• Home
  • Topics
  • Description
  • Speaker Suggestion
  • Upcoming Talks
    • tba
    • Making sense of data and models
    • tba
  • Past Talks
    • MICCAI Industrial Talk - Translating AI to Clinical Practice
    • Integrating Haptic Feedback with Mixed Reality for Seamless Virtual Object Interaction in Real Environments
    • Data-Centric Trustworthy AI
    • Potential of Large Language Models in Improving Health Literacy - Exploring Evaluation Metrics for Plain Language Medical Text Adaptations
    • Toward eliminating CT imaging in proton therapy - are we certain?
    • Physics-informed machine learning for functional MRI modeling
    • AI in Computational Neuroimaging
    • Causal Discovery - What can we learn from heterogeneous noise?
    • AI in pathology - From diagnostic to advanced applications
    • Domain-specific methods for joint embedding self-supervised learning with ultrasound images
    • When (Not) To Pool Data (or, how to alleviate the dirty little secret of machine learning)
    • Advancing Interventional Healthcare One Simulation at a Time
    • Using AI to improve pulmonary hypertension assessment - why we need machines
    • Optimierung der online adaptiven Strahlentherapie durch unüberwachte Bildfusionsalgorithmen
    • Causally Aware Machine Learning
    • Discovering Latent Causes and Memory Modification ; A Computational Approach Using Symmetry and Geometry
  • Description

tba

Mar 31, 2025·
Prof. Dr. Sebastian Bauer

This talk will be part of a sarcoma Retreat at IKIM, discussing possible collaborations and challenges in the field of sarcoma-research.

Last updated on Mar 31, 2025

← Making sense of data and models Apr 14, 2025

Imprint · Disclaimer

©2024 Institute for Artificial Intelligence in Medicine

Published with Hugo Blox Builder — the free, open source website builder that empowers creators.