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White Matter Supervoxel Segmentation by Axial DP-Means Clustering

机译:轴向DP均值聚类的白质Supertoxel分割

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A powerful aspect of diffusion MR imaging is the ability to reconstruct fiber orientations in brain white matter; however, the application of traditional learning algorithms is challenging due to the directional nature of the data. In this paper, we present an algorithmic approach to clustering such spatial and orientation data and apply it to brain white matter supervoxel segmentation. This approach is an extension of the DP-means algorithm to support axial data, and we present its theoretical connection to probabilistic models, including the Gaussian and Watson distributions. We evaluate our method with the analysis of synthetic data and an application to diffusion tensor atlas segmentation. We find our approach to be efficient and effective for the automatic extraction of regions of interest that respect the structure of brain white matter. The resulting supervoxel segmentation could be used to map regional anatomical changes in clinical studies or serve as a domain for more complex modeling.
机译:扩散MR成像的强大方面是重建脑白质中的纤维取向的能力;然而,由于数据的方向性,传统学习算法的应用是具有挑战性的。在本文中,我们提出了一种聚类这种空间和方向数据的算法方法,并将其应用于脑白质Supertoxel分割。这种方法是支持轴向数据的DP均值算法的扩展,我们介绍了与概率模型的理论连接,包括高斯和沃森分布。我们通过分析了合成数据和扩散张量Atlas分割的应用来评估我们的方法。我们发现我们的方法是高效且有效地自动提取尊重脑白质结构的感兴趣区域。得到的超氧化素分割可用于映射临床研究的区域解剖变量,或者用作更复杂的建模的域。

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