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Implementation of High-Performance Correlation and Mapping Engine for Rapid Generation of Brain Connectivity Networks from Big fMRI Data

机译:高性能关联和映射引擎的实现,可从大功能磁共振成像数据快速生成大脑连接网络

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With the emergence of the dynamic functional connectivity analysis, and the studies relying on real-time neurological feedback, the need for rapid processing methods becomes even more critical. Seed-based Correlation Analysis (SCA) of fMRI data has been used to create brain connectivity networks. With close to a million voxels in a fMRI dataset, the number of calculations involved in SCA becomes high. This work aims to demonstrate a new approach which produces high-resolution brain connectivity maps rapidly. The results show that HPCME with four FPGAs can improve the SCA processing speed by a factor of 40 or more over that of a PC workstation with a multicore CPU.
机译:随着动态功能连接性分析的出现,以及依赖实时神经学反馈的研究,对快速处理方法的需求变得更加关键。 fMRI数据的基于种子的相关性分析(SCA)已用于创建大脑连接性网络。在fMRI数据集中有近一百万个体素,SCA中涉及的计算数量变得很高。这项工作旨在演示一种新方法,该方法可以快速生成高分辨率的大脑连接图。结果表明,与具有多核CPU的PC工作站相比,具有四个FPGA的HPCME可以将SCA处理速度提高40倍以上。

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