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A unified FEM-based framework for medical image registration and segmentation.

机译:基于统一的FEM的医学图像配准和分割框架。

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摘要

Medical image registration and segmentation are challenging because, medical images are generally corrupted by noise, image artifacts and the various anatomical regions of interest in medical images often do not have distinct sharp boundaries. However, these anatomical regions frequently exhibit consistent shape and topological characteristics which is an advantage when compared to natural images. In our proposed work, we take into account the above mentioned aspects and devise automatic registration and segmentation methods using the popular energy minimization framework, with an application to medical images. In contrast to the widely used level set based segmentation approach, we follow the template-based segmentation approach, which is more suitable for medical images as it can easily handle multi-region segmentation and also has the desirable property of preserving the known topology of the anatomical structures. However, unlike the traditional template-based segmentation and registration methods that use uniform meshes along with the finite difference method (FDM) to solve the partial differential equations (PDEs) that arise in these methods, we use the finite element method (FEM) and solve the PDEs on a non-uniform mesh to obtain solutions whose accuracy is well adapted to the salient features in the image domain. In this work, we present a unified FEM-based registration and segmentation framework where the goal is to estimate a deformation field following the minimization of an energy that consists of a common diffusion-based regularization term and data term that depends on the appropriate segmentation or registration objective. Further, we extend this framework through the incorporation of an additional shape prior based regularization term that is learned from training data. Lastly, we propose a novel variational formulation for discrete deformable registration and show that interestingly it can be cast into our unified FEM-based registration and segmentation framework. We validated our proposed unified FEM-based segmentation and registration framework on real medical images including some of the popular benchmark datasets. We present a thorough evaluation of the various registration and segmentation algorithms developed in our work by comparing their performance with the other established methods in image registration and segmentation.
机译:医学图像配准和分割是具有挑战性的,因为医学图像通常被噪声,图像伪影破坏,并且医学图像中感兴趣的各种解剖区域通常没有明显的清晰边界。但是,这些解剖区域经常表现出一致的形状和拓扑特征,与自然图像相比这是一个优势。在我们提出的工作中,我们考虑了上述方面,并设计了使用流行的能量最小化框架的自动配准和分割方法,并将其应用于医学图像。与广泛使用的基于级别集的分割方法相比,我们遵循基于模板的分割方法,该方法更适合于医学图像,因为它可以轻松处理多区域分割,并且还具有保留已知拓扑结构的理想特性。解剖结构。但是,与传统的基于模板的分割和配准方法不同,传统的基于模板的分割和配准方法使用均匀网格以及有限差分法(FDM)来解决这些方法中出现的偏微分方程(PDE),我们使用有限元方法(FEM)和对非均匀网格上的PDE求解,以获得其精度非常适合图像域中显着特征的解决方案。在这项工作中,我们提出了一个基于FEM的统一配准和分段框架,其目标是在能量最小化之后估算变形场,该能量由一个共同的基于扩散的正则项和取决于适当分段或数据项的数据项组成注册目标。此外,我们通过结合从训练数据中学到的其他基于形状先验的正则化术语来扩展此框架。最后,我们为离散的可变形配准提出了一种新颖的变体公式,并表明可以将其有趣地植入我们基于统一FEM的配准和分割框架中。我们在真实医学图像(包括一些流行的基准数据集)上验证了我们提出的基于FEM的统一分割和配准框架。通过将它们与其他已建立的图像配准和分割方法的性能进行比较,我们对工作中开发的各种配准和分割算法进行了全面评估。

著录项

  • 作者

    Popuri, Karteek.;

  • 作者单位

    University of Alberta (Canada).;

  • 授予单位 University of Alberta (Canada).;
  • 学科 Computer Science.
  • 学位 Ph.D.
  • 年度 2013
  • 页码 130 p.
  • 总页数 130
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 老年病学;
  • 关键词

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