The Essential Guide to Brain-Computer Interface Technology Advancements

Maged Naser, Mohamed M. Nasr, Lamia H. Shehata

Abstract


This paper reviews current brain-computer interface (BCI) technology. It starts with an introduction to BCIs. It explains how they work. It covers the most common platforms. The paper then looks at BCI system parts. This includes hardware, software, and signal processing. It also examines research trends for BCI use. These uses are in medicine, education, and other areas. It discusses future applications. The paper ends with key challenges. These must be met for wider use. This assessment offers insight into BCI progress. It shows where the field is going.


Keywords


brain-computer interface, EEG, artificial intelligence, classification, signal processing

Full Text:

PDF

References


- Singh, Satya P., et al. "Functional mapping of the brain for brain–computer interfacing: A review." Electronics 12.3 (2023): 604.

- He, Zhipeng, et al. "Advances in multimodal emotion recognition based on brain–computer interfaces." Brain sciences 10.10 (2020): 687.

- Orban, Mostafa, et al. "A review of brain activity and EEG-based brain–computer interfaces for rehabilitation application." Bioengineering 9.12 (2022): 768.

- Park, Jonghyuk, et al. "A BCI based alerting system for attention recovery of UAV operators." Sensors 21.7 (2021): 2447.

- Sherrington CS. The Integrative Action of the Nervous System. New York: C. Scribner's Sons, 1906, p. xvi.

- Guertin, Pierre A. "The mammalian central pattern generator for locomotion." Brain research reviews 62.1 (2009): 45-56.

- He Z, Li Z, Yang F, Wang L, Li J, Zhou C, Pan J. Advances in Multimodal Emotion Recognition Based on Brain–Computer Interfaces. Brain Sciences. 2020; 10(10):687.

- Nicolelis, M. A. "Beyond maps: a dynamic view of the somatosensory system." Brazilian Journal of Medical and Biological Research= Revista Brasileira de Pesquisas Medicas e Biologicas 29.4 (1996): 401-412.

- Nicolelis, M. A. "Beyond maps: a dynamic view of the somatosensory system." Brazilian Journal of Medical and Biological Research= Revista Brasileira de Pesquisas Medicas e Biologicas 29.4 (1996): 401-412.

- Pais-Vieira, Miguel, et al. "A closed loop brain-machine interface for epilepsy control using dorsal column electrical stimulation." Scientific Reports 6.1 (2016): 32814.

- Zhuang, Katie Z., Mikhail A. Lebedev, and Miguel AL Nicolelis. "Joint cross-correlation analysis reveals complex, time-dependent functional relationship between cortical neurons and arm electromyograms." Journal of Neurophysiology 112.11 (2014): 2865-2887.

- Cordo, Paul J., and Victor S. Gurfinkel. "Motor coordination can be fully understood only by studying complex movements." Progress in brain research 143 (2004): 29-38.

- Head, Henry, and Gordon Holmes. "Sensory disturbances from cerebral lesions." Brain 34.2-3 (1911): 102-254.

- Lebedev, Mikhail A., and Miguel AL Nicolelis. "Brain–machine interfaces: past, present and future." TRENDS in Neurosciences 29.9 (2006): 536-546.

- Golub, Matthew D., Byron M. Yu, and Steven M. Chase. "Internal models for interpreting neural population activity during sensorimotor control." Elife 4 (2015): e10015.

- Kawato, Mitsuo. "Internal models for motor control and trajectory planning." Current opinion in neurobiology 9.6 (1999): 718-727.

- Corralejo, Rebeca, Roberto Hornero, and Daniel Alvarez. "Feature selection using a genetic algorithm in a motor imagery-based Brain Computer Interface." 2011 Annual International Conference of the IEEE Engineering in Medicine and Biology Society. IEEE, 2011.

- Wolpert, Daniel M., Zoubin Ghahramani, and Michael I. Jordan. "An internal model for sensorimotor integration." Science 269.5232 (1995): 1880-1882.

- Cui, He. "Forward prediction in the posterior parietal cortex and dynamic brain-machine interface." Frontiers in integrative neuroscience 10 (2016): 35.

- Bhosale, Shrinivas, et al. "2012 Annual International Conference of the IEEE Engineering in Medicine and Biology Society." 2012 Annual International Conference of the IEEE Engineering in Medicine and Biology Society. 2012.

- Kim, Hyun K., et al. "Continuous shared control for stabilizing reaching and grasping with brain-machine interfaces." IEEE Transactions on Biomedical Engineering 53.6 (2006): 1164-1173.

- Philips, J., et al. "IEEE 10th International Conference on Rehabilitation Robotics; ICORR 2007. IEEE." Adaptive Shared Control of a Brain-Actuated Simulated Wheelchair. 2007. 408-414.

- Flint, Robert D., et al. "Long-term stability of motor cortical activity: implications for brain machine interfaces and optimal feedback control." Journal of neuroscience 36.12 (2016): 3623-3632.

- Todorov, Emanuel. "Optimality principles in sensorimotor control." Nature neuroscience 7.9 (2004): 907-915.

- Todorov, Emanuel, and Michael I. Jordan. "Optimal feedback control as a theory of motor coordination." Nature neuroscience 5.11 (2002): 1226-1235.

- Benyamini, Miri, and Miriam Zacksenhouse. "Optimal feedback control successfully explains changes in neural modulations during experiments with brain-machine interfaces." Frontiers in systems neuroscience 9 (2015): 71.

- Shanechi, Maryam M., Amy L. Orsborn, and Jose M. Carmena. "Robust brain-machine interface design using optimal feedback control modeling and adaptive point process filtering." PLoS computational biology 12.4 (2016): e1004730.

- Shanechi, Maryam M., et al. "A real-time brain-machine interface combining motor target and trajectory intent using an optimal feedback control design." PloS one 8.4 (2013): e59049.

- Carmena, Jose M., et al. "Learning to control a brain–machine interface for reaching and grasping by primates." PLoS biology 1.2 (2003): e42.

- Viventi, Jonathan, et al. "Flexible, foldable, actively multiplexed, high-density electrode array for mapping brain activity in vivo." Nature neuroscience 14.12 (2011): 1599-1605.

-Lebedev, Mikhail A., et al. "Cortical ensemble adaptation to represent velocity of an artificial actuator controlled by a brain-machine interface." Journal of Neuroscience 25.19 (2005): 4681-4693.

- Taylor, Dawn M., Stephen I. Helms Tillery, and Andrew B. Schwartz. "Direct cortical control of 3D neuroprosthetic devices." science 296.5574 (2002): 1829-1832.

- Velliste, Meel, et al. "Cortical control of a prosthetic arm for self-feeding." Nature 453.7198 (2008): 1098-1101.

- Andersen, Richard A., and He Cui. "Intention, action planning, and decision making in parietal-frontal circuits." Neuron 63.5 (2009): 568-583.

- Kalaska, John F. "From intention to action: motor cortex and the control of reaching movements." Progress in motor control: a multidisciplinary perspective (2009): 139-178.

- Lebedev, Mikhail A., and Steven P. Wise. "Insights into seeing and grasping: distinguishing the neural correlates of perception and action." Behavioral and cognitive neuroscience reviews 1.2 (2002): 108-129.

- Nicolelis, Miguel AL, and Mikhail A. Lebedev. "Principles of neural ensemble physiology underlying the operation of brain–machine interfaces." Nature reviews neuroscience 10.7 (2009): 530-540.

- Lebedev, Mikhail A., and Steven P. Wise. "Tuning for the orientation of spatial attention in dorsal premotor cortex." European Journal of Neuroscience 13.5 (2001): 1002-1008.

- Ifft, Peter J., et al. "A brain-machine interface enables bimanual arm movements in monkeys." Science translational medicine 5.210 (2013): 210ra154-210ra154.

- Hochberg, Leigh R., and John P. Donoghue. "Sensors for brain-computer interfaces." IEEE Engineering in Medicine and Biology Magazine 25.5 (2006): 32-38.

- Escolano, Carlos, Javier Mauricio Antelis, and Javier Minguez. "A telepresence mobile robot controlled with a noninvasive brain–computer interface." IEEE Transactions on Systems, Man, and Cybernetics, Part B (Cybernetics) 42.3 (2011): 793-804.

- Iturrate, Inaki, Luis Montesano, and Javier Minguez. "Shared-control brain-computer interface for a two dimensional reaching task using EEG error-related potentials." 2013 35th Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC). IEEE, 2013.

- Wise, S. P., G. Di Pellegrino, and D. Boussaoud. "The premotor cortex and nonstandard sensorimotor mapping." Canadian journal of physiology and pharmacology 74.4 (1996): 469-482.

- Prut, Yifat, and Eberhard E. Fetz. "Primate spinal interneurons show pre-movement instructed delay activity." Nature 401.6753 (1999): 590-594.

- Jiang, Jun, et al. "Hybrid Brain-Computer Interface (BCI) based on the EEG and EOG signals." Bio-medical materials and engineering 24.6 (2014): 2919-2925.

- Leeb, Robert, et al. "A hybrid brain–computer interface based on the fusion of electroencephalographic and electromyographic activities." Journal of neural engineering 8.2 (2011): 025011.

- Pfurtscheller, G., et al. "The hybrid BCI Front." Neurosci 4 (2010): 42.

- Wang, Hongtao, et al. "An asynchronous wheelchair control by hybrid EEG–EOG brain–computer interface." Cognitive neurodynamics 8.5 (2014): 399-409.

- Collinger, Jennifer L., et al. "High-performance neuroprosthetic control by an individual with tetraplegia." The Lancet 381.9866 (2013): 557-564.

- Fitzsimmons, Nathan, et al. "Extracting kinematic parameters for monkey bipedal walking from cortical neuronal ensemble activity." Frontiers in integrative neuroscience 3 (2009): 501.

- Cheng, Gordon, et al. "Bipedal locomotion with a humanoid robot controlled by cortical ensemble activity." Abstr. Soc. Neurosci. Vol. 517. 2007.

- Kawato M. Brain controlled robots. HFSP J 2: 136–141, 2008.

- Foster, Justin D., et al. "A freely-moving monkey treadmill model." Journal of neural engineering 11.4 (2014): 046020.

- Foster, Justin D., et al. "A framework for relating neural activity to freely moving behavior." 2012 Annual International Conference of the IEEE Engineering in Medicine and Biology Society. IEEE, 2012.

- Schwarz, David A., et al. "Chronic, wireless recordings of large-scale brain activity in freely moving rhesus monkeys." Nature methods 11.6 (2014): 670-676.

- Cheung, Peter, et al. "The 20th Annual International Conference of IEEE Engineering in Medicine and Biology Society."

- Capogrosso, Marco, et al. "A brain–spine interface alleviating gait deficits after spinal cord injury in primates." Nature 539.7628 (2016): 284-288.

- Jurkiewicz, Michael T., et al. "Sensorimotor cortical plasticity during recovery following spinal cord injury: a longitudinal fMRI study." Neurorehabilitation and neural repair 21.6 (2007): 527-538.

- Donati, Ana RC, et al. "Long-term training with a brain-machine interface-based gait protocol induces partial neurological recovery in paraplegic patients." Scientific reports 6.1 (2016): 30383.

- Rajangam, Sankaranarayani, et al. "Wireless cortical brain-machine interface for whole-body navigation in primates." Scientific reports 6.1 (2016): 22170.

- Etienne, Stephanie, et al. "Easy rider: monkeys learn to drive a wheelchair to navigate through a complex maze." PloS One 9.5 (2014): e96275.

- Libedinsky, Camilo, et al. "Independent mobility achieved through a wireless brain-machine interface." PLoS One 11.11 (2016): e0165773.

- Morrow, Michelle M., and Lee E. Miller. "Prediction of muscle activity by populations of sequentially recorded primary motor cortex neurons." Journal of neurophysiology 89.4 (2003): 2279-2288.

- Fitzsimmons NA, Lebedev MA, Peikon ID, Nicolelis MA. Extracting kinematic parameters for monkey bipedal walking from cortical neuronal ensemble activity. Front Integr Neurosci 3: 3, 2009.

- Johnson LA, Fuglevand AJ. Mimicking muscle activity with electrical stimulation. J Neural Eng 8: 016009, 2011.

- Seifert HM, Fuglevand AJ. Restoration of movement using functional electrical stimulation and Bayes' theorem. J Neurosci 22: 9465–9474, 2002.

- Moritz CT, Perlmutter SI, Fetz EE. Direct control of paralysed muscles by cortical neurons. Nature 456: 639–642, 2008.

- Ethier C, Oby ER, Bauman M, Miller LE. Restoration of grasp following paralysis through brain-controlled stimulation of muscles. Nature 485: 368–371, 2012.

- Pohlmeyer EA, Oby ER, Perreault EJ, Solla SA, Kilgore KL, Kirsch RF, Miller LE. Toward the restoration of hand use to a paralyzed monkey: brain-controlled functional electrical stimulation of forearm muscles. PloS One 4: e5924, 2009.

- Eser PC, Donaldson NN, Knecht H, Stussi E. Influence of different stimulation frequencies on power output and fatigue during FES-cycling in recently injured SCI people. IEEE Trans Neural Syst Rehab Eng 11: 236–240, 2003.

- Giat Y, Mizrahi J, Levy M. A musculotendon model of the fatigue profiles of paralyzed quadriceps muscle under FES. IEEE Trans Biomed Eng 40: 664–674, 1993.

- Tepavac D, Schwirtlich L. Detection and prediction of FES-induced fatigue. J Electromyogr Kinesiol 7: 39–50, 1997.

- Andrews B, Baxendale R, Barnett R, Phillips G, Yamazaki T, Paul J, Freeman P. Hybrid FES orthosis incorporating closed loop control and sensory feedback. J Biomed Eng 10: 189–195, 1988.

- Jezernik S, Wassink RG, Keller T. Sliding mode closed-loop control of FES controlling the shank movement. IEEE Trans Biomed Eng 51: 263–272, 2004.

- Veltink PH. Sensory feedback in artificial control of human mobility. Technol Health Care 7: 383–391, 1999.

- Adams JA. Historical review and appraisal of research on the learning, retention, and transfer of human motor skills. Psychol Bull 101: 41, 1987.

- Bilodeau EA, Bilodeau IM. Motor-skills learning. Annu Rev Psychol 12: 243–280, 1961.

- Doyon J, Bellec P, Amsel R, Penhune V, Monchi O, Carrier J, Lehericy S, Benali H. Contributions of the basal ganglia and functionally related brain structures to motor learning. Behav Brain Res 199: 61–75, 2009.

- Doyon J, Penhune V, Ungerleider LG. Distinct contribution of the cortico-striatal and cortico-cerebellar systems to motor skill learning. Neuropsychologia 41: 252–262, 2003.

- Kleim JA, Barbay S, Nudo RJ. Functional reorganization of the rat motor cortex following motor skill learning. J Neurophysiol 80: 3321–3325, 1998.

- Laubach M, Wessberg J, Nicolelis MA. Cortical ensemble activity increasingly predicts behaviour outcomes during learning of a motor task. Nature 405: 567–571, 2000.

- Mitz AR, Godschalk M, Wise SP. Learning-dependent neuronal activity in the premotor cortex: activity during the acquisition of conditional motor associations. J Neurosci 11: 1855–1872, 1991.

- Shadmehr R, Wise SP. The Computational Neurobiology of Reaching and Pointing: A Foundation for Motor Learning. Cambridge, MA: MIT Press, 2005.

- Cramer SC, Sur M, Dobkin BH, O'Brien C, Sanger TD, Trojanowski JQ, Rumsey JM, Hicks R, Cameron J, Chen D, Chen WG, Cohen LG, deCharms C, Duffy CJ, Eden GF, Fetz EE, Filart R, Freund M, Grant SJ, Haber S, Kalivas PW, Kolb B, Kramer AF, Lynch M, Mayberg HS, McQuillen PS, Nitkin R, Pascual-Leone A, Reuter-Lorenz P, Schiff N, Sharma A, Shekim L, Stryker M, Sullivan EV, Vinogradov S. Harnessing neuroplasticity for clinical applications. Brain 134: 1591–1609, 2011.

- Di Pino G, Maravita A, Zollo L, Guglielmelli E, Di Lazzaro V. Augmentation-related brain plasticity. Front Syst Neurosci 8: 109, 2014.

- Dobkin BH. Brain-computer interface technology as a tool to augment plasticity and outcomes for neurological rehabilitation. J Physiol 579: 637–642, 2007.

- Grosse-Wentrup M, Mattia D, Oweiss K. Using brain-computer interfaces to induce neural plasticity and restore function. J Neural Eng 8: 025004, 2011.

- Lebedev MA, Nicolelis MA. Brain-machine interfaces: past, present and future. Trends Neurosci 29: 536–546, 2006.

- Oweiss KG, Badreldin IS. Neuroplasticity subserving the operation of brain-machine interfaces. Neurobiol Dis 83: 161–171, 2015.

- Nicolelis, Miguel. Beyond Boundaries: the new neuroscience of connecting brains with machines and how it will change our lives. Macmillan+ ORM, 2025. [92]- Nicolelis, Miguel. Beyond Boundaries: the new neuroscience of connecting brains with machines and how it will change our lives. Macmillan+ ORM, 2025.

- Shokur S, O'Doherty JE, Winans JA, Bleuler H, Lebedev MA, Nicolelis MA. Expanding the primate body schema in sensorimotor cortex by virtual touches of an avatar. Proc Natl Acad Sci USA 110: 15121–15126, 2013.

- Berti A, Frassinetti F. When far becomes near: remapping of space by tool use. J Cogn Neurosci 12: 415–420, 2000.

- Iriki, Atsushi, Michio Tanaka, and Yoshiaki Iwamura. "Coding of modified body schema during tool use by macaque postcentral neurones." Neuroreport 7.14 (1996): 2325-2330.

- Maravita A, Iriki A. Tools for the body (schema). Trends Cogn Sci 8: 79–86, 2004.

-Maravita A, Spence C, Driver J. Multisensory integration and the body schema: close to hand and within reach. Curr Biol 13: R531–R539, 2003.

- Nicolelis MAL. Beyond Boundaries: The New Neuroscience of Connecting Brains With Machines–And How It Will Change Our Lives. New York: Times Books/Henry Holt, 2011, p. 353 p.

-Zacksenhouse M, Lebedev MA, Carmena JM, O'Doherty JE, Henriquez C, Nicolelis MA. Cortical modulations increase in early sessions with brain-machine interface. PLoS One 2: e619, 2007.

-Nii Y, Uematsu S, Lesser RP, Gordon B. Does the central sulcus divide motor and sensory functions. Cortical mapping of human hand areas as revealed by electrical stimulation through subdural grid electrodes. Neurology 46: 360–367, 1996.

- Green, Andrea M., and John F. Kalaska. "Learning to move machines with the mind." Trends in neurosciences 34.2 (2011): 61-75.

-Chase SM, Kass RE, Schwartz AB. Behavioral and neural correlates of visuomotor adaptation observed through a brain-computer interface in primary motor cortex. J Neurophysiol 108: 624–644, 2012.

-Ganguly K, Carmena JM. Emergence of a stable cortical map for neuroprosthetic control. PLoS Biol 7: e1000153, 2009.

-Sadtler PT, Quick KM, Golub MD, Chase SM, Ryu SI, Tyler-Kabara EC, Byron MY, Batista AP. Neural constraints on learning. Nature 512: 423–426, 2014.

-Hartmann K, Thomson EE, Zea I, Yun R, Mullen P, Canarick J, Huh A, Nicolelis MA. Embedding a panoramic representation of infrared light in the adult rat somatosensory cortex through a sensory neuroprosthesis. J Neurosci 36: 2406–2424, 2016.

-Thomson EE, Carra R, Nicolelis MA. Perceiving invisible light through a somatosensory cortical prosthesis. Nat Commun 4: 1482, 2013.

- Bensmaia, Sliman J., and Lee E. Miller. "Restoring sensorimotor function through intracortical interfaces: progress and looming challenges." Nature Reviews Neuroscience 15.5 (2014): 313-325.

-Dobelle WH. Artificial vision for the blind. The summit may be closer than you think. ASAIO J 40: 919–922, 1994.

- Lebedev, Mikhail A., et al. "Future developments in brain-machine interface research." Clinics 66 (2011): 25-32.

-Rothschild RM. Neuroengineering tools/applications for bidirectional interfaces, brain-computer interfaces, and neuroprosthetic implants: a review of recent progress. Front Neuroeng 3: 112, 2010.

-Chapin JK, Woodward DJ. Somatic sensory transmission to the cortex during movement: gating of single cell responses to touch. Exp Neurol 78: 654–669, 1982.

- Nelson, R. J. "Set related and premovement related activity of primate primary somatosensory cortical neurons depends upon stimulus modality and subsequent movement." Brain Research Bulletin 21.3 (1988): 411-424.[111]-Seki K, Fetz EE. Gating of sensory input at spinal and cortical levels during preparation and execution of voluntary movement. J Neurosci 32: 890–902, 2012.

-Seki K, Perlmutter SI, Fetz EE. Task-dependent modulation of primary afferent depolarization in cervical spinal cord of monkeys performing an instructed delay task. J Neurophysiol 102: 85–99, 2009.

-Soso M, Fetz E. Responses of identified cells in postcentral cortex of awake monkeys during comparable active and passive joint movements. J Neurophysiol 43: 1090–1110, 1980.

-Starr A, Cohen LG. “Gating” of somatosensory evoked potentials begins before the onset of voluntary movement in man. Brain Res 348: 183–186, 1985.

- Cullen, Kathleen E. "Sensory signals during active versus passive movement." Current opinion in neurobiology 14.6 (2004): 698-706.

-Grant RA, Mitchinson B, Fox CW, Prescott TJ. Active touch sensing in the rat: anticipatory and regulatory control of whisker movements during surface exploration. J Neurophysiol 101: 862–874, 2009.

-Krupa DJ, Wiest MC, Shuler MG, Laubach M, Nicolelis MA. Layer-specific somatosensory cortical activation during active tactile discrimination. Science 304: 1989–1992, 2004.

-Pais-Vieira M, Kunicki C, Tseng PH, Martin J, Lebedev M, Nicolelis MA. Cortical and thalamic contributions to response dynamics across layers of the primary somatosensory cortex during tactile discrimination. J Neurophysiol 114: 1652–1676, 2015.

- Pais-Vieira, Miguel, et al. "Simultaneous top-down modulation of the primary somatosensory cortex and thalamic nuclei during active tactile discrimination." Journal of Neuroscience 33.9 (2013): 4076-4093.

- Cowey A, Stoerig P. The neurobiology of blindsight. Trends Neurosci 14: 140–145, 1991.

- Stoerig P, Cowey A. Blindsight in man and monkey. Brain 120: 535–559, 1997.

- Weiskrantz, Lawrence. "Blindsight revisited." Current opinion in neurobiology 6.2 (1996): 215-220.

- Cowey A, Stoerig P. Visual detection in monkeys with blindsight. Neuropsychologia 35: 929–939, 1997.

- Goodale, Melvyn A., and A. David Milner. "Separate visual pathways for perception and action." Trends in neurosciences 15.1 (1992): 20-25.

- Goodale, Melvyn A., et al. "A neurological dissociation between perceiving objects and grasping them." Nature 349.6305 (1991): 154-156.

- Haxby, James V., et al. "Dissociation of object and spatial visual processing pathways in human extrastriate cortex." Proceedings of the National Academy of Sciences 88.5 (1991): 1621-1625.

- Houweling, Arthur R., and Michael Brecht. "Behavioural report of single neuron stimulation in somatosensory cortex." Nature 451.7174 (2008): 65-68.

- O’Doherty, Joseph E., et al. "Active tactile exploration using a brain–machine–brain interface." Nature 479.7372 (2011): 228-231.

- Romo, Ranulfo, et al. "Somatosensory discrimination based on cortical microstimulation." Nature 392.6674 (1998): 387-390.

- Romo, Ranulfo, et al. "Somatosensory discrimination based on cortical microstimulation." Nature 392.6674 (1998): 387-390.

- Davis, Tyler S., et al. "Restoring motor control and sensory feedback in people with upper extremity amputations using arrays of 96 microelectrodes implanted in the median and ulnar nerves." Journal of neural engineering 13.3 (2016): 036001.

- Raspopovic, Stanisa, et al. "Restoring natural sensory feedback in real-time bidirectional hand prostheses." Science translational medicine 6.222 (2014): 222ra19-222ra19.

- Tan, Daniel W., et al. "A neural interface provides long-term stable natural touch perception." Science translational medicine 6.257 (2014): 257ra138-257ra138.

- Cushing, Harvey. "A note upon the faradic stimulation of the postcentral gyrus in conscious patients." Brain 32.1 (1909): 44-53.

- Penfield, Wilder, and Edwin Boldrey. "Somatic motor and sensory representation in the cerebral cortex of man as studied by electrical stimulation." Brain: A journal of neurology (1937).

- O'Doherty, Joseph E., et al. "A brain-machine interface instructed by direct intracortical microstimulation." Frontiers in integrative neuroscience 3 (2009): 803.

- Kaas, Jon H., et al. "Multiple representations of the body within the primary somatosensory cortex of primates." Science 204.4392 (1979): 521-523.

- Flesher, Sharlene N., et al. "Intracortical microstimulation of human somatosensory cortex." Science translational medicine 8.361 (2016): 361ra141-361ra141.

- Tan, Daniel W., et al. "A neural interface provides long-term stable natural touch perception." Science translational medicine 6.257 (2014): 257ra138-257ra138.

- Talwar, Sanjiv K., et al. "Rat navigation guided by remote control." Nature 417.6884 (2002): 37-38.

- Venkatraman, Subramaniam, and Jose M. Carmena. "Active sensing of target location encoded by cortical microstimulation." IEEE Transactions on Neural Systems and Rehabilitation Engineering 19.3 (2011): 317-324.

- Thomson, Eric E., Rafael Carra, and Miguel AL Nicolelis. "Perceiving invisible light through a somatosensory cortical prosthesis." Nature communications 4.1 (2013): 1482.

- Hartmann, Konstantin, et al. "Embedding a panoramic representation of infrared light in the adult rat somatosensory cortex through a sensory neuroprosthesis." Journal of Neuroscience 36.8 (2016): 2406-2424.

- Shokur, Solaiman, et al. "Assimilation of virtual legs and perception of floor texture by complete paraplegic patients receiving artificial tactile feedback." Scientific reports 6.1 (2016): 32293.

- Lee, Wonhye, et al. "Image-guided transcranial focused ultrasound stimulates human primary somatosensory cortex." Scientific reports 5.1 (2015): 8743.

- Rodenkirch C, Schriver B, Wang Q. Brain-machine interfaces: restoring and establishing communication channels. In: Neural Engineering. New York: Springer, 2016, p. 227–259

- Lee, Seung Woo, et al. "Implantable microcoils for intracortical magnetic stimulation." Science advances 2.12 (2016): e1600889.

- Bensmaia, Sliman J., and Lee E. Miller. "Restoring sensorimotor function through intracortical interfaces: progress and looming challenges." Nature Reviews Neuroscience 15.5 (2014): 313-325.

- Fetz, Eberhard E. "Restoring motor function with bidirectional neural interfaces." Progress in brain research 218 (2015): 241-252.

- Lebedev, Mikhail A., et al. "Future developments in brain-machine interface research." Clinics 66 (2011): 25-32.

- Nicolelis MA, Lebedev MA. Principles of neural ensemble physiology underlying the operation of brain-machine interfaces. Nat Rev Neurosci 10: 530–540, 2009.

- O'Doherty, Joseph E., et al. "A brain-machine interface instructed by direct intracortical microstimulation." Frontiers in integrative neuroscience 3 (2009): 803.

- O’Doherty, Joseph E., et al. "Active tactile exploration using a brain–machine–brain interface." Nature 479.7372 (2011): 228-231.

- Jackson, A., S. N. Baker, and E. E. Fetz. "Tests for presynaptic modulation of corticospinal terminals from peripheral afferents and pyramidal tract in the macaque." The Journal of physiology 573.1 (2006): 107-120.

- Jackson, Andrew, Jaideep Mavoori, and Eberhard E. Fetz. "Long-term motor cortex plasticity induced by an electronic neural implant." Nature 444.7115 (2006): 56-60.

- Lucas, Timothy H., and Eberhard E. Fetz. "Myo-cortical crossed feedback reorganizes primate motor cortex output." Journal of Neuroscience 33.12 (2013): 5261-5274.

- Nishimura, Yukio, et al. "Spike-timing-dependent plasticity in primate corticospinal connections induced during free behavior." Neuron 80.5 (2013): 1301-1309.

- Guggenmos, David J., et al. "Restoration of function after brain damage using a neural prosthesis." Proceedings of the National Academy of Sciences 110.52 (2013): 21177-21182.

- McPherson, Jacob G., Robert R. Miller, and Steve I. Perlmutter. "Targeted, activity-dependent spinal stimulation produces long-lasting motor recovery in chronic cervical spinal cord injury." Proceedings of the National Academy of Sciences 112.39 (2015): 12193-12198.

- Pais-Vieira, Miguel, et al. "A closed loop brain-machine interface for epilepsy control using dorsal column electrical stimulation." Scientific Reports 6.1 (2016): 32814.

- Berger, Theodore W., et al. "A cortical neural prosthesis for restoring and enhancing memory." Journal of neural engineering 8.4 (2011): 046017.

- Caramenti, Martina, et al. "Challenges in neurorehabilitation and neural engineering." Emerging therapies in neurorehabilitation II. Cham: Springer International Publishing, 2015. 1-27.

- Haynes, John-Dylan, and Geraint Rees. "Decoding mental states from brain activity in humans." Nature reviews neuroscience 7.7 (2006): 523-534.

- Wolpert, Daniel M., Zoubin Ghahramani, and Michael I. Jordan. "An internal model for sensorimotor integration." Science 269.5232 (1995): 1880-1882.

- Haynes, John-Dylan, et al. "Reading hidden intentions in the human brain." current Biology 17.4 (2007): 323-328.

-O'Doherty JE, Lebedev MA, Ifft PJ, Zhuang KZ, Shokur S, Bleuler H, Nicolelis MA. Active tactile exploration using a brain-machine-brain interface. Nature 479: 228–231, 2011.

- Andersen, Richard A., Eun Jung Hwang, and Grant H. Mulliken. "Cognitive neural prosthetics." Annual review of psychology 61.1 (2010): 169-190.

- Hasegawa, Ryohei P., Yukako T. Hasegawa, and Mark A. Segraves. "Neural mind reading of multi-dimensional decisions by monkey mid-brain activity." Neural Networks 22.9 (2009): 1247-1256.

- Reichert, Christoph, et al. "An efficient decoder for the recognition of event-related potentials in high-density MEG recordings." Computers 5.2 (2016): 5.

- Kelly, S. P., et al. "A comparison of covert and overt attention as a control option in a steady-state visual evoked potential-based brain computer interface." The 26th Annual International Conference of the IEEE Engineering in Medicine and Biology Society. Vol. 2. IEEE, 2004.

- Brumberg, Jonathan S., et al. "Brain–computer interfaces for speech communication." Speech communication 52.4 (2010): 367-379.

- Brumberg, Jonathan S., et al. "Classification of intended phoneme production from chronic intracortical microelectrode recordings in speech motor cortex." Frontiers in neuroscience 5 (2011): 7880.

- Guenther, Frank H., et al. "A wireless brain-machine interface for real-time speech synthesis." PloS one 4.12 (2009): e8218.

- Leuthardt, Eric C., et al. "Using the electrocorticographic speech network to control a brain–computer interface in humans." Journal of neural engineering 8.3 (2011): 036004.

- Wang, Li, Xiong Zhang, and Yu Zhang. "Extending motor imagery by speech imagery for brain-computer interface." 2013 35th Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC). IEEE, 2013.

- Wang, Wei, et al. "Decoding semantic information from human electrocorticographic (ECoG) signals." 2011 Annual International Conference of the IEEE Engineering in Medicine and Biology Society. IEEE, 2011.

- Hasegawa, Ryohei P., Yukako T. Hasegawa, and Mark A. Segraves. "Neural mind reading of multi-dimensional decisions by monkey mid-brain activity." Neural Networks 22.9 (2009): 1247-1256.

- Hasegawa, Ryohei P., Yukako T. Hasegawa, and Mark A. Segraves. "Neural mind reading of multi-dimensional decisions by monkey mid-brain activity." Neural Networks 22.9 (2009): 1247-1256.

- Ahn, Minkyu, and Sung Chan Jun. "Performance variation in motor imagery brain–computer interface: a brief review." Journal of neuroscience methods 243 (2015): 103-110.

- Ang, Kai Keng, et al. "A clinical study of motor imagery-based brain-computer interface for upper limb robotic rehabilitation." 2009 annual international conference of the IEEE engineering in medicine and biology society. IEEE, 2009.

- Friedrich, Elisabeth VC, Reinhold Scherer, and Christa Neuper. "Long-term evaluation of a 4-class imagery-based brain–computer interface." Clinical Neurophysiology 124.5 (2013): 916-927.

- Mokienko, Olesya A., et al. "Increased motor cortex excitability during motor imagery in brain-computer interface trained subjects." Frontiers in computational neuroscience 7 (2013): 168.

- Sugata, Hisato, et al. "Common neural correlates of real and imagined movements contributing to the performance of brain–machine interfaces." Scientific reports 6.1 (2016): 24663.

- Wang, Yijun, et al. "Implementation of a brain-computer interface based on three states of motor imagery." 2007 29th Annual International Conference of the IEEE Engineering in Medicine and Biology Society. IEEE, 2007.

- Pais-Vieira, Miguel, et al. "A brain-to-brain interface for real-time sharing of sensorimotor information." Scientific reports 3.1 (2013): 1319.

- Pais-Vieira, M., et al. "Building an organic computing device with multiple interconnected brains. Sci Rep 5: 11869." 2015,

- Ramakrishnan, Arjun, et al. "Computing arm movements with a monkey brainet." Scientific reports 5.1 (2015): 10767.

- Yoo, Seung-Schik, et al. "Non-invasive brain-to-brain interface (BBI): establishing functional links between two brains." PloS one 8.4 (2013): e60410.

- Li, Guangye, and Dingguo Zhang. "Brain-computer interface controlled cyborg: establishing a functional information transfer pathway from human brain to cockroach brain." PloS one 11.3 (2016): e0150667.

- Shanechi, Maryam M., Rollin C. Hu, and Ziv M. Williams. "A cortical–spinal prosthesis for targeted limb movement in paralysed primate avatars." Nature communications 5.1 (2014): 3237.

- Rao, Rajesh PN, et al. "A direct brain-to-brain interface in humans." PloS one 9.11 (2014): e111332.

- Eckstein, Miguel P., et al. "Neural decoding of collective wisdom with multi-brain computing." NeuroImage 59.1 (2012): 94-108.

- Poli, Riccardo, Davide Valeriani, and Caterina Cinel. "Collaborative brain-computer interface for aiding decision-making." PloS one 9.7 (2014): e102693.

- Fausset, C. B., et al. "International conference on universal access in human-computer interaction." (2013): 51-8.

- Ang, Chee Siang, et al. "Use of brain computer interfaces in neurological rehabilitation." British Journal of Neuroscience Nursing 7.3 (2011).

- Ang, Kai Keng, et al. "A randomized controlled trial of EEG-based motor imagery brain-computer interface robotic rehabilitation for stroke." Clinical EEG and neuroscience 46.4 (2015): 310-320.

- Bortole, M., et al. "Emerging Therapies in Neurorehabilitation ed LJ Pons and D Torricelli." (2014): 235-47.

- Dobkin, Bruce H. "Brain–computer interface technology as a tool to augment plasticity and outcomes for neurological rehabilitation." The Journal of physiology 579.3 (2007): 637-642.

- Shokur, Solaiman, et al. "Assimilation of virtual legs and perception of floor texture by complete paraplegic patients receiving artificial tactile feedback." Scientific reports 6.1 (2016): 32293.

- Silvoni, Stefano, et al. "Brain-computer interface in stroke: a review of progress." Clinical EEG and neuroscience 42.4 (2011): 245-252.

- Soekadar, Surjo R., et al. "Brain–machine interfaces in neurorehabilitation of stroke." Neurobiology of disease 83 (2015): 172-179.

- Soekadar, Surjo R., Leonardo G. Cohen, and Niels Birbaumer. "Clinical brain-machine interfaces." Cogn Plast Neurol Disorders 347 (2014).

- Venkatakrishnan, Anusha, Gerard E. Francisco, and Jose L. Contreras-Vidal. "Applications of brain–machine interface systems in stroke recovery and rehabilitation." Current physical medicine and rehabilitation reports 2.2 (2014): 93-105.

- Bullara, Leo A., et al. "Evaluation of electrode array material for neural prostheses." Neurosurgery 5.6 (1979): 681-686.

- Caramenti, Martina, et al. "Challenges in neurorehabilitation and neural engineering." Emerging therapies in neurorehabilitation II. Cham: Springer International Publishing, 2015. 1-27.

- Caramenti, Martina, et al. "Challenges in neurorehabilitation and neural engineering." Emerging therapies in neurorehabilitation II. Cham: Springer International Publishing, 2015. 1-27.

- Ramos‐Murguialday, Ander, et al. "Brain–machine interface in chronic stroke rehabilitation: a controlled study." Annals of neurology 74.1 (2013): 100-108.

- Ang, Kai Keng, et al. "Brain-computer interface-based robotic end effector system for wrist and hand rehabilitation: results of a three-armed randomized controlled trial for chronic stroke." Frontiers in neuroengineering 7 (2014): 30.

- VERSCHURE, PAUL. "Using a hybrid brain computer interface and virtual reality system to monitor and promote cortical reorganization through motor activity and motor imagery training." (2013).

- Soekadar SR, Witkowski M, Garcia Cossio E, Birbaumer N, Cohen L. Learned EEG-based brain self-regulation of motor-related oscillations during application of transcranial electric brain stimulation: feasibility and limitations. Front Behav Neurosci 8: 93, 2014.

- Donati, Ana RC, et al. "Long-term training with a brain-machine interface-based gait protocol induces partial neurological recovery in paraplegic patients." Scientific reports 6.1 (2016): 30383.

- Abdullah, Faye I., Islam M.R. EEG Channel Selection Techniques in Motor Imagery Applications: A Review and New Perspectives. Bioengineering. 2022;9:726.

- Singh S.P., Mishra S., Gupta S., Padmanabhan P., Jia L., Colin T.K.A., Tsai Y.T., Kejia T., Sankarapillai P., Mohan A., et al. Functional Mapping of the Brain for Brain–Computer Interfacing: A Review. Electronics. 2023;12:604. doi: 10.3390/electronics12030604.

- Cajigas I., Davis K.C., Meschede-Krasa B., Prins N.W., Gallo S., Naeem J.A., Palermo A., Wilson A., Guerra S., Parks B.A., et al. Implantable brain–computer interface for neuroprosthetic-enabled volitional hand grasp restoration in spinal cord injury. Brain Commun. 2021;3:fcab248.

- Lim, Jeffrey, et al. "BCI-based Neuroprostheses and physiotherapies for stroke motor rehabilitation." Neurorehabilitation technology. Cham: Springer International Publishing, 2022. 509-524.

- Sanna, Andrea, et al. "BARI: An affordable brain-augmented reality interface to support human–robot collaboration in assembly tasks." Information 13.10 (2022): 460.

- Shieh, Chun-Ping, et al. "Simultaneously spatiospectral pattern learning and contaminated trial pruning for electroencephalography-based brain computer interface." Symmetry 12.9 (2020): 1387.

- Xu, Baoguo, et al. "Motor imagery based continuous teleoperation robot control with tactile feedback." Electronics 9.1 (2020): 174.

- Tayeb, Zied, et al. "Validating deep neural networks for online decoding of motor imagery movements from EEG signals." Sensors 19.1 (2019): 210.

- Edelman, Bradley J., et al. "Noninvasive neuroimaging enhances continuous neural tracking for robotic device control." Science robotics 4.31 (2019): eaaw6844.

- Wu, Shang-Ju, Nicoletta Nicolaou, and Martin Bogdan. "Consciousness detection in a complete locked-in syndrome patient through multiscale approach analysis." Entropy 22.12 (2020): 1411.

- Powers, J. Clark, et al. "The human factors and ergonomics of P300-based brain-computer interfaces." Brain sciences 5.3 (2015): 318-354.

- Xu, Baoguo, et al. "Continuous hybrid BCI control for robotic arm using noninvasive electroencephalogram, computer vision, and eye tracking." Mathematics 10.4 (2022): 618.

- Dumitrescu, Catalin, Ilona-Madalina Costea, and Augustin Semenescu. "Using brain-computer interface to control a virtual drone using non-invasive motor imagery and machine learning." Applied Sciences 11.24 (2021): 11876.

- Orban, Mostafa, et al. "A review of brain activity and EEG-based brain–computer interfaces for rehabilitation application." Bioengineering 9.12 (2022): 768.

- Shah, Uzair, et al. "The role of artificial intelligence in decoding speech from EEG signals: a scoping review." Sensors 22.18 (2022): 6975.

- Ron-Angevin, Ricardo, et al. "Comparison of Two Paradigms Based on Stimulation with Images in a Spelling Brain–Computer Interface." Sensors 23.3 (2023): 1304.

- Akram, Faraz, et al. "A symbols based bci paradigm for intelligent home control using p300 event-related potentials." Sensors 22.24 (2022): 10000.

- Shah, Uzair, et al. "The role of artificial intelligence in decoding speech from EEG signals: a scoping review." Sensors 22.18 (2022): 6975.

- Velasco-Álvarez, Francisco, et al. "Brain–computer interface (BCI) control of a virtual assistant in a smartphone to manage messaging applications." Sensors 21.11 (2021): 3716.

- Anumanchipalli, Gopala K., Josh Chartier, and Edward F. Chang. "Speech synthesis from neural decoding of spoken sentences." Nature 568.7753 (2019): 493-498.

- Willett, Francis R., et al. "High-performance brain-to-text communication via handwriting." Nature 593.7858 (2021): 249-254.

- Cabañero-Gómez, Luis, et al. "Computational EEG analysis techniques when playing video games: a systematic review." Proceedings. Vol. 2. No. 19. MDPI, 2018.

- Choi, Hyoseon, et al. "Brain computer interface-based action observation game enhances mu suppression in patients with stroke." Electronics 8.12 (2019): 1466.

- Paszkiel, Szczepan, et al. "A Pilot Study of Game Design in the Unity Environment as an Example of the Use of Neurogaming on the Basis of brain–computer interface Technology to Improve Concentration." NeuroSci 2.2 (2021): 109-119.

- Cattan G., Mendoza C., Andreev A., Congedo M. Recommendations for Integrating a P300-Based Brain Computer Interface in Virtual Reality Environments for Gaming. Computers. 2018;7:34.

- Ahn, Minkyu, et al. "A review of brain-computer interface games and an opinion survey from researchers, developers and users." Sensors 14.8 (2014): 14601-14633.

- Ahn M, Lee M, Choi J, Jun SC. A Review of Brain-Computer Interface Games and an Opinion Survey from Researchers, Developers and Users. Sensors. 2014; 14(8):14601-14633.

- 143.Kovyazina M.S., Varako N.A., Lyukmanov R.K., Asiatskaya G.A., Suponeva N.A., Trofimova A.K. Neurofeedback in the Rehabilitation of Patients with Motor Disorders after Stroke. Hum. Physiol. 2019;45:444–451.

- 143.Kovyazina M.S., Varako N.A., Lyukmanov R.K., Asiatskaya G.A., Suponeva N.A., Trofimova A.K. Neurofeedback in the Rehabilitation of Patients with Motor Disorders after Stroke. Hum. Physiol. 2019;45:444–451

- Serrano-Barroso A, Siugzdaite R, Guerrero-Cubero J, Molina-Cantero AJ, Gomez-Gonzalez IM, Lopez JC, Vargas JP. Detecting Attention Levels in ADHD Children with a Video Game and the Measurement of Brain Activity with a Single-Channel BCI Headset. Sensors. 2021; 21(9):3221. https://doi.org/10.3390/s21093221

- Bulat, Matvey, et al. "Playing a P300-based BCI VR game leads to changes in cognitive functions of healthy adults." BioRxiv (2020): 2020-05.

- Chamola, Vinay, and Bijay Kumar Rout. "A review on Virtual Reality and Augmented Reality use-cases of Brain Computer Interface based applications for smart cities." (2022).

- Al-Nafjan A, Aldayel M. Predict Students’ Attention in Online Learning Using EEG Data. Sustainability. 2022; 14(11):6553. https://doi.org/10.3390/su14116553

- Rácz M, Noboa E, Détár B, Nemes Á, Galambos P, Szűcs L, Márton G, Eigner G, Haidegger T. PlatypOUs—A Mobile Robot Platform and Demonstration Tool Supporting STEM Education. Sensors. 2022; 22(6):2284. https://doi.org/10.3390/s22062284

- Balderas, David, et al. "Education 4.0: teaching the basis of motor imagery classification algorithms for brain-computer interfaces." Future Internet 13.8 (2021): 202.

- Burgos, Daniel. Radical solutions and learning Analytics. Singapore: Springer, 2020.

- Teo, Sze-Hui Jane, et al. "Brain-computer interface based attention and social cognition training programme for children with ASD and co-occurring ADHD: A feasibility trial." Research in Autism Spectrum Disorders 89 (2021): 101882.

- Hadjiaros, Marios, et al. "Virtual reality cognitive gaming based on brain computer interfacing: A narrative review." IEEE Access 11 (2023): 18399-18416.

- Hadjiaros, Marios, et al. "Virtual reality cognitive gaming based on brain computer interfacing: A narrative review." IEEE Access 11 (2023): 18399-18416.

- Lim, C.G., Soh, C.P., Lim, S.S.Y. et al. Home-based brain–computer interface attention training program for attention deficit hyperactivity disorder: a feasibility trial. Child Adolesc Psychiatry Ment Health 17, 15 (2023).

- Jia, Ziyu, Xiyang Cai, and Zehui Jiao. "Multi-modal physiological signals based squeeze-and-excitation network with domain adversarial learning for sleep staging." IEEE Sensors Journal 22.4 (2022): 3464-3471.

- Phan, Huy, et al. "Joint classification and prediction CNN framework for automatic sleep stage classification." IEEE Transactions on Biomedical Engineering 66.5 (2018): 1285-1296.

- Abenna, Said, Mohammed Nahid, and Hamid Bouyghf. "Sleep stages detection based BCI: A novel single-channel EEG classification based on optimized bandpass filter." International Conference on Advanced Technologies for Humanity. Cham: Springer International Publishing, 2021.

- Jia, Ziyu, et al. "Multi-view spatial-temporal graph convolutional networks with domain generalization for sleep stage classification." IEEE Transactions on Neural Systems and Rehabilitation Engineering 29 (2021): 1977-1986.

- Eldele, Emadeldeen, et al. "An attention-based deep learning approach for sleep stage classification with single-channel EEG." IEEE Transactions on Neural Systems and Rehabilitation Engineering 29 (2021): 809-818.

- Michielli, Nicola, U. Rajendra Acharya, and Filippo Molinari. "Cascaded LSTM recurrent neural network for automated sleep stage classification using single-channel EEG signals." Computers in biology and medicine 106 (2019): 71-81.

- Santaji, Sagar, and Veena Desai. "Analysis of EEG signal to classify sleep stages using machine learning." Sleep and Vigilance 4.2 (2020): 145-152.




DOI: http://dx.doi.org/10.52155/ijpsat.v53.2.7615

Refbacks

  • There are currently no refbacks.


Copyright (c) 2025 Maged Naser

Creative Commons License
This work is licensed under a Creative Commons Attribution 4.0 International License.