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Assessing The Relevance Of Neurophysiological Patterns To Predict Motor Imagery-based BCI Users’ Performance

机译:评估神经生理学模式的相关性,以预测基于机动图像的BCI用户性能

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Motor Imagery-based Brain-Computer Interfaces (MI-BCI) allow users to control a computer for various applications using their brain activity alone, which is usually recorded by an electroencephalogram (EEG). Although BCI applications are numerous, their use outside laboratories is still scarce due to their poor accuracy. Some users cannot use BCIs, a phenomenon sometimes called "BCI illiteracy", which impacts around 10% to 30% of BCI users, who cannot produce discriminable EEG patterns. By performing neurophysiological analyses, and notably by identifying neurophysiological predictors of BCI performance, we may understand this phenomenon and its causes better. In turn, this may also help us to better understand and thus possibly improve, BCI user training. Therefore, this paper presents statistical models dedicated to the prediction of MI-BCI user performance, based on neurophysiological users’ features extracted from a two minute EEG recording of a "relax with eyes open" condition. We consider data from 56 subjects that were recorded in a ‘relax with eyes open’ condition before performing a MI-BCI experiment. We used machine learning regression algorithm with leave-one-subject-out cross-validation to build our model of prediction. We also computed different correlations between those features (neurophysiological predictors) and users’ MI-BCI performances. Our results suggest such models could predict user performances significantly better than chance (p ≤ 0.01) but with a relatively high mean absolute error of 12.43%. We also found significant correlations between a few of our features and the performance, including the previously explored µ-band predictor, as well as a new one proposed here: the µ-peak location variability. These results are thus encouraging to better understand and predict BCI illiteracy. However, they also require further improvements in order to obtain more reliable predictions.
机译:基于Motor Imagery的大脑 - 计算机接口(MI-BCI)允许用户控制使用其大脑活动的各种应用的计算机,其通常由脑电图(EEG)记录。虽然BCI应用程序很多,但由于其准确性差,他们的使用外面的实验室仍然稀缺。有些用户不能使用BCI,一种有时称为“BCI文盲”的现象,其影响约为BCI用户的10%至30%,他们无法产生可辨别的EEG模式。通过进行神经生理分析,特别是通过鉴定BCI性能的神经生理预测因子,我们可能会理解这种现象,其原因更好。反过来,这也可能有助于我们更好地理解,从而可能改善BCI用户培训。因此,本文提出了专用于预测MI-BCI用户性能的统计模型,基于从两分钟EEG记录的神经生理用户的特征从“放松的眼睛打开”条件。在进行MI-BCI实验之前,我们考虑从56个受试者记录在'放松身心的主题中的数据。我们使用了机器学习回归算法,带有休假 - 一次性交叉验证来构建我们的预测模型。我们还计算了这些特征(神经生理学预测器)和用户MI-BCI性能之间的不同相关性。我们的结果表明,这种模型可以预测用户性能明显优于偶然(P≤0.01),但具有相对高的平均绝对误差为12.43%。我们还发现了少数特征和性能之间的显着相关性,包括先前探索的μ带预测器,以及这里提出的新产品:μ峰值位置变化。因此,这些结果鼓励更好地理解和预测BCI文盲。然而,它们还需要进一步改进以获得更可靠的预测。

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