The dependence between pairs of time series is commonly quantified by Pearson's correlation. However, if the time series are themselves dependent (i.e. exhibit temporal autocorrelation), the effective degrees of freedom (EDF) are reduced, the standard error of the sample correlation coefficient is biased, and Fisher's transformation fails to stabilise the variance. Since fMRI time series are notoriously autocorrelated, the issue of biased standard errors – before or after Fisher's transformation – becomes vital in individual-level analysis of resting-state functional connectivity (rsFC) and must be addressed anytime a standardised Z-score is computed. We find that the severity of autocorrelation is highly dependent on spatial characteristic...
Functional connectivity (FC) analysis is a prominent approach to analyzing fMRI data, especially acq...
Graph theoretical analysis of brain networks based on resting-state functional MRI (R-fMRI) has attr...
Functional connectivity (FC) analysis is a prominent approach to analyzing fMRI data, especially acq...
The dependence between pairs of time series is commonly quantified by Pearson's correlation. However...
Abstract A typical time series in functional magnetic resonance imaging (fMRI) exhibits autocorrelat...
Correlation-based functional MRI connectivity methods typically impose a temporal sample independenc...
Agrowing number of studies are focusing on methods to estimate and analyze the functional connectome...
Patterns of brain structural connectivity (SC) and functional connectivity (FC) are known to be rela...
Slow (,0.1 Hz) oscillatory activity in the human brain, as measured by functional magnetic imaging, ...
Studies of brain-wide functional connectivity or structural covariance typically use measures like t...
International audienceAnalysis of interactions in the brain in terms of functional resting-state net...
Slow (<0.1 Hz) oscillatory activity in the human brain, as measured by functional magnetic imaging, ...
There have been many interpretations of functional connectivity and proposed measures of temporal co...
The general linear model provides the most widely applied statistical framework for analyzing functi...
© 2018 Reliability of subject-level resting-state functional connectivity (FC) is determined in part...
Functional connectivity (FC) analysis is a prominent approach to analyzing fMRI data, especially acq...
Graph theoretical analysis of brain networks based on resting-state functional MRI (R-fMRI) has attr...
Functional connectivity (FC) analysis is a prominent approach to analyzing fMRI data, especially acq...
The dependence between pairs of time series is commonly quantified by Pearson's correlation. However...
Abstract A typical time series in functional magnetic resonance imaging (fMRI) exhibits autocorrelat...
Correlation-based functional MRI connectivity methods typically impose a temporal sample independenc...
Agrowing number of studies are focusing on methods to estimate and analyze the functional connectome...
Patterns of brain structural connectivity (SC) and functional connectivity (FC) are known to be rela...
Slow (,0.1 Hz) oscillatory activity in the human brain, as measured by functional magnetic imaging, ...
Studies of brain-wide functional connectivity or structural covariance typically use measures like t...
International audienceAnalysis of interactions in the brain in terms of functional resting-state net...
Slow (<0.1 Hz) oscillatory activity in the human brain, as measured by functional magnetic imaging, ...
There have been many interpretations of functional connectivity and proposed measures of temporal co...
The general linear model provides the most widely applied statistical framework for analyzing functi...
© 2018 Reliability of subject-level resting-state functional connectivity (FC) is determined in part...
Functional connectivity (FC) analysis is a prominent approach to analyzing fMRI data, especially acq...
Graph theoretical analysis of brain networks based on resting-state functional MRI (R-fMRI) has attr...
Functional connectivity (FC) analysis is a prominent approach to analyzing fMRI data, especially acq...