Accurate tooth volume segmentation is a prerequisite for computer-aided dental analysis. Deep learning-based tooth segmentation methods have achieved satisfying performances but require a large quantity of tooth data with ground truth. The dental data publicly available is limited meaning the existing methods can not be reproduced, evaluated and applied in clinical practice. In this paper, we establish a 3D dental CBCT dataset CTooth+, with 22 fully annotated volumes and 146 unlabeled volumes. We further evaluate several state-of-the-art tooth volume segmentation strategies based on fully-supervised learning, semi-supervised learning and active learning, and define the performance principles. This work provides a new benchmark for the tooth volume segmentation task, and the experiment can serve as the baseline for future AI-based dental imaging research and clinical application development.
翻译:深入的以学习为基础的牙分解方法取得了令人满意的业绩,但需要大量具有实地真实性的牙齿数据; 公开提供的牙科数据有限,意味着现有方法不能在临床实践中复制、评价和适用; 在本文件中,我们建立了一个3D牙科CBCT数据集CToth+, 配有22卷全注,146卷无标签; 我们还根据完全监督下的学习、半监督的学习和积极学习,进一步评价若干最先进的牙分解战略,并界定了业绩原则; 这项工作为牙齿分解工作提供了新的基准, 实验可以作为今后AI基牙科成像研究和临床应用开发的基准。