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Genetic algorithm supported by graphical processing unit improves the exploration of effective connectivity in functional brain imaging

机译:图形处理单元支持的遗传算法改善了功能性脑成像中有效连接的探索

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Brain regions of human subjects exhibit certain levels of associated activation upon specific environmental stimuli. Functional Magnetic Resonance Imaging (fMRI) detects regional signals, based on which we could infer the direct or indirect neuronal connectivity between the regions. Structural Equation Modeling (SEM) is an appropriate mathematical approach for analyzing the effective connectivity using fMRI data. A maximum likelihood (ML) discrepancy function is minimized against some constrained coefficients of a path model. The minimization is an iterative process. The computing time is very long as the number of iterations increases geometrically with the number of path coefficients. Using regular Quad-Core Central Processing Unit (CPU) platform, duration up to 3 months is required for the iterations from 0 to 30 path coefficients. This study demonstrates the application of Graphical Processing Unit (GPU) with the parallel Genetic Algorithm (GA) that replaces the Powell minimization in the standard program code of the analysis software package. It was found in the same example that GA under GPU reduced the duration to 20 h and provided more accurate solution when compared with standard program code under CPU.
机译:人类受试者的大脑区域在特定的环境刺激下表现出一定水平的相关激活。功能磁共振成像(fMRI)检测区域信号,基于此我们可以推断区域之间的直接或间接神经元连通性。结构方程模型(SEM)是使用fMRI数据分析有效连通性的合适数学方法。针对路径模型的某些约束系数,最大似然(ML)差异函数被最小化。最小化是一个迭代过程。计算时间非常长,因为迭代次数随路径系数的数量几何增加。使用常规的四核中央处理器(CPU)平台,从0到30路径系数的迭代最多需要3个月的时间。这项研究演示了图形处理单元(GPU)和并行遗传算法(GA)的应用,该算法取代了分析软件包的标准程序代码中的Powell最小化。在同一示例中发现,与CPU下的标准程序代码相比,GPU下的GA将持续时间缩短至20小时,并提供了更准确的解决方案。

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