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Investigation of initial dips in mental arithmetic tasks: An fNIRS study

机译:心理算术任务初探的调查:一项fNIRS研究

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In this paper, we investigate the feasibility of identifying the functional near-infrared spectroscopy (fNIRS) signal occurred from a single trial arithmetic task, in which the rest state hemodynamic response (HR), the occurrence of an initial dip, and the regular hemodynamic response are involved. fNIRS signals are measured from five healthy subjects for mental arithmetic tasks from the prefrontal cortex. Multiclass linear discriminant analysis (LDA) is used in classifying the fNIRS signal upon a single trial. Four different features including the signal mean, skewness, signal slope, and kurtosis are compared with five different window sizes: 0~1, 0~1.5, 0~2, 0~2.5, and 0~3 sec for classification. Threshold-based vector phase analysis method is used to ensure the presence of initial dips in fNIRS signals. The average classification accuracy in offline analysis of 65.3% in 0~3 sec time window using signal mean and signal slope is obtained. The result shows that the initial dip can be classified from the baseline (rest) and HR by using signal mean and signal slope as a features. This will result in the reduction of time window size to 0~3 sec in order to use fNIRS signals for brain-computer interface (BCI).
机译:在本文中,我们研究了从单个试验算术任务中识别功能性近红外光谱(fNIRS)信号的可行性,其中静息状态血液动力学响应(HR),初始骤降的发生和常规血液动力学涉及响应。 fNIRS信号是从五名健康受试者的前额叶皮层执行心理算术任务而测得的。在一次试验中,使用多类线性判别分析(LDA)对fNIRS信号进行分类。比较了信号均值,偏度,信号斜率和峰度这四个不同的特征,并使用了五个不同的窗口大小:0〜1、0〜1.5、0〜2、0〜2.5和0〜3秒进行分类。基于阈值的矢量相位分析方法用于确保fNIRS信号中存在初始骤降。使用信号平均值和信号斜率,在0〜3秒的时间范围内,离线分析的平均分类精度为65.3%。结果表明,通过使用信号平均值和信号斜率作为特征,可以从基线(静止)和HR分类初始下降。为了将fNIRS信号用于脑机接口(BCI),这将导致时间窗口大小减小到0〜3秒。

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