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A novel onset detection technique for brain?computer interfaces using sound-production related cognitive tasks in simulated-online system

机译:在模拟在线系统中使用与声音产生相关的认知任务的新型脑机接口发作检测技术

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摘要

Objective. Self-paced EEG-based BCIs (SP-BCIs) have traditionally been avoided due to two sources of uncertainty: (1) precisely when an intentional command is sent by the brain, i.e., the command onset detection problem, and (2) how different the intentional command is when compared to non-specific (or idle) states. Performance evaluation is also a problem and there are no suitable standard metrics available. In this paper we attempted to tackle these issues. Approach. Self-paced covert sound-production cognitive tasks (i.e., high pitch and siren-like sounds) were used to distinguish between intentional commands (IC) and idle states. The IC states were chosen for their ease of execution and negligible overlap with common cognitive states. Band power and a digital wavelet transform were used for feature extraction, and the Davies?Bouldin index was used for feature selection. Classification was performed using linear discriminant analysis. Main results. Performance was evaluated under offline and simulated-online conditions. For the latter, a performance score called true-false-positive (TFP) rate, ranging from 0 (poor) to 100 (perfect), was created to take into account both classification performance and onset timing errors. Averaging the results from the best performing IC task for all seven participants, an 77.7% true-positive (TP) rate was achieved in offline testing. For simulated-online analysis the best IC average TFP score was 76.67% (87.61% TP rate, 4.05% false-positive rate). Significance. Results were promising when compared to previous IC onset detection studies using motor imagery, in which best TP rates were reported as 72.0% and 79.7%, and which, crucially, did not take timing errors into account. Moreover, based on our literature review, there is no previous covert sound-production onset detection system for spBCIs. Results showed that the proposed onset detection technique and TFP performance metric have good potential for use in SP-BCIs.
机译:目的。传统上,由于两个不确定性来源,避免使用基于自定速度的EEG的BCI(SP-BCI):( 1)精确地何时由大脑发送了故意命令,即命令开始检测问题,以及(2)如何与非特定(或空闲)状态相比,有意命令是不同的。绩效评估也是一个问题,没有合适的标准指标可用。在本文中,我们试图解决这些问题。方法。自定进度的隐性声音产生认知任务(即高音和警笛声)用于区分故意命令(IC)和空闲状态。选择IC状态是因为它们易于执行并且与常见的认知状态可以忽略不计。频带功率和数字小波变换用于特征提取,Davies?Bouldin索引用于特征选择。使用线性判别分析进行分类。主要结果。在离线和模拟在线条件下评估性能。对于后者,创建了一个性能分数,称为“真-假-阳性”(TFP),范围从0(差)到100(完美),同时考虑了分类性能和开始计时错误。将所有七个参与者的最佳IC任务结果平均,在离线测试中实现了77.7%的真阳性(TP)率。对于模拟在线分析,最佳IC平均TFP得分为76.67%(TP率为87.61%,假阳性率为4.05%)。意义。与以前使用运动图像进行IC发作检测的研究相比,结果令人鼓舞,后者报告的最佳TP率分别为72.0%和79.7%,并且至关重要的是,没有考虑到计时误差。而且,根据我们的文献综述,以前没有针对spBCI的秘密声音产生开始检测系统。结果表明,所提出的发病检测技术和TFP性能指标在SP-BCI中具有良好的应用潜力。

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    Song, Y; Sepulveda, F;

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