Artificial intelligence in medical imaging : opportunities, applications and risks /: opportunities, applications and risks. (2019)
- Record Type:
- Book
- Title:
- Artificial intelligence in medical imaging : opportunities, applications and risks /: opportunities, applications and risks. (2019)
- Main Title:
- Artificial intelligence in medical imaging : opportunities, applications and risks
- Further Information:
- Note: Erik R. Ranschaert, Sergey Morozov, Paul R. Algra, editors.
- Editors:
- Ranschaert, Erik R
Morozov, Sergey
Algra, P. R - Contents:
- Intro; I've Seen the Future …; Preface; Contents; Part I Introduction; 1 Introduction: Game Changers in Radiology; 1.1 Era of Changes; 1.2 Perspectives; 1.3 Opportunities for the Future; 1.4 Conclusion; Reference; Part II Technology: Getting Started; 2 The Role of Medical Image Computing and Machine Learning in Healthcare; 2.1 Introduction; 2.2 Medical Image Analysis; 2.2.1 Image Segmentation; 2.2.2 Image Registration; 2.2.3 Image Visualization; 2.3 Challenges; 2.3.1 Complexity of the Data; 2.3.2 Complexity of the Objects of Interest; 2.3.3 Complexity of the Validation 2.4 Medical Image Computing2.5 Model-Based Image Analysis; 2.5.1 Energy Minimization; 2.5.2 Classification/Regression; 2.6 Computational Strategies; 2.6.1 Flexible Shape Fitting; 2.6.2 Pixel Classification; 2.7 Fundamental Issues; 2.7.1 Explicit Versus Implicit Representation of Geometry; 2.7.2 Global Versus Local Representations of Appearance; 2.7.3 Deterministic Versus Statistical Models; 2.7.4 Data Congruency Versus Model Fidelity; 2.8 Conclusion; References; 3 A Deeper Understanding of Deep Learning; 3.1 Introduction; 3.2 Computer-Aided Diagnosis, the Classical Approaches 3.3 Artificial Intelligence3.4 Neural Networks; 3.5 Convolutional Neural Networks; 3.6 Why Now?; 3.7 Example: Screening for Diabetic Retinopathy; 3.8 Pointers on the Web; 3.9 A Comparison with Brain Research; 3.9.1 Brain Efficiency; 3.9.2 Visual Learning; 3.9.3 Foveated Vision; 3.10 Conclusions and Recommendations; 3.11 Take HomeIntro; I've Seen the Future …; Preface; Contents; Part I Introduction; 1 Introduction: Game Changers in Radiology; 1.1 Era of Changes; 1.2 Perspectives; 1.3 Opportunities for the Future; 1.4 Conclusion; Reference; Part II Technology: Getting Started; 2 The Role of Medical Image Computing and Machine Learning in Healthcare; 2.1 Introduction; 2.2 Medical Image Analysis; 2.2.1 Image Segmentation; 2.2.2 Image Registration; 2.2.3 Image Visualization; 2.3 Challenges; 2.3.1 Complexity of the Data; 2.3.2 Complexity of the Objects of Interest; 2.3.3 Complexity of the Validation 2.4 Medical Image Computing2.5 Model-Based Image Analysis; 2.5.1 Energy Minimization; 2.5.2 Classification/Regression; 2.6 Computational Strategies; 2.6.1 Flexible Shape Fitting; 2.6.2 Pixel Classification; 2.7 Fundamental Issues; 2.7.1 Explicit Versus Implicit Representation of Geometry; 2.7.2 Global Versus Local Representations of Appearance; 2.7.3 Deterministic Versus Statistical Models; 2.7.4 Data Congruency Versus Model Fidelity; 2.8 Conclusion; References; 3 A Deeper Understanding of Deep Learning; 3.1 Introduction; 3.2 Computer-Aided Diagnosis, the Classical Approaches 3.3 Artificial Intelligence3.4 Neural Networks; 3.5 Convolutional Neural Networks; 3.6 Why Now?; 3.7 Example: Screening for Diabetic Retinopathy; 3.8 Pointers on the Web; 3.9 A Comparison with Brain Research; 3.9.1 Brain Efficiency; 3.9.2 Visual Learning; 3.9.3 Foveated Vision; 3.10 Conclusions and Recommendations; 3.11 Take Home Messages; References; 4 Deep Learning and Machine Learning in Imaging: Basic Principles; 4.1 Introduction; 4.2 Features and Classes; 4.3 Neural Networks; 4.4 Support Vector Machines; 4.5 Decision Trees; 4.6 Bayes Network; 4.7 Deep Learning; 4.7.1 Deep Learning Layers 4.7.2 Deep Learning Architectures4.8 Conclusion; References; Part III Technology: Developing A.I. Applications; 5 How to Develop Artificial Intelligence Applications; 5.1 Introduction; 5.2 Applications of AI in Radiology; 5.3 Development of AI Applications in Radiology; 5.4 Resources Framework; 5.5 Conclusion; 5.6 Summary/Take-Home Points; References; 6 A Standardised Approach for Preparing Imaging Data for Machine Learning Tasks in Radiology; 6.1 Data, Data Everywhere?; 6.2 Not All Data Is Created Equal; 6.3 The MIDaR Scale; 6.3.1 MIDaR Level D; 6.3.2 MIDaR Level C; 6.3.3 MIDaR Level B 6.3.4 MIDaR Level A6.4 Summary; 6.5 Take Home Points; References; 7 The Value of Structured Reporting for AI; 7.1 Introduction; 7.2 Conventional Radiological Reporting Versus Structured Reporting; 7.3 Technical Implementations of Structured Reporting and IHE MRRT; 7.4 Information Extraction Using Natural Language Processing; 7.5 Information Extraction from Structured Reports; 7.6 Integration of External Data into Structured Reports; 7.7 Analytics and Clinical Decision Support; 7.8 Outlook; References; 8 Artificial Intelligence in Medicine: Validation and Study Design … (more)
- Publisher Details:
- Cham, Switzerland : Springer
- Publication Date:
- 2019
- Extent:
- 1 online resource (xv, 373 pages), illustrations (some color)
- Subjects:
- 616.07/54
Diagnostic imaging -- Data processing
Artificial intelligence -- Medical applications
Electronic books
Electronic books - Languages:
- English
- ISBNs:
- 9783319948782
3319948784 - Related ISBNs:
- 9783319948775
- Notes:
- Note: Online resource; title from PDF title page (SpringerLink, viewed February 8, 2019).
- Access Rights:
- Legal Deposit; Only available on premises controlled by the deposit library and to one user at any one time; The Legal Deposit Libraries (Non-Print Works) Regulations (UK).
- Access Usage:
- Restricted: Printing from this resource is governed by The Legal Deposit Libraries (Non-Print Works) Regulations (UK) and UK copyright law currently in force.
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- Available online (eLD content is only available in our Reading Rooms) ↗
- Physical Locations:
- British Library HMNTS - ELD.DS.384791
- Ingest File:
- 03_018.xml