Kampel Nikolas, Kiefer Christian M, Shah N Jon, Neuner Irene, Dammers Jürgen
Institute of Neuroscience and Medicine (INM-4), Forschungszentrum Jülich GmbH, Jülich, Germany.
Faculty of Medicine, RWTH Aachen University, Aachen, Germany.
Front Neurosci. 2023 Sep 20;17:1229371. doi: 10.3389/fnins.2023.1229371. eCollection 2023.
Neural fingerprinting is the identification of individuals in a cohort based on neuroimaging recordings of brain activity. In magneto- and electroencephalography (M/EEG), it is common practice to use second-order statistical measures, such as correlation or connectivity matrices, when neural fingerprinting is performed. These measures or features typically require coupling between signal channels and often ignore the individual temporal dynamics. In this study, we show that, following recent advances in multivariate time series classification, such as the development of the RandOm Convolutional KErnel Transformation (ROCKET) classifier, it is possible to perform classification directly on short time segments from MEG resting-state recordings with remarkably high classification accuracies. In a cohort of 124 subjects, it was possible to assign windows of time series of 1 s in duration to the correct subject with above 99% accuracy. The achieved accuracies are vastly superior to those of previous methods while simultaneously requiring considerably shorter time segments.
神经指纹识别是指基于大脑活动的神经成像记录在一组人群中识别个体。在磁脑电图(M/EEG)中,进行神经指纹识别时,常用二阶统计量,如相关性或连接矩阵。这些测量方法或特征通常需要信号通道之间的耦合,并且常常忽略个体的时间动态。在本研究中,我们表明,随着多变量时间序列分类的最新进展,如随机卷积核变换(ROCKET)分类器的开发,有可能直接对MEG静息态记录的短时间段进行分类,且分类准确率非常高。在一个由124名受试者组成的队列中,能够以高于99%的准确率将持续1秒的时间序列窗口分配给正确的受试者。所达到的准确率远远优于以前的方法,同时所需的时间段要短得多。