Trustworthy AI in Medical Imaging: The MICCAI Society book Series
Editat de Marco Lorenzi, Maria A Zuluagaen Limba Engleză Paperback – dec 2024
- Introduces the key concepts of trustworthiness in AI.
- Presents state-of-the-art methodologies for trustworthy AI in medical imaging.
- Outlines major initiatives focusing on real-world deployment of trustworthy principles in medical imaging applications.
- Presents outstanding questions still to be solved and discusses future research directions.
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Specificații
ISBN-13: 9780443237614
ISBN-10: 0443237611
Pagini: 455
Dimensiuni: 191 x 235 mm
Editura: ELSEVIER SCIENCE
Seria The MICCAI Society book Series
ISBN-10: 0443237611
Pagini: 455
Dimensiuni: 191 x 235 mm
Editura: ELSEVIER SCIENCE
Seria The MICCAI Society book Series
Cuprins
Preface
Preliminaries
Introduction to Trustworthy AI for Medical Imaging & Lecture Plan
The fundamentals of AI ethics in Medical Imaging
Section 1 – Robustness
1. Machine Learning Robustness: A Primer
2. Navigating the Unknown: Out-of-Distribution Detection for Medical Imaging
3. From Out-of-Distribution Detection and Uncertainty Quantification to Quality Control
4. Domain shift, Domain Adaptation and Generalization
Section 2 - Validation, Transparency and Reproducibility
5. Fundamentals on Transparency, Reproducibility and Validation
6. Reproducibility in Medical Image Computing
7. Collaborative Validation and Performance Assessment in Medical Imaging Applications
8. Challenges as a Framework for Trustworthy AI
Section 3 – Bias and Fairness
9. Bias and Fairness
10. Open Challenges on Fairness of Artificial Intelligence in Medical Imaging Applications
Section 4 - Explainability, Interpretability and Causality
11. Fundamentals on Explainable and Interpretable Artificial Intelligence Models
12. Causality: Fundamental Principles and Tools
13. Interpretable AI for Medical Image Analysis: Methods, Evaluation and Clinical Considerations
14. Explainable AI for Medical Image Analysis
15. Causal Reasoning in Medical Imaging
Section 5 - Privacy-preserving ML
16. Fundamentals of Privacy-Preserving and Secure Machine Learning
17. Differential Privacy in Medical Imaging Applications
Section 6 - Collaborative Learning
18. Fundamentals on Collaborative Learning
19. Large-scale Collaborative Studies in Medical Imaging through Meta Analyses
20. Promises and Open Challenges for Translating Federated learning in Hospital Environments
Section 7 - Beyond the Technical Aspects
21. Stakeholder Engagement: The Path to Trustworthy AI in Healthcare
Preliminaries
Introduction to Trustworthy AI for Medical Imaging & Lecture Plan
The fundamentals of AI ethics in Medical Imaging
Section 1 – Robustness
1. Machine Learning Robustness: A Primer
2. Navigating the Unknown: Out-of-Distribution Detection for Medical Imaging
3. From Out-of-Distribution Detection and Uncertainty Quantification to Quality Control
4. Domain shift, Domain Adaptation and Generalization
Section 2 - Validation, Transparency and Reproducibility
5. Fundamentals on Transparency, Reproducibility and Validation
6. Reproducibility in Medical Image Computing
7. Collaborative Validation and Performance Assessment in Medical Imaging Applications
8. Challenges as a Framework for Trustworthy AI
Section 3 – Bias and Fairness
9. Bias and Fairness
10. Open Challenges on Fairness of Artificial Intelligence in Medical Imaging Applications
Section 4 - Explainability, Interpretability and Causality
11. Fundamentals on Explainable and Interpretable Artificial Intelligence Models
12. Causality: Fundamental Principles and Tools
13. Interpretable AI for Medical Image Analysis: Methods, Evaluation and Clinical Considerations
14. Explainable AI for Medical Image Analysis
15. Causal Reasoning in Medical Imaging
Section 5 - Privacy-preserving ML
16. Fundamentals of Privacy-Preserving and Secure Machine Learning
17. Differential Privacy in Medical Imaging Applications
Section 6 - Collaborative Learning
18. Fundamentals on Collaborative Learning
19. Large-scale Collaborative Studies in Medical Imaging through Meta Analyses
20. Promises and Open Challenges for Translating Federated learning in Hospital Environments
Section 7 - Beyond the Technical Aspects
21. Stakeholder Engagement: The Path to Trustworthy AI in Healthcare