Vincent Andrearczyk presented his research on medical imaging at the AI-Cafe, an online forum to gain insights into the European AI scene. He emphasized the importance of three essential ingredients: Generalizability, interpretability and interaction with clinicians. The talk is available online:
Medical imaging is an essential step in patient care, from diagnostic and treatment planning to follow-up, allowing doctors to assess organs, tissue and blood vessels non-invasively. AI capabilities to analyze medical images are extremely promising for assisting clinicians in their daily routines.
This presentation introduces some of the essential ingredients for developing reliable medical imaging AI models with a focus on generalizability, interpretability and interaction with clinicians.
Generalizability refers to the capacity of the models to adapt to new, previously unseen data, for instance, images coming from a new machine or hospital. Interpretability refers to the translation of the working principles and outcomes of the models in human-understandable terms. Finally, the involvement of clinicians, in all phases of a model development and evaluation is crucial to ensure the utility, usability and alignment of the solutions.
This talk covered all these topics and their integration in various tasks to foster patient care. I will give concrete examples including brain lesion management based on MRI analysis, and head and neck tumor segmentation and outcome prediction from PET/CT images.