Degirmenci Murside, Yuce Yilmaz Kemal, Perc Matjaž, Isler Yalcin
Kutahya Vocational School, Kutahya Health Sciences University, Kutahya, Türkiye.
Department of Computer Engineering, Alanya Alaaddin Keykubat University, Antalya, Türkiye.
Front Hum Neurosci. 2025 Jul 16;19:1633910. doi: 10.3389/fnhum.2025.1633910. eCollection 2025.
Electrencephalography (EEG)-based brain-computer interfaces (BCIs) have become popular as EEG is accepted as the simplest and non-invasive neuroimaging modality to record the brain's electrical activity. In the current BCI research context, apart from predicting extremity movements, recent BCI studies have been interested in accurately predicting finger movements of the same hand using different pattern recognition methods over EEG data collected based on motor imagery (MI), through which a mental image of the desired action is generated when a person ideally simulates or imagines carrying out a certain motor task. Although several pattern recognition methods have already been recommended in literature, majority of the studies focusing on classifying five finger movements, were based on study designs that neglected or excluded the idle state of brain (i.e., no mental task state) during which brain does not carry out any MI task. This study design may result in an increasing number of false positives and a significant decrease in the prediction rates and classification performance. Moreover, recent studies have focused on improving prediction performance using complex feature extraction and machine learning algorithms while ignoring comprehensive EEG channels and feature investigation in the prediction of finger movements from EEGs. Therefore, the objectives of this study are threefold: (i) to develop a more viable and practical system to predict the movements of five fingers and the no mental task (NoMT) state from EEG signals (ii) to analyze the effects of the statistical-significance based feature selection method over four different feature domains (nonlinear domain, time-domain, frequency-domain and time-frequency domain) and their combinations, and (iii) to test these feature sets with different and prominent classifiers.
In this study, our major goal is not to explore the best machine algorithm performance, but to investigate the best EEG channels and features that can be used in the classification of finger movements. Hence, the comprehensive analysis of the effectiveness of EEG channels and features is performed utilizing a statistically significant feature distribution over 19 EEG channels for each feature set independently. A bulky dataset of electroencephalographic MI for EEG-based BCIs is used in this study. A total of 1102 EEG features supplied from different feature domains have been investigated. Subsequently, these features were tested with eight well-known classifiers, comprising Decision tree, Discriminant analysis, Naive Bayes, Support vector machine, k-nearest neighbor, Ensemble learning, Neural networks, and Kernel approximation.
For subject-dependent analysis, the maximum accuracy of 59.17% was obtained using the EEG features that were selected the most (including (i) energy and variance of five frequency bands in frequency-domain feature set, (ii) all feature types in time-domain, time-frequency domain, and nonlinear domain feature sets) and all EEG channels by the Support vector machine algorithm. For subject-independent analysis, the maximum accuracy of 39.30% was obtained using the mostly selected EEG features (which are (i) all feature types excluding the waveform length, average amplitude change value, absolute difference in standard deviation, and slope-change value feature types in time-domain feature set, (ii) the energy and variance values of all frequency bands except gamma frequency band in frequency-domain feature set, (iii) the entropy value of five frequency bands in time-frequency-domain feature set, and (iv) and / values where lag = 1 in nonlinear feature set) and EEG channels (which are (i) some definite EEG channels including 2nd, 3rd, 7th, 11th, 13th, 14th, and 15th channels in time-frequency-domain feature set and (ii) all EEG channels in time-domain, frequency-domain, and nonlinear feature sets) by the Support vector machine classifier.
Experimental results demonstrate that despite the high-class number, the proposed approach obtained a modest yet considerable advancement in finger movement prediction when the results are compared to the results of similar studies. Additionally, for almost all feature sets, the statistical significance-based feature reduction method improves the prediction performance in the most of classifiers, contributing elaborate EEG channel and feature analysis. Nonetheless, in this study, we used an EEG dataset recorded from only 13 healthy subjects; therefore, a dataset covering more subjects is necessary to reach a more general conclusion.
基于脑电图(EEG)的脑机接口(BCI)已变得很流行,因为EEG被认为是记录大脑电活动的最简单且非侵入性的神经成像方式。在当前的BCI研究背景下,除了预测肢体运动外,近期的BCI研究还对使用不同的模式识别方法,通过基于运动想象(MI)收集的EEG数据准确预测同一只手的手指运动感兴趣,当一个人理想地模拟或想象执行某个运动任务时,会通过这种方式生成期望动作的心理图像。尽管文献中已经推荐了几种模式识别方法,但大多数专注于对五种手指运动进行分类的研究,其研究设计忽略或排除了大脑的空闲状态(即无心理任务状态),在此期间大脑不执行任何MI任务。这种研究设计可能会导致误报数量增加,预测率和分类性能显著下降。此外,近期的研究专注于使用复杂的特征提取和机器学习算法来提高预测性能,却忽略了在从EEG预测手指运动时对综合EEG通道和特征的研究。因此,本研究的目标有三个:(i)开发一个更可行、实用的系统,从EEG信号预测五个手指的运动以及无心理任务(NoMT)状态;(ii)分析基于统计显著性的特征选择方法在四个不同特征域(非线性域、时域、频域和时频域)及其组合上的效果;(iii)使用不同且突出的分类器测试这些特征集。
在本研究中,我们的主要目标不是探索最佳的机器算法性能,而是研究可用于手指运动分类 的最佳EEG通道和特征。因此,利用每个特征集在19个EEG通道上的统计显著特征分布,对EEG通道和特征的有效性进行了全面分析。本研究使用了一个用于基于EEG的BCI的庞大脑电图MI数据集。共研究了来自不同特征域的1102个EEG特征。随后,使用八个著名的分类器对这些特征进行了测试,包括决策树、判别分析、朴素贝叶斯、支持向量机、k近邻、集成学习、神经网络和核近似。
对于个体依赖分析,使用支持向量机算法,通过选择最多的EEG特征(包括(i)频域特征集中五个频带的能量和方差,(ii)时域、时频域和非线性域特征集中的所有特征类型)和所有EEG通道,获得了59.17%的最高准确率。对于个体独立分析,使用支持向量机分类器,通过选择最多的EEG特征(即(i)时域特征集中除波形长度、平均幅度变化值、标准差绝对差和斜率变化值特征类型之外的所有特征类型,(ii)频域特征集中除伽马频带之外的所有频带的能量和方差值;(iii)时频域特征集中五个频带的熵值,以及(iv)非线性特征集中滞后=1时的 和 值)和EEG通道(即(i)时频域特征集中包括第2、3、7、11、13、14和15通道在内的一些特定EEG通道,以及(ii)时域、频域和非线性特征集中的所有EEG通道),获得了39.30%的最高准确率。
实验结果表明,尽管分类数量较多,但与类似研究的结果相比,所提出的方法在手指运动预测方面取得了适度但相当可观的进展。此外,对于几乎所有特征集,基于统计显著性的特征约简方法在大多数分类器中提高了预测性能,这有助于对EEG通道和特征进行精细分析。然而,在本研究中,我们仅使用了从13名健康受试者记录的EEG数据集;因此,需要一个涵盖更多受试者的数据集才能得出更普遍的结论。