Learning Generalizable Features for Tibial Plateau Fracture Segmentation Using Masked Autoencoder and Limited Annotations
Accurate automated segmentation of tibial plateau fractures (TPF) from computed tomography (CT) requires large amounts of annotated data to train deep learning models, but obtaining such annotations presents unique challenges. The process demands expert knowledge to identify diverse fracture pattern...
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Zusammenfassung: | Accurate automated segmentation of tibial plateau fractures (TPF) from
computed tomography (CT) requires large amounts of annotated data to train deep
learning models, but obtaining such annotations presents unique challenges. The
process demands expert knowledge to identify diverse fracture patterns, assess
severity, and account for individual anatomical variations, making the
annotation process highly time-consuming and expensive. Although
semi-supervised learning methods can utilize unlabeled data, existing
approaches often struggle with the complexity and variability of fracture
morphologies, as well as limited generalizability across datasets. To tackle
these issues, we propose an effective training strategy based on masked
autoencoder (MAE) for the accurate TPF segmentation in CT. Our method leverages
MAE pretraining to capture global skeletal structures and fine-grained fracture
details from unlabeled data, followed by fine-tuning with a small set of
labeled data. This strategy reduces the dependence on extensive annotations
while enhancing the model's ability to learn generalizable and transferable
features. The proposed method is evaluated on an in-house dataset containing
180 CT scans with TPF. Experimental results demonstrate that our method
consistently outperforms semi-supervised methods, achieving an average Dice
similarity coefficient (DSC) of 95.81%, average symmetric surface distance
(ASSD) of 1.91mm, and Hausdorff distance (95HD) of 9.42mm with only 20
annotated cases. Moreover, our method exhibits strong transferability when
applying to another public pelvic CT dataset with hip fractures, highlighting
its potential for broader applications in fracture segmentation tasks. |
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DOI: | 10.48550/arxiv.2502.02862 |