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A dynamic tree-based registration could handle possible large deformations among MR brain images

机译:基于动态树的配准可以处理MR脑图像中可能出现的大变形

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摘要

Multi-atlas segmentation is a powerful approach to automated anatomy delineation via fusing label information from a set of spatially normalized atlases. For simplicity, many existing methods perform pairwise image registration, leading to inaccurate segmentation especially when shape variation is large. In this paper, we propose a dynamic tree-based strategy for effective large-deformation registration and multi-atlas segmentation. To deal with local minima caused by large shape variation, coarse estimates of deformations are first obtained via alignment of automatically localized landmark points. The dynamic tree capturing the structural relationships between images is then employed to further reduce misalignment errors. Evaluation based on two real human brain datasets, ADNI and LPBA40, shows that our method significantly improves registration and segmentation accuracy.
机译:多图集分割是一种强大的方法,可通过融合来自一组空间标准化图集的标签信息来自动进行解剖描绘。为了简单起见,许多现有方法执行成对图像配准,导致分割不准确,尤其是在形状变化较大时。在本文中,我们提出了一种基于树的动态策略,用于有效的大变形配准和多图集分割。为了处理由大的形状变化引起的局部最小值,首先通过自动定位的界标点的对准来获得变形的粗略估计。然后采用捕获图像之间的结构关系的动态树来进一步减少未对准误差。根据两个真实的人脑数据集ADNI和LPBA40进行的评估显示,我们的方法显着提高了配准和分割的准确性。

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