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Development of Segmentation Variability Maps to Improve Brain Tumor Quantitative Assessment Using Multimodal Magnetic Resonance Imaging

机译:使用多峰磁共振成像技术开发可改善脑肿瘤定量评估的分割变异图

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摘要

Glioblastoma multiforme (GBM) is the most common type of primary brain tumor, characterized by a short survival period after diagnosis. As with most other cancers, treatment and follow-up decisions are made largely based on observed changes in tumor size and appearance during imaging studies.;The quantification of tumor measurements is problematic due to the systematic variability introduced while attempting to quantify tumor characteristics in uncertain regions. This issue is primarily observed around the tumor boundary, where it is often hard to differentiate whether a given region is part of the tumor (e.g., active, necrotic, edema, etc.) or part of normal brain tissue (e.g., grey matter, white matter). This problem has significant implications because this uncertainty can affect ensuing quantitative/computational analyses. Current approaches for the segmentation of glioblastoma multiforme still face multiple challenges, often failing to consistently identify the tumor region so as to be clinically useful and reliable; moreover, these different techniques tend to produce results that differ significantly from each other (i.e., measurement variability).;To address these problems, this dissertation describes a framework to help characterize factors that influence variability in brain tumor boundaries and to optimize their performance through methods that calculate an estimate of expected variability arising from different automated segmentation approaches, setting the bases for the development of better knowledge-based methods. Additionally, a novel automated method was developed to generate more robust brain tumor segmentations by taking into consideration the inherent variability of brain tumors and statistical priors that provide context-relevant information about the different brain and tumor tissues.;Altogether, this dissertation project provides further understanding of the sources of variability that arise in GBM across different image analysis methodologies and the integration of these insights into the development of tumor variability maps that can provide a better characterization of tumors.
机译:多形胶质母细胞瘤(GBM)是最常见的原发性脑肿瘤类型,其特征在于诊断后生存期短。与大多数其他癌症一样,治疗和后续决策主要是基于影像学研究期间观察到的肿瘤大小和外观变化来做出的;由于试图在不确定的情况下量化肿瘤特征时引入了系统可变性,因此量化肿瘤测量结果存在问题地区。这个问题主要在肿瘤边界周围观察到,通常很难区分给定区域是肿瘤的一部分(例如活动,坏死,水肿等)还是正常脑组织的一部分(例如灰质,白质)。该问题具有重大意义,因为这种不确定性会影响随后的定量/计算分析。目前用于分割胶质母细胞瘤的方法仍然面临多重挑战,通常无法始终如一地识别肿瘤区域,从而在临床上有用且可靠。此外,这些不同的技术往往会产生彼此显着不同的结果(即测量变异性)。为了解决这些问题,本文描述了一个框架,该框架可帮助表征影响脑肿瘤边界变异性的因素并通过以下方法优化其性能计算因不同的自动分割方法而产生的预期变异性估计值的方法,为开发更好的基于知识的方法奠定了基础。此外,通过考虑脑肿瘤的固有变异性和统计先验,开发了一种新颖的自动化方法来生成更健壮的脑肿瘤分割,这些统计先验可提供有关不同脑和肿瘤组织的上下文相关信息。了解GBM跨不同图像分析方法产生的变异性来源,并将这些见解整合到肿瘤变异性图的开发中,从而可以更好地表征肿瘤。

著录项

  • 作者

    Rios Piedra, Edgar Anselmo.;

  • 作者单位

    University of California, Los Angeles.;

  • 授予单位 University of California, Los Angeles.;
  • 学科 Medical imaging.;Computer science.;Biomedical engineering.
  • 学位 D.Env.
  • 年度 2018
  • 页码 215 p.
  • 总页数 215
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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