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Clustering white matter fibers using support vector machines: A volumetric conformal mapping approach

机译:使用支持向量机将白质纤维聚类:体积保形映射方法

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White matter tractography is non-invasive method to study white matter microstructure within the brain and its connectivity across the different regions. Various neuro-degenerative diseases affect the white matter connectivity in the brain. In order to study the neurodegeneration and localize the affected fiber bundles, it is important to cluster the white matter fibers in an anatomically consistent manner. Clustering white matter fiber bundles in the brain is a challenging problem. The present approaches include region of interest (ROI) based clustering as well as template based clustering. A novel clustering technique using support vector machine framework is introduced. In this method, a conformal volumetric bijective mapping between the brain and the topologically equivalent sphere is established. The white matter fibers are then parameterized in this domain. Such a parameterization also introduces a spatial normalization without requiring any prior registration. We show that such a mapping is useful to learn statistical models of white matter fiber bundles and use it for clustering in a new subject.
机译:白质束摄影术是研究大脑内白质微观结构及其在不同区域之间的连通性的一种非侵入性方法。各种神经退行性疾病会影响大脑中的白质连通性。为了研究神经变性和定位受影响的纤维束,以解剖学上一致的方式使白质纤维成簇很重要。将白质纤维束聚集在大脑中是一个具有挑战性的问题。本方法包括基于感兴趣区域(ROI)的聚类以及基于模板的聚类。介绍了一种使用支持​​向量机框架的新型聚类技术。在这种方法中,建立了大脑与拓扑等效球体之间的保形体积双射映射。然后在该域中将白质纤维参数化。这种参数化还引入了空间标准化,而无需任何事先注册。我们表明,这种映射对于学习白质纤维束的统计模型并将其用于新主题的聚类非常有用。

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