锥形束CT投影中基于图像的降维相位分类呼吸信号提取

S. Dhou, A. Docef, Geoffrey D. Hugo
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引用次数: 3

摘要

本文提出了一种在圆锥束计算机断层扫描(CBCT)投影数据集中自动检测基于图像的呼吸信号的方法。本文提出的强度流降维方法(IFDR)利用光流跟踪从投影数据集中每一对相邻的投影中估计一组密集强度流向量。将降维方法应用于强度流向量,将其提炼成一个特征系统,其中前几个主成分(在本工作中最多3个)组合在一起以表示数据集中的运动模式。该算法在临床患者数据集上进行了实验评估。使用IFDR提取的呼吸信号与使用1)隔膜位置和2)植入肿瘤内和肿瘤附近的基准标记物轨迹测量的呼吸信号进行比较。与基于隔膜位置的信号相比,基于ifdr的呼吸信号的平均相移为3.8±1.9个投影(占投影集的0.35%),与基于内部标记物的信号相比,平均相移为3.59±2.44个投影(占投影集的0.15%)。IFDR能够在所有患者数据集的所有投影中提取呼吸信号,而无需使用任何外部设备、内部标记或要求在CBCT投影中可见膈膜等任何结构。提取的呼吸信号与肿瘤位置相关,因为运动是根据肿瘤内部和周围的软组织进行估计的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image-based Respiratory Signal Extraction Using Dimensionality Reduction for Phase Sorting in Cone-Beam CT Projections
In this paper, a method that detects an image-based respiratory signal automatically in Cone Beam Computed Tomography (CBCT) projection datasets is proposed. The proposed Intensity Flow Dimensionality Reduction method (IFDR) uses optical flow tracking to estimate a set of dense intensity flow vectors from every adjacent pair of projections in the projection dataset. A dimensionality reduction method is applied to the intensity flow vectors to distil them into an eigensystem in which the first few principal components (up to 3 in this work) are combined to represent the motion patterns in the dataset. The algorithm was experimentally evaluated on clinical patient datasets. The extracted respiratory signal using IFDR was compared to respiratory signals measured using 1) the diaphragm position and 2) a trajectory of fiducial markers implanted in and near the tumor. IFDR-based respiratory signal showed an average phase shift of 3.8 ± 1.9 projections (0.35% of the projection set) comparing to the diaphragm position-based signal, and an average phase shift of 3.59 ± 2.44 projections (0.15% of the projection set) comparing to the internal markers-based signal. IFDR was able to extract the respiratory signal in all projections of all the patients' dataset without using any external devices, internal markers or requiring any structure such as the diaphragm to be visible in the CBCT projections. This respiratory signal extracted correlates to the tumor position since the motion was estimated from the soft tissues in and around the tumor.
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