Brain-machine interface: advances in neuroscience and the development of bioelectrodes

Authors

DOI:

https://doi.org/10.33448/rsd-v11i12.35046

Keywords:

Neurosciences; Neurology; Rehabilitation.

Abstract

Objective: To show the updates in this field of research in recent years. Methodology: This is a narrative review, which consist of more extensive publications. The Pubmed database and the Virtual Health Library (VHL) were used to search for articles.  The following Health Sciences Descriptors (DeCS) and Medical Subject Headings(MeSH) were used : "Brain-Computer Interfaces", "Nervous System", "Cerebrum" and "Neurosciences." Articles published between the years 2017 and 2022, in Portuguese and English addressing brain-machine interface advances were included. Results: 17 articles were found that fit the inclusion criteria, all in English. The research demonstrated significant advances that can be employed in physical motor and sensory rehabilitation processes. Conclusion: The application of different protocols and methods was verified, which can be a hindrance to the replication of future studies; however, there were also advances in the development of biocompatible electrodes from axon extensions, which can reduce the inflammatory process in intracortical implants, and the improvement of coding and decoding by non-invasive methods coupled to different parts of the body.

Author Biographies

Wanderson Silva Macedo de Sousa, Centro Universitário Uninovafapi

Bacharel em fisioterapia e pós graduando em neurociência clínica. 

Danielle Costa Lopes, Universidade Federal do Piauí

Mestranda em farmacologia pela Universidade Federal do Piauí.

Bacharel em Fármacia. 

Diego Agripino Chagas Silva, Centro Universitário Uninovafapi

Acadêmico de medicina 

Ana Claudia de Miranda Adad, Centro Universitário Uninovafapi

Especialista em ergonomia 

Jonatas Paulino da Cunha Monteiro Ribeiro, Universidade Federal do Piauí

Acadêmico de medicina

Lyslly Rhanny Soares de Deus , Centro Universitário Facid | Devry

Bacharel em terapia ocupacional

Gabriela Veiga Macêdo e Araújo, Centro Universitário Uninovafapi

Acadêmica de medicina

Matheus Sam do Santos Lemos, Centro Universitário Uninovafapi

Acadêmico de medicina 

Tayane de Jesus Bispo, Universidade Federal de Sergipe

Acadêmica de medicina

Celina Araújo Veras, Universidade Estadual do Piauí

Bacharel em fisioterapia 

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Published

22/09/2022

How to Cite

SOUSA, W. S. M. de .; LOPES, D. C. .; SILVA, D. A. C. .; ADAD, A. C. de M. .; RIBEIRO, J. P. da C. M. .; DEUS , L. R. S. de .; ARAÚJO, G. V. M. e .; LEMOS, M. S. do S. .; BISPO, T. de J. .; VERAS, C. A. . Brain-machine interface: advances in neuroscience and the development of bioelectrodes. Research, Society and Development, [S. l.], v. 11, n. 12, p. e489111235046, 2022. DOI: 10.33448/rsd-v11i12.35046. Disponível em: https://rsdjournal.org/index.php/rsd/article/view/35046. Acesso em: 26 nov. 2024.

Issue

Section

Health Sciences