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Impact of Test Set Composition on AI Performance for Pediatric Radiograph Appendicular Skeleton Fracture Detection
1
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11
Autoren
2026
Jahr
Abstract
< .001). Conclusion AI performance in pediatric fracture detection was influenced by test set composition and radiograph complexity, where an internal test set of complex radiographs was associated with decreased odds of correct prediction. © RSNA, 2026
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