brain computer interface learning for systems based on electrocorticography and intracortical microelectrode arrays

brain computer interface learning for systems based on electrocorticography and intracortical microelectrode arrays

;Shivayogi V Hiremath;Shivayogi V Hiremath;Weidong eChen;Weidong eChen;Wei eWang;Wei eWang;Wei eWang;Wei eWang;Stephen eFoldes;Stephen eFoldes;Stephen eFoldes;Ying eYang;Ying eYang;Elizabeth Christine Tyler-Kabara;Elizabeth Christine Tyler-Kabara;Elizabeth Christine Tyler-Kabara;Jennifer L Collinger;Jennifer L Collinger;Jennifer L Collinger;Jennifer L Collinger;Michael L Boninger;Michael L Boninger;Michael L Boninger;Michael L Boninger
drug research 2015 Vol. 9 pp. -
192
hiremath2015frontiersbrain

Abstract

A brain-computer interface (BCI) system transforms neural activity into control signals for external devices in real time. A BCI user needs to learn to generate specific cortical activity patterns to control external devices effectively. We call this process BCI learning, and it often requires significant effort and time. Therefore, it is important to study this process and develop novel and efficient approaches to accelerate BCI learning. This article reviews major approaches that have been used for BCI learning, including computer-assisted learning, co-adaptive learning, operant conditioning, and sensory feedback. We focus on BCIs based on electrocorticography and intracortical microelectrode arrays for restoring motor function. This article also explores the possibility of brain modulation techniques in promoting BCI learning, such as electrical cortical stimulation, transcranial magnetic stimulation, and optogenetics. Furthermore, as proposed by recent BCI studies, we suggest that BCI learning is in many ways analogous to motor and cognitive skill learning, and therefore skill learning should be a useful metaphor to model BCI learning.

Citation

ID: 199751
Ref Key: hiremath2015frontiersbrain
Use this key to autocite in SciMatic or Thesis Manager

References

Blockchain Verification

Account:
NFT Contract Address:
0x95644003c57E6F55A65596E3D9Eac6813e3566dA
Article ID:
199751
Unique Identifier:
10.3389/fnint.2015.00040
Network:
Scimatic Chain (ID: 481)
Loading...
Blockchain Readiness Checklist
Authors
Abstract
Journal Name
Year
Title
5/5
Creates 1,000,000 NFT tokens for this article
Token Features:
  • ERC-1155 Standard NFT
  • 1 Million Supply per Article
  • Transferable via MetaMask
  • Permanent Blockchain Record
Blockchain QR Code
Scan with Saymatik Web3.0 Wallet

Saymatik Web3.0 Wallet