Paper ID: 2412.17041

An OpenMind for 3D medical vision self-supervised learning

Tassilo Wald, Constantin Ulrich, Jonathan Suprijadi, Michal Nohel, Robin Peretzke, Klaus H. Maier-Hein

The field of 3D medical vision self-supervised learning lacks consistency and standardization. While many methods have been developed it is impossible to identify the current state-of-the-art, due to i) varying and small pre-training datasets, ii) varying architectures, and iii) being evaluated on differing downstream datasets. In this paper we bring clarity to this field and lay the foundation for further method advancements: We a) publish the largest publicly available pre-training dataset comprising 114k 3D brain MRI volumes and b) benchmark existing SSL methods under common architectures and c) provide the code of our framework publicly to facilitate rapid adoption and reproduction. This pre-print \textit{only describes} the dataset contribution (a); Data, benchmark, and codebase will be made available shortly.

Submitted: Dec 22, 2024