首页> 外文会议>Medical Image Computing and Computer-Assisted Intervention - MICCAI 2006 pt.2; Lecture Notes in Computer Science; 4191 >Prostate Segmentation in 2D Ultrasound Images Using Image Warping and Ellipse Fitting
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Prostate Segmentation in 2D Ultrasound Images Using Image Warping and Ellipse Fitting

机译:使用图像扭曲和椭圆拟合在二维超声图像中进行前列腺分割

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This paper presents a new algorithm for the semi-automatic segmentation of the prostate from B-mode trans-rectal ultrasound (TRUS) images. The segmentation algorithm first uses image warping to make the prostate shape elliptical. Measurement points along the prostate boundary, obtained from an edge-detector, are then used to find the best elliptical fit to the warped prostate. The final segmentation result is obtained by applying a reverse warping algorithm to the elliptical fit. This algorithm was validated using manual segmentation by an expert observer on 17 midgland, pre-operative, TRUS images. Distance-based metrics between the manual and semi-automatic contours showed a mean absolute difference of 0.67 ± 0.18mm, which is significantly lower than inter-observer variability. Area-based metrics showed an average sensitivity greater than 97% and average accuracy greater than 93%. The proposed algorithm was almost two times faster than manual segmentation and has potential for real-time applications.
机译:本文提出了一种新的从B型经直肠超声(TRUS)图像进行前列腺半自动分割的算法。分割算法首先使用图像变形使前列腺形状为椭圆形。从边缘检测器获得的沿前列腺边界的测量点,然后用于找到与变形的前列腺的最佳椭圆拟合。最终的分割结果是通过对椭圆拟合应用反向翘曲算法获得的。通过专家观察员对17例中部腺,术前TRUS图像进行的手动分割,验证了该算法。手动轮廓线和半自动轮廓线之间的基于距离的量度显示出0.67±0.18mm的平均绝对差,该平均值明显低于观察者间的差异。基于区域的指标显示平均灵敏度大于97%,平均精度大于93%。提出的算法几乎比手动分割快两倍,并且具有实时应用的潜力。

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