MICCAI STS 2024 Challenge: Semi-Supervised Instance-Level Tooth Segmentation in Panoramic X-ray and CBCT Images
Yaqi Wang, Zhi Li, Chengyu Wu, Jun Liu, Yifan Zhang, Jiaxue Ni, Qian Luo, Jialuo Chen, Hongyuan Zhang, Jin Liu, Can Han, Kaiwen Fu, Changkai Ji, Xinxu Cai, Jing Hao, Zhihao Zheng, Shi Xu, Junqiang Chen, Qianni Zhang, Dahong Qian, Shuai Wang, Huiyu Zhou

TL;DR
This paper presents the MICCAI STS 2024 Challenge, demonstrating that semi-supervised learning significantly improves instance-level tooth segmentation accuracy in panoramic X-ray and CBCT images with limited labeled data.
Contribution
It introduces a large-scale dataset and benchmark for semi-supervised tooth segmentation, showcasing the effectiveness of hybrid SSL methods over fully-supervised models.
Findings
Semi-supervised models outperform baseline fully-supervised models.
Top methods improved segmentation scores by over 44-61 percentage points.
Hybrid approaches combining foundational models and multi-stage refinement are most effective.
Abstract
Orthopantomogram (OPGs) and Cone-Beam Computed Tomography (CBCT) are vital for dentistry, but creating large datasets for automated tooth segmentation is hindered by the labor-intensive process of manual instance-level annotation. This research aimed to benchmark and advance semi-supervised learning (SSL) as a solution for this data scarcity problem. We organized the 2nd Semi-supervised Teeth Segmentation (STS 2024) Challenge at MICCAI 2024. We provided a large-scale dataset comprising over 90,000 2D images and 3D axial slices, which includes 2,380 OPG images and 330 CBCT scans, all featuring detailed instance-level FDI annotations on part of the data. The challenge attracted 114 (OPG) and 106 (CBCT) registered teams. To ensure algorithmic excellence and full transparency, we rigorously evaluated the valid, open-source submissions from the top 10 (OPG) and top 5 (CBCT) teams,…
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Taxonomy
TopicsDental Radiography and Imaging · Forensic Anthropology and Bioarchaeology Studies · COVID-19 diagnosis using AI
