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Deep learning pipeline for trapezium segmentation in thumb radiographs
0
Zitationen
6
Autoren
2026
Jahr
Abstract
A two-stage AI pipeline (YOLOv8 + U-Net) accurately detects and segments the trapezium on thumb radiographs. The method outperforms popular segmentation models and achieves expert-level reproducibility. This tool may enhance surgical planning and intraoperative guidance for TMC arthroplasty.
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