IEEE J Biomed Health Inform. 2022 Apr;26(4):1650-1659. doi: 10.1109/JBHI.2021.3117575. Epub 2022 Apr 14.
The application of Artificial Intelligence in dental healthcare has a very promising role due to the abundance of imagery and non-imagery-based clinical data. Expert analysis of dental radiographs can provide crucial information for clinical diagnosis and treatment. In recent years, Convolutional Neural Networks have achieved the highest accuracy in various benchmarks, including analyzing dental X-ray images to improve clinical care quality. The Tufts Dental Database, a new X-ray panoramic radiography image dataset, has been presented in this paper. This dataset consists of 1000 panoramic dental radiography images with expert labeling of abnormalities and teeth. The classification of radiography images was performed based on five different levels: anatomical location, peripheral characteristics, radiodensity, effects on the surrounding structure, and the abnormality category. This first-of-its-kind multimodal dataset also includes the radiologist's expertise captured in the form of eye-tracking and think-aloud protocol. The contributions of this work are 1) publicly available dataset that can help researchers to incorporate human expertise into AI and achieve more robust and accurate abnormality detection; 2) a benchmark performance analysis for various state-of-the-art systems for dental radiograph image enhancement and image segmentation using deep learning; 3) an in-depth review of various panoramic dental image datasets, along with segmentation and detection systems. The release of this dataset aims to propel the development of AI-powered automated abnormality detection and classification in dental panoramic radiographs, enhance tooth segmentation algorithms, and the ability to distill the radiologist's expertise into AI.
人工智能在牙科医疗保健中的应用具有非常广阔的前景,因为它拥有大量的图像和非图像临床数据。对牙科 X 光片的专家分析可以为临床诊断和治疗提供关键信息。近年来,卷积神经网络在各种基准测试中取得了最高的准确性,包括分析牙科 X 光图像以提高临床护理质量。本文提出了一个新的 X 射线全景牙科射线照相图像数据集,即 Tufts 牙科数据库。该数据集由 1000 张全景牙科射线照相图像组成,具有对异常和牙齿的专家标记。射线照相图像的分类是基于五个不同的级别进行的:解剖位置、外围特征、放射密度、对周围结构的影响以及异常类别。这个首创的多模态数据集还包括放射科医生的专业知识,以眼动追踪和思维大声协议的形式捕获。这项工作的贡献有 1)公开可用的数据集,可以帮助研究人员将人类专业知识纳入人工智能中,并实现更强大、更准确的异常检测;2)使用深度学习对各种最先进的牙科射线照相图像增强和图像分割系统进行基准性能分析;3)对各种全景牙科图像数据集、分割和检测系统进行深入回顾。发布这个数据集的目的是推动人工智能驱动的自动异常检测和分类在牙科全景射线照相中的发展,增强牙齿分割算法,并能够将放射科医生的专业知识提炼到人工智能中。