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Deep White Matter Analysis: Fast, Consistent Tractography Segmentation Across Populations and dMRI Acquisitions

机译:深白物质分析:跨越人口和DMRI采集的快速,一致的牵引细分

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We present a deep learning tractography segmentation method that allows fast and consistent white matter fiber tract identification across healthy and disease populations and across multiple diffusion MRI (dMRI) acquisitions. We create a large-scale training tractography dataset of 1 million labeled fiber samples (54 anatomical tracts are included). To discriminate between fibers from different tracts, we propose a novel 2D multi-channel feature descriptor (FiberMap) that encodes spatial coordinates of points along each fiber. We learn a CNN tract classification model based on FiberMap and obtain a high tract classification accuracy of 90.99%. The method is evaluated on a test dataset of 374 dMRI scans from three independently acquired populations across health conditions (healthy control, neuropsychiatric disorders, and brain tumor patients). We perform comparisons with two state-of-the-art white matter tract segmentation methods. Experimental results show that our method obtains a highly consistent segmentation result, where over 99% of the fiber tracts are successfully detected across all subjects under study, most importantly, including patients with space occupying brain tumors. The proposed method leverages deep learning techniques and provides a much faster and more efficient tool for large data analysis than methods using traditional machine learning techniques.
机译:我们提出了一种深入的学习牵引分割方法,可以跨越健康和疾病群体和多个扩散MRI(DMRI)采集的快速和一致的白质纤维鉴定。我们创建了一个大型培训牵引数据集,其中100万标记的纤维样本(包括54个解剖学)。为了区分来自不同派的纤维,我们提出了一种新的2D多通道特征描述符(Fibermap),其编码沿着每个光纤的点的空间坐标。我们学习基于FIBEMAP的CNN传输模型,获得90.99%的高管分类精度。该方法在374dmRI扫描的测试数据集中评估来自跨健康状况的三个独立获取的群体(健康对照,神经精神障碍和脑肿瘤患者)。我们用两种最先进的白质子分段方法进行比较。实验结果表明,我们的方法获得了高度一致的分割结果,其中超过99%的纤维椎间纤维在研究中成功地检测到,最重要的是,包括患有空间脑肿瘤的患者。该方法利用了深度学习技术,并提供了比使用传统机器学习技术的方法更快,更有效的工具。

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