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Combining Image Registration, Respiratory Motion Modelling, and Motion Compensated Image Reconstruction

机译:组合图像配准,呼吸运动建模和运动补偿图像重建

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Respiratory motion models relate the motion of the internal anatomy, which can be difficult to directly measure during image guided interventions or image acquisitions, to easily acquired respiratory surrogate signal(s), such as the motion of the skin surface. The motion models are usually built in two steps: 1) determine the motion from some prior imaging data, e.g. using image registration, 2) fit a correspondence model relating the motion to the surrogate signal(s). In this paper we present a generalized framework for combining the image registration and correspondence model fitting steps into a single optimization. Not only does this give a more theoretically efficient and robust approach to building the motion model, but it also enables the use of 'partial' imaging data such as individual MR slices or CBCT projections, where it is not possible to determine the full 3D motion from a single image. The framework can also incorporate motion compensated image reconstruction by iterating between model fitting and image reconstruction. This means it is possible to estimate both the motion and the motion compensated reconstruction just from the partial imaging data and a respiratory surrogate signal. We have used a simple 2D 'lung-like' software phantom to demonstrate a proof of principle of our framework, for both simulated 'thick-slice' data and projection data, representing MR and CBCT data respectively. We have implemented the framework using a simple demons like registration algorithm and a linear correspondence model relating the motion to two surrogate signals.
机译:呼吸运动模型涉及内部解剖结构的运动,这在图像引导干预或图像采集期间可能难以直接测量,以容易地获取呼吸替代信号,例如皮肤表面的运动。运动模型通常构建为两个步骤:1)确定来自一些先前成像数据的运动,例如,使用图像配准,2)适合将动作与代理信号相关的对应模型。在本文中,我们提出了一种用于将图像配准和对应模型拟合步骤组合成单个优化的广义框架。这不仅提供了构建运动模型的更为理论有效和鲁棒的方法,还可以使用诸如单独的MR切片或CBCT投影的“部分”成像数据,在那里无法确定完整的3D运动从单个图像。该框架还可以通过迭代模型拟合和图像重建来包括运动补偿图像重建。这意味着可以从部分成像数据和呼吸代理信号估计运动和运动补偿重构。我们使用了一个简单的2D“肺样”软件幻影,以展示模拟的“厚切片”数据和投影数据的框架原则证明,分别代表MR和CBCT数据。我们已经使用登记算法等简单的恶魔和与两个代理信号相关的线性对应模型实现了该框架。

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