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Making Human Connectome Faster: GPU Acceleration of Brain Network Analysis

机译:使人类Connectome更快:大脑网络分析的GPU加速

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The research on complex Brain Networks plays a vital role in understanding the connectivity patterns of the human brain and disease-related alterations. Recent studies have suggested a noninvasive way to model and analyze human brain networks by using multi-modal imaging and graph theoretical approaches. Both the construction and analysis of the Brain Networks require tremendous computation. As a result, most current studies of the Brain Networks are focused on a coarse scale based on Brain Regions. Networks on this scale usually consist around 100 nodes. The more accurate and meticulous voxel-base Brain Networks, on the other hand, may consist 20K to 100K nodes. In response to the difficulties of analyzing large-scale networks, we propose an acceleration framework for voxel-base Brain Network Analysis based on Graphics Processing Unit (GPU). Our GPU implementations of Brain Network construction and modularity achieve 24x and 80x speedup respectively, compared with single-core CPU. Our work makes the processing time affordable to analyze multiple large-scale Brain Networks.
机译:对复杂的大脑网络的研究在理解人脑和疾病相关变化的连接方式方面起着至关重要的作用。最近的研究提出了一种通过使用多模式成像和图形理论方法来建模和分析人脑网络的非侵入性方法。脑网络的构建和分析都需要大量的计算。结果,当前对大脑网络的大多数研究都集中在基于大脑区域的粗略尺度上。如此规模的网络通常包含约100个节点。另一方面,更精确,更细致的基于体素的大脑网络可能包含2万到10万个节点。针对大型网络分析的难点,提出了一种基于图形处理单元(GPU)的基于体素的脑网络分析加速框架。与单核CPU相比,我们的Brain Network构建和模块化GPU实现分别实现了24倍和80倍的加速。我们的工作使分析多个大型大脑网络的处理时间负担得起。

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