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MedConv: Convolutions Beat Transformers on Long-Tailed Bone Density Prediction

MedConv, a convolutional model, improves bone density prediction accuracy and ROC AUC over transformer-based methods with lower computational demands and enhanced class balance handling.

Year
2025
Venue
arXiv 2025
Authors
22
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arxiv.org/abs/2502.00631ARXIV-DEFAULT
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Abstract

Bone density prediction via CT scans to estimate T-scores is crucial, providing a more precise assessment of bone health compared to traditional methods like X-ray bone density tests, which lack spatial resolution and the ability to detect localized changes. However, CT-based prediction faces two major challenges: the high computational complexity of transformer-based architectures, which limits their deployment in portable and clinical settings, and the imbalanced, long-tailed distribution of real-world hospital data that skews predictions. To address these issues, we introduce MedConv, a convolutional model for bone density prediction that outperforms transformer models with lower computational demands. We also adapt Bal-CE loss and post-hoc logit adjustment to improve class balance. Extensive experiments on our AustinSpine dataset shows that our approach achieves up to 21% improvement in accuracy and 20% in ROC AUC over previous state-of-the-art methods.

Authors

22