Department of Electronic Engineering, Tsinghua University, Beijing, China.
PLoS One. 2013 May 10;8(5):e62789. doi: 10.1371/journal.pone.0062789. Print 2013.
Recently, a combination of non-invasive neuroimaging techniques and graph theoretical approaches has provided a unique opportunity for understanding the patterns of the structural and functional connectivity of the human brain (referred to as the human brain connectome). Currently, there is a very large amount of brain imaging data that have been collected, and there are very high requirements for the computational capabilities that are used in high-resolution connectome research. In this paper, we propose a hybrid CPU-GPU framework to accelerate the computation of the human brain connectome. We applied this framework to a publicly available resting-state functional MRI dataset from 197 participants. For each subject, we first computed Pearson's Correlation coefficient between any pairs of the time series of gray-matter voxels, and then we constructed unweighted undirected brain networks with 58 k nodes and a sparsity range from 0.02% to 0.17%. Next, graphic properties of the functional brain networks were quantified, analyzed and compared with those of 15 corresponding random networks. With our proposed accelerating framework, the above process for each network cost 80∼150 minutes, depending on the network sparsity. Further analyses revealed that high-resolution functional brain networks have efficient small-world properties, significant modular structure, a power law degree distribution and highly connected nodes in the medial frontal and parietal cortical regions. These results are largely compatible with previous human brain network studies. Taken together, our proposed framework can substantially enhance the applicability and efficacy of high-resolution (voxel-based) brain network analysis, and have the potential to accelerate the mapping of the human brain connectome in normal and disease states.
最近,非侵入性神经影像学技术和图论方法的结合为理解人类大脑的结构和功能连接模式(称为人类大脑连接组)提供了独特的机会。目前,已经收集了大量的脑成像数据,对用于高分辨率连接组研究的计算能力有很高的要求。在本文中,我们提出了一种混合 CPU-GPU 框架来加速人类大脑连接组的计算。我们将该框架应用于来自 197 名参与者的公开可用的静息状态功能磁共振成像数据集。对于每个受试者,我们首先计算了灰质体素时间序列之间的任何对的 Pearson 相关系数,然后构建了无权重无向脑网络,其中包含 58k 个节点,稀疏度范围为 0.02%至 0.17%。接下来,量化、分析了功能脑网络的图形属性,并将其与 15 个相应的随机网络进行了比较。使用我们提出的加速框架,每个网络的上述过程耗时 80∼150 分钟,具体取决于网络稀疏度。进一步的分析表明,高分辨率功能脑网络具有有效的小世界属性、显著的模块结构、幂律度分布以及中额叶和顶叶皮质区域的高度连接节点。这些结果与之前的人类大脑网络研究基本一致。总之,我们提出的框架可以大大提高高分辨率(体素)脑网络分析的适用性和效率,并有可能加速正常和疾病状态下人类大脑连接组的映射。