Abstract

Part of the process of EEG microstate estimation involves clustering EEG channel data at the global field power (GFP) maxima, very commonly using a modified K-means approach. Clustering has also been done deterministically, despite there being uncertainties in multiple stages of the microstate analysis, including the GFP peak definition, the clustering itself and in the post-clustering assignment of microstates back onto the EEG timecourse of interest. We perform a fully probabilistic microstate clustering and labeling, to account for these sources of uncertainty using the closest probabilistic analog to KM called Fuzzy C-means (FCM). We train softmax multi-layer perceptrons (MLPs) using the KM and FCM-inferred cluster assignments as target labels, to then allow for probabilistic labeling of the full EEG data instead of the usual correlation-based deterministic microstate label assignment typically used. We assess the merits of the probabilistic analysis vs. the deterministic approaches in EEG data recorded while participants perform real or imagined motor movements from a publicly available data set of 109 subjects. Though FCM group template maps that are almost topographically identical to KM were found, there is considerable uncertainty in the subsequent assignment of microstate labels. In general, imagined motor movements are less predictable on a time point-by-time point basis, possibly reflecting the more exploratory nature of the brain state during imagined, compared to during real motor movements. We find that some relationships may be more evident using FCM than using KM and propose that future microstate analysis should preferably be performed probabilistically rather than deterministically, especially in situations such as with brain computer interfaces, where both training and applying models of microstates need to account for uncertainty. Probabilistic neural network-driven microstate assignment has a number of advantages that we have discussed, which are likely to be further developed and exploited in future studies. In conclusion, probabilistic clustering and a probabilistic neural network-driven approach to microstate analysis is likely to better model and reveal details and the variability hidden in current deterministic and binarized microstate assignment and analyses.

Highlights

  • Electroencephalography (EEG) is one of the most widely used and practical brain imaging modalities

  • Map A taken from that study was found to negatively correlate to blood oxygen level dependent (BOLD) signals from areas involved in phonological processing, and partly positively correlate to primary visual areas

  • The few microstate switching dynamics that we did look into suggested some small differences between imagined and real motor movement microstate transition probabilities in fuzzy C-means (FCM)-derived sequences but no significant differences in the KM-derived sequences

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Summary

Introduction

Electroencephalography (EEG) is one of the most widely used and practical brain imaging modalities. There are different approaches to categorizing/assigning each point in the EEG time series a microstate label, but the most common approach is some type of spatial correlation between the grouplevel template maps and the subject-level EEG time points (Van De Ville et al, 2010; Drissi et al, 2016). This assignment of label to the current EEG time point by using the maximally correlated of all the template maps is deterministic and equivalent to selecting the template that matches best according to the maximum likelihood of the template map-derivation model used. While microstates assignment has been defined as “all-or-none” and belonging to a given microstate scalp topography template is considered binary, this has certainly missed on some of the uncertainty in the underlying dynamics and the assignment of a given template to a given timepoint in the EEG timecourse

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