1 Academy of Scientific & Innovative Research (AcSIR) , Chennai , India.
3 CSIR- Central Scientific Instruments Organisation , Chandigarh , India.
Dentomaxillofac Radiol. 2018 Feb;47(2):20170054. doi: 10.1259/dmfr.20170054. Epub 2018 Jan 3.
To propose an algorithm for automatic localization of 3D cephalometric landmarks on CBCT data, those are useful for both cephalometric and upper airway volumetric analysis. 20 landmarks were targeted for automatic detection, of which 12 landmarks exist on the mid-sagittal plane. Automatic detection of mid-sagittal plane from the volume is a challenging task. Mid-sagittal plane is detected by extraction of statistical parameters of the symmetrical features of the skull. The mid-sagittal plane is partitioned into four quadrants based on the boundary definitions extracted from the human anatomy. Template matching algorithm is applied on the mid-sagittal plane to identify the region of interest ROI, further the edge features are extracted, to form contours in the individual regions. The landmarks are automatically localized by using the extracted knowledge of anatomical definitions of the landmarks. The overall mean error for detection of 20 landmarks was 1.88 mm with a standard deviation of 1.10 mm. The cephalometric land marks on CBCT data were detected automatically with in the mean error less than 2 mm.
提出一种用于在 CBCT 数据上自动定位 3D 头影测量标志点的算法,这对于头影测量和上气道容积分析都很有用。该算法旨在自动检测 20 个标志点,其中 12 个标志点位于正中矢状面。从体积中自动检测正中矢状面是一项具有挑战性的任务。通过提取颅骨对称特征的统计参数来检测正中矢状面。根据从人体解剖学中提取的边界定义,将正中矢状面划分为四个象限。在正中矢状面上应用模板匹配算法来识别感兴趣区域 ROI,然后提取边缘特征,在各个区域形成轮廓。通过使用提取的标志点解剖定义的知识,自动定位标志点。检测 20 个标志点的总体平均误差为 1.88 毫米,标准差为 1.10 毫米。CBCT 数据上的头影测量标志点的检测误差小于 2 毫米。