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Uncertainty Quantification, Image Synthesis and Deformation Prediction for Image Registration

机译:图像配准的不确定度量化,图像合成和变形预测

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摘要

Image registration is essential for medical image analysis to provide spatial correspondences. It is a difficult problem due to the modeling complexity of image appearance and the computational complexity of the deformable registration models. Thus, several techniques are needed: Uncertainty measurements of the high-dimensional parameter space of the registration methods for the evaluation of the registration resu Registration methods for registering healthy medical images to pathological images with large appearance changes; Fast registration prediction techniques for uni-modal and multi-modal images.;This dissertation addresses these problems and makes the following contributions: 1) A frame-work for uncertainty quantification of image registration results is proposed. The proposed method for uncertainty quantification utilizes a low-rank Hessian approximation to evaluate the variance/co-variance of the variational Gaussian distribution of the registration parameters. The method requires significantly less storage and computation time than computing the Hessian via finite difference while achieving excellent approximation accuracy, facilitating the computation of the variational approximation; 2) An image synthesis deep network for pathological image registration is developed. The network transforms a pathological image into a 'quasi-normal' image, making registrations more accurate; 3) A patch-based deep learning framework for registration parameter prediction using image appearances only is created. The network is capable of accurately predicting the initial momentum for the Large Deformation Diffeomorphic Metric Mapping (LDDMM) model for both uni-modal and multi-modal registration problems, while increasing the registration speed by at least an order of magnitude compared with optimization-based approaches and maintaining the theoretical properties of LDDMM.;Applications of the methods include 1) Uncertainty quantification of LDDMM for 2D and 3D medical image registrations, which could be used for uncertainty-based image smoothing and subsequent analysis; 2) Quasi-normal image synthesis for the registration of brain images with tumors with potential extensions to other image registration problems with pathologies and 3) deformation prediction for various brain datasets and T1w/T2w magnetic resonance images (MRI), which could be incorporated into other medical image analysis tasks such as fast multi-atlas image segmentation, fast geodesic image regression, fast atlas construction and fast user-interactive registration refinement.
机译:图像配准对于医学图像分析以提供空间对应关系至关重要。由于图像外观的建模复杂性和可变形配准模型的计算复杂性,这是一个难题。因此,需要几种技术:用于评估配准结果的配准方法的高维参数空间的不确定性测量;用于将健康医学图像对准外观变化较大的病理图像的对准方法;针对单模态和多模态图像的快速配准预测技术。本文针对这些问题,做出了以下贡献:1)提出了一种用于图像配准结果不确定性量化的框架。所提出的不确定性量化方法利用低秩Hessian近似来评估配准参数的变化高斯分布的方差/协方差。与通过有限差分计算Hessian相比,该方法所需的存储和计算时间大大减少,同时实现了出色的逼近精度,从而简化了变分逼近的计算。 2)开发了用于病理图像配准的图像合成深度网络。网络将病理图像转换为“准正常”图像,使配准更加准确; 3)创建仅基于图像外观的,基于补丁的深度学习框架,用于注册参数预测。该网络能够针对单模态和多模态配准问题准确预测大变形二形度量映射(LDDMM)模型的初始动量,同时与基于优化的配准相比,配准速度至少提高了一个数量级。该方法的应用包括:1)用于2D和3D医学图像配准的LDDMM不确定度量化,可用于基于不确定性的图像平滑和后续分析; 2)准正常图像合成,用于将带有肿瘤的脑图像配准到具有病理学其他图像配准问题的潜在扩展; 3)各种大脑数据集和T1w / T2w磁共振图像(MRI)的变形预测其他医学图像分析任务,例如快速的多图集图像分割,快速的测地线图像回归,快速的图集构建和快速的用户交互配准细化。

著录项

  • 作者

    Yang, Xiao.;

  • 作者单位

    The University of North Carolina at Chapel Hill.;

  • 授予单位 The University of North Carolina at Chapel Hill.;
  • 学科 Computer science.
  • 学位 Ph.D.
  • 年度 2017
  • 页码 124 p.
  • 总页数 124
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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