2022
DOI: 10.1371/journal.pone.0276503
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Learning rate of students detecting and annotating pediatric wrist fractures in supervised artificial intelligence dataset preparations

Abstract: The use of artificial intelligence (AI) in image analysis is an intensively debated topic in the radiology community these days. AI computer vision algorithms typically rely on large-scale image databases, annotated by specialists. Developing and maintaining them is time-consuming, thus, the involvement of non-experts into the workflow of annotation should be considered. We assessed the learning rate of inexperienced evaluators regarding correct labeling of pediatric wrist fractures on digital radiographs. Stu… Show more

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