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Repository to hold and describe MATLAB/Python scripts for "Oscillatory Networks of High-Level Mental Alignment: A Perspective-Taking MEG Study"

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Oscillatory Networks of High-Level Mental Alignment: A Perspective-Taking MEG Study

Seymour, R.A 1,2,3., Wang, H 1., Rippon, G 1., & Kessler, K 1.

(1) Aston Brain Centre, School of Life and Health Sciences, Aston University, Birmingham, B4 7ET. (2) ARC Centre of Excellence in Cognition and Its Disorders, Macquarie University, Sydney, Australia, 2109. (3) Department of Cognitive Science, Macquarie University, Sydney, Australia, 2109.

Abstract

Mentally imagining another’s perspective is a high-level social process, reliant on manipulating internal representations of the self in an embodied manner. Recently Wang et al., (1) showed that theta-band (3-7Hz) brain oscillations within the right temporo-parietal junction (rTPJ) and brain regions coding for motor/body schema contribute to the process of perspective-taking. Using a task requiring participants to engage in embodied perspective-taking, we set out to unravel the extended functional brain network and its connections in detail. We found that increasing the angle of disparity between self and other perspective was accompanied by longer reaction times and increases in theta power within rTPJ, right lateral pre-frontal cortex (PFC) and right anterior cingulate cortex (ACC). Using nonparametric Granger-causality, we showed that during later stages of perspective-taking, the lateral PFC and ACC exert top-down influences over rTPJ, indicative of executive control processes required for managing conflicts between self and other perspectives. Finally, we quantified patterns of whole-brain phase coupling (imaginary coherence) in relation to rTPJ during high-level perspective taking. Results suggest that rTPJ increases its theta-band phase synchrony with brain regions involved in mentalizing and regions coding for motor/body schema; whilst decreasing its synchrony to visual regions. Implications for neurocognitive models are discussed, and it is proposed that rTPJ acts as a ‘hub’ to route bottom-up visual information to internal representations of the self during perspective-taking, co-ordinated by theta-band oscillations. The self is then projected onto the other’s perspective via embodied motor/body schema transformations, regulated by top-down cingulo-frontal activity.

The manuscript will be posted to BioRxiv (link uploaded when available) and submitted for publication for peer review.

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Scripts

This Github Page hosts a series of Matlab scripts describing the key behavioural and MEG data analysis steps. The scripts are not designed to reproduce the analysis in full, but are to be used to supplement the reader's understanding of the analysis steps outlined in the Material and Methods section of the manuscript.

(1) Paradigm

Adapted from Kessler & Rutherford (2010)

(2) Behavioural Analysis

ePrime log files were analysed using various scientific python packages

(3) Maxfilter

Software from Elekta for cleaning MEG data

(4) Preprocessing

Performed in Fieldtrip.

(5) Time-Frequency Analysis

Performed in Fieldtrip. Statistical analysis via non-parametric cluster-based statistics.

(6) Source-Level Analysis

Performed in Fieldtrip, using a DICS beamformer. Statistical analysis via non-parametric cluster-based statistics.

(7) Virtual Electrode & Low Frequency Power Computation

Performed in Fieldtrip, using an LCMV beamformer. Oscillatory power is computed using a Hanning Taper (following sensor-level analysis).

(8) Granger-Causality Analysis (rTPJ, rACC, rPFC) - coming soon

(9) Imaginary Coherence (whole-brain from rTPJ)

Performed in Fieldtrip, using an adapive spatial filter and imaginary coherence. Full details within the code.