Artificial intelligence (AI) in medicine is rising, and it holds tremendous potential for more accurate findings and novel solutions to complicated medical issues. Biomedical AI has potential, especially in the context of precision medicine, in the healthcare industry’s next phase of development and advancement. Integration of AI research into precision medicine is the future; however, the human component must always be considered.Explainable Artificial Intelligence in Medical Imaging: Fundamentals and Applications focuses on the most recent developments in applying artificial intelligence and data science to health care and medical imaging. Explainable artificial intelligence is a well-structured, adaptable technology that generates impartial, optimistic results. New healthcare applications for explicable artificial intelligence include clinical trial matching, continuous healthcare monitoring, probabilistic evolutions, and evidence-based mechanisms. This book overviews the principles, methods, issues, challenges, opportunities, and the most recent research findings. It makes the emerging topics of digital health and explainable AI in health care and medical imaging accessible to a wide audience by presenting various practical applications.Presenting a thorough review of state-of-the-art techniques for precise analysis and diagnosis, the book emphasizes explainable artificial intelligence and its applications in healthcare. The book also discusses computational vision processing methods that manage complicated data, including physiological data, electronic medical records, and medical imaging data, enabling early prediction. Researchers, academics, business professionals, health practitioners, and students all can benefit from this book’s insights and coverage.
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The book presents a thorough review of state-of-the-art techniques for precise analysis and diagnosis with an emphasis on explainable artificial intelligence and its applications in healthcare. Researchers, academics, business professionals, health practitioners, and students will all benefit from the knowledge in this book.
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1. Explainable Artificial Intelligence in Medicine: Social and Ethical Issues 2. Explainable AI for Diagnosis of Pneumonia Using Chest X-ray Images: Current Achievements and Analysis on Benchmark Datasets 3. Explainable AI for Medical Science: A Comprehensive Survey, Current Challenges, and Possible Directions 4. Explainable Artificial Intelligence Techniques in Healthcare Applications 5. Automatic Detection of Leukemia Through Explainable AI-Based Machine Learning Approaches: Directional Review 6. Improvement Alzheimer's Segmentation by VGG16 and U-Net Autoencoder Techniques 7. Skin Cancer Detection and Classification Using Explainable Artificial Intelligence for Unbalanced Data: State of the Art 8. Enhancing Heart Disease Diagnosis with XAI-Infused Ensemble Classification 9. Transparency in HealthTech: Unveiling the Power of Explainable AI 10. Therapeutic Virtual Reality Exposure Therapies for Nyctophobia and Claustrophobia with Active Heart Rate Monitoring 11. Explainable Artificial Intelligence-Based Machine Analytics and Deep Learning in Medical Science 12. Revolutionizing Prostate Cancer Diagnosis: Vision Transformers with Explainable Artificial Intelligence to Accurate and Interpretable Prostate Cancer Identification
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Produktdetaljer

ISBN
9781032626338
Publisert
2025-02-27
Utgiver
Vendor
Auerbach
Høyde
234 mm
Bredde
156 mm
Aldersnivå
U, 05
Språk
Product language
Engelsk
Format
Product format
Heftet
Antall sider
250

Biographical note

Amjad Rehman Khan (Senior Member, IEEE) earned a Ph.D. from the Faculty of Computing, Universiti Teknologi Malaysia (UTM), Malaysia, specializing in information security using image processing techniques in 2010. He received a Rector Award for the 2010 Best Student from UTM Malaysia. He is currently associate professor at CCIS Prince Sultan University Riyadh, Saudi Arabia. He is also a principal investigator in several projects and completed projects funded by MoHE Malaysia, Saudi Arabia. His research interests are bioinformatics, IoT, information security, and pattern recognition.

Tanzila Saba (Senior Member, IEEE) received his Ph.D. degree in document information security and management from the Faculty of Computing, Universiti Teknologi Malaysia (UTM), Malaysia, in 2012. She is currently a full professor with the College of Computer and Information Sciences, Prince Sultan University (PSU), Riyadh, Saudi Arabia, and also the leader of the AIDA Laboratory. She has published over 300 publications in high-ranked journals. Her primary research interests include bioinformatics, data mining, and classification using AI models. She received the Best Student Award from the Faculty of Computing, UTM, in 2012 and also received the best researcher award from PSU, from 2013 to 2016. She is the editor of several reputed journals and on a panel of TPC of international conferences.