4.7 Article

PAGANI Toolkit: Parallel graph-theoretical analysis package for brain network big data

Journal

HUMAN BRAIN MAPPING
Volume 39, Issue 5, Pages 1869-1885

Publisher

WILEY
DOI: 10.1002/hbm.23996

Keywords

Big Data; connectome; CUDA; fMRI; graph theory; hub

Funding

  1. Natural Science Foundation of China [81401479, 81671767, 81620108016, 31521063, 61622403, 61621091]
  2. Beijing Natural Science Foundation [Z161100004916027, Z151100003915082, Z161100000216152, Z161100000216125]
  3. Fundamental Research Funds for the Central Universities [2015KJJCA13, 2017XTCX04]
  4. Changjiang Scholar Professorship Award [T2015027]

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The recent collection of unprecedented quantities of neuroimaging data with high spatial resolution has led to brain network big data. However, a toolkit for fast and scalable computational solutions is still lacking. Here, we developed the PArallel Graph-theoretical ANalysIs (PAGANI) Toolkit based on a hybrid central processing unit-graphics processing unit (CPU-GPU) framework with a graphical user interface to facilitate the mapping and characterization of high-resolution brain networks. Specifically, the toolkit provides flexible parameters for users to customize computations of graph metrics in brain network analyses. As an empirical example, the PAGANI Toolkit was applied to individual voxel-based brain networks with similar to 200,000 nodes that were derived from a resting-state fMRI dataset of 624 healthy young adults from the Human Connectome Project. Using a personal computer, this toolbox completed all computations in similar to 27 h for one subject, which is markedly less than the 118 h required with a single-thread implementation. The voxel-based functional brain networks exhibited prominent small-world characteristics and densely connected hubs, which were mainly located in the medial and lateral fronto-parietal cortices. Moreover, the female group had significantly higher modularity and nodal betweenness centrality mainly in the medial/lateral fronto-parietal and occipital cortices than the male group. Significant correlations between the intelligence quotient and nodal metrics were also observed in several frontal regions. Collectively, the PAGANI Toolkit shows high computational performance and good scalability for analyzing connectome big data and provides a friendly interface without the complicated configuration of computing environments, thereby facilitating high-resolution connectomics research in health and disease.

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