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Comparative evaluation of similarity measures for the rigid registration of multi-modal head images

机译:多模态头部图像刚性配准的相似性度量比较评估

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摘要

Image registrations that are based on similarity measures simply adjust the parameters of an appropriate spatial transformation model until the similarity measure reaches an optimum. The numerous similarity measures that have been proposed in the past are differently sensitive to imaging modality, image content and differences in the image content, selection of the floating and target image, partial image overlap, etc. In this paper, we evaluate and compare 12 similarity measures for the rigid registration. To study the impact of different imaging modalities on the behavior of similarity measures, we have used 16 CT/MR and 6 PET/MR image pairs with known 'gold standard' registrations. The results for the PET/MR registration and for the registration of CT to both rectified and unrectified MR images indicate that mutual information, normalized mutual information and the entropy correlation coefficient are the most accurate similarity measures and have the smallest risk of being trapped in a local optimum. The results of an experiment on the impact of exchanging the floating and target image indicate that, especially in MR/PET registrations, the behavior of some similarity measures, such as mutual information, significantly depends on which image is the floating and which is the target.
机译:基于相似性度量的图像配准只需调整适当的空间变换模型的参数,直到相似性度量达到最佳。过去已提出的众多相似性度量对成像方式,图像内容和图像内容的差异,浮动图像和目标图像的选择,部分图像重叠等具有不同的敏感性。在本文中,我们评估并比较了12刚性注册的相似性度量。为了研究不同成像方式对相似性度量行为的影响,我们使用了16个CT / MR和6个PET / MR图像对,这些图像对具有已知的“黄金标准”配准。 PET / MR配准以及CT对已校正和未校正MR图像的配准结果表明,互信息,归一化互信息和熵相关系数是最准确的相似性度量,并且被困在对象中的风险最小。局部最优。关于交换浮动图像和目标图像的影响的实验结果表明,尤其是在MR / PET注册中,某些相似性度量(例如互信息)的行为在很大程度上取决于哪个图像是浮动图像,哪个是目标图像。 。

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