.
Hinweis: Dieser Artikel kann nur an eine deutsche Lieferadresse ausgeliefert werden.
Produktdetails
- Produktdetails
- Verlag: Taylor & Francis Ltd (Sales)
- Seitenzahl: 252
- Erscheinungstermin: 2. Oktober 2024
- Englisch
- Abmessung: 234mm x 156mm x 16mm
- Gewicht: 553g
- ISBN-13: 9781032689555
- ISBN-10: 1032689552
- Artikelnr.: 70345436
- Herstellerkennzeichnung
- Libri GmbH
- Europaallee 1
- 36244 Bad Hersfeld
- 06621 890
- Verlag: Taylor & Francis Ltd (Sales)
- Seitenzahl: 252
- Erscheinungstermin: 2. Oktober 2024
- Englisch
- Abmessung: 234mm x 156mm x 16mm
- Gewicht: 553g
- ISBN-13: 9781032689555
- ISBN-10: 1032689552
- Artikelnr.: 70345436
- Herstellerkennzeichnung
- Libri GmbH
- Europaallee 1
- 36244 Bad Hersfeld
- 06621 890
Dr. Amandeep Kaur currently holds the position of a professor at the Chitkara University Institute of Engineering and Technology, Chitkara University, Punjab. She earned her doctorate degree from I. K. Gujral Punjab Technical University, Jalandhar. Dr. Kaur's academic achievements include receiving both her M.Tech (Computer Science and Engineering) and B.Tech (Computer Science and Engineering) degrees with distinction. Additionally, she has successfully qualified UGC¿NET in Computer Science. Dr. Kaur boasts an extensive research portfolio, with approximately 100 publications in renowned international journals and fully refereed international conferences. She has accumulated 24 years of valuable experience in her field and has filed and published more than 107 patents. Dr. Kaur has played a significant role in mentoring the academic growth of over 30 Ph.D. and PG students. Her primary research areas encompass medical informatics, machine learning, IoT (Internet of Things), artificial intelligence, and cloud computing. Notably, Dr. Kaur has been recognized for her exceptional contributions, winning the Excellence Award in the "Filing Patent" category for three consecutive years (2021, 2022, and 2023) and the Best Ph.D. Supervision Award in 2023. Furthermore, she has achieved recognition on a global scale, as she is included in Stanford University's prestigious list of the top 2% most influential scientists among Indian researchers. This underscores her significance in the field of computer science and research. Dr. Chetna Kaushal works as an assistant professor in Chitkara University, Punjab. She has done a Ph.D. in Computer Science and Engineering from Chitkara University, Punjab, M.Tech in Computer Science and Engineering from DAV University, Punjab, and B.Tech in Information Technology from Punjab Technical University. Her areas of expertise are machine learning, soft computing, pattern recognition, image processing, and artificial intelligence. She has around ten years of experience in research, training, and academics. She has published numerous research papers in various international/national journals, books, and conferences. She has filed and published more than 50 patents to her name. She is a reviewer of many prestigious journals. Dr. Chetna Kaushal is an exceptionally motivated and talented researcher deeply dedicated to advancing human health and well¿being through pioneering scientific investigations. Her remarkable achievements thus far are a testament to her capabilities, and her potential for making significant future contributions to her field is undeniably bright. Md. Mehedi Hassan is a dedicated young researcher, holding a B.Sc. Engineering degree in computer science and engineering from 2022 and currently pursuing his M.Sc. Engineering degree at Khulna University, Bangladesh. His remarkable aptitude for research has propelled him to excel in biomedical engineering, data science, and expert systems, earning him recognition as a respected leader in these fields. He is the founder and CEO of the Virtual BD IT Firm and the lab head of the VRD Research Laboratory in Bangladesh. With over three filed patents, three of which have been granted, Mehedi is not only an innovative thinker but also a practical problem solver. He also serves as a reviewer for prestigious journals, further underscoring his influence in the scientific community. Mehedi's research interests encompass a broad spectrum, ranging from human brain imaging, neuroscience, machine learning, and artificial intelligence to software engineering. Driven by his notable accomplishments and promising potential, Mehedi remains dedicated to leveraging cutting¿edge scientific research to enhance human health and well¿being. Dr. Si Thu Aung received his B.E. from Technological University, Myanmar, in 2014, the Master of Engineering in Electronics from Mandalay Technological University, Myanmar, in 2017, and a Ph.D. in Biomedical Engineering from the Faculty of Engineering, Mahidol University, Thailand, in 2021. Previously, he worked as a post-doctoral researcher at the Rail and Modern Transports Research Center under the National Science and Technology Development Agency, Thailand Science Park, Pathum Thani, Thailand. Now, he is working as a post-doctoral research associate at the Department of Mathematics at the State University of New York, Buffalo. His current research interests include biomedical signal processing, digital image processing, machine learning, and deep learning.
1. Revolutionizing Healthcare through Federated Learning: A Secure and
Collaborative Approach. 2. Revolutionizing Healthcare: Unleashing the Power
of Digital Health. 3. Federated Deep Learning Systems in Healthcare. 4.
Applications of Federated Deep Learning Models in Healthcare Era. 5.
Machine Learning for Healthcare- Review and future Aspects. 6. Federated
Multi Task Learning to Solve Various Healthcare Challenges. 7. Smart System
for Development of Cognitive Skills Using Machine Learning. 8.
Patient-Driven Federated Learning (PD-FL) - An Overview. 9. An Explainable
and Comprehensive Federated Deep Learning in Practical Applications: Real
World Benefits and Systematic Analysis Across Diverse Domains. 10.
Federated deep learning system for application of health care of pandemic
situation. 11. The integration of federated deep learning with Internet of
Things in the healthcare sector. 12. FireEye: An IoT-Based Fire Alarm and
Detection System for Enhanced Safety. 13. Safeguarding Data Privacy and
Security in Federated Learning Systems. 14. Computer Vision Based Fruit
Diseases Detection System using Deep Learning. 15. Tailoring Medicine
Through Personalized Healthcare Solutions. 16. FedHealth in Wearable
Healthcare, Orchestrated Federated Deep Learning for Smart Healthcare:
Health Monitoring and Healthcare Informatics Lensing Challenges and Future
Directions. 17. From Scarce to Abundant: Enhancing Learning with Federated
Transfer Techniques. 18. Federated Learning-Based AI Approaches for
Predicting Stroke Disease.
Collaborative Approach. 2. Revolutionizing Healthcare: Unleashing the Power
of Digital Health. 3. Federated Deep Learning Systems in Healthcare. 4.
Applications of Federated Deep Learning Models in Healthcare Era. 5.
Machine Learning for Healthcare- Review and future Aspects. 6. Federated
Multi Task Learning to Solve Various Healthcare Challenges. 7. Smart System
for Development of Cognitive Skills Using Machine Learning. 8.
Patient-Driven Federated Learning (PD-FL) - An Overview. 9. An Explainable
and Comprehensive Federated Deep Learning in Practical Applications: Real
World Benefits and Systematic Analysis Across Diverse Domains. 10.
Federated deep learning system for application of health care of pandemic
situation. 11. The integration of federated deep learning with Internet of
Things in the healthcare sector. 12. FireEye: An IoT-Based Fire Alarm and
Detection System for Enhanced Safety. 13. Safeguarding Data Privacy and
Security in Federated Learning Systems. 14. Computer Vision Based Fruit
Diseases Detection System using Deep Learning. 15. Tailoring Medicine
Through Personalized Healthcare Solutions. 16. FedHealth in Wearable
Healthcare, Orchestrated Federated Deep Learning for Smart Healthcare:
Health Monitoring and Healthcare Informatics Lensing Challenges and Future
Directions. 17. From Scarce to Abundant: Enhancing Learning with Federated
Transfer Techniques. 18. Federated Learning-Based AI Approaches for
Predicting Stroke Disease.
1. Revolutionizing Healthcare through Federated Learning: A Secure and
Collaborative Approach. 2. Revolutionizing Healthcare: Unleashing the Power
of Digital Health. 3. Federated Deep Learning Systems in Healthcare. 4.
Applications of Federated Deep Learning Models in Healthcare Era. 5.
Machine Learning for Healthcare- Review and future Aspects. 6. Federated
Multi Task Learning to Solve Various Healthcare Challenges. 7. Smart System
for Development of Cognitive Skills Using Machine Learning. 8.
Patient-Driven Federated Learning (PD-FL) - An Overview. 9. An Explainable
and Comprehensive Federated Deep Learning in Practical Applications: Real
World Benefits and Systematic Analysis Across Diverse Domains. 10.
Federated deep learning system for application of health care of pandemic
situation. 11. The integration of federated deep learning with Internet of
Things in the healthcare sector. 12. FireEye: An IoT-Based Fire Alarm and
Detection System for Enhanced Safety. 13. Safeguarding Data Privacy and
Security in Federated Learning Systems. 14. Computer Vision Based Fruit
Diseases Detection System using Deep Learning. 15. Tailoring Medicine
Through Personalized Healthcare Solutions. 16. FedHealth in Wearable
Healthcare, Orchestrated Federated Deep Learning for Smart Healthcare:
Health Monitoring and Healthcare Informatics Lensing Challenges and Future
Directions. 17. From Scarce to Abundant: Enhancing Learning with Federated
Transfer Techniques. 18. Federated Learning-Based AI Approaches for
Predicting Stroke Disease.
Collaborative Approach. 2. Revolutionizing Healthcare: Unleashing the Power
of Digital Health. 3. Federated Deep Learning Systems in Healthcare. 4.
Applications of Federated Deep Learning Models in Healthcare Era. 5.
Machine Learning for Healthcare- Review and future Aspects. 6. Federated
Multi Task Learning to Solve Various Healthcare Challenges. 7. Smart System
for Development of Cognitive Skills Using Machine Learning. 8.
Patient-Driven Federated Learning (PD-FL) - An Overview. 9. An Explainable
and Comprehensive Federated Deep Learning in Practical Applications: Real
World Benefits and Systematic Analysis Across Diverse Domains. 10.
Federated deep learning system for application of health care of pandemic
situation. 11. The integration of federated deep learning with Internet of
Things in the healthcare sector. 12. FireEye: An IoT-Based Fire Alarm and
Detection System for Enhanced Safety. 13. Safeguarding Data Privacy and
Security in Federated Learning Systems. 14. Computer Vision Based Fruit
Diseases Detection System using Deep Learning. 15. Tailoring Medicine
Through Personalized Healthcare Solutions. 16. FedHealth in Wearable
Healthcare, Orchestrated Federated Deep Learning for Smart Healthcare:
Health Monitoring and Healthcare Informatics Lensing Challenges and Future
Directions. 17. From Scarce to Abundant: Enhancing Learning with Federated
Transfer Techniques. 18. Federated Learning-Based AI Approaches for
Predicting Stroke Disease.