首页> 外文OA文献 >Image Enhancement of Cancerous Tissue in Mammography Images
【2h】

Image Enhancement of Cancerous Tissue in Mammography Images

机译:乳腺X射线摄影图像中癌组织的图像增强

代理获取
本网站仅为用户提供外文OA文献查询和代理获取服务,本网站没有原文。下单后我们将采用程序或人工为您竭诚获取高质量的原文,但由于OA文献来源多样且变更频繁,仍可能出现获取不到、文献不完整或与标题不符等情况,如果获取不到我们将提供退款服务。请知悉。

摘要

This research presents a framework for enhancing and analyzing time-sequenced mammographic images for detection of cancerous tissue, specifically designed to assist radiologists and physicians with the detection of breast cancer. By using computer aided diagnosis (CAD) systems as a tool to help in the detection of breast cancer in computed tomography (CT) mammography images, previous CT mammography images will enhance the interpretation of the next series of images. The first stage of this dissertation applies image subtraction to images from the same patient over time. Image types are defined as temporal subtraction, dual-energy subtraction, and Digital Database for Screening Mammography (DDSM). Image enhancement begins by applying image registration and subtraction using Matlab 2012a registration for temporal images and dual-energy subtraction for dual-energy images. DDSM images require no registration or subtraction as they are used for baseline analysis. The image data are from three different sources and all images had been annotated by radiologists for each image type using an image mask to identify malignant and benign.The second stage involved the examination of four different thresholding techniques. The amplitude thresholding method manipulates objects and backgrounds in such a way that object and background pixels have grey levels grouped into two dominant and different modes. In these cases, it was possible to extract the objects from the background using a threshold that separates the modes. The local thresholding introduced posed no restrictions on region shape or size, because it maximized edge features by thresholding local regions separately. The overall histogram analysis showed minima and maxima of the image and provided four feature types--mean, variance, skewness, and kurtosis. K-means clustering provided sequential splitting, initially performing dynamic splits. These dynamic splits were then further split into smaller, more variant regions until the regions of interest were isolated. Regional-growing methods used recursive splitting to partition the image top-down by using the average brightness of a region. Each thresholding method was applied to each of the three image types.In the final stage, the training set and test set were derived by applying the four thresholding methods on each of the three image types. This was accomplished by running Matlab 2012a grey-level, co-occurrence matrix (GLCM) and utilizing 21 target feature types, which were obtained from the Matlab function texture features. An additional four feature types were obtained from the state of the histogram-based features types. These 25 feature types were applied to each of the two classifications malignant and benign. WEKA 3.6.10 was used along with classifier J48 and cross-validation 10 fold to find the precision, recall, and f-measure values. Best results were obtained from these two combinations: temporal subtraction with amplitude thresholding, and temporal subtraction with regional-growing thresholding. To summarize, the researcheru27s contribution was to assess the effectiveness of various thresholding methods in the context of a three-stage approach, to help radiologists find cancerous tissue lesions in CT and MRI mammography images.
机译:这项研究提出了一个用于增强和分析按时间顺序排列的乳房X射线照片以检测癌组织的框架,该框架专门设计用于协助放射科医生和医师检测乳腺癌。通过使用计算机辅助诊断(CAD)系统作为帮助在计算机断层扫描(CT)乳腺X线摄影图像中检测乳腺癌的工具,以前的CT乳腺X射线摄影图像将增强对下一系列图像的解释。本文的第一阶段是对同一位患者的图像进行时间相减。图像类型定义为时间减影,双能减影和乳腺X线筛查数字数据库(DDSM)。图像增强首先通过使用Matlab 2012a配准对时间图像进行图像配准和减法,对双能图像应用双能减法开始。 DDSM图像用于基线分析时不需要注册或减法。图像数据来自三个不同的来源,并且放射科医生针对每种图像类型使用图像掩模对所有图像进行了注释,以识别恶性和良性。第二阶段涉及对四种不同阈值技术的研究。幅度阈值方法以这样的方式操纵对象和背景,即对象和背景像素的灰度级分为两种主要模式和不同模式。在这些情况下,可以使用分隔模式的阈值从背景提取对象。引入的局部阈值化对区域形状或大小没有任何限制,因为它通过分别对局部区域进行阈值化来最大化边缘特征。整体直方图分析显示了图像的最小值和最大值,并提供了四种特征类型-均值,方差,偏度和峰度。 K-均值聚类提供了顺序拆分,最初执行动态拆分。然后将这些动态拆分进一步拆分为更小,更多变异的区域,直到分离出感兴趣的区域。区域增长方法使用递归拆分,通过使用区域的平均亮度从上到下划分图像。每种阈值方法都适用于这三种图像类型中的每一种。最后阶段,通过对三种图像类型中的每一种应用四种阈值方法来得出训练集和测试集。这是通过运行Matlab 2012a灰度共现矩阵(GLCM)并利用从Matlab函数纹理特征获得的21种目标特征类型来实现的。从基于直方图的要素类型的状态中获得了另外四个要素类型。将这25种特征类型应用于恶性和良性两个分类。 WEKA 3.6.10与分类器J48和交叉验证10倍一起使用,以找到精度,查全率和f度量值。从这两种组合获得了最佳结果:带幅度阈值的时间减法和带区域增长阈值的时间减法。总而言之,研究人员的贡献是在三阶段方法的背景下评估各种阈值方法的有效性,以帮助放射线医师在CT和MRI乳腺X线照片中发现癌性组织病变。

著录项

  • 作者

    Richardson Richard Thomas;

  • 作者单位
  • 年度 2015
  • 总页数
  • 原文格式 PDF
  • 正文语种
  • 中图分类

相似文献

  • 外文文献
  • 中文文献
  • 专利

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号