Attention-based Pin Site Image Classification in Orthopaedic Patients with External Fixators
arXiv cs.CV / 3/27/2026
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Key Points
- The study introduces an attention-based deep learning approach to classify images of pin sites in orthopaedic patients with external fixators as infected/inflamed versus non-complicated cases.
- It contributes a dedicated dataset for pin-site wound infections, focusing specifically on the metal pin/skin interface rather than only open wounds.
- The proposed model uses attention to emphasize relevant visual regions while reducing distraction from pins, improving robustness to the interface complexity.
- An Efficient Redundant Reconstruction Convolution (ERRC) module is added to enrich feature maps while lowering parameter count.
- Reported performance is strong (AUC 0.975, F1-score 0.927) with relatively few parameters (5.77M), though the authors stress that further validation on larger datasets is still needed.
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