Odontogenic cystic lesion segmentation on cone-beam CT using an auto-adapting multi-scaled UNet
Zimo Huang,
Bo Li,
Yong Cheng
et al.
Abstract:ObjectivesPrecise segmentation of Odontogenic Cystic Lesions (OCLs) from dental Cone-Beam Computed Tomography (CBCT) is critical for effective dental diagnosis. Although supervised learning methods have shown practical diagnostic results in segmenting various diseases, their ability to segment OCLs covering different sub-class varieties has not been extensively investigated.MethodsIn this study, we propose a new supervised learning method termed OCL-Net that combines a Multi-Scaled U-Net model, along with an A… Show more
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