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Lung Motion Model Validation Experiments, Free-Breathing Tissue Densitometry, and Ventilation Mapping using Fast Helical CT Imaging.

机译:肺运动模型验证实验,自由呼吸组织密度测定法和使用快速螺旋CT成像的通气测绘。

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摘要

The uncertainties due to respiratory motion present significant challenges to accurate characterization of cancerous tissues both in terms of imaging and treatment. Currently available clinical lung imaging techniques are subject to inferior image quality and incorrect motion estimation, with consequences that can systematically impact the downstream treatment delivery and outcome. The main objective of this thesis is the development of the techniques of fast helical computed tomography (CT) imaging and deformable image registration for the radiotherapy applications in accurate breathing motion modeling, lung tissue density modeling and ventilation imaging.;Fast helical CT scanning was performed on 64-slice CT scanner using the shortest available gantry rotation time and largest pitch value such that scanning of the thorax region amounts to just two seconds, which is less than typical breathing cycle in humans. The scanning was conducted under free breathing condition. Any portion of the lung anatomy undergoing such scanning protocol would be irradiated for only a quarter second, effectively removing any motion induced image artifacts. The resulting CT data were pristine volumetric images that record the lung tissue position and density in a fraction of the breathing cycle. Following our developed protocol, multiple fast helical CT scans were acquired to sample the tissue positions in different breathing states. To measure the tissue displacement, deformable image registration was performed that registers the non-reference images to the reference one.;In modeling breathing motion, external breathing surrogate signal was recorded synchronously with the CT image slices. This allowed for the tissue-specific displacement to be modeled as parametrization of the recorded breathing signal using the 5D lung motion model. To assess the accuracy of the motion model in describing tissue position change, the model was used to simulate the original high-pitch helical CT scan geometries, employed as ground truth data. Image similarity between the simulated and ground truth scans was evaluated. The model validation experiments were conducted in a patient cohort of seventeen patients to assess the model robustness and inter-patient variation. The model error averaged over multiple tracked positions from several breathing cycles was found to be on the order of one millimeter.;In modeling the density change under free breathing condition, the determinant of Jacobian matrix from the registration-derived deformation vector field yielded volume change information of the lung tissues. Correlation of the Jacobian values to the corresponding voxel Housfield units (HU) reveals that the density variation for the majority of lung tissues can be very well described by mass conservation relationship. Different tissue types were identified and separately modeled. Large trials of validation experiments were performed. The averaged deviation between the modeled and the reference lung density was 30 HU, which was estimated to be the background CT noise level.;In characterizing the lung ventilation function, a novel method was developed to determine the extent of lung tissue volume change. Information on volume change was derived from the deformable image registration of the fast helical CT images in terms of Jacobian values with respect to a reference image. Assuming the multiple volume change measurements are independently and identically distributed, statistical formulation was derived to model ventilation distribution of each lung voxels and empirical minimum and maximum probability distribution of the Jacobian values was computed. Ventilation characteristic was evaluated as the difference of the expectation value from these extremal distributions. The resulting ventilation map was compared with an independently obtained ventilation image derived directly from the lung intensities and good correlation was found using statistical test. In addition, dynamic ventilation characterization was investigated by estimating the voxel-specific ventilation distribution. Ventilation maps were generated at different percentile levels using the tissue volume expansion metrics.
机译:在成像和治疗方面,由于呼吸运动引起的不确定性对癌组织的准确表征提出了重大挑战。当前可用的临床肺部成像技术的图像质量较差且运动估计不正确,其后果可能会系统地影响下游治疗的交付和结果。本文的主要目的是发展快速螺旋计算机断层扫描(CT)成像和可变形图像配准技术,以在精确的呼吸运动建模,肺组织密度建模和通气成像中用于放射治疗。在64层CT扫描仪上使用最短的门架旋转时间和最大的俯仰值,使得对胸腔区域的扫描仅需2秒钟,这比人类的典型呼吸周期要短。扫描在自由呼吸条件下进行。接受这种扫描方案的肺部解剖结构的任何部分都将仅辐照四分之一秒,从而有效去除任何运动引起的图像伪影。所得的CT数据是原始的容积图像,记录了呼吸周期的一部分中肺组织的位置和密度。按照我们开发的方案,进行了多次快速螺旋CT扫描,以采样不同呼吸状态下的组织位置。为了测量组织位移,执行了可变形图像配准,将非参考图像配准到参考图像。在建模呼吸运动时,外部呼吸替代信号与CT图像切片同步记录。这允许使用5D肺运动模型将组织特定位移建模为记录的呼吸信号的参数化。为了评估运动模型描述组织位置变化的准确性,该模型用于模拟原始的高螺距螺旋CT扫描几何形状,用作地面真实数据。评估了模拟和地面真实扫描之间的图像相似性。在17名患者的患者队列中进行了模型验证实验,以评估模型的稳健性和患者之间的差异。在几个呼吸周期中,在多个跟踪位置上平均的模型误差约为1毫米。在对自由呼吸条件下的密度变化进行建模时,根据配准派生的变形矢量场的Jacobian矩阵行列式产生体积变化肺组织的信息。雅可比值与相应的体素休斯单位(HU)的相关性表明,大多数肺组织的密度变化可以通过质量守恒关系很好地描述。识别不同的组织类型并分别建模。进行了验证试验的大型试验。建模的肺密度与参考肺密度之间的平均偏差为30 HU,估计为背景CT噪声水平。在表征肺通气功能方面,开发了一种确定肺组织体积变化程度的新方法。有关体积变化的信息是从快速螺旋CT图像相对于参考图像的雅可比值的可变形图像配准中得出的。假设多个体积变化测量值是独立且均匀分布的,则得出统计公式以模拟每个肺体素的通气分布,并计算出雅可比值的经验最小和最大概率分布。根据这些极值分布的期望值之差评估通风特性。将所得通气图与直接从肺强度得出的独立获得的通气图像进行比较,并使用统计检验发现良好的相关性。此外,通过估计体素特定的通气分布来研究动态通气特征。使用组织体积扩展指标在不同的百分位水平上生成通风图。

著录项

  • 作者

    Dou, Hsiang-Tai.;

  • 作者单位

    University of California, Los Angeles.;

  • 授予单位 University of California, Los Angeles.;
  • 学科 Physics.;Biophysics.;Medical imaging.
  • 学位 Ph.D.
  • 年度 2016
  • 页码 106 p.
  • 总页数 106
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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