2020
DOI: 10.1101/2020.03.06.980193
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Typicality of Functional Connectivity robustly captures motion artifacts in rs-fMRI across datasets, atlases and preprocessing pipelines

Abstract: Functional connectivity analysis of resting state fMRI data has recently become one of the most common approaches to characterizing individual brain function. It has been widely suggested that the functional connectivity matrix, calculated by correlating signals from regions of interest, is a useful approximate representation of the brain's connectivity, potentially providing behaviorally or clinically relevant markers. However, functional connectivity estimates are known to be detrimentally affected by variou… Show more

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Cited by 3 publications
(3 citation statements)
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References 70 publications
(119 reference statements)
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“…Second, functional images were corrected for slice-timing by using slice interpolation to interpolate the voxel time, and head motion correction was performed. According to the criteria of spatial movement, participants with head motion >2.0° of rotation or 2.0 mm of translation in any direction were removed (32). Third, the fMRI images were spatially co-registered with their anatomical T1 image and then resampled to 3×3×3 mm 3 voxels (33).…”
Section: Image Preprocessingmentioning
confidence: 99%
“…Second, functional images were corrected for slice-timing by using slice interpolation to interpolate the voxel time, and head motion correction was performed. According to the criteria of spatial movement, participants with head motion >2.0° of rotation or 2.0 mm of translation in any direction were removed (32). Third, the fMRI images were spatially co-registered with their anatomical T1 image and then resampled to 3×3×3 mm 3 voxels (33).…”
Section: Image Preprocessingmentioning
confidence: 99%
“…Of course, the observed SC-FC relation may differ depending on the specific pipelines used to estimate the SC and FC. For example, with more conservative preprocessing that aims to suppress potential artifact sources, the individual FC matrices resemble more the typical FC matrix [Kopal et al, 2020] and, in our case, leads to globally decreasing strength of the functional connectivity (for the effects of commonly used preprocessing components see [Bartoň et al, 2019]); at the same time different fiber tracking methods would also lead to varying estimates of SC [Schirner et al, 2015].…”
Section: Resultsmentioning
confidence: 99%
“…Furthermore, to remove possible signal drift, time-series were linearly detrended and filtered by band-pass filter [0.009-0.08Hz]. See Kopal et al (2020) and Oliver et al (2019) for detailed prepocessing description. To extract the time series for further analysis, the brain’s spatial domain was divided into 90 non-overlapping regions of interest (ROIs) according to the AAL atlas; from each ROI we extract one BOLD time series by averaging the time series of all voxels in the ROI.…”
Section: Methodsmentioning
confidence: 99%