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Medical image segmentation and diffusion weighted magnetic resonance image analysis.

机译:医学图像分割和扩散加权磁共振图像分析。

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摘要

Medical image segmentation plays an important role in diagnosis, surgical planning, navigation, and various medical evaluations. Medical images are frequently corrupted by high levels of noise, signal dropout and poor contrast along boundaries. Sometimes, their intensity might have multi-modal distribution. In this dissertation, I will present one method to segment images that are corrupted by noise and some dropout. In the model presented, prior points together with prior shape information are incorporated into a joint segmentation and registration model in both a variational framework and in level set formulation. This technique is applied to segment cardiac ultrasound images. A second model, which is based on applying non-parametric density approximation to simultaneously segment and smooth noisy medical images without adding extra smoothing terms, is presented. My goal is to develop a powerful and robust algorithm to locate objects with interiors having a complex multi-modal intensity distribution and/or high noise level. The model was applied to the problem of segmenting T1 weighted magnetic resonance images.; Diffusion weighted images render non-invasive in vivo information about how water diffuses into a 3D intricate representation of tissues. My work provides histological and anatomical information about tissue structure, composition, architecture, and organization. I have proposed several models to reconstruct human brain white matter fiber tracts, to recover intra-voxel structure, to classify intra-voxel diffusion, to estimate, smooth and characterize apparent diffusion coefficient profiles. A geometric flow is designed to segment the main core of white matter fiber tracts in diffusion tensor images.
机译:医学图像分割在诊断,手术计划,导航和各种医学评估中起着重要作用。医学图像经常由于高水平的噪声,信号丢失和边界差的对比度而损坏。有时,它们的强度可能具有多峰分布。在这篇论文中,我将提出一种分割图像的方法,该图像被噪声和一些丢失所破坏。在提出的模型中,先验点与先验形状信息一起在变体框架和水平集公式中被合并到联合分割和配准模型中。该技术应用于分割心脏超声图像。提出了第二个模型,该模型基于应用非参数密度近似来同时分割和平滑嘈杂的医学图像,而无需添加额外的平滑项。我的目标是开发一种强大而强大的算法,以定位具有复杂的多峰强度分布和/或高噪声水平的内部物体。该模型应用于分割T1加权磁共振图像的问题。扩散加权图像呈现有关水如何扩散到组织的3D复杂表示中的非侵入性体内信息。我的工作提供有关组织结构,组成,结构和组织的组织学和解剖学信息。我提出了几种模型来重建人脑白质纤维束,恢复体素内部结构,对体素内部扩散进行分类,估计,平滑和表征表观扩散系数分布。设计了一种几何流,以在扩散张量图像中分割白质纤维束的主要核心。

著录项

  • 作者

    Guo, Weihong.;

  • 作者单位

    University of Florida.;

  • 授予单位 University of Florida.;
  • 学科 Mathematics.; Engineering Biomedical.
  • 学位 Ph.D.
  • 年度 2007
  • 页码 127 p.
  • 总页数 127
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 数学;生物医学工程;
  • 关键词

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