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Segmentation of tumor regions in microscopic images of breast cancer tissue.

机译:乳腺癌组织显微图像中的肿瘤区域分割。

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摘要

Nowadays, advances in the domain of digital pathology gave the means to replace the old optical microscopes by the Whole Slide Imaging (WSI) scanners. These scanners enable pathologists viewing conventional tissue slides on a computer monitor. Currently, several applications that aim to analyze human tissue are evolving remarkably. Segmentation of tumor regions in microscopic images of breast cancer tissue in one of the application that researchers are investigating extensively. Indeed, researchers are interested in such application not only because breast cancer is one of the pervasive cancers for human beings, but also segmentation is one of the basic and frequent tasks that pathologists have to perform in order to perform tissue analysis.;In this thesis, we addressed the task of segmentation of tumor regions in microscopic images of breast cancer tissue as a machine learning task. We developed different supervised and unsupervised learning frameworks. Our proposed frameworks encompass five steps: (1) pre-processing, (2) feature extraction, (3) feature reduction, (4) supervised and unsupervised learning, and (5) post-processing. We focused on the extraction of textural features, as well as utilization of supervised learning techniques. We investigated individually the MR8Fast, Gabor, and Phase Gradient features, as well as a combination of all these features. We investigated also different classifiers which are Naive Bayes, Artificial Neural Network, and Support Vector Machine, as well as a combination of the supervised learning results.;We conducted different experiments in order to compare the different proposed frameworks. Therefore, we developed different conclusions. The MR8Fast features are the most discriminating features compared to the Gabor and Phase Gradient that come in the second and third place respectively. Furthermore, the Naive Bayes classifier and the combination of classification results, that have been overlooked for the segmentation of tumor regions in microscopic images of breast cancer tissue, achieved better results compared to the Support Vector Machine classifier which has been extensively employed for this task. These promising conclusions promote the need for further work to investigate other textural features as well as other classifiers.
机译:如今,数字病理学领域的进步为通过全玻片成像(WSI)扫描仪代替旧的光学显微镜提供了手段。这些扫描仪使病理学家能够在计算机监视器上查看常规的组织玻片。当前,旨在分析人体组织的几种应用正在显着发展。研究人员正在广泛研究的应用之一是乳腺癌组织显微图像中肿瘤区域的分割。的确,研究人员对这种应用很感兴趣,不仅因为乳腺癌是人类普遍使用的癌症之一,而且分割是病理学家执行组织分析所必须执行的基本且频繁的任务之一。 ,我们解决了在乳腺癌组织的显微图像中分割肿瘤区域的任务,作为机器学习任务。我们开发了不同的有监督和无监督的学习框架。我们提出的框架包括五个步骤:(1)预处理,(2)特征提取,(3)特征缩减,(4)有监督和无监督学习以及(5)后处理。我们专注于纹理特征的提取以及监督学习技术的利用。我们分别研究了MR8Fast,Gabor和Phase Gradient功能,以及所有这些功能的组合。我们还研究了朴素贝叶斯,人工神经网络和支持向量机等不同的分类器,以及监督学习结果的组合。;我们进行了不同的实验,以比较所提出的不同框架。因此,我们得出了不同的结论。与分别排在第二和第三位的Gabor和Phase Gradient相比,MR8Fast功能是最具区别的功能。此外,与乳腺癌组织显微图像中肿瘤区域的分割无关的朴素贝叶斯分类器和分类结果的组合,与广泛用于此任务的支持向量机分类器相比,取得了更好的结果。这些有希望的结论促使人们有必要开展进一步的工作来研究其他纹理特征以及其他分类器。

著录项

  • 作者

    Abid, Dhoha.;

  • 作者单位

    Qatar University (Qatar).;

  • 授予单位 Qatar University (Qatar).;
  • 学科 Medical imaging.;Computer science.;Oncology.;Bioinformatics.
  • 学位 M.S.
  • 年度 2016
  • 页码 63 p.
  • 总页数 63
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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