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Validation of Machine Learning–Based Automated Surgical Instrument Annotation Using Publicly Available Intraoperative Video
6
Zitationen
13
Autoren
2022
Jahr
Abstract
Surgical instruments contained within endoscopic endonasal intraoperative video can be detected using a fully automated ML model. The addition of disparate surgical data sets did not improve model performance, although these data sets may improve generalizability of the model in other use cases.
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