Functional Connectivity in Default Mode Network During Resting State: An Evaluation of the Effects of Data Pre-processing
Pouya Ghaemmaghami

TL;DR
This study evaluates how different data pre-processing strategies, including ROI selection and physiological noise correction, influence resting state functional connectivity estimates in the default mode network.
Contribution
It systematically compares three ROI selection methods and assesses the impact of physiological noise correction on connectivity measures in resting state fMRI.
Findings
Physiological noise correction reduces artifactual correlations.
Individual ICA-based ROI selection increases connectivity estimates.
Both factors significantly affect the reliability of functional connectivity analysis.
Abstract
Resting state functional connectivity estimates from MRI measures has become a promising tool to characterize human brain networks. There are, however, limitations in the method since several sources of errors have been seen to significantly affect the final estimates. This has lead to a great interest in the field to do systematic investigations that help determine the most reliable and robust strategies to perform functional connectivity analysis. In the present study, we examine the influence of two aspects of data pre- processing in resting state functional connectivity analysis: the effect of criteria used to select nodes in the default mode network (DMN) for the computation of connectivity, and the effect of using or not physiological noise correction. Three different strategies of region of interest (ROI) selection were compared to define DMN node coordinates: (1) ROIs centered…
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Taxonomy
TopicsSoftware System Performance and Reliability · Functional Brain Connectivity Studies · Anomaly Detection Techniques and Applications
