Artificial Intelligence in Radiology 2023 (Course)
Course Description:
- The “Artificial Intelligence in Radiology” course is designed to equip radiologists and imaging professionals of all levels of experience with the essential knowledge and skills needed to navigate the integration of AI into healthcare.
- The course is developed in collaboration with Artificial Intelligence Medical Education (AiME), ensuring high-quality and up-to-date content.
Course Objectives:
- Provide participants with an introduction to the applications of artificial intelligence in the field of radiology.
- Explore the potential of AI to enhance clinical practice and decision-making in radiology.
- Address both the capabilities and limitations of AI technology in radiology.
Key Features:
- Practical and Clinically Relevant: The course focuses on practical applications and relevance to clinical practice.
- Strengths and Weaknesses: The course offers an in-depth exploration of both the strengths and weaknesses of AI technology in radiology.
- Foundation Building: Designed for participants at all experience levels, the course builds a foundational understanding of AI’s role in radiology.
Benefits:
- Comprehensive Overview: Participants will gain a comprehensive overview of how artificial intelligence is transforming the field of radiology.
- Enhanced Decision-Making: Participants will learn how AI can contribute to more informed and accurate decision-making in radiology.
- Future Preparedness: The course will equip participants with the knowledge needed to navigate an AI-integrated healthcare landscape.
Who Should Attend:
- Radiologists
- Imaging Professionals
- Healthcare Practitioners Interested in Radiology and AI
In summary, the “Artificial Intelligence in Radiology 2023” course is a valuable opportunity for radiologists and imaging professionals to understand the implications of AI in radiology, explore its potential benefits, and develop the necessary knowledge and skills to effectively incorporate AI into their practice.
Artificial Intelligence in Radiology
Session 1: Big Picture AI | |
Overview, Terms and Methods | Jordan Perchik, MD |
Preparing for the Future of AI in Radiology | Jordan Perchik, MD |
Session 2: Radiology Appilcations I | |
AI Applications in Neuro Imaging | Jordan Perchik, MD |
AI Applications in Breast Imaging | Jordan Perchik, MD |
AI Applications in Abdominal Imaging | Jordan Perchik, MD |
AI Applications in Cardiothoracic Imaging | Jordan Perchik, MD |
Session 3: Radiology Applications II | |
AI Applications in Nuclear Imaging | Jordan Perchik, MD |
AI Applications in Pediatric Imaging | Jordan Perchik, MD |
AI Applications in MSK Imaging | Jordan Perchik, MD |
AI and Workflow Optimization | Jordan Perchik, MD |
Session 4: Economics, Ethics and the Marketplace | |
Economics and Ethics of Radiology AI | Jordan Perchik, MD |
The AI Marketplace | Jordan Perchik, MD |
Evaluating an AI Application | Jordan Perchik, MD |
Session 5: Quality Assurance, Medicolegal Considerations and Education | |
Quality Assurance in Clinical AI | Jordan Perchik, MD |
Medicolegal Considerations in Clinical AI | Jordan Perchik, MD |
State of AI Education in Radiology | Jordan Perchik, MD |
End