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Semiautomatic Method for Segmenting Pedicles in Vertebral Radiographs

机译:椎体射线照相分段椎弓根的半自动方法

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The top and bottom of the pedicles are used as landmarks for 3D stereo radiographic reconstruction of vertebrae. At present the landmark identification is manual that can cause observer variability which in turn reduces the accuracy of 3D stereo radiographic reconstruction. A semiautomatic method for segmenting pedicles from biplanar (PA and Lateral) vertebral radiographs is proposed here. Mathematical morphology is proposed for enhancement and Gradient Vector Flow (GVF) snake model is proposed for pedicle segmentation. The conventional theoretical concept of image enhancement has been extended to the regime of multiscale mathematical morphology. Structuring element in this method is multiscale. Bright and dark features at various scales of radiographs are extracted using multiscale tophat transformation. These multiscale features are combined to reconstruct the final modified image. Therefore the contrast of radiograph is enhanced locally. GVF snake model is used for segmenting the pedicles from the enhanced radiograph. A comparison is made between the segmented radiographs with and without the morphological enhancement. Results demonstrated that the distance between contours manually delineated by the user and those segmented by the proposed algorithm is far less than the distance resulted from the traditional GVF snake without morphological enhancement. The morphological enhancement produces better segmentation results even with noisy and low contrast radiographs. The proposed method enables the automatic landmark identification from the segmented radiographs which will remove observer variability that in turn increases the 3D reconstruction accuracy. Hence the proposed method might be a useful preprocessing tool for 3D stereo radiographic reconstruction.
机译:椎弓根的顶部和底部用作椎骨3D立体声放射线重建的地标。目前地标识别是可以引起观察者可变性的手动,这反过来降低了3D立体声射线照相重建的准确性。这里提出了一种从生物植物(PA和横向)脊髓射线照片中分段椎弓根的半自动方法。提出了用于增强和梯度向量流(GVF)蛇模型的数学形态学用于椎弓根分割。图像增强的传统理论概念已经扩展到多尺度数学形态的制度。此方法中的结构化元素是多尺度的。使用MultiScale Tophat转换提取各种射线照片的明亮和黑暗的特征。这些多尺度功能组合以重建最终修改的图像。因此,X光片的对比度在本地增强。 GVF Snake模型用于将椎弓根分割,从增强型射线照片分割。在与形态增强的细分射线照相之间进行比较。结果表明,用户手动描绘的轮廓与所提出的算法分段的轮廓之间的距离远远低于传统GVF蛇导致的距离而没有形态增强。即使用嘈杂和低对比度射线照相,形态增强也会产生更好的分割结果。所提出的方法使得能够从分段的射线照相自动界面标识,这将消除观察者可变性,又增加了3D重建精度。因此,所提出的方法可能是用于3D立体声射线照相重建的有用预处理工具。

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