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AI for detection, classification and prediction of loss of alignment of distal radius fractures; a systematic review
8
Zitationen
9
Autoren
2024
Jahr
Abstract
AI models for DRF detection show promising performance, indicating the potential of algorithms to assist clinicians in the assessment of radiographs. In addition, AI models showed similar performance compared to clinicians. No algorithms for predicting the loss of threshold alignment were identified in our literature search despite the clinical relevance of such algorithms.
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