Deep Learning Method for Rapid Simultaneous Multistructure Temporal Bone Segmentation
Caio A. Neves,
Trishia El. Chemaly,
Fanrui Fu
et al.
Abstract:ObjectiveTo develop and validate a deep learning algorithm for the automated segmentation of key temporal bone structures from clinical computed tomography (CT) data sets.Study DesignCross‐sectional study.SettingA total of 325 CT scans from a clinical database.MethodA state‐of‐the‐art deep learning (DL) algorithm (SwinUNETR) was used to train a prediction model for rapid segmentation of 9 key temporal bone structures in a data set of 325 clinical CTs. The data set was manually annotated by a specialist to serv… Show more
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