From label fusion to correspondence fusion: a new approach to unbiased groupwise registration.

Paul A Yushkevich, Hongzhi Wang, John Pluta, Brian B Avants
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引用次数: 15

Abstract

Label fusion strategies are used in multi-atlas image segmentation approaches to compute a consensus segmentation of an image, given a set of candidate segmentations produced by registering the image to a set of atlases [19, 11, 8]. Effective label fusion strategies, such as local similarity-weighted voting [1, 13] substantially reduce segmentation errors compared to single-atlas segmentation. This paper extends the label fusion idea to the problem of finding correspondences across a set of images. Instead of computing a consensus segmentation, weighted voting is used to estimate a consensus coordinate map between a target image and a reference space. Two variants of the problem are considered: (1) where correspondences between a set of atlases are known and are propagated to the target image; (2) where correspondences are estimated across a set of images without prior knowledge. Evaluation in synthetic data shows that correspondences recovered by fusion methods are more accurate than those based on registration to a population template. In a 2D example in real MRI data, fusion methods result in more consistent mappings between manual segmentations of the hippocampus.

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从标签融合到对应融合:一种无偏分组配准的新方法。
标签融合策略用于多地图集图像分割方法中,给定一组通过将图像注册到一组地图集产生的候选分割,以计算图像的共识分割[19,11,8]。有效的标签融合策略,如局部相似加权投票[1,13],与单图谱分割相比,大大减少了分割错误。本文将标签融合思想扩展到在一组图像中寻找对应关系的问题。该算法使用加权投票来估计目标图像和参考空间之间的一致坐标映射,而不是计算一致分割。考虑了问题的两种变体:(1)一组地图集之间的对应关系是已知的,并传播到目标图像;(2)在没有先验知识的情况下估计一组图像的对应关系。综合数据的评价表明,融合方法恢复的对应关系比基于种群模板的配准方法更准确。在真实MRI数据的二维示例中,融合方法导致海马的手动分割之间的映射更加一致。
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