首页> 外文会议>Medical Image Computing and Computer-Assisted Intervention - MICCAI 2006 pt.1; Lecture Notes in Computer Science; 4190 >Automatic Segmentation of Jaw Tissues in CT Using Active Appearance Models and Semi-automatic Landmarking
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Automatic Segmentation of Jaw Tissues in CT Using Active Appearance Models and Semi-automatic Landmarking

机译:使用主动外观模型和半自动地标术对CT颌骨组织进行自动分割

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Preoperative planning systems are commonly used for oral implant surgery. One of the objectives is to determine if the quantity and quality of bone is sufficient to sustain an implant while avoiding critical anatomic structures. We aim to automate the segmentation of jaw tissues on CT images: cortical bone, trabecular core and especially the mandibular canal containing the dental nerve. This nerve must be avoided during implant surgery to prevent lip numbness. Previous work in this field used thresholds or filters and needed manual initialization. An automated system based on the use of Active Appearance Models (AAMs) is proposed. Our contribution is a completely automated segmentation of tissues and a semi-automatic landmarking process necessary to create the AAM model. The AAM is trained using 215 images and tested with a leave-4-out scheme. Results obtained show an initialization error of 3.25% and a mean error of 1.63mm for the cortical bone, 2.90mm for the trabecular core, 4.76mm for the mandibulax canal and 3.40mm for the dental nerve.
机译:术前计划系统通常用于口腔种植手术。目标之一是确定骨骼的数量和质量是否足以维持植入物,同时避免关键的解剖结构。我们的目标是在CT图像上自动分割颌骨组织:皮质骨,小梁核心,尤其是包含牙神经的下颌管。在植入手术期间必须避免这种神经,以防止嘴唇麻木。该领域以前的工作使用阈值或过滤器,并且需要手动初始化。提出了一种基于主动外观模型(AAM)的自动化系统。我们的贡献是组织的全自动分割和创建AAM模型所必需的半自动标记过程。使用215张图像对AAM进行训练,并采用“淘汰4”方案进行测试。获得的结果显示,皮质骨的初始误差为3.25%,小梁核心的平均误差为1.63mm,小梁骨的平均误差为2.90mm,下颌管的平均误差为4.76mm,而牙神经的平均误差为3.40mm。

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