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Self-correcting multi-atlas segmentation

机译:自校正多图集分割

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In multi-atlas segmentation, one typically registers several atlases to the new image, and their respective segmented label images are transformed and fused to form the final segmentation. After each registration, the quality of the registration is reflected by the single global value: the final registration cost. Ideally, if the quality of the registration can be evaluated at each point, independent of the registration process, which also provides a direction in which the deformation can further be improved, the overall segmentation performance can be improved. We propose such a self-correcting multi-atlas segmentation method. The method is applied on hippocampus segmentation from brain images and statistically significantly improvement is observed.
机译:在多图集分割中,通常将几幅图集注册到新图像,然后将它们各自分割的标签图像进行变换和融合以形成最终分割。每次注册后,注册的质量都由单个全局值(即最终注册成本)反映出来。理想地,如果可以在每个点上独立于配准过程来评估配准的质量,这也提供了可以进一步改善变形的方向,则可以改善整体分割性能。我们提出了一种这样的自校正多图谱分割方法。该方法应用于从脑图像中进行海马分割,并且在统计学上观察到显着改善。

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