Department of Electrical Engineering, Research and Advanced Studies Center of the National Polytechnic Institute, Mexico, Distrito Federal 07360, Mexico.
Med Phys. 2010 Jan;37(1):82-95. doi: 10.1118/1.3265959.
This paper presents a computerized segmentation method for breast lesions on ultrasound (US) images.
It consists of first applying a contrast-enhanced approach, i.e., a contrast-limited adaptive histogram equalization. Then, aiming at removing speckle and enhancing the lesion boundary, an anisotropic diffusion filter, guided by texture descriptors derived from a set of Gabor filters, is applied. To eliminate the distant pixels that do not belong to the tumor, the resulting filtered image is multiplied by a constraint Gaussian function. By doing so, both the segmentation and the marker functions are generated and could be used in the marker-controlled watershed transformation algorithm to create potential lesion boundaries. Finally, to determine the lesion contour, the average radial derivative function is evaluated. The proposed method was tested with 50 breast US images and 60 simulated "ultrasound-like" images. Accuracy and precision of the segmentation method were then assessed. For the accuracy, three parameters were used: Overlap ratio (OR), normalized residual value (nrv), and proportional distance (PD) between contours.
The average results for US images were OR = 0.86 +/- 0.05, nrv = 0.16 +/- 0.06, and PD = 6.58 +/- 2.52%. For simulated ultrasound-like images, a better performance (OR = 0.92 +/- 0.01, nrv = 0.08 +/- 0.01, and PD = 3.20 +/- 0.53%) was achieved.
The segmentation method proposed was capable of delineating the lesion contours with high accuracy in comparison to both the radiologists' delineations and the true delineations of simulated images. Moreover, this method was also found to be robust to human-dependent parameters variations.
本研究提出了一种用于超声(US)图像中乳腺病变的计算机分割方法。
该方法首先应用对比度增强方法,即对比度限制的自适应直方图均衡化。然后,为了去除斑点并增强病变边界,应用了一种各向异性扩散滤波器,该滤波器由一组 Gabor 滤波器得到的纹理描述符引导。为了消除不属于肿瘤的远处像素,对滤波后的图像进行乘法运算,乘以约束高斯函数。通过这种方式,生成分割和标记函数,并可用于标记控制分水岭变换算法,以创建潜在的病变边界。最后,通过评估平均径向导数函数来确定病变轮廓。该方法在 50 张乳腺 US 图像和 60 张模拟“超声样”图像上进行了测试。然后评估了分割方法的准确性和精度。对于准确性,使用了三个参数:重叠比(OR)、归一化残差(nrv)和轮廓之间的比例距离(PD)。
US 图像的平均结果为 OR = 0.86 +/- 0.05,nrv = 0.16 +/- 0.06,PD = 6.58 +/- 2.52%。对于模拟的超声样图像,获得了更好的性能(OR = 0.92 +/- 0.01,nrv = 0.08 +/- 0.01,PD = 3.20 +/- 0.53%)。
与放射科医生的勾画和模拟图像的真实勾画相比,所提出的分割方法能够非常准确地描绘病变轮廓。此外,该方法还被发现对依赖于人的参数变化具有鲁棒性。