Confidence-Guided Unsupervised Domain Adaptation for Cerebellum Segmentation
Xuan Li, Paule-J Toussaint, Alan Evans, and Xue Liu

TL;DR
This paper introduces a confidence-guided unsupervised domain adaptation method for cerebellum segmentation that leverages high-resolution BigBrain data and a self-training strategy to improve automatic labeling without manual annotations.
Contribution
It presents a novel two-stage framework combining visual similarity transfer and confidence-guided self-training for cerebellum segmentation across different histological datasets.
Findings
Achieves over 2.6% reduction in segmentation loss compared to existing methods.
Effectively adapts from Allen Brain Atlas to BigBrain without manual labels.
Demonstrates improved segmentation quality through qualitative and quantitative results.
Abstract
The lack of a comprehensive high-resolution atlas of the cerebellum has hampered studies of cerebellar involvement in normal brain function and disease. A good representation of the tightly foliated aspect of the cerebellar cortex is difficult to achieve because of the highly convoluted surface and the time it would take for manual delineation. The quality of manual segmentation is influenced by human expert judgment, and automatic labelling is constrained by the limited robustness of existing segmentation algorithms. The 20umisotropic BigBrain dataset provides an unprecedented high resolution framework for semantic segmentation compared to the 1000um(1mm) resolution afforded by magnetic resonance imaging. To dispense with the manual annotation requirement, we propose to train a model to adaptively transfer the annotation from the cerebellum on the Allen Brain Human Brain Atlas to the…
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Taxonomy
TopicsDigital Imaging for Blood Diseases · Medical Image Segmentation Techniques · Fetal and Pediatric Neurological Disorders
