
Aim of the course
Artificial Intelligence is revolutionizing the world. Medicine is no exception, and several AI applications can already be used today to help both patients and clinicians. In this workshop, physicians will learn several aspects of AI, how to train AI models for various use cases, and use their domain-specific knowledge to create advanced applications to solve their day-to-day problems improving their efficiency and patient care. Real- world medical data comprising images, text reports, and clinical databases will be used during the workshop.
The objectives of this workshop are to
- Understand the different types of AI models;
- Understand the types of tasks that AI models can perform;
- Present several success stories of AI in Medicine;
- Discuss common mistakes and the importance of domain-specific knowledge;
- Introduce participants to Python, Jupyter, and Google Colab;
- Know publicly available datasets;
- Learn to create use AI to analyze medical images in regression, classification, and segmentation use cases;
- Learn to create 3D digital patient/organ-specific models for surgical planning.
Educational methods
Main topics
target participants
Full course programme
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Venue &
accommodation
Venue
Humanitas University
Roberto Rocca Innovation Building
Via Rita Levi Montalcini 4
Pieve Emanuele
Milan
accommodation
Accommodation is not included in the registration fee.
Suggestions:
We can suggest the following hotels close to the course venue (but far from the city center):
Hotel Corte Milano, 3′ by taxi or 17′ by foot far from the venue.
Agriturismo Le Risaie, 7′ by taxi or 40′ by bus (bus number 230)
Hotel NH Milano Congress Center, 15′ by taxi
Hotel Cascina Marisa, 7′ by taxi
Acca Sporting Milano Hotel, 11′ by taxi
You can also stay in any hotel in the city center but please be aware it would take you around 20′-25′ by taxi to reach the venue (around an hour by public transport).