4.6 Article

Deep Segmentation of the Mandibular Canal: A New 3D Annotated Dataset of CBCT Volumes

Journal

IEEE ACCESS
Volume 10, Issue -, Pages 11500-11510

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/ACCESS.2022.3144840

Keywords

Three-dimensional displays; Irrigation; Annotations; Surgery; Dentistry; Medical diagnostic imaging; Deep learning; 3D imaging; CBCT; image dataset; medical imaging; inferior alveolar nerve

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This study describes a novel and publicly available CBCT dataset of the mandible, and improves the level of 3D mandibular canal segmentation using deep learning techniques. Researchers addressed the limitation of small maxillofacial datasets by providing 2D and 3D manual annotations.
Inferior Alveolar Nerve (IAN) canal detection has been the focus of multiple recent works in dentistry and maxillofacial imaging. Deep learning-based techniques have reached interesting results in this research field, although the small size of 3D maxillofacial datasets has strongly limited the performance of these algorithms. Researchers have been forced to build their own private datasets, thus precluding any opportunity for reproducing results and fairly comparing proposals. This work describes a novel, large, and publicly available mandibular Cone Beam Computed Tomography (CBCT) dataset, with 2D and 3D manual annotations, provided by expert clinicians. Leveraging this dataset and employing deep learning techniques, we are able to improve the state of the art on the 3D mandibular canal segmentation. The source code which allows to exactly reproduce all the reported experiments is released as an open-source project, along with this article.

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