Expand this Topic clickable element to expand a topic
Skip to content
Optica Publishing Group
  • Journal of Near Infrared Spectroscopy
  • Vol. 21,
  • Issue 3,
  • pp. 157-171
  • (2013)

A Haemodynamic Brain–Computer Interface Based on Real-Time Classification of near Infrared Spectroscopy Signals during Motor Imagery and Mental Arithmetic

Not Accessible

Your library or personal account may give you access

Abstract

Over the past decade, an increasing number of studies have investigated near infrared (NIR) spectroscopy for signal acquisition in brain–computer interface (BCI) systems. However, although a BCI relies on classifying brain signals in real-time, the majority of previous studies did not perform real-time NIR spectroscopy signal classification but derived knowledge about the feasibility of NIR spectroscopy for BCI purposes from offline analyses. The present study investigates whether NIR spectroscopy signals evoked by two different mental tasks (i.e. motor imagery and mental arithmetic) can be classified in real-time in order to control a NIR-BCI application. Furthermore, since this is the first study that attempts to distinguish between the haemodynamic responses to these two tasks, we aimed to investigate whether this task-combination is feasible for controlling a NIR-BCI. Twelve healthy participants were asked to control a moving ball on a computer screen by performing motor imagery and mental arithmetic tasks. The real-time classification of their task-specific NIR spectroscopy signals yielded accuracy rates ranging from 45% up to 93%. Offline analyses across all participants showed that both tasks evoked different haemodynamic responses in prefrontal and sensorimotor cortex areas. On the one hand, these results demonstrate the considerable potential of NIR spectroscopy for BCI signal acquisition and the feasibility of the applied mental tasks for NIR-BCI control. On the other hand, since the classification accuracy showed an unsatisfactory stability across measurement sessions, we conclude that further investigations and progress in methodological issues are needed and we discuss further steps that have to be taken until it is conceivable to implement a real-time capable NIR-BCI that works with sufficient accuracy across a large group of individuals.

© 2013 IM Publications LLP

PDF Article
More Like This
CGAN-rIRN: a data-augmented deep learning approach to accurate classification of mental tasks for a fNIRS-based brain-computer interface

Yao Zhang, Dongyuan Liu, Tieni Li, Pengrui Zhang, Zhiyong Li, and Feng Gao
Biomed. Opt. Express 14(6) 2934-2954 (2023)

Detection and classification of three-class initial dips from prefrontal cortex

Amad Zafar and Keum-Shik Hong
Biomed. Opt. Express 8(1) 367-383 (2017)

Can time-resolved NIRS provide the sensitivity to detect brain activity during motor imagery consistently?

Androu Abdalmalak, Daniel Milej, Mamadou Diop, Mahsa Shokouhi, Lorina Naci, Adrian M. Owen, and Keith St. Lawrence
Biomed. Opt. Express 8(4) 2162-2172 (2017)

Cited By

You do not have subscription access to this journal. Cited by links are available to subscribers only. You may subscribe either as an Optica member, or as an authorized user of your institution.

Contact your librarian or system administrator
or
Login to access Optica Member Subscription

Select as filters


Select Topics Cancel
© Copyright 2024 | Optica Publishing Group. All rights reserved, including rights for text and data mining and training of artificial technologies or similar technologies.