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HAFNI-enabled largescale platform for neuroimaging informatics (HELPNI)

机译:支持HAFNI的大规模神经影像信息学平台(HELPNI)

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摘要

Tremendous efforts have thus been devoted on the establishment of functional MRI informatics systems that recruit a comprehensive collection of statistical/computational approaches for fMRI data analysis. However, the state-of-the-art fMRI informatics systems are especially designed for specific fMRI sessions or studies of which the data size is not really big, and thus has difficulty in handling fMRI ‘big data.’ Given the size of fMRI data are growing explosively recently due to the advancement of neuroimaging technologies, an effective and efficient fMRI informatics system which can process and analyze fMRI big data is much needed. To address this challenge, in this work, we introduce our newly developed informatics platform, namely, ‘HAFNI-enabled largescale platform for neuroimaging informatics (HELPNI).’ HELPNI implements our recently developed computational framework of sparse representation of whole-brain fMRI signals which is called holistic atlases of functional networks and interactions (HAFNI) for fMRI data analysis. HELPNI provides integrated solutions to archive and process large-scale fMRI data automatically and structurally, to extract and visualize meaningful results information from raw fMRI data, and to share open-access processed and raw data with other collaborators through web. We tested the proposed HELPNI platform using publicly available 1000 Functional Connectomes dataset including over 1200 subjects. We identified consistent and meaningful functional brain networks across individuals and populations based on resting state fMRI (rsfMRI) big data. Using efficient sampling module, the experimental results demonstrate that our HELPNI system has superior performance than other systems for large-scale fMRI data in terms of processing and storing the data and associated results much faster.
机译:因此,在功能性MRI信息学系统的建立上进行了巨大的努力,该系统招募了用于fMRI数据分析的统计/计算方法的全面收集。但是,最新的fMRI信息系统是专门为特定的fMRI会话或研究而设计的,这些会话或研究的数据量并不是很大,因此难以处理fMRI“大数据”。随着神经影像技术的发展,近来随着核磁共振成像技术的爆炸性增长,迫切需要一种能够处理和分析核磁共振成像大数据的有效且高效的核磁共振成像信息系统。为了应对这一挑战,在这项工作中,我们介绍了我们新开发的信息学平台,即“支持HAFNI的大型神经影像信息学平台(HELPNI)。” HELPNI实施了我们最近开发的全脑fMRI信号稀疏表示的计算框架,称为fMRI数据分析功能网络和相互作用的整体图集(HAFNI)。 HELPNI提供了集成的解决方案,可以自动并在结构上存档和处理大规模fMRI数据,从原始fMRI数据中提取和可视化有意义的结果信息,并通过网络与其他协作者共享开放访问的处理后的原始数据。我们使用公开的1000个功能性连接基因组数据集(包括1200多个主题)测试了建议的HELPNI平台。我们基于静止状态功能磁共振成像(rsfMRI)大数据,确定了个体和人群之间一致且有意义的功能性大脑网络。使用有效的采样模块,实验结果表明,对于大规模fMRI数据,HELPNI系统在处理和存储数据及相关结果方面要比其他系统快得多。

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