School of Medicine, Tsinghua University, Beijing 100084, People's Republic of China.
J Neural Eng. 2013 Apr;10(2):026015. doi: 10.1088/1741-2560/10/2/026015. Epub 2013 Feb 28.
It is currently a challenge to extract the mismatch negativity (MMN) waveform on the basis of a small number of EEG trials, which are typically unbalanced between conditions.
In order to address this issue, a method combining the techniques of resampling and spatial filtering is proposed in this paper. Specifically, the first step of the method, termed 'resampling difference', randomly samples the standard and deviant sweeps, and then subtracts standard sweeps from deviant sweeps. The second step of the method employs the spatial filters designed by a signal-to-noise ratio maximizer (SIM) to extract the MMN component. The SIM algorithm can maximize the signal-to-noise ratio for event-related potentials (ERPs) to improve extraction. Simulation data were used to evaluate the influence of three parameters (i.e. trial number, repeated-SIM times and sampling times) on the performance of the proposed method.
Results demonstrated that it was feasible and reliable to extract the MMN waveform using the method. Finally, an oddball paradigm with auditory stimuli of different frequencies was employed to record a few trials (50 trials of deviant sweeps and 250 trials of standard sweeps) of EEG data from 11 adult subjects. Results showed that the method could effectively extract the MMN using the EEG data of each individual subject.
The extracted MMN waveform has a significantly larger peak amplitude and shorter latencies in response to the more deviant stimuli than in response to the less deviant stimuli, which agreed with the MMN properties reported in previous literature using grand-averaged EEG data of multi-subjects.
在 EEG 试验数量较少且通常在条件之间不平衡的情况下,提取失匹配负波(MMN)波形目前是一个挑战。
为了解决这个问题,本文提出了一种结合重采样和空间滤波技术的方法。具体来说,该方法的第一步称为“重采样差”,它随机对标准和偏差扫掠进行采样,然后从偏差扫掠中减去标准扫掠。该方法的第二步采用由信噪比最大化器(SIM)设计的空间滤波器来提取 MMN 分量。SIM 算法可以最大化事件相关电位(ERP)的信噪比,以提高提取效果。使用模拟数据评估了三个参数(即试验次数、重复 SIM 次数和采样次数)对所提出方法性能的影响。
结果表明,使用该方法提取 MMN 波形是可行且可靠的。最后,采用不同频率的听觉刺激的Oddball 范式,从 11 位成年受试者记录了少量 EEG 数据(50 个偏差扫掠试验和 250 个标准扫掠试验)。结果表明,该方法可以有效地从每个个体受试者的 EEG 数据中提取 MMN。
与使用多受试者的总体平均 EEG 数据报告的 MMN 属性一致,与较少偏差刺激相比,对更偏差刺激的提取 MMN 波形具有更大的峰值幅度和更短的潜伏期。