Lee Yeonju, Kwak Min Gu, Chen Rui Qi, Yan Hao, Mupparapu Mel, Lure Fleming, Setzer Frank C, Li Jing
H. Milton Stewart School of Industrial and Systems Engineering, Georgia Institute of Technology, Atlanta, GA 30332, USA.
School of Computing, Informatics, and Decision Systems Engineering, Arizona State University, Tempe, AZ 85281 USA.
IEEE Trans Autom Sci Eng. 2025;22:11205-11218. doi: 10.1109/tase.2025.3530936. Epub 2025 Jan 20.
Cone beam computed tomography (CBCT) is a widely-used imaging modality in dental healthcare. It is an important task to segment each 3D CBCT image, which involves labeling lesions, bone, teeth, and restorative material on a voxel-by-voxel basis, as it aids in lesion detection, diagnosis, and treatment planning. The current clinical practice relies on manual segmentation, which is labor-intensive and demands considerable expertise. Leveraging Artificial Intelligence (AI) to fully automate the segmentation process could tremendously improve the quality and efficiency of dental healthcare. The main hurdle in this advancement is reducing AI's reliance on a large quantity of manually labeled images to train robust, accurate, and generalizable algorithms. To tackle this challenge, we propose a novel Oral-Anatomical Knowledge-informed Semi-Supervised Learning (OAK-SSL) model for 3D CBCT image segmentation and lesion detection. The uniqueness of OAK-SSL is its capability of integrating qualitative oral-anatomical knowledge of plausible lesion locations into the deep learning design. Specifically, the unique design of OAK-SSL Includes three key elements, including transformation of qualitive knowledge into quantitative representation, knowledge-informed dual-task learning architecture, and knowledge-informed semi-supervised loss function. We apply OAK-SSL to a real-world dataset, focusing on segmenting CBCT images that contain small lesions. This task is inherently challenging yet holds significant clinical value as treating lesions at their early stages lead to excellent prognosis. OAK-SSL demonstrated significantly better performance than a range of existing methods.
锥形束计算机断层扫描(CBCT)是牙科保健中广泛使用的成像方式。对每个3D CBCT图像进行分割是一项重要任务,这涉及在逐个体素的基础上标记病变、骨骼、牙齿和修复材料,因为它有助于病变检测、诊断和治疗计划制定。当前的临床实践依赖于手动分割,这既耗费人力,又需要相当多的专业知识。利用人工智能(AI)使分割过程完全自动化可以极大地提高牙科保健的质量和效率。这一进展的主要障碍是减少AI对大量手动标记图像的依赖,以训练强大、准确且可推广的算法。为应对这一挑战,我们提出了一种用于3D CBCT图像分割和病变检测的新型口腔解剖知识引导半监督学习(OAK-SSL)模型。OAK-SSL的独特之处在于其能够将关于可能病变位置的定性口腔解剖知识整合到深度学习设计中。具体而言,OAK-SSL的独特设计包括三个关键要素,即将定性知识转化为定量表示、知识引导的双任务学习架构以及知识引导的半监督损失函数。我们将OAK-SSL应用于一个真实世界的数据集,重点是分割包含小病变的CBCT图像。这项任务本身具有挑战性,但具有重要的临床价值,因为在病变早期进行治疗可带来良好的预后。OAK-SSL的表现明显优于一系列现有方法。