Calibrated Self-supervised Vision Transformers Improve Intracranial Arterial Calcification Segmentation from Clinical CT Head Scans
Journal:
arXiv
Published Date:
Jul 2, 2025
Abstract
Vision Transformers (ViTs) have gained significant popularity in the natural
image domain but have been less successful in 3D medical image segmentation.
Nevertheless, 3D ViTs are particularly interesting for large medical imaging
volumes due to their efficient self-supervised training within the masked
autoencoder (MAE) framework, which enables the use of imaging data without the
need for expensive manual annotations. intracranial arterial calcification
(IAC) is an imaging biomarker visible on routinely acquired CT scans linked to
neurovascular diseases such as stroke and dementia, and automated IAC
quantification could enable their large-scale risk assessment. We pre-train
ViTs with MAE and fine-tune them for IAC segmentation for the first time. To
develop our models, we use highly heterogeneous data from a large clinical
trial, the third International Stroke Trial (IST-3). We evaluate key aspects of
MAE pre-trained ViTs in IAC segmentation, and analyse the clinical
implications. We show: 1) our calibrated self-supervised ViT beats a strong
supervised nnU-Net baseline by 3.2 Dice points, 2) low patch sizes are crucial
for ViTs for IAC segmentation and interpolation upsampling with regular
convolutions is preferable to transposed convolutions for ViT-based models, and
3) our ViTs increase robustness to higher slice thicknesses and improve risk
group classification in a clinical scenario by 46%. Our code is available
online.