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Towards prevention and early diagnosis of skin cancer: Computer-aided analysis of dermoscopy images.

机译:致力于皮肤癌的预防和早期诊断:皮肤镜检查图像的计算机辅助分析。

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摘要

Melanoma, the deadliest form of skin cancer, must be diagnosed early for effective treatment. Irregular pigment network and streaks are important clues for melanoma diagnosis using dermoscopy images. This thesis describes novel image processing approaches for computer-aided pigment network and streaks detection on dermoscopy images. Our methods provide meaningful visualization of these structures, and extract features for irregularity detection. Additionally we present our efforts towards prevention of melanoma, by developing a smartphone app, UV-Canada, to raise awareness of the importance of using sunscreen to prevent melanoma.;To locate pigment networks, after preprocessing steps, which include segmenting the lesion from the normal skin in the dermoscopy image, we use a graph-based approach to extract the holes and meshes of the pigment network, where cyclic subgraphs correspond to skin texture structures. Each correctly extracted subgraph has a node corresponding to a hole in the pigment network, and the image is classified according to the density ratio of the graph. Our results over a set of 500 dermoscopy images show an accuracy of 94.3% on classification of the images as pigment network Present or Absent. For analyzing the irregularity of the structure, we locate the network lines and define features inspired by the clinical definition to classify the network with an accuracy of 82% discriminating between Absent, Typical or Atypical, which is important for melanoma diagnosis.;To find streaks in dermoscopy images, filters are applied, and in a similar fashion to fingerprint analysis, orientation estimation and correction is performed to detect low contrast and fuzzy streak lines. A graph representation is used to analyze the geometric pattern of valid streaks, to model their distribution and coverage. We achieved an accuracy of 77% for classifying dermoscopy images into streaks Absent, Regular, or Irregular on 945 images; the largest validation dataset published to date.;Our contributions will improve automated diagnosis of melanoma using dermoscopy images.;Keywords: Computer Aided Diagnosis (CAD); Dermoscopy; Melanoma; Pigment Network; Streaks; Skin Cancer Prevention.
机译:黑色素瘤是最致命的皮肤癌形式,必须及早诊断以进行有效治疗。不规则的色素网络和条纹是使用皮肤镜检查图像诊断黑色素瘤的重要线索。本文介绍了一种新型的计算机辅助色素网络图像处理方法以及在皮肤镜图像上进行条纹检测的方法。我们的方法提供了这些结构的有意义的可视化,并提取了用于不规则检测的特征。此外,我们还通过开发智能手机应用程序UV-Canada来致力于预防黑色素瘤,以提高人们对使用防晒霜预防黑色素瘤的重要性的认识。;在预处理步骤后查找色素网,包括从皮肤中分离病变。皮肤镜检查图像中的正常皮肤,我们使用基于图的方法来提取色素网络的孔和网格,其中循环子图对应于皮肤纹理结构。每个正确提取的子图都有一个对应于颜料网络中孔的节点,并且根据图的密度比对图像进行分类。我们对一组500幅皮肤镜检查图像的结果显示,将图像分类为“存在”或“不存在”的颜料网络,其准确度为94.3%。为了分析结构的不规则性,我们找到了网络线并定义了受临床定义启发的特征以对网络进行分类,以82%的准确度区分了缺失,典型或非典型,这对于黑色素瘤的诊断很重要。在皮肤镜检查图像中,应用滤镜,并且以类似于指纹分析的方式,执行方向估计和校正以检测低对比度和模糊条纹。图形表示法用于分析有效条纹的几何图案,以模拟其分布和覆盖范围。我们将945幅图像上的皮肤镜检查图像分类为不存在,规则或不规则的条纹的准确性达到77%; ;最大的验证数据集。迄今为止,我们的贡献将是使用皮肤镜检查图像改善黑色素瘤的自动化诊断。皮肤镜检查黑色素瘤颜料网络;条纹;预防皮肤癌。

著录项

  • 作者

    Sadeghi, Maryam.;

  • 作者单位

    Simon Fraser University (Canada).;

  • 授予单位 Simon Fraser University (Canada).;
  • 学科 Computer Science.;Health Sciences Radiology.;Health Sciences Oncology.
  • 学位 Ph.D.
  • 年度 2012
  • 页码 120 p.
  • 总页数 120
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 能源与动力工程;
  • 关键词

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