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Computer-aided detection of breast cancer using ultrasound images.

机译:使用超声图像对乳腺癌进行计算机辅助检测。

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摘要

Ultrasound imaging suffers from severe speckle noise. We propose a novel approach for speckle reduction using 2D homogeneity and directional average filters to remove speckle noise. We transform speckle noise into additive noise using a logarithm transformation. Texture information is employed to describe the speckle characteristics of the image. The homogeneity value is defined using texture information value, and the ultrasound image is transformed into a homogeneity domain from the gray domain. If the homogeneity value is high, the region is homogenous and has less speckle noise. Otherwise, the region is nonhomogenous, and speckle noise occurs. The threshold value is employed to distinguish homogenous regions from regions with speckle noise obtained from a 2D homogeneity histogram according to the maximal entropy principle. A new directional filtering is convoluted to remove noise from pixels in a nonhomogenous region. The filtering processing iterates until the breast ultrasound image is homogenous enough. Experiments show the proposed method improves denoising and edge-preserving capability.;We present a novel enhancement algorithm based on fuzzy logic to enhance the fine details of ultrasound image features, while avoiding noise amplification and over-enhancement. We take into account both the fuzzy nature of an ultrasound and feature regions on images, which are significant in diagnosis. The maximal entropy principle utilizes the gray-level information to map the image into fuzzy domain. Edge and textural information is extracted in fuzzy domain to describe the features of lesions. The contrast ratio is computed and modified by the local information. Finally, the defuzzification operation transforms the enhanced ultrasound images back to the spatial domain. Experimental results confirm a high enhancement performance including fine details of lesions, without over- or under-enhancement.;Identifying object boundaries in ultrasound images is a difficult task. We present a novel automatic segmentation algorithm based on characteristics of breast tissue and eliminating particle swarm optimization (EPSO) clustering analysis, thus transforming the segmentation problem into clustering analysis. Mammary gland characteristics in ultrasound images are utilized, and a step-down threshold technique is employed to locate the mammary gland area. Experimental results demonstrate that the proposed approach increases clustering speed and segments the mass from tissue background with high accuracy.
机译:超声成像遭受严重的斑点噪声。我们提出了一种使用2D均匀性和定向平均滤波器消除斑点噪声的减少斑点的新颖方法。我们使用对数转换将斑点噪声转换为加性噪声。纹理信息用于描述图像的斑点特征。使用纹理信息值定义同质性值,并且将超声图像从灰度域转换为同质性域。如果均一性值高,则该区域是均质的并且斑点噪声较小。否则,该区域不均匀,并且会出现斑点噪声。阈值用于根据最大熵原理从2D均匀度直方图获得的斑点噪声区域中区分均匀区域。对新的定向滤波进行卷积以去除非均匀区域中像素的噪声。重复滤波处理,直到乳房超声图像足够均匀为止。实验表明,该方法提高了去噪和边缘保持能力。我们提出了一种基于模糊逻辑的增强算法,可以增强超声图像特征的精细细节,同时避免了噪声放大和过度增强。我们同时考虑了超声的模糊性质和图像上的特征区域,这对诊断具有重要意义。最大熵原理利用灰度信息将图像映射到模糊域。在模糊域中提取边缘和纹理信息以描述病变的特征。对比度由本地信息计算和修改。最后,去模糊操作将增强后的超声图像转换回空间域。实验结果证实了较高的增强性能,包括病变的精细细节,而又没有过度增强或增强不足。在超声图像中识别对象边界是一项艰巨的任务。我们提出了一种基于乳腺组织特征并消除粒子群优化(EPSO)聚类分析的新颖自动分割算法,从而将分割问题转化为聚类分析。利用超声图像中的乳腺特征,并采用降压阈值技术来定位乳腺区域。实验结果表明,所提出的方法提高了聚类速度,并从组织背景中准确地分割了肿块。

著录项

  • 作者

    Guo, Yanhui.;

  • 作者单位

    Utah State University.;

  • 授予单位 Utah State University.;
  • 学科 Health Sciences Radiology.;Computer Science.
  • 学位 Ph.D.
  • 年度 2010
  • 页码 130 p.
  • 总页数 130
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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