基于学习的多图谱分割的图谱选择。

Gerard Sanroma, Guorong Wu, Yaozong Gao, Dinggang Shen
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引用次数: 20

摘要

近年来,多图谱分割(MAS)在医学影像领域取得了巨大的成功。MAS的关键假设是多个地图集包含比单个地图集更丰富的解剖变异性。因此,我们可以通过映射具有最相似结构的适当地图集图像的标签信息来更准确地标记目标图像。然而,地图集选择的问题仍未得到探索。目前最先进的MAS方法依赖于图像相似性来选择一组地图集。不幸的是,这种启发式标准不一定与分割性能相关,因此可能会破坏分割结果。为了解决这个简单但关键的问题,我们提出了一种基于学习的地图集选择方法来选择最佳的地图集,最终导致更准确的图像分割。我们的想法是学习观察到的实例(一对地图集和目标图像)的成对外观与其最终标记性能(根据Dice比率)之间的关系。这样,我们就可以根据期望的标注精度来选择最好的地图集。值得注意的是,我们的图谱选择方法具有足够的通用性,可以与现有的MAS方法集成。实验表明,在ADNI和LONI LPBA40数据集上,我们将我们的方法与3种广泛使用的MAS方法相结合,取得了显著的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Learning-Based Atlas Selection for Multiple-Atlas Segmentation.

Learning-Based Atlas Selection for Multiple-Atlas Segmentation.

Learning-Based Atlas Selection for Multiple-Atlas Segmentation.

Learning-Based Atlas Selection for Multiple-Atlas Segmentation.

Recently, multi-atlas segmentation (MAS) has achieved a great success in the medical imaging area. The key assumption of MAS is that multiple atlases encompass richer anatomical variability than a single atlas. Therefore, we can label the target image more accurately by mapping the label information from the appropriate atlas images that have the most similar structures. The problem of atlas selection, however, still remains unexplored. Current state-of-the-art MAS methods rely on image similarity to select a set of atlases. Unfortunately, this heuristic criterion is not necessarily related to segmentation performance and, thus may undermine segmentation results. To solve this simple but critical problem, we propose a learning-based atlas selection method to pick up the best atlases that would eventually lead to more accurate image segmentation. Our idea is to learn the relationship between the pairwise appearance of observed instances (a pair of atlas and target images) and their final labeling performance (in terms of Dice ratio). In this way, we can select the best atlases according to their expected labeling accuracy. It is worth noting that our atlas selection method is general enough to be integrated with existing MAS methods. As is shown in the experiments, we achieve significant improvement after we integrate our method with 3 widely used MAS methods on ADNI and LONI LPBA40 datasets.

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