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Investigating Large-scale Granger causality analysis in Presence of Noise and Varying Sampling Rate

机译:存在噪声和采样率变化时的大规模格兰杰因果关系分析研究

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Large-scale Granger causality (lsGC) analysis quantifies multivariate voxel-resolution connectivity in resting-state functional MRI (fMRI) unlike commonly used multivariate approaches that estimate connectivity at a coarse resolution. We investigate the effect noise and repetition time (TR) of fMRI signals have on the ability of lsGC to capture true connectivity and compare with traditionally used multivariate Granger causality analysis (mvGC). To this end, we use realistic fMRI simulations, generated with varying TR and noise levels, for fifty-node simulations. LsGC produces directed connectivity graphs, represented as connectivity matrices which we compare with the known ground truth of the simulations with the Area Under the receiver operating characteristic Curve (AUC) as a measure of agreement. The best AUC with lsGC was 0.957 while the least was 0.835 at TR = 3 s. Our results show that lsGC performs much better than mvGC approaches for both noise levels and different TR. An interesting finding with lsGC was that at higher sampling rate, corresponding to TR < 2 s increase in noise did not significantly reduce performance. However, as with increasing TR beyond 2 s, the effects of noise in the system is no longer negligible. Our results indicate that if the TR is sufficiently small, the performance of lsGC is not hindered greatly by noise levels. However, at higher TR, the deterioration of performance due to high TR is compounded by higher noise levels, indicating that improvements in TR may be more beneficial in extracting accurate lsGC connections.
机译:大规模Granger因果关系(lsGC)分析可量化静止状态功能MRI(fMRI)中的多元体素分辨率连通性,这与常用的以粗糙分辨率估算连通性的多元方法不同。我们调查功能磁共振成像信号的噪声和重复时间(TR)对lsGC捕获真实连通性的能力的影响,并与传统使用的多元Granger因果关系分析(mvGC)进行比较。为此,我们将真实的fMRI仿真用于50个节点的仿真,这些仿真是通过变化的TR和噪声水平生成的。 LsGC生成有向连通性图,表示为连通性矩阵,我们将其与模拟的已知地面真相进行比较,并根据接收器工作特性曲线下的面积(AUC)来衡量一致性。 lsGC的最佳AUC为0.957,而TR = 3 s的最小AUC为0.835。我们的结果表明,无论是在噪声水平还是在不同的TR上,lsGC的性能都比mvGC的方法好得多。 lsGC的一个有趣发现是,在较高的采样率下,对应于TR <2 s,噪声的增加不会显着降低性能。但是,随着TR超过2 s的增加,系统中的噪声影响不再可忽略不计。我们的结果表明,如果TR足够小,则噪声水平不会大大阻碍lsGC的性能。但是,在较高的TR时,由于较高的TR而导致的性能降低会与较高的噪声水平加在一起,这表明TR的改进在提取准确的lsGC连接方面可能更有利。

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