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Manipulating attention via mindfulness induction improves P300-based brain-computer interface performance

机译:通过正念感应操纵注意力,改善了基于P300的脑机接口性能

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In this study, we examined the effects of a short mindfulness meditation induction (MMI) on the performance of a P300-based brain-computer interface (BCI) task. We expected that MMI would harness present-moment attentional resources, resulting in two positive consequences for P300-based BCI use. Specifically, we believed that MMI would facilitate increases in task accuracy and promote the production of robust P300 amplitudes. Sixteen-channel electroencephalographic data were recorded from 18 subjects using a row/column speller task paradigm. Nine subjects participated in a 6 min MMI and an additional nine subjects served as a control group. Subjects were presented with a 6 x 6 matrix of alphanumeric characters on a computer monitor. Stimuli were flashed at a stimulus onset asynchrony (SOA) of 125 ms. Calibration data were collected on 21 items without providing feedback. These data were used to derive a stepwise linear discriminate analysis classifier that was applied to an additional 14 items to evaluate accuracy. Offline performance analyses revealed that MMI subjects were significantly more accurate than control subjects. Likewise, MMI subjects produced significantly larger P300 amplitudes than control subjects at Cz and PO7. The discussion focuses on the potential attentional benefits of MMI for P300-based BCI performance.
机译:在这项研究中,我们检查了短时正念冥想诱导(MMI)对基于P300的脑机接口(BCI)任务的性能的影响。我们期望MMI将利用当前的注意力资源,对基于P300的BCI使用产生两个积极的影响。具体来说,我们认为MMI将有助于提高任务准确性,并促进强大P300振幅的产生。使用行/列拼写任务范式记录了来自18位受试者的16通道脑电图数据。 9名受试者参加了6分钟的MMI,另外9名受试者作为对照组。在计算机监视器上为受试者呈现6 x 6的字母数字字符矩阵。刺激以125毫秒的刺激发作异步(SOA)闪烁。在没有提供反馈的情况下收集了21个项目的校准数据。这些数据用于导出逐步线性判别分析分类器,该分类器应用于其他14个项目以评估准确性。离线性能分析显示,MMI对象比对照组的对象准确得多。同样,在Cz和PO7时,MMI受试者产生的P300振幅明显大于对照受试者。讨论的重点是MMI对于基于P300的BCI性能的潜在关注优势。

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  • 来源
    《Journal of neural engineering》 |2011年第2期|p.128-134|共7页
  • 作者单位

    East Tennessee State University, Johnson City, TN 37601, USA;

    East Tennessee State University, Johnson City, TN 37601, USA;

    East Tennessee State University, Johnson City, TN 37601, USA;

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  • 正文语种 eng
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