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FiberNET: An Ensemble Deep Learning Framework for Clustering White Matter Fibers

机译:FiberNET:用于群集白色物质纤维的集成深度学习框架

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White matter tracts are commonly analyzed in studies of micro-structural integrity and anatomical connectivity in the brain. Over the last decade, it has been an open problem as to how best to cluster white matter fibers, extracted from whole-brain tractography, into anatomically meaningful groups. Some existing techniques use region of interest (ROI) based clustering, atlas-based labeling, or unsupervised spectral clustering. ROI-based clustering is popular for analyzing anatomical connectivity among a set of ROIs, but it does not always partition the brain into recognizable fiber bundles. Here we propose an approach using convolutional neural networks (CNNs) to learn shape features of the fiber bundles, which are then exploited to cluster white matter fibers. To achieve such clustering, we first need to re-parameterize the fibers in an intrinsic space. The clustering is performed in induced parameterized coordinates. To our knowledge, this is one of the first approaches for fiber clustering using deep learning techniques. The results show strong accuracy - on a par with or better than other state-of-the-art methods.
机译:在研究大脑的微结构完整性和解剖学连通性时,通常会分析白质束。在过去的十年中,如何最好地将从全脑束摄影术中提取出的白质纤维聚集到具有解剖学意义的组中一直是一个悬而未决的问题。一些现有技术使用基于兴趣区域(ROI)的聚类,基于图集的标记或无监督的光谱聚类。基于ROI的聚类通常用于分析一组ROI之间的解剖学连通性,但它并不总是将大脑分成可识别的纤维束。在这里,我们提出了一种使用卷积神经网络(CNN)来学习纤维束的形状特征的方法,然后将其用于对白质纤维进行聚类。为了实现这种聚类,我们首先需要重新参数化本征空间中的纤维。在诱导的参数化坐标中执行聚类。据我们所知,这是使用深度学习技术进行光纤群集的首批方法之一。结果表明,该方法具有很高的准确性-与其他最新方法相当或优于其他方法。

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