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A hybrid approach for optimal automatic segmentation of White Matter tracts in HARDI

机译:一种混合方法,用于硬脂中白质龟的最佳自动分割

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Whole brain tractography generates a very huge dataset composed by various tracts of different shapes, lengths, positions. Then clustering them into anatomically meaningful bundles is a challenge. Until now, several clustering methods have been proposed such as methods based on similarity measures or methods based on anatomical information, but no optimal clustering criteria were found yet. All methods have deficiencies. The combination of appropriate and distinguishable aspects of both methods is recommended to improve the results. Therefore, the aim of this study was to develop a new combined approach that incorporates various features in order on one hand to overcome the size and the complexity of the tractography datasets and the other for more efficacy and precision of clustering results. We propose a hybrid approach for automatic segmentation of White Matter (WM) tracts in HARDI that combines two complementary levels. The first level of our contribution is based on a similarity measure which aims to reduce the dimensionality of the data. The second level embeds a priori knowledge represented by a subject bundle atlas constructed in this work to improve the result of the clustering. Our method is able to well extract 13 major WM bundles. The results accuracy are measured by a Kappa analysis between the proposed method results and bundle atlas. The average Kappa values is superior to 0.70, it suggests substantial agreement.
机译:整个大脑牵引图产生由不同形状,长度,位置的各个暗影组成的非常庞大的数据集。然后将它们聚集到解剖学上有意义的束中是一个挑战。到目前为止,已经提出了几种聚类方法,例如基于基于解剖信息的相似度测量或方法的方法,但尚未发现最佳聚类标准。所有方法都有缺陷。建议使用两种方法的适当和可区分方面的组合来改善结果。因此,本研究的目的是开发一种新的组合方法,该方法掺入各种特征,以克服牵引数据集的尺寸和复杂性,以及其他疗效和聚类结果的精度。我们提出了一种混合方法,用于在结合两个互补水平的硬脂中自动分割白质(WM)束的自动分割。我们贡献的第一级是基于相似性措施,旨在减少数据的维度。第二级嵌入了由在这项工作中构建的主题捆绑包表示的先验知识,以改善群集的结果。我们的方法能够良好提取13个主要的WM捆绑包。结果精度通过所提出的方法结果和束地图集之间的κ分析来测量。平均kappa值优于0.70,表明重大协议。

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