Yu Yongjian, Molloy Janelle A, Acton Scott T
Department of Radiation Oncology, University of Virginia, Charlottesville, Virginia 22903, USA.
Med Phys. 2004 Dec;31(12):3474-84. doi: 10.1118/1.1809791.
We present a technique for semiautomated segmentation of human prostates using suprapubic ultrasound (US) images. In this approach, a speckle reducing anisotropic diffusion (SRAD) is applied to enhance the images and the instantaneous coefficient of variation (ICOV) is utilized for edge detection. Segmentation is accomplished via a parametric active contour model in a polar coordinate system that is tailored to the application. The algorithm initially approximates the prostate boundary in two stages. First a primary contour is detected using an elliptical model, followed by a primary contour optimization using an area-weighted mean-difference binary flow geometric snake model. The algorithm was assessed by comparing the computer-derived contours with contours produced manually by three sonographers. The proposed method has application in radiation therapy planning and delivery, as well as in automated volume measurements for ultrasonic diagnosis. The average root mean square discrepancy between computed and manual outlines is less than the inter-observer variability. Furthermore, 76% of the computer-outlined contour is less than 1 sigma manual outline variance away from "true" boundary of prostate. We conclude that the methods developed herein possess acceptable agreement with manually contoured prostate boundaries and that they are potentially valuable tools for radiotherapy treatment planning and verification.
我们提出了一种使用耻骨上超声(US)图像对人类前列腺进行半自动分割的技术。在这种方法中,应用了散斑减少各向异性扩散(SRAD)来增强图像,并利用瞬时变异系数(ICOV)进行边缘检测。分割是通过在极坐标系中定制的参数活动轮廓模型来完成的,该模型适用于该应用。该算法最初分两个阶段近似前列腺边界。首先,使用椭圆模型检测初级轮廓,然后使用面积加权平均差二进制流几何蛇模型对初级轮廓进行优化。通过将计算机生成的轮廓与三位超声检查人员手动绘制的轮廓进行比较,对该算法进行了评估。所提出的方法可应用于放射治疗计划和实施,以及超声诊断中的自动体积测量。计算轮廓与手动轮廓之间的平均均方根差异小于观察者间的变异性。此外,76%的计算机勾勒轮廓与前列腺“真实”边界的偏差小于1个标准差的手动轮廓方差。我们得出结论,本文开发的方法与手动勾勒的前列腺边界具有可接受的一致性,并且它们是放射治疗计划和验证的潜在有价值工具。