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

Authors :
Qi, Xuyin
Zhang, Zeyu
Zheng, Huazhan
Chen, Mingxi
Kutaiba, Numan
Lim, Ruth
Chiang, Cherie
Tham, Zi En
Ren, Xuan
Zhang, Wenxin
Zhang, Lei
Zhang, Hao
Lv, Wenbing
Yao, Guangzhen
Han, Renda
Wang, Kangsheng
Li, Mingyuan
Mao, Hongtao
Li, Yu
Liao, Zhibin
Zhao, Yang
To, Minh-Son
Publication Year :
2025

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.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2502.00631
Document Type :
Working Paper