Online asynchronous detection of error-related potentials in participants with a spinal cord injury using a generic classifier

Author:

Lopes-Dias CatarinaORCID,Sburlea Andreea IORCID,Breitegger Katharina,Wyss Daniela,Drescher Harald,Wildburger Renate,Müller-Putz Gernot RORCID

Abstract

Abstract For brain–computer interface (BCI) users, the awareness of an error is associated with a cortical signature known as an error-related potential (ErrP). The incorporation of ErrP detection into BCIs can improve their performance. Objective. This work has three main aims. First, we investigate whether an ErrP classifier is transferable from able-bodied participants to participants with a spinal cord injury (SCI). Second, we test this generic ErrP classifier with SCI and control participants, in an online experiment without offline calibration. Third, we investigate the morphology of ErrPs in both groups of participants. Approach. We used previously recorded electroencephalographic data from able-bodied participants to train an ErrP classifier. We tested the classifier asynchronously, in an online experiment with 16 new participants: 8 participants with SCI and 8 able-bodied control participants. The experiment had no offline calibration and participants received feedback regarding the ErrP detections from the start. To increase the fluidity of the experiment, feedback regarding false positive ErrP detections was not presented to the participants, but these detections were taken into account in the evaluation of the classifier. The generic classifier was not trained with the user’s brain signals. However, its performance was optimized during the online experiment by the use of personalized decision thresholds. The classifier’s performance was evaluated using trial-based metrics, which considered the asynchronous detection of ErrPs during the entire trial’s duration. Main results. Participants with SCI presented a non-homogenous ErrP morphology, and four of them did not present clear ErrP signals. The generic classifier performed better than chance in participants with clear ErrP signals, independently of the SCI (11 out of 16 participants). Three out of the five participants that obtained chance level results with the generic classifier would have not benefitted from the use of a personalized classifier. Significance. This work shows the feasibility of transferring an ErrP classifier from able-bodied participants to participants with SCI, for asynchronous detection of ErrPs in an online experiment without offline calibration, which provided immediate feedback to the users.

Funder

Horizon 2020 Framework Programme

Publisher

IOP Publishing

Subject

Cellular and Molecular Neuroscience,Biomedical Engineering

Reference66 articles.

1. BNCI Horizon 2020: towards a roadmap for the BCI community;Brunner;Brain-Comput. Interfaces,2015

2. Combining brain–computer interfaces and assistive technologies: state-of-the-art and challenges;Millán;Front. Neurosci.,2010

3. Brain–computer interfaces for communication and control;Wolpaw;Clin. Neurophysiol.,2002

4. EEG-based communication: presence of an error potential;Schalk;Clin. Neurophysiol.,2000

5. You are wrong!: automatic detection of interaction errors from brain waves;Ferrez,2005

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