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Geodesic registration for interactive atlas-based segmentation using learned multi-scale anatomical manifolds

机译:使用学习的多尺度解剖流形进行基于地图集的交互式分割的测地配准

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摘要

Atlas-based segmentation is often used to segment medical image regions. For intensity-normalized data, the quality of these segmentations is highly dependent on the similarity between the atlas and the target under the used registration method. We propose a geodesic registration method for interactive atlas-based segmentation using empirical multi-scale anatomical manifolds. The method utilizes unlabeled images together with the labeled atlases to learn empirical anatomical manifolds. These manifolds are defined on distinct scales and regions and are used to propagate the labeling information from the atlases to the target along anatomical geodesics. The resulting competing segmentations from the different manifolds are then ranked according to an image-based similarity measure. We used image volumes acquired using magnetic resonance imaging from 36 subjects. The performance of the method was evaluated using a liver segmentation task. The result was then compared to the corresponding performance of direct segmentation using Dice Index statistics. The method shows a significant improvement in liver segmentation performance between the proposed method and direct segmentation. Furthermore, the standard deviation in performance decreased significantly. Using competing complementary manifolds defined over a hierarchy of region of interests gives an additional improvement in segmentation performance compared to the single manifold segmentation. (c) 2018 Elsevier B.V. All rights reserved.
机译:基于图集的分割通常用于分割医学图像区域。对于强度归一化的数据,这些分割的质量高度依赖于所使用的配准方法下图集与目标之间的相似性。我们提出了一种基于经验的多尺度解剖流形的交互式地图集分割的测地配准方法。该方法利用未标记的图像以及标记的地图集来学习经验解剖学流形。这些歧管是在不同的比例和区域上定义的,并用于将标记信息从地图集沿解剖测地线传播到目标。然后根据基于图像的相似性度量对来自不同歧管的竞争分割进行排序。我们使用了通过磁共振成像从36位受试者获得的图像体积。使用肝脏分割任务评估了该方法的性能。然后,使用Dice Index统计数据将结果与直接细分的相应性能进行比较。该方法显示了在建议的方法和直接分割之间的肝脏分割性能的显着改善。此外,性能的标准偏差显着降低。与单个歧管分割相比,使用在感兴趣区域的层次结构上定义的竞争互补歧管可以提高分割性能。 (c)2018 Elsevier B.V.保留所有权利。

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