MACHINE AND DEEP LEARNING IN ONCOLOGY, MEDICAL PHYSICS AND RADIOLOGY. 2ND EDITION

MACHINE AND DEEP LEARNING IN ONCOLOGY, MEDICAL PHYSICS AND RADIOLOGY. 2ND EDITION

Editorial:
SPRINGER
Año de edición:
Materia
Radiología
ISBN:
978-3-030-83046-5
Páginas:
513
N. de edición:
2
Idioma:
Inglés
Ilustraciones:
168
Disponibilidad:
Disponible en 2-3 semanas

Descuento:

-5%

Antes:

156,00 €

Despues:

148,20 €

• Part I. Introduction
1. What are Machine and Deep Learning?
2. Computational Learning Basics
3. Overview of Conventional Machine Learning Methods
4. Overview of Deep Machine Learning Methods
5. Quantum Computing for Machine Learning
6. Performance Evaluation
7. Software Tools for Machine and Deep learning
8. Data sharing, protection and bioethics
• Part II. Machine Learning for Medical Image Analysis
9. Detection of Cancer Lesions from Imaging
10. Diagnosis of Malignant and Benign Tumours
11. Auto-contouring for image-guidance and treatment planning
• Part III. Machine Learning for Treatment planning & Delivery
12. Quality Assurance and error prediction
13. Knowledge-based treatment planning
14. Intelligent respiratory motion management
• Part IV. Machine Learning for Outcomes Modeling and Decision Support
15. Prediction of oncology treatment outcomes
16. Radiomics and radiogenomics
17. Modelling of Radiotherapy Response (TCP/NTCP)
18. Smart adaptive treatment strategies
19. Machine learning in clinical trials

This book, now in an extensively revised and updated second edition, provides a comprehensive overview of both machine learning and deep learning and their role in oncology, medical physics, and radiology. Readers will find thorough coverage of basic theory, methods, and demonstrative applications in these fields. An introductory section explains machine and deep learning, reviews learning methods, discusses performance evaluation, and examines software tools and data protection. Detailed individual sections are then devoted to the use of machine and deep learning for medical image analysis, treatment planning and delivery, and outcomes modeling and decision support. Resources for varying applications are provided in each chapter, and software code is embedded as appropriate for illustrative purposes. The book will be invaluable for students and residents in medical physics, radiology, and oncology and will also appeal to more experienced practitioners and researchers and members of applied machine learning communities.

Features
• Reference text for machine and deep learning in oncology, medical physics, and radiology
• From theory to practice with examples
• Self-assessment exercises and embedded software code