The Mind Research Network/Lovelace Biomedical and Environmental Research Institute, Albuquerque, New Mexico.
Departments of Neurology and Psychiatry, University of New Mexico School of Medicine, Albuquerque, New Mexico.
Hum Brain Mapp. 2019 Sep;40(13):3843-3859. doi: 10.1002/hbm.24635. Epub 2019 May 22.
It has been known for decades that head motion/other artifacts affect the blood oxygen level-dependent signal. Recent recommendations predominantly focus on denoising resting state data, which may not apply to task data due to the different statistical relationships that exist between signal and noise sources. Several blind-source denoising strategies (FIX and AROMA) and more standard motion parameter (MP) regression (0, 12, or 24 parameters) analyses were therefore compared across four sets of event-related functional magnetic resonance imaging (erfMRI) and block-design (bdfMRI) datasets collected with multiband 32- (repetition time [TR] = 460 ms) or older 12-channel (TR = 2,000 ms) head coils. The amount of motion varied across coil designs and task types. Quality control plots indicated small to moderate relationships between head motion estimates and percent signal change in both signal and noise regions. Blind-source denoising strategies eliminated signal as well as noise relative to MP24 regression; however, the undesired effects on signal depended both on algorithm (FIX > AROMA) and design (bdfMRI > erfMRI). Moreover, in contrast to previous results, there were minimal differences between MP12/24 and MP0 pipelines in both erfMRI and bdfMRI designs. MP12/24 pipelines were detrimental for a task with both longer block length (30 ± 5 s) and higher correlations between head MPs and design matrix. In summary, current results suggest that there does not appear to be a single denoising approach that is appropriate for all fMRI designs. However, even nonaggressive blind-source denoising approaches appear to remove signal as well as noise from task-related data at individual subject and group levels.
几十年来,人们已经知道头部运动/其他伪影会影响血氧水平依赖信号。最近的建议主要集中在去噪静息态数据上,由于信号和噪声源之间存在不同的统计关系,这可能不适用于任务数据。因此,在四个事件相关功能磁共振成像(erfMRI)和块设计(bdfMRI)数据集上,比较了几种盲源去噪策略(FIX 和 AROMA)和更标准的运动参数(MP)回归(0、12 或 24 个参数)分析,这些数据集是使用多波段 32 通道(重复时间 [TR] = 460ms)或较旧的 12 通道(TR = 2000ms)头部线圈采集的。线圈设计和任务类型的运动幅度不同。质量控制图表明,在信号和噪声区域,头部运动估计与信号变化百分比之间存在小到中等的关系。与 MP24 回归相比,盲源去噪策略消除了信号和噪声;然而,信号的不良影响既取决于算法(FIX>AROMA),也取决于设计(bdfMRI>erfMRI)。此外,与之前的结果相反,在 erfMRI 和 bdfMRI 设计中,MP12/24 和 MP0 管道之间几乎没有差异。在具有较长块长度(30 ± 5 秒)和头部 MPs 与设计矩阵之间更高相关性的任务中,MP12/24 管道对数据有害。总之,目前的结果表明,似乎没有一种单一的去噪方法适用于所有 fMRI 设计。然而,即使是非侵入性的盲源去噪方法,似乎也会从个体和组水平的任务相关数据中去除信号和噪声。