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首页> 外文期刊>Journal of NeuroEngineering Rehabilitation >Single-trial classification of motor imagery differing in task complexity: a functional near-infrared spectroscopy study
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Single-trial classification of motor imagery differing in task complexity: a functional near-infrared spectroscopy study

机译:不同任务复杂度的运动图像的单次试验分类:一项功能性近红外光谱研究

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Background For brain computer interfaces (BCIs), which may be valuable in neurorehabilitation, brain signals derived from mental activation can be monitored by non-invasive methods, such as functional near-infrared spectroscopy (fNIRS). Single-trial classification is important for this purpose and this was the aim of the presented study. In particular, we aimed to investigate a combined approach: 1) offline single-trial classification of brain signals derived from a novel wireless fNIRS instrument; 2) to use motor imagery (MI) as mental task thereby discriminating between MI signals in response to different tasks complexities, i.e. simple and complex MI tasks. Methods 12 subjects were asked to imagine either a simple finger-tapping task using their right thumb or a complex sequential finger-tapping task using all fingers of their right hand. fNIRS was recorded over secondary motor areas of the contralateral hemisphere. Using Fisher's linear discriminant analysis (FLDA) and cross validation, we selected for each subject a best-performing feature combination consisting of 1) one out of three channel, 2) an analysis time interval ranging from 5-15 s after stimulation onset and 3) up to four Δ[O2Hb] signal features (Δ[O2Hb] mean signal amplitudes, variance, skewness and kurtosis). Results The results of our single-trial classification showed that using the simple combination set of channels, time intervals and up to four Δ[O2Hb] signal features comprising Δ[O2Hb] mean signal amplitudes, variance, skewness and kurtosis, it was possible to discriminate single-trials of MI tasks differing in complexity, i.e. simple versus complex tasks (inter-task paired t-test p ≤ 0.001), over secondary motor areas with an average classification accuracy of 81%. Conclusions Although the classification accuracies look promising they are nevertheless subject of considerable subject-to-subject variability. In the discussion we address each of these aspects, their limitations for future approaches in single-trial classification and their relevance for neurorehabilitation.
机译:背景技术对于可能在神经康复中有价值的大脑计算机接口(BCI),可以通过非侵入性方法(例如功能近红外光谱法(fNIRS))来监测源自精神激活的大脑信号。为此,单项试验分类很重要,这是本研究的目的。特别是,我们旨在研究一种组合方法:1)从新型无线fNIRS仪器获得的脑信号的离线单次试验分类; 2)将运动图像(MI)用作心理任务,从而根据不同的任务复杂性(即简单和复杂的MI任务)区分MI信号。方法12位受试者被要求想象使用他们的右拇指完成一个简单的手指敲击任务,或者使用他们的右手所有手指进行一个复杂的连续的手指敲击任务。在对侧半球的继发性运动区域记录了fNIRS。使用Fisher线性判别分析(FLDA)和交叉验证,我们为每个受试者选择了一种表现最佳的特征组合,包括1)三个通道中的一个,2)刺激发作后5-15 s的分析时间间隔和3 )最多四个Δ[O2Hb]信号特征(Δ[O2Hb]平均信号幅度,方差,偏度和峰度)。结果我们的单项试验结果表明,使用简单的通道,时间间隔和多达四个Δ[O2Hb]信号特征的组合,包括Δ[O2Hb]平均信号幅度,方差,偏度和峰度,可以在二级运动区域上区分复杂程度不同的MI任务的单项试验,即简单任务与复杂任务(任务间配对t检验p≤0.001),平均分类精度为81%。结论尽管分类的准确性看起来很有希望,但它们仍然存在相当大的主题差异。在讨论中,我们将探讨这些方面的每个方面,它们在单次试验分类中未来方法的局限性以及它们与神经康复的相关性。

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