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Automatic superpixel-based segmentation method for breast ultrasound images

机译:基于超像素的乳房超声图像自动分割方法

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Automatic and accurate breast ultrasound (BUS) image segmentation is crucial to achieve effective ultrasound-based computer aided diagnosis (CAD) systems for breast cancer. However, segmenting the tumor in BUS images is often challenging due to several artifacts that degrade the quality of ultrasound images. In this study, a new two-phase method is proposed to enable automatic and accurate segmentation of BUS images by decomposing the image into superpixels with high boundary recall ratio and employing edge- and region-based information to outline the tumor. The first phase of the method obtains an initial outline of the tumor by decomposing the BUS image into coarse superpixels to enable effective estimation of their tumor likelihoods and employing a customized graph cuts algorithm to segment the superpixels. The segmentation of the superpixels is carried out using edge-based information that quantifies the image contour cue and region-based information that characterizes the texture content of the superpixels. In the second phase, the tumor outline is improved by decomposing the BUS image into fine superpixels that enable high boundary recall ratio and employing the customized graph cuts algorithm to segment the superpixel located around the initial tumor outline. Furthermore, an edge-based active contour model is used to smooth the tumor outline. The performance of the proposed method was evaluated using a database that includes 160 BUS images (86 benign and 74 malignant). The results indicate that the first phase of the proposed method was able to detect the tumor in all BUS images and obtain mean values of the true positive ratio (TPR), false positive ratio (FPR), false negative ratio (FNR), similarity ratio (SIR), Hausdorff error (HE), and mean absolute error (ME) equal to 91.68, 11.16, 8.32, 84.52, 17.59, and 4.67, respectively. In fact, the results obtained by the first phase of the proposed method outperform four existing BUS image segmentation algorithms. Moreover, the second phase of the proposed method was able to improve the tumor outlines of the first phase and achieve mean TPR, FPR, FNR, SIR, HE, and ME values of 96.04, 7.99, 3.96, 91.41, 11.66, and 3.65, respectively. These results suggest the feasibility of employing the proposed method, which enables automatic and accurate tumor segmentation in BUS images, to develop effective CAD systems for breast cancer. (C) 2018 Elsevier Ltd. All rights reserved.
机译:自动准确的乳房超声(BUS)图像分割对于实现有效的基于超声的乳腺癌计算机辅助诊断(CAD)系统至关重要。但是,由于一些伪影会降低超声图像的质量,因此在BUS图像中分割肿瘤通常具有挑战性。在这项研究中,提出了一种新的两阶段方法,该方法通过将BUS图像分解为具有高边界召回率的超像素并使用基于边缘和区域的信息来概述肿瘤,从而实现BUS图像的自动和准确分割。该方法的第一阶段通过将BUS图像分解为粗大的超像素,从而能够有效估计其肿瘤可能性,并采用定制的图割算法来分割超像素,从而获得肿瘤的初始轮廓。超像素的分割使用量化图像轮廓提示的基于边缘的信息和表征超像素的纹理内容的基于区域的信息来进行。在第二阶段,通过将BUS图像分解为能够实现高边界召回率的精细超像素并采用定制的图割算法来分割位于初始肿瘤轮廓周围的超像素,从而改善了肿瘤轮廓。此外,基于边缘的主动轮廓模型用于平滑肿瘤轮廓。使用包含160个BUS图像(86个良性和74个恶性)的数据库评估了所提出方法的性能。结果表明,该方法的第一阶段能够检测所有BUS图像中的肿瘤,并获得真阳性率(TPR),假阳性率(FPR),假阴性率(FNR),相似率的平均值(SIR),Hausdorff误差(HE)和平均绝对误差(ME)分别等于91.68、11.16、8.32、84.52、17.59和4.67。实际上,该方法的第一阶段获得的结果优于四种现有的BUS图像分割算法。此外,该方法的第二阶段能够改善第一阶段的肿瘤轮廓,并实现TPR,FPR,FNR,SIR,HE和ME的平均值为96.04、7.99、3.96、91.41、11.66和3.65,分别。这些结果表明采用所提出的方法的可行性,该方法能够在BUS图像中自动准确地进行肿瘤分割,从而开发出有效的乳腺癌CAD系统。 (C)2018 Elsevier Ltd.保留所有权利。

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