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Spatial vs. Temporal Features in ICA of Resting-State fMRI - A Quantitative and Qualitative Investigation in the Context of Response Inhibition.

机译:静息态功能磁共振成像ICA的空间与时间特征-响应抑制背景下的定量和定性研究。

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摘要

Independent component analysis (ICA) can identify covarying functional networks in the resting brain. Despite its relatively widespread use, the potential of the temporal information (unlike spatial information) obtained by ICA from resting state fMRI (RS-fMRI) data is not always fully utilized. In this study, we systematically investigated which features in ICA of resting-state fMRI relate to behaviour, with stop signal reaction time (SSRT) in a stop-signal task taken as a test case. We did this by correlating SSRT with the following three kinds of measure obtained from RS-fMRI data: (1) the amplitude of each resting state network (RSN) (evaluated by the standard deviation of the RSN timeseries), (2) the temporal correlation between every pair of RSN timeseries, and (3) the spatial map of each RSN. For multiple networks, we found significant correlations not only between SSRT and spatial maps, but also between SSRT and network activity amplitude. Most of these correlations are of functional interpretability. The temporal correlations between RSN pairs were of functional significance, but these correlations did not appear to be very sensitive to finding SSRT correlations. In addition, we also investigated the effects of the decomposition dimension, spatial smoothing and Z-transformation of the spatial maps, as well as the techniques for evaluating the temporal correlation between RSN timeseries. Overall, the temporal information acquired by ICA enabled us to investigate brain function from a complementary perspective to the information provided by spatial maps.
机译:独立成分分析(ICA)可以识别静息大脑中各种功能网络。尽管它的使用相对广泛,但ICA从静止状态fMRI(RS-fMRI)数据中获得的时间信息(与空间信息不同)的潜力并未始终得到充分利用。在这项研究中,我们以停止信号任务中的停止信号反应时间(SSRT)作为测试案例,系统地研究了静止状态fMRI ICA中与行为有关的特征。我们通过将SSRT与从RS-fMRI数据获得的以下三种测量值相关联来做到这一点:(1)每个静止状态网络(RSN)的振幅(通过RSN时间序列的标准偏差评估),(2)时间每对RSN时间序列之间的相关性,以及(3)每个RSN的空间图。对于多个网络,我们不仅发现SSRT与空间图之间存在显着相关性,而且还发现SSRT与网络活动幅度之间存在显着相关性。这些关联中的大多数具有功能可解释性。 RSN对之间的时间相关性具有功能重要性,但是这些相关性似乎对发现SSRT相关性并不十分敏感。此外,我们还研究了空间图的分解维数,空间平滑和Z变换​​的影响,以及用于评估RSN时间序列之间的时间相关性的技术。总体而言,ICA获得的时间信息使我们能够从与空间图提供的信息互补的角度研究大脑功能。

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