Abstract

There is growing interest in the rich temporal and spectral properties of the functional connectome of the brain that are provided by Electro- and Magnetoencephalography (EEG/MEG). However, the problem of leakage between brain sources that arises when reconstructing brain activity from EEG/MEG recordings outside the head makes it difficult to distinguish true connections from spurious connections, even when connections are based on measures that ignore zero-lag dependencies. In particular, standard anatomical parcellations for potential cortical sources tend to over- or under-sample the real spatial resolution of EEG/MEG. By using information from cross-talk functions (CTFs) that objectively describe leakage for a given sensor configuration and distributed source reconstruction method, we introduce methods for optimising the number of parcels while simultaneously minimising the leakage between them. More specifically, we compare two image segmentation algorithms: 1) a split-and-merge (SaM) algorithm based on standard anatomical parcellations and 2) a region growing (RG) algorithm based on all the brain vertices with no prior parcellation. Interestingly, when applied to minimum-norm reconstructions for EEG/MEG configurations from real data, both algorithms yielded approximately 70 parcels despite their different starting points, suggesting that this reflects the resolution limit of this particular sensor configuration and reconstruction method. Importantly, when compared against standard anatomical parcellations, resolution matrices of adaptive parcellations showed notably higher sensitivity and distinguishability of parcels. Furthermore, extensive simulations of realistic networks revealed significant improvements in network reconstruction accuracies, particularly in reducing false leakage-induced connections. Adaptive parcellations therefore allow a more accurate reconstruction of functional EEG/MEG connectomes.

Highlights

  • Connectivity analyses of source estimated Electro- and Magnetoencephalography (EEG/MEG) can provide a millisecond-by-millisecond map of functional and effective interactions (Bastos and Schoffelen, 2016; Greenblatt et al, 2012) among multiple brain areas in resting state as well as during task performance (Brookes et al, 2016; Colclough et al, 2016; Palva et al, 2010)

  • Split-and-merge algorithm (SaM) We tested the split-and-merge (SaM) algorithm on two standard anatomical parcellations in Freesurfer: Desikan-Killiany and Destrieux Atlases that are shown in Fig. 4a, c with the corresponding Parcel Resolution Matrices (PRmat: relative between-parcel leakage values, see 3.3.1) shown in Fig. 4b, d, respectively

  • We implemented two CTFbased algorithms – split-and-merge (SaM) and region growing (RG) – which differed with respect to the starting points of the parcellation process

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Summary

Introduction

Connectivity analyses of source estimated Electro- and Magnetoencephalography (EEG/MEG) can provide a millisecond-by-millisecond map of functional and effective interactions (Bastos and Schoffelen, 2016; Greenblatt et al, 2012) among multiple brain areas in resting state as well as during task performance (Brookes et al, 2016; Colclough et al, 2016; Palva et al, 2010). The limited spatial resolution causes the so-called leakage or crosstalk problem for linear and linearly constrained distributed EEG/MEG source estimation: activity estimated in one region of interest (ROI) can be affected by leakage from locations outside this ROI, possibly including locations at large distances (Lachaux et al, 1999; Schoffelen and Gross, 2009; Hauk et al, 2011) This poses serious challenges for the interpretation of connectivity results, since increased connectivity between two ROIs may be caused by true connections between the time courses of these ROIs, and by signals leaked into these ROIs from other brain locations, leading to spurious connectivity findings (Colclough et al, 2015).

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