Multimodal Data Fusion in Healthcare: AI Approaches for Precision Diagnosis
Editat de Akansha Singh, Anuradha Dhull, Monika Lamba, Krishna Kant Singhen Limba Engleză Paperback – mai 2026
- Explores cutting-edge AI methodologies and their real-world applications in healthcare diagnostics
- Provides comprehensive frameworks for integrating multimodal data, including medical imaging, genomics, EHRs, and wearable sensors
- Addresses critical issues such as data interoperability, privacy, and technical constraints, offering practical solutions for academic and clinical settings
Preț: 831.07 lei
Preț vechi: 913.26 lei
-9% Precomandă
Puncte Express: 1247
Preț estimativ în valută:
147.10€ • 171.47$ • 128.64£
147.10€ • 171.47$ • 128.64£
Carte nepublicată încă
Doresc să fiu notificat când acest titlu va fi disponibil:
Se trimite...
Preluare comenzi: 021 569.72.76
Specificații
ISBN-13: 9780443440250
ISBN-10: 0443440255
Pagini: 330
Dimensiuni: 216 x 276 mm
Editura: ELSEVIER SCIENCE
ISBN-10: 0443440255
Pagini: 330
Dimensiuni: 216 x 276 mm
Editura: ELSEVIER SCIENCE
Cuprins
1. Introduction to Multimodal Data in Healthcare: Opportunities and Challenges
2. Foundations of Multimodal Data Fusion: Techniques and Frameworks
3. AI-Driven Multimodal Diagnostics: Revolutionizing Patient Assessment
4. Fusion of Imaging and Genomic Data: Precision Medicine in Oncology
5. Integrating Clinical and Wearable Data: Real-Time Patient Monitoring
6. Deep Learning for Multimodal Data: Algorithms and Applications in Healthcare
7. Reinforcement Learning for Personalized Treatments Using Multimodal Data
8. Natural Language Processing and EHR Data: Enhancing Clinical Decision Support
9. AI Models for Multimodal Brain Imaging: Advances in Neurological Diagnostics
10. Multimodal Fusion for Cardiovascular Disease Prediction and Monitoring
11. Fusion of Molecular and Histopathological Data: AI in Pathology
12. Challenges in Data Integration: Addressing Bias, Privacy, and Interoperability
13. Edge Computing and IoT for Multimodal Health Data Processing
14. Ethics, Regulation, and Future Directions in AI-Driven Multimodal Healthcare
15. Case Studies: Successful Applications of Multimodal Data Fusion in Clinical Practice
2. Foundations of Multimodal Data Fusion: Techniques and Frameworks
3. AI-Driven Multimodal Diagnostics: Revolutionizing Patient Assessment
4. Fusion of Imaging and Genomic Data: Precision Medicine in Oncology
5. Integrating Clinical and Wearable Data: Real-Time Patient Monitoring
6. Deep Learning for Multimodal Data: Algorithms and Applications in Healthcare
7. Reinforcement Learning for Personalized Treatments Using Multimodal Data
8. Natural Language Processing and EHR Data: Enhancing Clinical Decision Support
9. AI Models for Multimodal Brain Imaging: Advances in Neurological Diagnostics
10. Multimodal Fusion for Cardiovascular Disease Prediction and Monitoring
11. Fusion of Molecular and Histopathological Data: AI in Pathology
12. Challenges in Data Integration: Addressing Bias, Privacy, and Interoperability
13. Edge Computing and IoT for Multimodal Health Data Processing
14. Ethics, Regulation, and Future Directions in AI-Driven Multimodal Healthcare
15. Case Studies: Successful Applications of Multimodal Data Fusion in Clinical Practice