Abstract

In recent years, the readiness potential (RP), a type of pre-movement neural activity, has been investigated for asynchronous electroencephalogram (EEG)-based brain-computer interfaces (BCIs). Since the RP is attenuated for involuntary movements, a BCI driven by RP alone could facilitate intentional control amid a plethora of unintentional movements. Previous studies have mainly attempted binary single-trial classification of RP. An RP-based BCI with three or more states would expand the options for functional control. Here, we propose a ternary BCI based on single-trial RPs. This BCI classifies amongst an idle state, a left hand and a right hand self-initiated fine movement. A pipeline of spatio-temporal filtering with per participant parameter optimization was used for feature extraction. The ternary classification was decomposed into binary classifications using a decision-directed acyclic graph (DDAG). For each class pair in the DDAG structure, an ordered diversified classifier system (ODCS-DDAG) was used to select the best among various classification algorithms or to combine the results of different classification algorithms. Using EEG data from 14 participants performing self-initiated left or right key presses, punctuated with rest periods, we compared the performance of ODCS-DDAG to a ternary classifier and four popular multiclass decomposition methods using only a single classification algorithm. ODCS-DDAG had the highest performance (0.769 Cohen's Kappa score) and was significantly better than the ternary classifier and two of the four multiclass decomposition methods. Our work supports further study of RP-based BCI for intuitive asynchronous environmental control or augmentative communication.

Highlights

  • Brain computer interfaces (BCIs) facilitate direct communication between the brain and external devices, potentially providing people with severe disabilities alternative communication and mobility (Ortiz-Rosario and Adeli, 2013; Burns et al, 2014)

  • Among the different classification algorithms, Fisher linear discriminant analysis (FLDA) resulted in the highest k score for all binary decomposition methods (OAA-FLDA: 0.735; OAA-FLDA: 0.733; directed binary tree (DBT)-FLDA: 0.701; directed acyclic graph (DDAG)-FLDA: 0.725).The DDAG results shown are from the RIL structure (Figure 4D)

  • For ODCS3-DDAG, the ordered diversified classifier system (ODCS) method was applied for classifier fusion

Read more

Summary

Introduction

Brain computer interfaces (BCIs) facilitate direct communication between the brain and external devices, potentially providing people with severe disabilities alternative communication and mobility (Ortiz-Rosario and Adeli, 2013; Burns et al, 2014). EEG-based BCIs use motor-imagery for target selection such as in wheelchair control (Müller-Putz and Pfurtscheller, 2008; Rodrıguez-Bermudez et al, 2013), and visual (Farwell and Donchin, 1988; Jin et al, 2014) or auditory (LopezGordo et al, 2012; Yin et al, 2016) evoked potentials for communication through on-screen keyboards and spellers. Most of these BCIs require training and are paced by the system rather than the user. RP-based BCIs have been investigated in patients with amyotrophic lateral sclerosis (Kübler and Birbaumer, 2008) and stroke patients (Jankelowitz and Colebatch, 2005; Muralidharan et al, 2011)

Methods
Results
Discussion
Conclusion

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call

Disclaimer: All third-party content on this website/platform is and will remain the property of their respective owners and is provided on "as is" basis without any warranties, express or implied. Use of third-party content does not indicate any affiliation, sponsorship with or endorsement by them. Any references to third-party content is to identify the corresponding services and shall be considered fair use under The CopyrightLaw.