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首页> 外文期刊>Computer vision and image understanding >Free-form image registration regularized by a statistical shape model: application to organ segmentation in cervical MR
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Free-form image registration regularized by a statistical shape model: application to organ segmentation in cervical MR

机译:通过统计形状模型进行正则化的自由形式图像配准:在宫颈MR器官分割中的应用

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摘要

Deformable registration is prone to errors when it involves large and complex deformations, since the procedure can easily end up in a local minimum. To reduce the number of local minima, and thus the risk of misalignment, regularization terms based on prior knowledge can be incorporated in registration. We propose a regularization term that is based on statistical knowledge of the deformations that are to be expected. A statistical model, trained on the shapes of a set of segmentations, is integrated as a penalty term in a free-form registration framework. For the evaluation of our approach, we perform inter-patient registration of MR images, which were acquired for planning of radiation therapy of cervical cancer. The manual delineations of structures such as the bladder and the clinical target volume are available. For both structures, leave-one-patient-out registration experiments were performed. The propagated atlas segmentations were compared to the manual target segmentations by Dice similarity and Hausdorff distance. Compared with registration without the use of statistical knowledge, the segmentations were significantly improved, by 0.1 in Dice similarity and by 8 mm Hausdorff distance on average for both structures.
机译:当可变形配准涉及大而复杂的变形时,它很容易出错,因为该过程很容易以局部最小值结束。为了减少局部最小值的数量,从而减少未对准的风险,可以将基于先验知识的正则化术语合并到注册中。我们提出一个正规化术语,该术语基于对预期变形的统计知识。在一组细分的形状上受过训练的统计模型被集成为自由形式的注册框架中的惩罚项。为了评估我们的方法,我们对患者的MR图像进行了注册,这些图像是为宫颈癌的放射治疗计划而获得的。可以手动描述诸如膀胱和临床目标体积之类的结构。对于这两种结构,都进行了留一人退出的注册实验。通过Dice相似度和Hausdorff距离,将传播的地图集分割与手动目标分割进行了比较。与不使用统计知识的注册相比,这两种结构的分割都得到了显着改善,Dice相似性提高了0.1,平均Hausdorff距离提高了8 mm。

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