Department of Brain and Cognitive Engineering, Korea University, Anam-dong 5-ga, Seongbuk-gu, Seoul 136-713, Republic of Korea.
Department of Radiology, Brigham and Women's Hospital, Harvard Medical School, Boston, MA, USA.
Neuroimage. 2015 Jan 1;104:437-51. doi: 10.1016/j.neuroimage.2014.09.049. Epub 2014 Oct 2.
Electroencephalography (EEG) data simultaneously acquired with functional magnetic resonance imaging (fMRI) data are preprocessed to remove gradient artifacts (GAs) and ballistocardiographic artifacts (BCAs). Nonetheless, these data, especially in the gamma frequency range, can be contaminated by residual artifacts produced by mechanical vibrations in the MRI system, in particular the cryogenic pump that compresses and transports the helium that chills the magnet (the helium-pump). However, few options are available for the removal of helium-pump artifacts. In this study, we propose a recursive approach of EEG-segment-based principal component analysis (rsPCA) that enables the removal of these helium-pump artifacts. Using the rsPCA method, feature vectors representing helium-pump artifacts were successfully extracted as eigenvectors, and the reconstructed signals of the feature vectors were subsequently removed. A test using simultaneous EEG-fMRI data acquired from left-hand (LH) and right-hand (RH) clenching tasks performed by volunteers found that the proposed rsPCA method substantially reduced helium-pump artifacts in the EEG data and significantly enhanced task-related gamma band activity levels (p=0.0038 and 0.0363 for LH and RH tasks, respectively) in EEG data that have had GAs and BCAs removed. The spatial patterns of the fMRI data were estimated using a hemodynamic response function (HRF) modeled from the estimated gamma band activity in a general linear model (GLM) framework. Active voxel clusters were identified in the post-/pre-central gyri of motor area, only from the rsPCA method (uncorrected p<0.001 for both LH/RH tasks). In addition, the superior temporal pole areas were consistently observed (uncorrected p<0.001 for the LH task and uncorrected p<0.05 for the RH task) in the spatial patterns of the HRF model for gamma band activity when the task paradigm and movement were also included in the GLM.
脑电 (EEG) 数据与功能磁共振成像 (fMRI) 数据同时采集,然后对其进行预处理以去除梯度伪影 (GA) 和心动伪影 (BCA)。尽管如此,这些数据,尤其是在伽马频带范围内,可能会受到 MRI 系统中机械振动产生的残余伪影的污染,特别是压缩和输送冷却磁体的氦气的低温泵 (氦泵)。然而,去除氦泵伪影的方法很少。在这项研究中,我们提出了一种基于 EEG 分段的递归主成分分析 (rsPCA) 的方法,该方法能够去除这些氦泵伪影。使用 rsPCA 方法,成功地将代表氦泵伪影的特征向量提取为特征向量,并随后去除了特征向量的重构信号。对志愿者进行左手 (LH) 和右手 (RH) 紧握任务时同步采集的 EEG-fMRI 数据的测试发现,所提出的 rsPCA 方法大大降低了 EEG 数据中的氦泵伪影,并显著增强了 EEG 数据中与任务相关的伽马波段活动水平 (去除 GA 和 BCA 后,LH 和 RH 任务分别为 p=0.0038 和 0.0363)。使用基于估计的伽马波段活动的广义线性模型 (GLM) 框架中的血液动力学响应函数 (HRF) 来估计 fMRI 数据的空间模式。仅从 rsPCA 方法中确定了运动区后/中央回的活动体素簇 (对于 LH/RH 任务均为未校正的 p<0.001)。此外,当任务范式和运动也包含在 GLM 中时,在伽马波段活动的 HRF 模型的空间模式中一致观察到颞上极区域 (对于 LH 任务为未校正的 p<0.001,对于 RH 任务为未校正的 p<0.05)。