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Integrated segmentation and non-linear registration for organ segmentation and motion field estimation in 4D CT data.

机译:用于4D CT数据中器官分割和运动场估计的集成分割和非线性配准。

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OBJECTIVES: The development of spatiotemporal tomographic imaging techniques allows the application of novel techniques for diagnosis and therapy in the medical routine. However, in consequence to the increasing amount of image data automatic methods for segmentation and motion estimation are required. In adaptive radiation therapy, registration techniques are used for the estimation of respiration-induced motion of pre-segmented organs. In this paper, a variational approach for the simultaneous computation of segmentations and a dense non-linear registration of the 3D images of the sequence is presented. METHODS: In the presented approach, a variational region-based level set segmentation of the structures of interest is combined with a diffusive registration of the spatial images of the sequence. We integrate both parts by defining a new energy term, which allows us to incorporate mutual prior information in order to improve the segmentation as well as the registration quality. RESULTS: The presented approach was utilized for the segmentation of the liver and the simultaneous estimation of its respiration-induced motion based on four-dimensional thoracic CT images. For the considered patients, we were able to improve the results of the segmentation and the motion estimation, compared to the conventional uncoupled methods. CONCLUSIONS: Applied in the field of radiation therapy of thoracic tumors, the presented integrated approach turns out to be useful for simultaneous segmentation and registration by improving the results compared to the application of the methods independently.
机译:目的:时空层析成像技术的发展允许在医学常规中应用新技术进行诊断和治疗。然而,由于图像数据量的增加,需要用于分割和运动估计的自动方法。在适应性放射治疗中,配准技术用于估计呼吸器官分段引起的呼吸运动。在本文中,提出了一种用于同时计算分段和序列的3D图像的密集非线性配准的变分方法。方法:在提出的方法中,将感兴趣结构的基于变分区域的水平集分割与序列空间图像的扩散配准相结合。我们通过定义一个新的能量术语来整合这两个部分,这使我们能够合并相互的先验信息,从而改善分割和注册质量。结果:所提出的方法被用于肝的分割,并基于二维胸部CT图像同时估计其呼吸诱导的运动。与传统的非耦合方法相比,对于考虑的患者,我们能够改善分割和运动估计的结果。结论:在胸腔肿瘤的放射治疗领域中,与单独应用方法相比,通过改善结果,提出的集成方法对于同时分割和配准是有用的。

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