1 Department of Dentistry, The University of Melbourne , Melbourne, VIC , Australia.
2 Facial Sciences , Murdoch Children's Research Institute, VIC , Australia.
Dentomaxillofac Radiol. 2019 Feb;48(2):20180261. doi: 10.1259/dmfr.20180261. Epub 2018 Nov 9.
: To propose a reliable and practical method for automatically segmenting the mandible from CBCT images.
: The marker-based watershed transform is a region-growing approach that dilates or "floods" predefined markers onto a height map whose ridges denote object boundaries. We applied this method to segment the mandible from the rest of the CBCT image. The height map was generated to enhance the sharp decreases of intensity at the mandible/tissue border and suppress noise by computing the intensity gradient image of the CBCT itself. Two sets of markers, "mandible" and "background" were automatically placed inside and outside the mandible, respectively in a novel image using image registration. The watershed transform flooded the gradient image by dilating the markers simultaneously until colliding at watershed lines, estimating the mandible boundary. CBCT images of 20 adolescent subjects were chosen as test cases. Segmentation accuracy of the proposed method was evaluated by measuring overlap (Dice similarity coefficient) and boundary agreement against a well-accepted interactive segmentation method described in the literature.
: The Dice similarity coefficient was 0.97 ± 0.01 (mean ± SD), indicating almost complete overlap between the automatically and the interactively segmented mandibles. Boundary deviations were predominantly under 1 mm for most of the mandibular surfaces. The errors were mostly from bones around partially erupted wisdom teeth, the condyles and the dental enamels, which had minimal impact on the overall morphology of the mandible.
: The marker-based watershed transform method produces segmentation accuracy comparable to the well-accepted interactive segmentation approach.
提出一种可靠实用的方法,用于从 CBCT 图像中自动分割下颌骨。
基于标记的分水岭变换是一种区域增长方法,它将预定义的标记扩展或“淹没”到高度图上,该高度图的脊线表示对象边界。我们将该方法应用于从 CBCT 图像的其余部分中分割下颌骨。通过计算 CBCT 本身的强度梯度图像来增强下颌骨/组织边界处强度的急剧下降并抑制噪声,生成高度图。两组标记,“下颌骨”和“背景”分别在使用图像配准的新图像中自动放置在下颌骨内部和外部。分水岭变换通过同时扩展标记来淹没梯度图像,直到在分水岭线处碰撞,从而估计下颌骨边界。选择了 20 名青少年受试者的 CBCT 图像作为测试病例。通过测量与文献中描述的一种广为接受的交互式分割方法的重叠(Dice 相似系数)和边界一致性来评估所提出方法的分割准确性。
Dice 相似系数为 0.97±0.01(平均值±标准差),表明自动分割和交互分割的下颌骨几乎完全重叠。对于大多数下颌骨表面,边界偏差主要小于 1 毫米。误差主要来自部分萌出的智齿、髁突和牙釉质周围的骨骼,这些骨骼对下颌骨的整体形态影响很小。
基于标记的分水岭变换方法产生的分割准确性可与广为接受的交互式分割方法相媲美。