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Fluid Registration Between Lung CT and Stationary Chest Tomosynthesis Images

机译:肺CT和固定胸部自动合成图像之间的流体登记

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Registration is widely used in image-guided therapy and image-guided surgery to estimate spatial correspondences between organs of interest between planning and treatment images. However, while high-quality computed tomography (CT) images are often available at planning time, limited angle acquisitions are frequently used during treatment because of radiation concerns or imaging time constraints. This requires algorithms to register CT images based on limited angle acquisitions. We, therefore, formulate a 3D/2D registration approach which infers a 3D deformation based on measured projections and digitally reconstructed radiographs of the CT. Most 3D/2D registration approaches use simple transformation models or require complex mathematical derivations to formulate the underlying optimization problem. Instead, our approach entirely relies on differentiable operations which can be combined with modern computational toolboxes supporting automatic differentiation. This then allows for rapid prototyping, integration with deep neural networks, and to support a variety of transformation models including fluid flow models. We demonstrate our approach for the registration between CT and stationary chest tomosynthesis (sDCT) images and show how it naturally leads to an iterative image reconstruction approach.
机译:注册广泛用于图像引导治疗和图像引导的手术,以估计计划和治疗图像之间感兴趣的器官之间的空间对应。然而,虽然在规划时间以高质量的计算断层扫描(CT)图像通常可用,但由于辐射问题或成像时间约束,在治疗期间经常使用有限的角度采集。这需要基于有限角度采集来注册CT图像的算法。因此,我们制定了一种基于测量的投影的3D / 2D登记方法,该方法基于测量的投影和CT的数字重建射线照片。大多数3D / 2D登记方法使用简单的转换模型,或者需要复杂的数学推导来制定底层优化问题。相反,我们的方法完全依赖于可分散的操作,这些操作可以与支持自动分化的现代计算工具箱组合。然后,这允许快速原型设计,与深神经网络集成,并支持各种转换模型,包括流体流动模型。我们展示了我们在CT和静止胸部Tomosynthesis(SDCT)图像之间的登记方法,并展示了自然导致迭代图像重建方法的方式。

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