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NEW FULLY AUTOMATED METHOD FOR SEGMENTATION OF BREAST LESIONS ON ULTRASOUND BASED ON TEXTURE ANALYSIS

机译:基于纹理分析的超声乳腺全段自动分割新方法

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The study described here explored a fully automatic segmentation approach based on texture analysis for breast lesions on ultrasound images. The proposed method involves two main stages: (i) In lesion region detection, the original gray-scale image is transformed into a texture domain based on log-Gabor filters. Local texture patterns are then extracted from overlapping lattices that are further classified by a linear discriminant analysis classifier to distinguish between the "normal tissue" and "breast lesion" classes. Next, an incremental method based on the average radial derivative function reveals the region with the highest probability of being a lesion. (ii) In lesion delineation, using the detected region and the pre-processed ultrasound image, an iterative thresholding procedure based on the average radial derivative function is performed to determine the final lesion contour. The experiments are carried out on a data set of 544 breast ultrasound images (including cysts, benign solid masses and malignant lesions) acquired with three distinct ultrasound machines. In terms of the area under the receiver operating characteristic curve, the one-way analysis of variance test (alpha = 0.05) indicates that the proposed approach significantly outperforms two published fully automatic methods (p<0.001), for which the areas under the curve are 0.91, 0.82 and 0.63, respectively. Hence, these results suggest that the log-Gabor domain improves the discrimination power of texture features to accurately segment breast lesions. In addition, the proposed approach can potentially be used for automated computer diagnosis purposes to assist physicians in detection and classification of breast masses. (E-mail: wgomez@tamps.cimestav.mx) (C) 2016 World Federation for Ultrasound in Medicine & Biology.
机译:这里描述的研究探索了一种基于纹理分析的全自动分割方法,用于超声图像上的乳腺病变。所提出的方法涉及两个主要阶段:(i)在病变区域检测中,基于对数Gabor滤波器将原始灰度图像转换为纹理域。然后从重叠的格子中提取局部纹理图案,这些重叠的格子通过线性判别分析分类器进一步分类,以区分“正常组织”和“乳腺病变”类别。接下来,基于平均径向导数函数的增量方法揭示了最有可能成为病变的区域。 (ii)在病变描绘中,使用检测到的区域和预处理的超声图像,执行基于平均径向导数函数的迭代阈值确定过程,以确定最终病变轮廓。实验是在由三台不同的超声仪采集的544幅乳房超声图像(包括囊肿,良性固体肿块和恶性病变)的数据集上进行的。就接收器工作特性曲线下的面积而言,方差测试的单向分析(alpha = 0.05)表明,所提出的方法明显优于两种已发表的全自动方法(p <0.001),曲线下的面积分别为0.91、0.82和0.63。因此,这些结果表明,log-Gabor域提高了纹理特征的辨别能力,可以准确地分割乳腺病变。另外,所提出的方法可以潜在地用于自动计算机诊断目的,以协助医生检测和分类乳腺肿块。 (电子邮件:wgomez@tamps.cimestav.mx)(C)2016年世界医学和生物学超声联合会。

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