Improving Generalization in MRI-Based Deep Learning Models for Total Knee Replacement Prediction
Journal:
arXiv
Published Date:
Apr 27, 2025
Abstract
Knee osteoarthritis (KOA) is a common joint disease that causes pain and
mobility issues. While MRI-based deep learning models have demonstrated
superior performance in predicting total knee replacement (TKR) and disease
progression, their generalizability remains challenging, particularly when
applied to imaging data from different sources. In this study, we have shown
that replacing batch normalization with instance normalization, using data
augmentation, and applying contrastive loss improves model generalization in a
baseline deep learning model for knee osteoarthritis (KOA) prediction. We
trained and evaluated our model using MRI data from the Osteoarthritis
Initiative (OAI) database, considering sagittal fat-suppressed
intermediate-weighted turbo spin-echo (FS-IW-TSE) images as the source domain
and sagittal fat-suppressed three-dimensional (3D) dual-echo in steady state
(DESS) images as the target domain. The results demonstrate a statistically
significant improvement in classification accuracy across both domains, with
our approach outperforming the baseline model.