首页> 外文会议>International conference on medical image computing and computer-assisted intervention;MICCAI 2010 >Online 4-D CT Estimation for Patient-Specific Respiratory Motion Based on Real-Time Breathing Signals
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Online 4-D CT Estimation for Patient-Specific Respiratory Motion Based on Real-Time Breathing Signals

机译:基于实时呼吸信号的患者特定呼吸运动的在线4-D CT估计

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In image-guided lung intervention, the electromagnetic (EM) tracked needle can be visualized in a pre-procedural CT by registering the EM tracking and the CT coordinate systems. However, there exist discrepancies between the static pre-procedural CT and the patient due to respiratory motion. This paper proposes an online 4-D CT estimation approach to patient-specific respiratory motion compensation. First, the motion patterns between 4-D CT data and respiratory signals such as fiducials from a number of patients are trained in a template space after image registration. These motion patterns can be used to estimate the patient-specific serial CTs from a static 3-D CT and the real-time respiratory signals of that patient, who do not generally take 4-D CTs. Specifically, the respiratory lung field motion vectors are projected onto the Kernel Principal Component Analysis (K-PCA) space, and a motion estimation model is constructed to estimate the lung field motion from the fiducial motion using the ridge regression method based on the least squares support vector machine (LS-SVM). The algorithm can be performed onsite prior to the intervention to generate the serial CT images according to the respiratory signals in advance, and the estimated CTs can be visualized in real-time during the intervention. In experiments, we evaluated the algorithm using leave-one-out strategy on 30 4-D CT data, and the results showed that the average errors of the lung field surfaces are 1.63mm.
机译:在图像引导的肺部介入治疗中,通过记录EM跟踪和CT坐标系,可以在术前CT中看到电磁(EM)跟踪的针头。但是,由于呼吸运动,静态的术前CT与患者之间存在差异。本文提出了一种针对患者特定呼吸运动补偿的在线4-D CT估计方法。首先,在图像配准后,在模板空间中训练4-D CT数据和呼吸信号(例如来自多个患者的基准​​)之间的运动模式。这些运动模式可用于从静态3-D CT和该患者的实时呼吸信号(通常不接受4-D CT)估计特定于患者的串行CT。具体而言,将呼吸肺野运动矢量投影到内核主成分分析(K-PCA)空间上,并构建运动估计模型以使用基于最小二乘法的脊回归方法从基准运动估计肺野运动支持向量机(LS-SVM)。该算法可以在介入之前现场执行,以预先根据呼吸信号生成串行CT图像,并且在介入期间可以实时可视化估计的CT。在实验中,我们使用留一法对30个4-D CT数据进行了评估,结果表明,肺野表面的平均误差为1.63mm。

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