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Effect of inter-subject variation on the accuracy of atlas-based segmentation applied to human brain structures

机译:主体间变异对基于图集的分割应用于人脑结构的准确性的影响

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Large variations occur in brain anatomical structures in human populations, presenting a critical challenge to the brain mapping process. This study investigates the major impact of these variations on the performance of atlas-based segmentation. It is based on two publicly available datasets, from each of which 17 T1-weighted brain atlases were extracted. Each subject was registered to every other subject using the Morphons, a non-rigid registration algorithm. The automatic segmentations, obtained by warping the segmentation of this template, were compared with the expert segmentations using Dice index and the differences were statistically analyzed using Bonferroni multiple comparisons at significance level 0.05. The results showed that an optimum atlas for accurate segmentation of all structures cannot be found, and that the group of preferred templates, defined as being significantly superior to at least two other templates regarding the segmentation accuracy, varies significantly from structure to structure. Moreover, compared to other templates, a template giving the best accuracy in segmentation of some structures can provide highly inferior segmentation accuracy for other structures. It is concluded that there is no template optimum for automatic segmentation of all anatomical structures in the brain because of high inter-subject variation. Using a single fixed template for brain segmentation does not lead to good overall segmentation accuracy. This proves the need for multiple atlas based solutions in the context of atlas-based segmentation on human brain.
机译:人类人群的大脑解剖结构发生了巨大变化,这对大脑作图过程提出了严峻的挑战。这项研究调查了这些变化对基于图集的分割效果的主要影响。它基于两个公开可用的数据集,从每个数据集中提取了17个T1加权脑图集。使用非刚性注册算法Morphons将每个主题注册到其他每个主题。将通过翘曲分割此模板而获得的自动分割与使用Dice索引的专家分割进行比较,并使用Bonferroni多重比较在显着性水平0.05上对差异进行统计分析。结果表明,无法找到用于正确分割所有结构的最佳图集,并且在分割精度方面,被定义为明显优于至少两个其他模板的一组优选模板,在结构之间存在显着差异。此外,与其他模板相比,在某些结构的分割中提供最佳精度的模板可能会为其他结构提供极差的分割精度。结论是,由于受试者之间的差异很大,因此没有模板可以自动分割大脑中的所有解剖结构。使用单个固定模板进行脑分割不会导致良好的整体分割精度。这证明在人脑基于图集的分割的背景下,需要基于多个图集的解决方案。

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