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Simulation-Based Joint Estimation of Body Deformation and Elasticity Parameters for Medical Image Analysis.

机译:基于仿真的医学图像分析身体变形和弹性参数的联合估计。

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摘要

Elasticity parameter estimation is essential for generating accurate and controlled simulation results for computer animation and medical image analysis. However, finding the optimal parameters for a particular simulation often requires iterations of simulation, assessment, and adjustment and can become a tedious process. Elasticity values are especially important in medical image analysis, since cancerous tissues tend to be stiffer. Elastography is a popular type of method for finding stiffness values by reconstructing a dense displacement field from medical images taken during the application of forces or vibrations. These methods, however, are limited by the imaging modality and the force exertion or vibration actuation mechanisms, which can be complicated for deep-seated organs.;In this thesis, I present a novel method for reconstructing elasticity parameters without requiring a dense displacement field or a force exertion device. The method makes use of natural deformations within the patient and relies on surface information from segmented images taken on different days. The elasticity value of the target organ and boundary forces acting on surrounding organs are optimized with an iterative optimizer, within which the deformation is always generated by a physically-based simulator. Experimental results on real patient data are presented to show the positive correlation between recovered elasticity values and clinical prostate cancer stages.;Furthermore, to resolve the performance issue arising from the high dimensionality of boundary forces, I propose to use a reduced finite element model to improve the convergence of the optimizer. To find the set of bases to represent the dimensions for forces, a statistical training based on real patient data is performed. I demonstrate the trade-off between accuracy and performance by using different numbers of bases in the optimization using synthetic data. A speedup of more than an order of magnitude is observed without sacrificing too much accuracy in recovered elasticity.
机译:弹性参数估计对于为计算机动画和医学图像分析生成准确且受控的模拟结果至关重要。但是,为特定的仿真找到最佳参数通常需要仿真,评估和调整的迭代,并且可能成为繁琐的过程。弹性值在医学图像分析中尤其重要,因为癌组织往往会变硬。弹性成像是一种流行的方法,用于通过从作用力或振动过程中拍摄的医学图像重建密集的位移场来找到刚度值。然而,这些方法受到成像方式,力施加或振动致动机制的限制,这对于深部器官可能是复杂的。;本文提出了一种无需密集位移场即可重建弹性参数的新方法。或施力装置。该方法利用了患者体内的自然变形,并依赖于来自不同日期拍摄的分割图像的表面信息。使用迭代优化器优化目标器官的弹性值和作用在周围器官上的边界力,在该迭代器中,变形始终由基于物理的模拟器生成。提出了基于真实患者数据的实验结果,以显示恢复的弹性值与临床前列腺癌分期之间的正相关性。此外,为了解决边界力高维引起的性能问题,我建议使用简化的有限元模型提高优化程序的收敛性。为了找到代表力大小的基础集,需要执行基于实际患者数据的统计训练。我通过在使用综合数据的优化中使用不同数量的碱基,证明了准确性和性能之间的权衡。观察到超过一个数量级的加速,而没有牺牲太多的恢复弹性精度。

著录项

  • 作者

    Lee, Huai-Ping.;

  • 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.;Health Sciences Radiology.
  • 学位 Ph.D.
  • 年度 2012
  • 页码 125 p.
  • 总页数 125
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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