2011
DOI: 10.1016/j.neuroimage.2011.01.021
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Neural mechanisms of brain–computer interface control

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Cited by 148 publications
(123 citation statements)
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“…Studies in healthy volunteers and patients with stroke show that motor imagery results in similar parietofrontal functional network interactions to those observed for execution of hand motor tasks (Sharma et al, 2009a;Gao et al, 2010). Moreover, the ability of healthy volunteers to acquire volitional control of sensorimotor rhythm modulation appears to be related to the degree that the constituent regions of this network are recruited by the motor imagery strategy used (Halder et al, 2011). Thus, it would be reasonable to expect that volitional control of neural activity through operant conditioning using motor imagery would relate to architectural features of this network.…”
Section: Global Functional Network Cost-efficiencymentioning
confidence: 78%
“…Studies in healthy volunteers and patients with stroke show that motor imagery results in similar parietofrontal functional network interactions to those observed for execution of hand motor tasks (Sharma et al, 2009a;Gao et al, 2010). Moreover, the ability of healthy volunteers to acquire volitional control of sensorimotor rhythm modulation appears to be related to the degree that the constituent regions of this network are recruited by the motor imagery strategy used (Halder et al, 2011). Thus, it would be reasonable to expect that volitional control of neural activity through operant conditioning using motor imagery would relate to architectural features of this network.…”
Section: Global Functional Network Cost-efficiencymentioning
confidence: 78%
“…Motor imagery is defined as the mental simulation of a kinesthetic movement (Decety and Inqvar, 1990;Neuper et al, 2005). Signal processing algorithms, individual users' characteristics, such as psychosocial and physiological parameters (e.g., fine motor skills) or brain structures, can predict performances for SMR-based BCIs Halder et al, 2011Halder et al, , 2013Hammer et al, 2011;Randolph, 2012). Besides these factors, feedback is a necessary feature for initial learning of the BCI skill (Brown, 1970;Kuhlman, 1978;McFarland et al, 1998;Wolpaw et al, 1991Wolpaw et al, , 2002.…”
Section: Introductionmentioning
confidence: 99%
“…Most of these studies focus on inter-subject variability from a physiological [2][3][4][5][6], anatomical [7,8], or psychological [9,10] perspectives. Although precise distinction between user-related and system-related causes of performance variations may not be simple [11], these studies provide a better understanding of these causes.…”
Section: Introductionmentioning
confidence: 99%