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Enhanced contrast and automated segmentation for MR microscopy of the mouse brain.

机译:增强的对比度和自动分割功能,适用于小鼠大脑的MR显微镜检查。

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摘要

The investigation of genetic changes on the morphological phenotype of small animal models has become a vital part in understanding the etiology and pathogenesis of neurodegenerative disorders. Morphometric analysis of structure volume, shape and spatial organization in the brain has become a critical indicator of pathology and disease. Magnetic resonance imaging is an attractive modality for this purpose due to its non-invasiveness, inherently 3D digital nature and excellent soft tissue contrast. The aim of this work was to develop an automated segmentation strategy for the complete labeling of the MR volume of the mouse brain into constituent structures.; Although the strength of magnetic resonance imaging in the assessment of human brain structure and function is well established, its translation to the arena of small animal imaging is not trivial. Advancement to high field imaging, small compact coils and technically intensive gradient systems has contributed significantly in enabling high resolution imaging of the mouse. However, radical differences in the MR relaxation parameters for mouse brain tissue at high fields and its resultant affects on the achievable signal and contrast has made structure definition and automated labeling a difficult challenge.; The thesis provides solutions for both, the MR acquisition to obtain maximum differential contrast between tissues and the subsequent segmentation of the acquired data into different structures. The acquisitions were optimized for obtaining high contrast definition between structures at reasonable scan times. We integrate the MR intensity information with spatial priors to arrive at a classification of brain tissue into individual structures. Results are provided for the formalin fixed brain at 90 micron isotropic resolution and the actively stained (perfusion with a contrast agent) mouse brain at isotropic 20 micron resolution. Results indicate a high accuracy in the automated labeling of the mouse brain. This work is a significant step in the morphological phenotyping of mouse models.
机译:对小动物模型的形态表型进行遗传变化的研究已成为了解神经退行性疾病的病因和发病机制的重要组成部分。大脑中结构体积,形状和空间组织的形态计量分析已成为病理和疾病的重要指标。磁共振成像由于其非侵入性,固有的3D数字特性和出色的软组织对比度,因此是用于此目的的一种有吸引力的方式。这项工作的目的是开发一种自动分割策略,以将小鼠大脑的MR量完全标记为组成结构。尽管磁共振成像技术在评估人脑结构和功能方面的实力已广为人知,但它在小动物成像领域的应用却并非微不足道。高场成像,小型紧凑型线圈和技术密集型梯度系统的进步为实现鼠标的高分辨率成像做出了重要贡献。然而,高场小鼠大脑组织的MR弛豫参数的根本差异及其对可达到的信号和对比度的影响,已经使结构定义和自动标记成为一个难题。本文为MR采集以获得组织之间的最大差异对比度以及随后将采集的数据分割成不同的结构提供了解决方案。优化采集以在合理的扫描时间获得结构之间的高对比度清晰度。我们将MR强度信息与空间先验相结合,以将脑组织分类为单个结构。以90微米各向同性的分辨率为福尔马林固定的大脑提供了结果,以20微米各向同性的分辨率为经过主动染色(用造影剂灌注)的小鼠大脑提供了结果。结果表明,在自动标记小鼠大脑中具有很高的准确性。这项工作是小鼠模型形态表型的重要步骤。

著录项

  • 作者

    Ali Sharief, Anjum Anwar.;

  • 作者单位

    Duke University.;

  • 授予单位 Duke University.;
  • 学科 Engineering Biomedical.; Biophysics Medical.
  • 学位 Ph.D.
  • 年度 2006
  • 页码 173 p.
  • 总页数 173
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 生物医学工程;生物物理学;
  • 关键词

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