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Carotid artery image segmentation using modified spatial fuzzy c-means and ensemble clustering

机译:改进空间模糊c-均值和集成聚类的颈动脉图像分割

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摘要

Disease diagnosis based on ultrasound imaging is popular because of its non-invasive nature. However, ultrasound imaging system produces low quality images due to the presence of spackle noise and wave interferences. This shortcoming requires a considerable effort from experts to diagnose a disease from the carotid artery ultrasound images. Image segmentation is one of the techniques, which can help efficiently in diagnosing a disease from the carotid artery ultrasound images. Most of the pixels in an image are highly correlated. Considering the spatial information of surrounding pixels in the process of image segmentation may further improve the results. When data is highly correlated, one pixel may belong to more than one clusters with different degree of membership. In this paper, we present an image segmentation technique namely improved spatial fuzzy c-means and an ensemble clustering approach for carotid artery ultrasound images to identify the presence of plaque. Spatial, wavelets and gray level co-occurrence matrix (GLCM) features are extracted from carotid artery ultrasound images. Redundant and less important features are removed from the features set using genetic search process. Finally, segmentation process is performed on optimal or reduced features. Ensemble clustering with reduced feature set outperforms with respect to segmentation time as well as clustering accuracy. Intima-media thickness (IMT) is measured from the images segmented by the proposed approach. Based on IMT measured values, Multi-Layer Back-Propagation Neural Networks (MLBPNN) is used to classify the images into normal or abnormal. Experimental results show the learning capability of MLBPNN classifier and validate the effectiveness of our proposed technique. The proposed approach of segmentation and classification of carotid artery ultrasound images seems to be very useful for detection of plaque in carotid artery.
机译:基于超声成像的疾病诊断因其无创性而广受欢迎。然而,由于散发噪声和波干扰的存在,超声成像系统产生低质量的图像。该缺点需要专家花费大量精力来根据颈动脉超声图像诊断疾病。图像分割是一种技术,可以有效地帮助从颈动脉超声图像诊断疾病。图像中的大多数像素都是高度相关的。在图像分割过程中考虑周围像素的空间信息可以进一步改善结果。当数据高度相关时,一个像素可能属于具有不同隶属度的一个以上群集。在本文中,我们提出了一种图像分割技术,即改进的空间模糊c均值和颈动脉超声图像的集成聚类方法,以识别斑块的存在。从颈动脉超声图像中提取空间,小波和灰度共生矩阵(GLCM)特征。使用遗传搜索过程从功能集中删除了冗余和次要的功能。最后,对最佳或缩小特征执行分割过程。相对于分割时间和聚类精度而言,具有减少的功能集的整体聚类表现优于。内膜中层厚度(IMT)是根据所提出的方法分割出的图像进行测量的。基于IMT测量值,可以使用多层反向传播神经网络(MLBPNN)将图像分类为正常图像或异常图像。实验结果证明了MLBPNN分类器的学习能力,并验证了所提出技术的有效性。提出的分割和分类颈动脉超声图像的方法似乎对检测颈动脉斑块非常有用。

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