von Lühmann Alexander, Ortega-Martinez Antonio, Boas David A, Yücel Meryem Ayşe
Neurophotonics Center, Biomedical Engineering, Boston University, Boston, MA, United States.
Machine Learning Department, Berlin Institute of Technology, Berlin, Germany.
Front Hum Neurosci. 2020 Feb 18;14:30. doi: 10.3389/fnhum.2020.00030. eCollection 2020.
Within a decade, single trial analysis of functional Near Infrared Spectroscopy (fNIRS) signals has gained significant momentum, and fNIRS joined the set of modalities frequently used for active and passive Brain Computer Interfaces (BCI). A great variety of methods for feature extraction and classification have been explored using state-of-the-art Machine Learning methods. In contrast, signal preprocessing and cleaning pipelines for fNIRS often follow simple recipes and so far rarely incorporate the available state-of-the-art in adjacent fields. In neuroscience, where fMRI and fNIRS are established neuroimaging tools, evoked hemodynamic brain activity is typically estimated across multiple trials using a General Linear Model (GLM). With the help of the GLM, subject, channel, and task specific evoked hemodynamic responses are estimated, and the evoked brain activity is more robustly separated from systemic physiological interference using independent measures of nuisance regressors, such as short-separation fNIRS measurements. When correctly applied in single trial analysis, e.g., in BCI, this approach can significantly enhance contrast to noise ratio of the brain signal, improve feature separability and ultimately lead to better classification accuracy. In this manuscript, we provide a brief introduction into the GLM and show how to incorporate it into a typical BCI preprocessing pipeline and cross-validation. Using a resting state fNIRS data set augmented with synthetic hemodynamic responses that provide ground truth brain activity, we compare the quality of commonly used fNIRS features for BCI that are extracted from (1) conventionally preprocessed signals, and (2) signals preprocessed with the GLM and physiological nuisance regressors. We show that the GLM-based approach can provide better single trial estimates of brain activity as well as a new feature type, i.e., the weight of the individual and channel-specific hemodynamic response function (HRF) regressor. The improved estimates yield features with higher separability, that significantly enhance accuracy in a binary classification task when compared to conventional preprocessing-on average +7.4% across subjects and feature types. We propose to adapt this well-established approach from neuroscience to the domain of single-trial analysis and preprocessing wherever the classification of evoked brain activity is of concern, for instance in BCI.
在十年内,对功能性近红外光谱(fNIRS)信号的单试验分析已获得显著发展势头,并且fNIRS已成为常用于主动和被动脑机接口(BCI)的一组模态之一。人们已经使用最先进的机器学习方法探索了各种各样的特征提取和分类方法。相比之下,fNIRS的信号预处理和清理流程通常遵循简单的方法,并且到目前为止很少纳入相邻领域的现有先进技术。在神经科学领域,功能磁共振成像(fMRI)和fNIRS是已确立的神经成像工具,诱发的血流动力学脑活动通常使用通用线性模型(GLM)在多个试验中进行估计。借助GLM,可以估计受试者、通道和任务特定的诱发血流动力学反应,并且使用诸如短距离fNIRS测量等独立的干扰回归变量测量方法,可以更稳健地将诱发的脑活动与全身生理干扰区分开来。当正确应用于单试验分析(例如在BCI中)时,这种方法可以显著提高脑信号的对比度与噪声比,改善特征可分离性,并最终提高分类准确率。在本手稿中,我们简要介绍了GLM,并展示了如何将其纳入典型的BCI预处理流程和交叉验证中。使用一个静息态fNIRS数据集,该数据集通过提供真实脑活动的合成血流动力学反应进行了增强,我们比较了从(1)传统预处理信号和(2)使用GLM和生理干扰回归变量预处理的信号中提取的常用于BCI的fNIRS特征的质量。我们表明,基于GLM的方法可以提供更好的脑活动单试验估计以及一种新的特征类型,即个体和通道特定的血流动力学反应函数(HRF)回归变量的权重。改进后的估计产生具有更高可分离性的特征,与传统预处理相比,在二分类任务中显著提高了准确率——平均跨受试者和特征类型提高了7.4%。我们建议将这种在神经科学中已确立的方法应用于单试验分析和预处理领域,只要涉及诱发脑活动的分类,例如在BCI中。