Sun Limin, Hinrichs Hermann
Department of Neurology, Center for Advanced Imaging (CAI), University of Magdeburg, Magdeburg, Germany.
Hum Brain Mapp. 2009 Oct;30(10):3361-77. doi: 10.1002/hbm.20758.
Electroencephalograms (EEGs) recorded simultaneously with functional magnetic resonance imaging (fMRI) are corrupted by large repetitive artifacts generated by the switched MR gradients. Several methods have been proposed to remove these distortions by subtraction of averaged artifact templates from the ongoing EEG. Here, we present a modification of this approach which accounts for head movements to improve the extracted template. Using the fMRI analysis package statistical parametric mapping (SPM; FIL London) the head displacement is determined at each half fMRI-volume. The basic idea is to apply a moving average algorithm for template extraction but to include only epochs that were obtained at the same head position as the artefact to be removed. This approach was derived from phantom EEG measurements demonstrating substantial variations of the artefact waveform in response to movements of the phantom in the MRI magnet. To further reduce the residual noise, we applied a resampling algorithm which aligns the EEG samples in a strict adaptive manner to the fMRI timing. Finally, we propose a new algorithm to suppress residual artifacts such as those occasionally observed in case of brief strong movements, which are not reflected by the movement indicator because of the limited temporal resolution of the fMRI sequence. On the basis of EEG recordings of six subjects these measures combined reduce the residual artefact activity quantified in terms of the spectral power at the gradient repetition rate and its harmonics by roughly 20 to 50% (depending on the amount of movement) predominantly in frequencies beyond 30 Hz.
与功能磁共振成像(fMRI)同时记录的脑电图(EEG)会受到由切换的磁共振梯度产生的大量重复性伪影的干扰。已经提出了几种方法,通过从正在进行的脑电图中减去平均伪影模板来去除这些失真。在这里,我们提出了这种方法的一种改进,该改进考虑了头部运动以改善提取的模板。使用功能磁共振成像分析软件包统计参数映射(SPM;伦敦FIL公司),在每个功能磁共振成像半容积时确定头部位移。基本思想是应用移动平均算法进行模板提取,但只包括与要去除的伪影处于相同头部位置时获得的时间段。这种方法源自体模脑电图测量,该测量表明,响应于体模在磁共振成像磁体中的移动,伪影波形存在显著变化。为了进一步降低残余噪声,我们应用了一种重采样算法,该算法以严格的自适应方式将脑电图样本与功能磁共振成像时间对齐。最后,我们提出了一种新算法来抑制残余伪影,例如在短暂强烈运动情况下偶尔观察到的伪影,由于功能磁共振成像序列的时间分辨率有限,这些伪影没有被运动指标反映出来。基于六名受试者的脑电图记录,这些措施相结合,将以梯度重复率及其谐波处的频谱功率量化的残余伪影活动主要在30Hz以上频率降低了约20%至50%(取决于运动量)。