Abstract

Intrinsic Connectivity Networks, patterns of correlated activity emerging from “resting-state” BOLD time series, are increasingly being associated with cognitive, clinical, and behavioral aspects, and compared with patterns of activity elicited by specific tasks. We study the reconfiguration of brain networks between task and resting-state conditions by a machine learning approach, to highlight the Intrinsic Connectivity Networks (ICNs) which are more affected by the change of network configurations in task vs. rest. To this end, we use a large cohort of publicly available data in both resting and task-based fMRI paradigms. By applying a battery of different supervised classifiers relying only on task-based measurements, we show that the highest accuracy to predict ICNs is reached with a simple neural network of one hidden layer. In addition, when testing the fitted model on resting state measurements, such architecture yields a performance close to 90% for areas connected to the task performed, which mainly involve the visual and sensorimotor cortex, whilst a relevant decrease of the performance is observed in the other ICNs. On one hand, our results confirm the correspondence of ICNs in both paradigms (task and resting) thus opening a window for future clinical applications to subjects whose participation in a required task cannot be guaranteed. On the other hand it is shown that brain areas not involved in the task display different connectivity patterns in the two paradigms.

Highlights

  • Functional magnetic resonance imaging has become a powerful tool to study brain dynamics with relatively fine spatial resolution

  • We considered both resting-state and task-based Functional magnetic resonance imaging (fMRI) data from 282 unrelated healthy subjects provided by the s900 release in the Human Connectome Project

  • The performance for the rest of hyperparameters tried across the different folds for the different algorithms are depicted in S1, S2, S3 and S4 Figs, which exhibit the stability of the results w.r.t different shufflings of the data

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Summary

Objectives

The aim of the present study is to extend previous works looking at reconfiguration of brain networks between task and resting-state conditions, and to highlight the brain regions

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