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首页> 外文期刊>NeuroImage >Unsupervised white matter fiber clustering and tract probability map generation: applications of a Gaussian process framework for white matter fibers.
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Unsupervised white matter fiber clustering and tract probability map generation: applications of a Gaussian process framework for white matter fibers.

机译:无监督的白质纤维聚类和管道概率图生成:高斯过程框架对白质纤维的应用。

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With the increasing importance of fiber tracking in diffusion tensor images for clinical needs, there has been a growing demand for an objective mathematical framework to perform quantitative analysis of white matter fiber bundles incorporating their underlying physical significance. This article presents such a novel mathematical framework that facilitates mathematical operations between tracts using an inner product between fibres. Such inner product operation, based on Gaussian processes, spans a metric space. This metric facilitates combination of fiber tracts, rendering operations like tract membership to a bundle or bundle similarity simple. Based on this framework, we have designed an automated unsupervised atlas-based clustering method that does not require manual initialization nor an a priori knowledge of the number of clusters. Quantitative analysis can now be performed on the clustered tract volumes across subjects, thereby avoiding the need for point parameterization of these fibers, or the use of medial or envelope representations as in previous work. Experiments on synthetic data demonstrate the mathematical operations. Subsequently, the applicability of the unsupervised clustering framework has been demonstrated on a 21-subject dataset.
机译:随着纤维张量在弥散张量图像中满足临床需求的重要性日益提高,对客观数学框架的需求不断增长,以对包含其潜在物理意义的白质纤维束进行定量分析。本文介绍了这样一种新颖的数学框架,该框架使用纤维之间的内积促进了道之间的数学运算。这种基于高斯过程的内积运算跨越一个度量空间。该度量有助于光纤束的组合,使像束成员关系或束相似度这样的操作变得简单。基于此框架,我们设计了一种自动的无监督基于图集的聚类方法,该方法不需要手动初始化,也不需要先验数量的簇数。现在可以对跨主题的聚集管道体积进行定量分析,从而避免了对这些纤维进行点参数化的需要,也无需像以前的工作中那样使用中间或包络表示。综合数据实验证明了数学运算。随后,在21个对象的数据集上证明了无监督聚类框架的适用性。

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