The reliability of a deep learning model in clinical out-of-distribution MRI data: a multicohort study
Gustav M{\aa}rtensson, Daniel Ferreira, Tobias Granberg, Lena, Cavallin, Ketil Oppedal, Alessandro Padovani, Irena Rektorova, Laura Bonanni,, Matteo Pardini, Milica Kramberger, John-Paul Taylor, Jakub Hort, J\'on, Sn{\ae}dal, Jaime Kulisevsky, Frederic Blanc, Angelo Antonini

TL;DR
This study evaluates how well deep learning models for MRI brain analysis perform across different clinical datasets with varying scanners and protocols, emphasizing the importance of diverse training data for better generalization.
Contribution
It provides the most comprehensive analysis to date of domain shift in MRI deep learning models and demonstrates that heterogeneous training data improves out-of-distribution performance.
Findings
Models perform well on similar protocol data
Performance drops significantly on different tissue contrast data
Including diverse training data enhances generalization
Abstract
Deep learning (DL) methods have in recent years yielded impressive results in medical imaging, with the potential to function as clinical aid to radiologists. However, DL models in medical imaging are often trained on public research cohorts with images acquired with a single scanner or with strict protocol harmonization, which is not representative of a clinical setting. The aim of this study was to investigate how well a DL model performs in unseen clinical data sets---collected with different scanners, protocols and disease populations---and whether more heterogeneous training data improves generalization. In total, 3117 MRI scans of brains from multiple dementia research cohorts and memory clinics, that had been visually rated by a neuroradiologist according to Scheltens' scale of medial temporal atrophy (MTA), were included in this study. By training multiple versions of a…
Peer Reviews
No public reviews on file for this paper yet. If you reviewed it on a platform where reviews are public (OpenReview, ICLR, NeurIPS, ICML), you can paste yours below so the community can read it here.
Videos
No videos yet. Explain this paper in a talk, walkthrough, or lecture? Add one.
