Unsupervised machine-learning classification of electrophysiologically active electrodes during human cognitive task performance

Author:

Saboo Krishnakant V.,Varatharajah Yogatheesan,Berry Brent M.,Kremen VaclavORCID,Sperling Michael R.,Davis Kathryn A.,Jobst Barbara C.,Gross Robert E.,Lega Bradley,Sheth Sameer A.,Worrell Gregory A.,Iyer Ravishankar K.,Kucewicz Michal T.

Abstract

AbstractIdentification of active electrodes that record task-relevant neurophysiological activity is needed for clinical and industrial applications as well as for investigating brain functions. We developed an unsupervised, fully automated approach to classify active electrodes showing event-related intracranial EEG (iEEG) responses from 115 patients performing a free recall verbal memory task. Our approach employed new interpretable metrics that quantify spectral characteristics of the normalized iEEG signal based on power-in-band and synchrony measures. Unsupervised clustering of the metrics identified distinct sets of active electrodes across different subjects. In the total population of 11,869 electrodes, our method achieved 97% sensitivity and 92.9% specificity with the most efficient metric. We validated our results with anatomical localization revealing significantly greater distribution of active electrodes in brain regions that support verbal memory processing. We propose our machine-learning framework for objective and efficient classification and interpretation of electrophysiological signals of brain activities supporting memory and cognition.

Funder

Mayo Clinic and Illinois Alliance Fellowship

United States Department of Defense | Defense Advanced Research Projects Agency

Institutional Resources for Research of the Czech Technical University in Prague, Czech Republic

National Science Foundation

Fundacja na rzecz Nauki Polskiej

Publisher

Springer Science and Business Media LLC

Subject

Multidisciplinary

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