Parsing learning in networks using brain–machine interfaces

•Brain–machine interfaces (BMIs) engage an array of innate learning mechanisms.•BMIs allow definition and manipulation of learning networks.•Parsing learning across the network can resolve mechanisms of BMI learning. Brain–machine interfaces (BMIs) define new ways to interact with our environment an...

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Veröffentlicht in:Current opinion in neurobiology 2017-10, Vol.46, p.76-83
Hauptverfasser: Orsborn, Amy L, Pesaran, Bijan
Format: Artikel
Sprache:eng
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Zusammenfassung:•Brain–machine interfaces (BMIs) engage an array of innate learning mechanisms.•BMIs allow definition and manipulation of learning networks.•Parsing learning across the network can resolve mechanisms of BMI learning. Brain–machine interfaces (BMIs) define new ways to interact with our environment and hold great promise for clinical therapies. Motor BMIs, for instance, re-route neural activity to control movements of a new effector and could restore movement to people with paralysis. Increasing experience shows that interfacing with the brain inevitably changes the brain. BMIs engage and depend on a wide array of innate learning mechanisms to produce meaningful behavior. BMIs precisely define the information streams into and out of the brain, but engage wide-spread learning. We take a network perspective and review existing observations of learning in motor BMIs to show that BMIs engage multiple learning mechanisms distributed across neural networks. Recent studies demonstrate the advantages of BMI for parsing this learning and its underlying neural mechanisms. BMIs therefore provide a powerful tool for studying the neural mechanisms of learning that highlights the critical role of learning in engineered neural therapies.
ISSN:0959-4388
1873-6882
DOI:10.1016/j.conb.2017.08.002