TractCloud:使用新颖的局部-全局流线型点云表示的免配准的轨迹图分割

Tengfei Xue, Yuqian Chen, Chaoyi Zhang, A. Golby, N. Makris, Y. Rathi, Weidong (Tom) Cai, Fan Zhang, L. O’Donnell
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引用次数: 0

摘要

弥散MRI纤维束成像将流线分割成解剖纤维束,使临床和科学应用的量化和可视化成为可能。目前的束状图分割方法严重依赖于配准,但配准不准确会影响分割,而且对于大规模数据集,配准的计算成本很高。最近,人们提出了基于深度学习的方法,使用各种类型的流线表示来进行轨迹图分割。然而,这些方法只关注来自单一流线的信息,忽略了大脑流线之间的几何关系。我们提出了TractCloud,这是一个无配准的框架,可以直接在单个主题空间中执行全脑束图分割。我们提出了一种新颖的,可学习的,局部-全局流线表示,利用来自邻近和全脑流线的信息来描述大脑的局部解剖和全局姿态。我们在大规模标记的轨迹图数据集上训练我们的框架,我们通过应用包括旋转、缩放和平移在内的综合变换来增强该数据集。我们在涉及人口和健康状况的五个独立获得的数据集上测试了我们的框架。在所有测试数据集上,TractCloud的性能明显优于几种最先进的方法。TractCloud在整个生命周期(从新生儿到老年受试者,包括脑肿瘤患者)中实现高效和一致的全脑白质包裹,而无需注册。TractCloud的鲁棒性和高推理速度使其适合于大规模的轨迹数据分析。我们的项目页面可访问https://tractcloud.github.io/。
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TractCloud: Registration-free tractography parcellation with a novel local-global streamline point cloud representation
Diffusion MRI tractography parcellation classifies streamlines into anatomical fiber tracts to enable quantification and visualization for clinical and scientific applications. Current tractography parcellation methods rely heavily on registration, but registration inaccuracies can affect parcellation and the computational cost of registration is high for large-scale datasets. Recently, deep-learning-based methods have been proposed for tractography parcellation using various types of representations for streamlines. However, these methods only focus on the information from a single streamline, ignoring geometric relationships between the streamlines in the brain. We propose TractCloud, a registration-free framework that performs whole-brain tractography parcellation directly in individual subject space. We propose a novel, learnable, local-global streamline representation that leverages information from neighboring and whole-brain streamlines to describe the local anatomy and global pose of the brain. We train our framework on a large-scale labeled tractography dataset, which we augment by applying synthetic transforms including rotation, scaling, and translations. We test our framework on five independently acquired datasets across populations and health conditions. TractCloud significantly outperforms several state-of-the-art methods on all testing datasets. TractCloud achieves efficient and consistent whole-brain white matter parcellation across the lifespan (from neonates to elderly subjects, including brain tumor patients) without the need for registration. The robustness and high inference speed of TractCloud make it suitable for large-scale tractography data analysis. Our project page is available at https://tractcloud.github.io/.
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