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AI-based detection and classification of distal radius fractures using low-effort data labeling: evaluation of applicability and effect of training set size
37
Zitationen
9
Autoren
2021
Jahr
Abstract
• Detection of metal and cast on radiographs is excellent using AI and labels extracted from radiology reports. • Automatic detection of distal radius fractures on radiographs is feasible and the performance approximates radiology residents. • Automatic classification of the type of distal radius fracture varies in accuracy and is inferior for joint involvement and fragment displacement.
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