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Surface Registration and Indexing for Brain Morphometry Analysis with Conformal Geometry.

机译:使用共形几何进行脑形态分析的表面配准和索引。

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摘要

In brain imaging study, 3D surface-based algorithms may provide more advantages over volume-based methods, due to their sub-voxel accuracy to represent subtle subregional changes and solid mathematical foundations on which global shape analyses can be achieved on complicated topological structures, such as the convoluted cortical surfaces. On the other hand, given the enormous amount of data being generated daily, it is still challenging to develop effective and efficient surface-based methods to analyze brain shape morphometry. There are two major problems in surface-based shape analysis research: correspondence and similarity. This dissertation covers both topics by proposing novel surface registration and indexing algorithms based on conformal geometry for brain morphometry analysis.;First, I propose a surface fluid registration system, which extends the traditional image fluid registration to surfaces. With surface conformal parameterization, the complexity of the proposed registration formula has been greatly reduced, compared to prior methods. Inverse consistency is also incorporated to drive a symmetric correspondence between surfaces. After registration, the multivariate tensor-based morphometry (mTBM) is computed to measure local shape deformations. The algorithm was applied to study hippocampal atrophy associated with Alzheimer's disease (AD).;Next, I propose a ventricular surface registration algorithm based on hyperbolic Ricci flow, which computes a global conformal parameterization for each ventricular surface without introducing any singularity. Furthermore, in the parameter space, unique hyperbolic geodesic curves are introduced to guide consistent correspondences across subjects, a technique called geodesic curve lifting. Tensor-based morphometry (TBM) statistic is computed from the registration to measure shape changes. This algorithm was applied to study ventricular enlargement in mild cognitive impatient (MCI) converters.;Finally, a new shape index, the hyperbolic Wasserstein distance, is introduced. This algorithm computes the Wasserstein distance between general topological surfaces as a shape similarity measure of different surfaces. It is based on hyperbolic Ricci flow, hyperbolic harmonic map, and optimal mass transportation map, which is extended to hyperbolic space. This method fills a gap in the Wasserstein distance study, where prior work only dealt with images or genus-0 closed surfaces. The algorithm was applied in an AD vs. control cortical shape classification study and achieved promising accuracy rate.
机译:在脑成像研究中,基于3D曲面的算法可提供比基于体积的方法更多的优势,这是因为其基于亚体素的精度可以表示细微的子区域变化,并且可以基于其可靠的数学基础来对复杂的拓扑结构进行全局形状分析,例如作为回旋的皮质表面。另一方面,鉴于每天都会产生大量数据,因此开发有效且高效的基于表面的方法来分析大脑形状形态仍然是一项挑战。基于曲面的形状分析研究存在两个主要问题:对应性和相似性。本论文通过提出新颖的基于共形几何的表面配准和索引算法进行脑形态计量学分析,涵盖了这两个主题。与现有方法相比,利用表面保形参数化,所提出的配准公式的复杂性已大大降低。反一致性也被并入以驱动表面之间的对称对应。配准后,计算基于多张量的形态学(mTBM)以测量局部形状变形。该算法被用于研究与阿尔茨海默氏病(AD)相关的海马萎缩。接下来,我提出了一种基于双曲线Ricci流的心室表面配准算法,该算法在不引入任何奇异性的情况下为每个心室表面计算全局保形参数化。此外,在参数空间中,引入了独特的双曲线测地曲线来指导对象之间的一致对应,这是一种称为测地曲线提升的技术。根据注册计算基于张量的形态计量学(TBM)统计信息,以测量形状变化。该算法被用于研究轻度认知不耐(MCI)转换器中的心室扩大。最后,介绍了一种新的形状指数,即双曲Wasserstein距离。该算法计算一般拓扑表面之间的Wasserstein距离,作为不同表面的形状相似性度量。它基于双曲型Ricci流,双曲调和图和最佳质量输运图,并扩展到双曲空间。这种方法填补了Wasserstein距离研究中的空白,以前的研究仅涉及图像或类0闭合曲面。该算法被应用于AD与对照皮质形状分类研究中,并获得了有希望的准确率。

著录项

  • 作者

    Shi, Jie.;

  • 作者单位

    Arizona State University.;

  • 授予单位 Arizona State University.;
  • 学科 Computer science.;Biomedical engineering.
  • 学位 Ph.D.
  • 年度 2016
  • 页码 199 p.
  • 总页数 199
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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