Classification of functional near-infrared spectroscopy signals applying reduction of scalp hemodynamic artifact

Takanori Sato, Kyoko Sugai, I. Nambu, Y. Wada
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引用次数: 2

Abstract

Functional near-infrared spectroscopy (fNIRS) has been applied to brain-computer interfaces (BCIs) in many studies because of its simplicity of use and portability. However, scalp-hemodynamics creates artifacts that often contaminate fNIRS signals and substantially degrade the signal-to-noise ratio of functional signals. Although some studies have reported methods for reducing these artifacts, no study has investigated their effects on BCIs. Previously, we proposed to remove these artifacts using a method that estimates the global scalp-hemodynamic component from a minimal number of short source-detector distance channels (Short-channels), and removes its influence from standard source-detector distance channels using a general linear model (GLM) that incorporates the scalp-hemodynamics in the design matrix. Here, we investigated the effects of applying scalp-hemodynamic reduction to classify four actions: grasping a ball with the right, left, or both hands, or resting. We used a support vector machine (SVM) and binary-tree multi-classification, and compared five types of ΔOxy-Hb features: time samples of raw data, of data after subtracting out scalp-hemodynamics, and of the estimated scalp-hemodynamics themselves, and GLM β values for the cerebral-hemodynamic component obtained using a standard GLM without the scalp-hemodynamic model and those obtained using our proposed GLM. Results showed that the proposed method successfully improved the signal-to-noise ratio of ΔOxy-Hb signals, and the β values estimated by the proposed method showed the highest accuracy for classification. Thus, reduction of scalp-hemodynamic artifacts using our method may make fNIRS-BCIs more accurate.
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应用头皮血流动力学伪影还原的功能性近红外光谱信号分类
功能近红外光谱(fNIRS)由于其使用简单、便携等优点,在脑机接口(bci)领域得到了广泛的应用。然而,头皮血流动力学产生的伪影通常会污染近红外光谱信号,并大大降低功能信号的信噪比。虽然一些研究报道了减少这些伪影的方法,但没有研究调查它们对脑机接口的影响。在此之前,我们建议使用一种方法去除这些伪影,该方法从最小数量的短源检测器距离通道(short -channels)中估计全局头皮血流动力学分量,并使用将头皮血流动力学纳入设计矩阵的一般线性模型(GLM)从标准源检测器距离通道中去除其影响。在这里,我们研究了应用头皮血流动力学还原对四种动作的影响:用右手、左手或双手抓球,或休息。我们使用支持向量机(SVM)和二叉树多分类,比较了5种ΔOxy-Hb特征:原始数据的时间样本、减去头皮血流动力学的数据的时间样本和估计的头皮血流动力学本身的时间样本,以及使用不含头皮血流动力学模型的标准GLM和使用我们提出的GLM获得的脑血流动力学成分的GLM β值。结果表明,该方法成功地提高了ΔOxy-Hb信号的信噪比,估计出的β值具有最高的分类准确率。因此,使用我们的方法减少头皮血流动力学伪影可能使fnirs - bci更准确。
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