Chiu Bernard, Freeman George H, Salama M M A, Fenster Aaron
Department of Electrical and Computer Engineering, University of Waterloo, Waterloo, Ontario, N2L 3G1, Canada.
Phys Med Biol. 2004 Nov 7;49(21):4943-60. doi: 10.1088/0031-9155/49/21/007.
Knowing the location and the volume of the prostate is important for ultrasound-guided prostate brachytherapy, a commonly used prostate cancer treatment method. The prostate boundary must be segmented before a dose plan can be obtained. However, manual segmentation is arduous and time consuming. This paper introduces a semi-automatic segmentation algorithm based on the dyadic wavelet transform (DWT) and the discrete dynamic contour (DDC). A spline interpolation method is used to determine the initial contour based on four user-defined initial points. The DDC model then refines the initial contour based on the approximate coefficients and the wavelet coefficients generated using the DWT. The DDC model is executed under two settings. The coefficients used in these two settings are derived using smoothing functions with different sizes. A selection rule is used to choose the best contour based on the contours produced in these two settings. The accuracy of the final contour produced by the proposed algorithm is evaluated by comparing it with the manual contour outlined by an expert observer. A total of 114 2D TRUS images taken for six different patients scheduled for brachytherapy were segmented using the proposed algorithm. The average difference between the contour segmented using the proposed algorithm and the manually outlined contour is less than 3 pixels.
了解前列腺的位置和体积对于超声引导下的前列腺近距离放射治疗(一种常用的前列腺癌治疗方法)很重要。在获得剂量计划之前,必须对前列腺边界进行分割。然而,手动分割既费力又耗时。本文介绍了一种基于二进小波变换(DWT)和离散动态轮廓(DDC)的半自动分割算法。使用样条插值方法基于四个用户定义的初始点确定初始轮廓。然后,DDC模型根据使用DWT生成的近似系数和小波系数对初始轮廓进行细化。DDC模型在两种设置下执行。这两种设置中使用的系数是通过使用不同大小的平滑函数得出的。使用选择规则根据在这两种设置下产生的轮廓选择最佳轮廓。通过将所提出算法产生的最终轮廓与专家观察者勾勒的手动轮廓进行比较,评估所提出算法产生的最终轮廓的准确性。使用所提出的算法对为六名计划进行近距离放射治疗的不同患者拍摄的总共114张二维超声图像进行了分割。使用所提出的算法分割的轮廓与手动勾勒的轮廓之间的平均差异小于3个像素。