Brain MRI
Brain MRI research focuses on improving image acquisition, analysis, and application through advanced computational methods. Current efforts concentrate on developing novel deep learning architectures, such as diffusion models and transformers, for tasks including faster reconstruction, anomaly detection (e.g., tumor identification, lesion segmentation), and harmonization of multi-site data. These advancements enhance diagnostic accuracy, enable more efficient workflows, and facilitate large-scale studies by addressing challenges like data scarcity, image quality variability, and inter-site differences in acquisition protocols. Ultimately, these improvements promise to significantly impact clinical practice and neuroimaging research.
Papers
Automated MRI Quality Assessment of Brain T1-weighted MRI in Clinical Data Warehouses: A Transfer Learning Approach Relying on Artefact Simulation
Sophie Loizillon, Simona Bottani, Stéphane Mabille, Yannick Jacob, Aurélien Maire, Sebastian Ströer, Didier Dormont, Olivier Colliot, Ninon Burgos
TADM: Temporally-Aware Diffusion Model for Neurodegenerative Progression on Brain MRI
Mattia Litrico, Francesco Guarnera, Valerio Giuffirda, Daniele Ravì, Sebastiano Battiato