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An automatic pre-processing pipeline for EEG analysis (APP) based on robust statistics
Authors:Janir Ramos da Cruz  Vitaly Chicherov  Michael H Herzog  Patrícia Figueiredo
Institution:1. Institute for Systems and Robotics – Lisbon (LARSys) and Department of Bioengineering, Instituto Superior Técnico, Universidade de Lisboa, Portugal;2. Laboratory of Psychophysics, Brain Mind Institute, École Polytechnique Fédérale de Lausanne, Switzerland
Abstract:

Objective

With the advent of high-density EEG and studies of large numbers of participants, yielding increasingly greater amounts of data, supervised methods for artifact rejection have become excessively time consuming. Here, we propose a novel automatic pipeline (APP) for pre-processing and artifact rejection of EEG data, which innovates relative to existing methods by not only following state-of-the-art guidelines but also further employing robust statistics.

Methods

APP was tested on event-related potential (ERP) data from healthy participants and schizophrenia patients, and resting-state (RS) data from healthy participants. Its performance was compared with that of existing automatic methods (FASTER for ERP data, TAPEEG and Prep pipeline for RS data) and supervised pre-processing by experts.

Results

APP rejected fewer bad channels and bad epochs than the other methods. In the ERP study, it produced significantly higher amplitudes than FASTER, which were consistent with the supervised scheme. In the RS study, it produced spectral measures that correlated well with the automatic alternatives and the supervised scheme.

Conclusion

APP effectively removed EEG artifacts, performing similarly to the supervised scheme and outperforming existing automatic alternatives.

Significance

The proposed automatic pipeline provides a reliable and efficient tool for pre-processing large datasets of both evoked and resting-state EEG.
Keywords:Electroencephalography  Automatic pre-processing  ERP  Resting-state
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