Litcius/Paper detail

NKUT: Dataset and Benchmark for Pediatric Mandibular Wisdom Teeth Segmentation

Zhenhuan Zhou, Yuzhu Chen, Along He, Xitao Que, Kai Wang, Rui Yao, Tao Li

2024IEEE Journal of Biomedical and Health Informatics12 citationsDOI

Abstract

Germectomy is a common surgery in pediatric dentistry to prevent the potential dangers caused by impacted mandibular wisdom teeth. Segmentation of mandibular wisdom teeth is a crucial step in surgery planning. However, manually segmenting teeth and bones from 3D volumes is time-consuming and may cause delays in treatment. Deep learning based medical image segmentation methods have demonstrated the potential to reduce the burden of manual annotations, but they still require a lot of well-annotated data for training. In this paper, we initially curated a Cone Beam Computed Tomography (CBCT) dataset, NKUT, for the segmentation of pediatric mandibular wisdom teeth. This marks the first publicly available dataset in this domain. Second, we propose a semantic separation scale-specific feature fusion network named WTNet, which introduces two branches to address the teeth and bones segmentation tasks. In WTNet, We design a Input Enhancement (IE) block and a Teeth-Bones Feature Separation (TBFS) block to solve the feature confusions and semantic-blur problems in our task. Experimental results suggest that WTNet performs better on NKUT compared to previous state-of-the-art segmentation methods (such as TransUnet), with a maximum DSC lead of nearly 16%.

Topics & Concepts

Benchmark (surveying)Computer scienceSegmentationArtificial intelligenceOrthodonticsPattern recognition (psychology)Data miningMedicineCartographyGeographyDental Radiography and ImagingHuman Pose and Action RecognitionOral and Craniofacial Lesions