2020
DOI: 10.1101/2020.09.09.290080
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Effects of Long-Term Meditation Practices on Sensorimotor Rhythm Based BCI Learning

Abstract: Sensorimotor rhythm (SMR) based brain-computer interfaces (BCIs) provide an alternative pathway for users to perform motor control using motor imagery (MI). Despite the non-invasiveness, ease of use and low cost, this kind of BCI has limitation due to long training times and BCI inefficiency— where a subpopulation cannot generate decodable EEG signals to perform the control task. Meditation is a mental training method to improve mindfulness and awareness, and is reported to have a positive effect on one’s ment… Show more

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Cited by 3 publications
(11 citation statements)
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“…Data from these two runs were not used for further analysis. Given that prior work shows BCI learning can occur even after 20-30 runs (Jiang et al, 2021b), discarding the very first run will have a limited effect on studying the BCI learning in this work, and we can avoid potentially inaccurate BCI data when the subjects are just starting to learn the BCI task. Thus, only 6 runs of BCI data were saved from session 1 part 1.…”
Section: Experimental Designmentioning
confidence: 99%
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“…Data from these two runs were not used for further analysis. Given that prior work shows BCI learning can occur even after 20-30 runs (Jiang et al, 2021b), discarding the very first run will have a limited effect on studying the BCI learning in this work, and we can avoid potentially inaccurate BCI data when the subjects are just starting to learn the BCI task. Thus, only 6 runs of BCI data were saved from session 1 part 1.…”
Section: Experimental Designmentioning
confidence: 99%
“…The cursor speed was determined by the normalized AR amplitude difference and the cursor position was updated every 40 ms. For horizontal motion (LR tasks), the control signal was produced by taking the difference in AR amplitude between the two electrodes (C4 -C3), and for vertical motion (UD tasks), the signal was produced by taking the sum of the AR amplitudes of the two electrodes (C4 + C3). Each trial had three possible outcomes: a "hit" when the cursor successfully hit the target within 6 s and changed colors; a "miss" when the cursor hit the invisible target on the opposite side from where the target appeared; and an "invalid" when the subject was unable to hit the target with the cursor within 6 s. BCI performance, or MI accuracy, was quantified using percent valid correct (PVC) (Doud et al, 2011;Cassady et al, 2014;Meng et al, 2016;Edelman et al, 2019;Jiang et al, 2021b), which is the proportion of the number of "hits" within the total number of "hits" and "misses. "…”
Section: Brain-computer Interface Tasksmentioning
confidence: 99%
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“…One encouraging trend in BCI is to use artificial neural networks to decode brain states 13 , 35 – 37 . Critically, progress in creating robust and generalizable BCI decoding systems is currently hindered by the limited data available to train these decoding models.…”
Section: Background and Summarymentioning
confidence: 99%