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Practical applications of deep learning: classifying the most common categories of plain radiographs in a PACS using a neural network
11
Zitationen
9
Autoren
2020
Jahr
Abstract
• Data from one single institution can be used to train a neural network for the correct detection of the 30 most common categories of plain radiographs. • The trained model achieved a high accuracy for the majority of categories and showed good generalizability to images from other institutions. • The neural network is made publicly available and can be used to automatically organize a PACS or to preselect radiographs so that they can be routed to more specialized neural networks for abnormality detection.
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