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首页> 外文期刊>Journal of Neuroscience Methods >Granger causality analysis implementation on MATLAB: A graphic user interface toolkit for fMRI data processing
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Granger causality analysis implementation on MATLAB: A graphic user interface toolkit for fMRI data processing

机译:MATLAB上的Granger因果关系分析实现:用于fMRI数据处理的图形用户界面工具包

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A lot of functional magnetic resonance imaging (fMRI) studies have indicated that Granger causality analysis (GCA) is a suitable method to reveal causal effect among brain regions. Based on another MATLAB GUI toolkit, Resting State fMRI Data Analysis Toolkit (REST), we implemented GCA on MATLAB as a graphical user interface (GUI) toolkit. This toolkit, namely REST-GCA, could output both the residual-based F and the signed-path coefficient. REST-GCA also intergrates a programme that could transform the distribution of residual-based F to approximately normal distribution and then permit parametric statistical inference at group level. Using REST-GCA, we tested the causal effect of the right frontal-insular cortex (rFIC) onto each voxel in the whole brain, and vice versa, each voxel in the whole brain on the rFIC, in a voxel-wise way in a resting-state fMRI dataset from 30 healthy college students. Using Jarque-Bera goodness-of-fit test and the Lilliefors goodness-of-fit test, we found that the transformation from F to F' and the further standardization from F' to Z score substantially improved the normality. The results of one sample t-tests on Z score showed bi-directional positive causal effect between rFIC and the dorsal anterior cingulate cortex (dACC). One sample t-tests on the signed-path coefficients showed positive causal effect from rFIC to dACC but negative from dACC to rFIC. All these results indicate that REST-GCA may be useful toolkit for caudal analysis of fMRI data.
机译:许多功能磁共振成像(fMRI)研究表明,格兰杰因果关系分析(GCA)是揭示大脑区域之间因果关系的合适方法。基于另一个MATLAB GUI工具箱“静止状态fMRI数据分析工具箱(REST)”,我们在MATLAB上实现了GCA作为图形用户界面(GUI)工具箱。该工具包(即REST-GCA)可以输出基于残差的F和有符号路径系数。 REST-GCA还集成了一个程序,该程序可以将基于残差的F的分布转换为近似正态分布,然后允许在组级别进行参数统计推断。使用REST-GCA,我们测试了右额叶-皮层皮质(rFIC)对整个大脑中每个体素的因果作用,反之亦然,以rFIC方式对整个大脑中每个体素在rFIC上的因果关系进行了测试来自30位健康大学生的静止状态fMRI数据集。使用Jarque-Bera拟合优度检验和Lilliefors拟合优度检验,我们发现从F到F'的转换以及从F'到Z评分的进一步标准化大大改善了正态性。一项关于Z分数的t检验样本的结果显示,rFIC与背扣带前皮(dACC)之间存在双向正因果关系。一项对符号路径系数的t检验样本显示,从rFIC到dACC的正因果关系,但从dACC到rFIC的负因果关系。所有这些结果表明,REST-GCA可能对fMRI数据的尾部分析有用。

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