- Offers an indispensable introduction to this emerging field, with expert coverage of how AI can best be used in radiology.
- Provides clear explanations of fundamental concepts in AI and machine learning; current and future applications of AI that may affect the practice of radiology; and how to develop commercially viable AI applications in radiology.
- Discusses both interpretive and non-interpretive applications, and includes multiple case studies throughout.
- Serves as both an introduction to AI in radiology for students, trainees, and professionals, as well as a how-to guide for getting started on identifying, developing, testing, and commercializing AI applications.
- An eBook version is included with purchase. The eBook allows you to access all of the text, figures, and references, with the ability to search, customize your content, make notes and highlights, and have content read aloud. Additional digital ancillary content may publish up to 6 weeks following the publication date.
|
PART I: BACKGROUND 1. Market overview, growth, and why 2. Fundamental concepts (e.g. AI, ML), vocabulary 3. Technology principles (e.g. modelling, learning methods, deep learning, sparse coding, big data) PART II: APPLICATIONS 1. Breast (Current FDA-approved applications; existing companies; applications under development; opportunities, defined needs) 2. Cardiovascular (Current FDA-approved applications; existing companies; applications under development; opportunities, defined needs) 3. Chest (Current FDA-approved applications; existing companies; applications under development; opportunities, defined needs) 4. Emergency (Current FDA-approved applications; existing companies; applications under development; opportunities, defined needs) 5. Gastrointestinal (Current FDA-approved applications; existing companies; applications under development; opportunities, defined needs) 6. Genitourinary (Current FDA-approved applications; existing companies; applications under development; opportunities, defined needs) 7. Head and neck (Current FDA-approved applications; existing companies; applications under development; opportunities, defined needs) 8. Musculoskeletal (Current FDA-approved applications; existing companies; applications under development; opportunities, defined needs) 9. Neuroradiology (Current FDA-approved applications; existing companies; applications under development; opportunities, defined needs) 10. Paediatric (Current FDA-approved applications; existing companies; applications under development; opportunities, defined needs) 11. Interventional (Current FDA-approved applications; existing companies; applications under development; opportunities, defined needs) 12. Nuclear (Current FDA-approved applications; existing companies; applications under development; opportunities, defined needs) PART III: DEVELOP YOUR APPLICATION 13. Problem (ideation process, what problem are you solving, for whom, value prop, special sauce) 14. Team (who you need, roles) 15. R&D, validation process 16. Regulatory, quality, ethical, legal PART IV: COMMERCIALIZATION 17. Routes of commercialization 18. Funding- who, how, economics, power 19. Cases studies (stories of successful rad AI ventures) |