Shape modeling and clustering of white matter fiber tracts using fourier descriptors

Xuwei Liang, Qi Zhuang, Ning Cao, Jun Zhang
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引用次数: 21

Abstract

Reliable shape modeling and clustering of white matter fiber tracts is essential for clinical and anatomical studies that use diffusion tensor imaging (DTI) tractography techniques. In this work we present a novel scheme to model the shape of white matter fiber tracts reconstructed from DTI and cluster them into bundles using Fourier descriptors. We characterize a tract's shape by using Fourier descriptors which are effective in capturing shape properties of fiber tracts. Fourier descriptors derived from different shape signatures are analyzed. Clustering is then performed on these multi-dimensional features in conjunction with mass centers using a k-means like threshold based approach. The advantage of this method lies in the fact that Fourier descriptors achieve spatial independent representation and normalization of white matter fiber tracts which makes it useful for tract comparison across subjects. It also eliminates the need to find matching correspondences between two randomly organized tracts from whole brain tracking. Several issues related to tract shape representation and normalization are also discussed. Real DTI datasets are used to test this technique. Experiment results show that this technique can effectively separate multiple fascicles into plausible bundles.
利用傅立叶描述子的白质纤维束形状建模与聚类
可靠的白质纤维束形状建模和聚类对于使用弥散张量成像(DTI)纤维束成像技术进行临床和解剖学研究至关重要。在这项工作中,我们提出了一种新的方案来模拟从DTI重建的白质纤维束的形状,并使用傅里叶描述子将它们聚类成束。我们使用傅立叶描述子来描述纤维束的形状,这种描述子可以有效地捕捉纤维束的形状特性。分析了不同形状特征的傅里叶描述子。然后使用基于k-means的阈值方法对这些多维特征与质量中心一起进行聚类。该方法的优点在于傅里叶描述子实现了白质纤维束的空间独立表示和归一化,便于受试者间纤维束的比较。它还消除了从全脑跟踪中寻找两个随机组织的束之间匹配对应的需要。讨论了束形表示和规格化的几个相关问题。真实的DTI数据集用于测试该技术。实验结果表明,该方法可以有效地将多个束分离成似是而非的束。
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