AI Article Synopsis

  • Brain-computer interfaces (BCIs) are improving the quality of life for patients with disabilities, with TR-fNIRS-based BCIs offering better depth sensitivity and less signal interference.
  • The study tested TR-fNIRS in healthy participants by asking them to imagine playing tennis for "yes" and relaxing for "no," achieving response classification accuracies of 75% with linear-discriminant analysis and 76% with support vector machine classifiers.
  • No significant differences were found in physiological parameters or accuracy between different questions, suggesting TR-fNIRS is a promising option for developing BCIs for individuals with brain injuries.

Article Abstract

Brain-computer interfaces (BCIs) are becoming increasingly popular as a tool to improve the quality of life of patients with disabilities. Recently, time-resolved functional near-infrared spectroscopy (TR-fNIRS) based BCIs are gaining traction because of their enhanced depth sensitivity leading to lower signal contamination from the extracerebral layers. This study presents the first account of TR-fNIRS based BCI for "mental communication" on healthy participants. Twenty-one (21) participants were recruited and were repeatedly asked a series of questions where they were instructed to imagine playing tennis for "yes" and to stay relaxed for "no." The change in the mean time-of-flight of photons was used to calculate the change in concentrations of oxy- and deoxyhemoglobin since it provides a good compromise between depth sensitivity and signal-to-noise ratio. Features were extracted from the average oxyhemoglobin signals to classify them as "yes" or "no" responses. Linear-discriminant analysis (LDA) and support vector machine (SVM) classifiers were used to classify the responses using the leave-one-out cross-validation method. The overall accuracies achieved for all participants were 75% and 76%, using LDA and SVM, respectively. The results also reveal that there is no significant difference in accuracy between questions. In addition, physiological parameters [heart rate (HR) and mean arterial pressure (MAP)] were recorded on seven of the 21 participants during motor imagery (MI) and rest to investigate changes in these parameters between conditions. No significant difference in these parameters was found between conditions. These findings suggest that TR-fNIRS could be suitable as a BCI for patients with brain injuries.

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http://www.ncbi.nlm.nih.gov/pmc/articles/PMC7040089PMC
http://dx.doi.org/10.3389/fnins.2020.00105DOI Listing

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Article Synopsis
  • Brain-computer interfaces (BCIs) are improving the quality of life for patients with disabilities, with TR-fNIRS-based BCIs offering better depth sensitivity and less signal interference.
  • The study tested TR-fNIRS in healthy participants by asking them to imagine playing tennis for "yes" and relaxing for "no," achieving response classification accuracies of 75% with linear-discriminant analysis and 76% with support vector machine classifiers.
  • No significant differences were found in physiological parameters or accuracy between different questions, suggesting TR-fNIRS is a promising option for developing BCIs for individuals with brain injuries.
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