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Computerized cancer malignancy grading of fine needle aspirates .

机译:细针吸出物的电脑恶性肿瘤分级。

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摘要

According to the World Health Organization, breast cancer is a leading cause of death among middle-aged women. Precise diagnosis and correct treatment significantly reduces the high number of deaths caused by breast cancer. Being successful in the treatment strictly relies on the diagnosis. Specifically, the accuracy of the diagnosis and the stage at which a cancer was diagnosed. Precise and early diagnosis has a major impact on the survival rate, which indicates how many patients will live after the treatment.;To achieve precise malignancy estimation, a classification framework is presented. This framework is able to classify breast cancer malignancy into two malignancy classes and is based on features calculated according to the Bloom-Richardson grading scheme. This scheme is commonly used by pathologists when grading breast cancer tissue. In Bloom-Richardson scheme two types of features are assessed depending on the magnification. Low magnification images are used for examining the dispersion of the cells in the image while the high magnification images are used for precise analysis of the cells' nuclear features. In this thesis, different types of segmentation algorithms were compared to estimate the algorithm that allows for relatively fast and accurate nuclear segmentation. Based on that segmentation a set of 34 features was extracted for further malignancy classification. For classification purposes 6 different classifiers were compared. From all of the tests a set of the best preforming features were chosen.;The presented system is able to classify images of fine needle aspiration biopsy slides with high accuracy.;For many years researchers in medical and computer science fields have been working together to find the approach for precise diagnosis. For this thesis, precise diagnosis means finding a cancer at as early a stage as possible by developing new computer aided diagnostic tools. These tools differ depending on the type of cancer and the type of the examination that is used for diagnosis. This work concentrates on cytological images of breast cancer that are produced during fine needle aspiration biopsy examination. This kind of examination allows pathologists to estimate the malignancy of the cancer with very high accuracy. Malignancy estimation is very important when assessing a patients survival rate and the type of treatment.
机译:根据世界卫生组织,乳腺癌是中年妇女死亡的主要原因。准确的诊断和正确的治疗方法可大大减少因乳腺癌引起的大量死亡。治疗成功完全取决于诊断。具体而言,诊断的准确性和诊断出癌症的阶段。准确和早期诊断对生存率有重要影响,这表明治疗后将有多少患者存活。为了获得精确的恶性肿瘤估计,提出了一个分类框架。该框架能够将乳腺癌恶性肿瘤分为两个恶性类别,并且基于根据Bloom-Richardson分级方案计算的特征。乳腺癌组织分级时,病理学家通常使用此方案。在Bloom-Richardson方案中,根据放大倍数评估了两种类型的特征。低倍率图像用于检查图像中细胞的分散性,而高倍率图像用于精确分析细胞的核特征。在本文中,比较了不同类型的分割算法,以评估允许相对快速和准确地进行核分割的算法。基于该分割,提取了一组34个特征用于进一步的恶性分类。为了分类,比较了6个不同的分类器。从所有测试中,选择了一组最佳的预成型特征。所展示的系统能够对高精度的细针穿刺活检玻片进行图像分类。多年来,医学和计算机科学领域的研究人员一直在努力找到精确诊断的方法。对于本论文而言,精确诊断意味着通过开发新的计算机辅助诊断工具来尽早发现癌症。这些工具因癌症类型和用于诊断的检查类型而异。这项工作集中于细针穿刺活检检查过程中产生的乳腺癌细胞学图像。这种检查使病理学家能够以非常高的准确性估算癌症的恶性程度。在评估患者生存率和治疗类型时,恶性评估非常重要。

著录项

  • 作者

    Jelen, Lukasz.;

  • 作者单位

    Concordia University (Canada).;

  • 授予单位 Concordia University (Canada).;
  • 学科 Computer Science.
  • 学位 Ph.D.
  • 年度 2009
  • 页码 171 p.
  • 总页数 171
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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