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Hyperspectral optical imaging for detection, diagnosis and staging of cancer.

机译:用于检查,诊断和分期的高光谱光学成像。

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摘要

The American Cancer Society estimates that in 2012 about 577,190 people will die of cancer in the United States (US). It is estimated that in 2012, 1,638, 910 people will be diagnosed with cancer, which remains the second most common cause of death in the US. NIH estimates from 2007 put the overall cost of cancer that year as ;This dissertation contains a step wise progression of in situ -in vivo approaches to various challenges in pathology applications towards a proposed combination of multi-spectral imaging methods and image analysis techniques to create a prototype automated computer-aided system towards the diagnosis of cancer using digitized multispectral slides. The techniques have been applied to many areas from fresh stained and unstained breast tissue to in vivo imaging of lesions suspected to be melanoma. There are several original contributions: first, a quantitative assessment of the utility of various multispectral devices and imagery for segmentation and classification tasks in pathology. Next, tissue level and object level segmentation algorithms are developed for various histological classes along with quantitative metrics. In addition, references of both tissue, spatial, and object level features are extracted to create a comprehensive feature selection framework for classification of objects and images. The tools, algorithms, and methods described are for quantifying molecular changes in light microscope images of cellular structures indicative of cancer or precancerous lesions.;For the cervical and melanoma applications object level features as implemented are versatile and useful to extract important features even from relatively inaccurately segmented images. In addition, the use of non-nuclear features, like features of the cytoplasm and stroma has very good classification performance when compared to commercial devices. The system is in two parts: the segmentation of squamous epithelium and the subsequent diagnosis of CIN. For the segmentation of squamous epithelium, to save processing time, a multi-resolution method is developed to segment cervical virtual slides.;The nuclei segmentation method uses robust texture features in combination with a Support Vector Machine (SVM) to perform classification. Medical histology rules are finally applied to remove misclassifications. In tests using 31 virtual slides, the segmentation achieves an average accuracy of more than 94.25%. Training nuclei are spectrally classified into Normal, CIN I, CIN II and CIN III. The final diagnosis for a slide region is based on combining the classification of nuclei and classical morphologic features. .The robustness of the system in terms of regional diagnosis is measured against slides manually classified by three pathologists. Results indicate that the multispectral imaging system offers a promising basis for a computer-assisted diagnostic tool. Its main limitation is seen to be in the selection of more extensive and more varied training data.
机译:美国癌症协会估计,2012年,美国将有577,190人死于癌症。据估计,到2012年,将有1,638,910人被诊断出患有癌症,这仍然是美国第二大最常见的死亡原因。美国国立卫生研究院从2007年开始估计当年的癌症总成本为;本论文包含了针对病理学应用中各种挑战的原位体内方法的逐步发展,并提出了将多光谱成像方法与图像分析技术结合起来的建议使用数字化多光谱幻灯片对癌症进行诊断的自动化计算机辅助原型系统。该技术已应用于许多领域,从新鲜染色和未染色的乳腺组织到怀疑是黑色素瘤的病变的体内成像。有几个原始的贡献:首先,对各种多光谱设备和图像在病理学中进行分割和分类任务的效用进行定量评估。接下来,针对各种组织学类别以及定量指标,开发了组织级别和对象级别的分割算法。另外,提取组织,空间和对象级别特征的参考,以创建用于对象和图像分类的综合特征选择框架。所描述的工具,算法和方法用于量化表示癌症或癌前病变的细胞结构的光学显微镜图像中的分子变化;对于宫颈和黑色素瘤应用,所实现的对象级特征是通用的,甚至可以从相对的位置提取重要特征分割的图像不正确。此外,与商用设备相比,使用非核特征(如细胞质和基质的特征)具有非常好的分类性能。该系统分为两部分:鳞状上皮的分割和随后的CIN诊断。为了鳞状上皮的分割,为节省处理时间,开发了一种多分辨率方法来分割宫颈虚拟载玻片。核分割方法结合了支持向量机(SVM)结合使用强大的纹理特征进行分类。最终将医学组织学规则应用于消除错误分类。在使用31个虚拟载玻片的测试中,分割实现的平均准确性超过94.25%。训练核在频谱上分为正常,CIN I,CIN II和CIN III。滑动区域的最终诊断是基于结合核的分类和经典形态特征。该系统在区域诊断方面的稳健性是由三位病理学家手动分类的载玻片测量的。结果表明,多光谱成像系统为计算机辅助诊断工具提供了有希望的基础。它的主要局限性在于选择更广泛,更多样化的训练数据。

著录项

  • 作者

    Joseph, Anika Otamu Naomi.;

  • 作者单位

    University of Southern California.;

  • 授予单位 University of Southern California.;
  • 学科 Engineering Biomedical.;Health Sciences Pathology.;Computer Science.;Health Sciences Oncology.
  • 学位 Ph.D.
  • 年度 2012
  • 页码 191 p.
  • 总页数 191
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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