Équipe Cogimage CRICM-UPMC/Inserm UMR S975/CNRS UMR7225, Hôpital de la Pitié-Salpêtrière, Paris, France.
Neuroimage. 2011 Apr 15;55(4):1536-47. doi: 10.1016/j.neuroimage.2011.01.056. Epub 2011 Jan 27.
Decoding experimental conditions from single trial Electroencephalographic (EEG) signals is becoming a major challenge for the study of brain function and real-time applications such as Brain Computer Interface. EEG source reconstruction offers principled ways to estimate the cortical activities from EEG signals. But to what extent it can enhance informative brain signals in single trial has not been addressed in a general setting. We tested this using the minimum norm estimate solution (MNE) to estimate spectral power and coherence features at the cortical level. With a fast implementation, we computed a support vector machine (SVM) classifier output from these quantities in real-time, without prior on the relevant functional networks. We applied this approach to single trial decoding of ongoing mental imagery tasks using EEG data recorded in 5 subjects. Our results show that reconstructing the underlying cortical network dynamics significantly outperforms a usual electrode level approach in terms of information transfer and also reduces redundancy between coherence and power features, supporting a decrease of volume conduction effects. Additionally, the classifier coefficients reflect the most informative features of network activity, showing an important contribution of localized motor and sensory brain areas, and of coherence between areas up to 6cm distance. This study provides a computationally efficient and interpretable strategy to extract information from functional networks at the cortical level in single trial. Moreover, this sets a general framework to evaluate the performance of EEG source reconstruction methods by their decoding abilities.
从单次脑电图 (EEG) 信号中解码实验条件正成为研究大脑功能和实时应用(如脑机接口)的主要挑战。脑电图源重建为从 EEG 信号估计皮质活动提供了一种原理性的方法。但在一般情况下,它能在多大程度上增强单次试验中的信息性脑信号尚未得到解决。我们使用最小范数估计解 (MNE) 来估计皮质水平的光谱功率和相干特征来测试这一点。通过快速实现,我们在没有相关功能网络先验的情况下,实时计算这些数量的支持向量机 (SVM) 分类器输出。我们将这种方法应用于使用 5 名受试者记录的 EEG 数据对正在进行的心理意象任务进行的单次试验解码。我们的结果表明,与通常的电极级方法相比,重建潜在的皮质网络动力学在信息传递方面表现出色,并且还降低了相干性和功率特征之间的冗余性,支持体积传导效应的减少。此外,分类器系数反映了网络活动中最具信息量的特征,显示出局部运动和感觉脑区以及距离达 6 厘米的区域之间相干性的重要贡献。这项研究提供了一种在单次试验中从皮质水平的功能网络中提取信息的计算高效且可解释的策略。此外,这为通过解码能力评估脑电图源重建方法的性能提供了一个通用框架。