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引用次数: 0

摘要

在基于图像的医学研究中,地图集广泛应用于空间归一化和分割等任务。如果地图集被视为图像种群的代表性模式,那么对于异质种群就需要多个地图集。在传统的图谱构建方法中,代表性图案的“单位”是图像。每个输入图像都与其最相似的地图集相关联。随着受试者数量的增加,异质性也随之增加,可能需要大量地图集。在本文中,我们探索使用区域智能而不是图像智能模式来表示人口。输入图像的不同部分根据体素级关联权重与不同的地图集模糊关联。通过这种方式,可以将不同地图集的区域结构模式结合在一起。在此基础上,设计了多地图集构建的变分框架。在两个t1加权MRI数据集的应用中,与传统的无偏图谱构建方法相比,该方法显示出良好的性能。
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Locally Weighted Multi-atlas Construction.

In image-based medical research, atlases are widely used in many tasks, for example, spatial normalization and segmentation. If atlases are regarded as representative patterns for a population of images, then multiple atlases are required for a heterogeneous population. In conventional atlas construction methods, the "unit" of representative patterns is images. Every input image is associated with its most similar atlas. As the number of subjects increases, the heterogeneity increases accordingly, and a big number of atlases may be needed. In this paper, we explore using region-wise, instead of image-wise, patterns to represent a population. Different parts of an input image is fuzzily associated with different atlases according to voxel-level association weights. In this way, regional structure patterns from different atlases can be combined together. Based on this model, we design a variational framework for multi-atlas construction. In the application to two T1-weighted MRI data sets, the method shows promising performance, in comparison with a conventional unbiased atlas construction method.

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