首页> 外文会议>2011 8th IEEE International Symposium on Biomedical Imaging: From Nano to Macro >Label fusion in multi-atlas based segmentation with user-defined local weights
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Label fusion in multi-atlas based segmentation with user-defined local weights

机译:基于用户定义的本地权重的基于多图集的细分中的标签融合

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Multi-atlas based segmentation is a popular method to automatically segment a target image, in which the correspondence to already segmented atlas images is used to construct multiple segmentations for a single structure in the target image. These multiple segmentations are then combined into a single segmentation for the target image in a process called label fusion. In the past, the result of multi-atlas based segmentation has mostly been evaluated using a volume overlap measure. However, such a measure can only be used to assess the global quality of a segmentation and does not take into account local differences in for example the clinical relevance of a certain region of the segmentation. We propose to use voxel-based weights in the evaluation of segmentations and show that by using these weights already during the label fusion process, one is able to obtain multi-atlas based segmentation results with an improved clinical relevance compared to unweighted atlas based segmentation. A method is proposed to implement this for multi-atlas based segmentation of the prostate.
机译:基于多图集的分割是一种自动分割目标图像的流行方法,其中与已分割的图集图像的对应关系用于为目标图像中的单个结构构造多个分割。然后,在称为“标签融合”的过程中,将这些多个分段组合为目标图像的单个分段。过去,大多数基于多图集的分割结果都是使用体积重叠量度进行评估的。但是,这种措施只能用于评估分割的整体质量,而不能在例如分割的某个区域的临床相关性方面考虑局部差异。我们建议在分割的评估中使用基于体素的权重,并表明通过在标签融合过程中已经使用这些权重,与基于非加权的图集的分割相比,人们能够获得基于多图集的分割结果,并具有更好的临床相关性。提出了一种方法来实现此目的以用于基于多图谱的前列腺分割。

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