Patel Ameera X, Kundu Prantik, Rubinov Mikail, Jones P Simon, Vértes Petra E, Ersche Karen D, Suckling John, Bullmore Edward T
Behavioral and Clinical Neuroscience Institute, Department of Psychiatry, University of Cambridge, UK.
Behavioral and Clinical Neuroscience Institute, Department of Psychiatry, University of Cambridge, UK; National Institutes of Health, Bethesda, MD 20892, USA.
Neuroimage. 2014 Jul 15;95(100):287-304. doi: 10.1016/j.neuroimage.2014.03.012. Epub 2014 Mar 21.
The impact of in-scanner head movement on functional magnetic resonance imaging (fMRI) signals has long been established as undesirable. These effects have been traditionally corrected by methods such as linear regression of head movement parameters. However, a number of recent independent studies have demonstrated that these techniques are insufficient to remove motion confounds, and that even small movements can spuriously bias estimates of functional connectivity. Here we propose a new data-driven, spatially-adaptive, wavelet-based method for identifying, modeling, and removing non-stationary events in fMRI time series, caused by head movement, without the need for data scrubbing. This method involves the addition of just one extra step, the Wavelet Despike, in standard pre-processing pipelines. With this method, we demonstrate robust removal of a range of different motion artifacts and motion-related biases including distance-dependent connectivity artifacts, at a group and single-subject level, using a range of previously published and new diagnostic measures. The Wavelet Despike is able to accommodate the substantial spatial and temporal heterogeneity of motion artifacts and can consequently remove a range of high and low frequency artifacts from fMRI time series, that may be linearly or non-linearly related to physical movements. Our methods are demonstrated by the analysis of three cohorts of resting-state fMRI data, including two high-motion datasets: a previously published dataset on children (N=22) and a new dataset on adults with stimulant drug dependence (N=40). We conclude that there is a real risk of motion-related bias in connectivity analysis of fMRI data, but that this risk is generally manageable, by effective time series denoising strategies designed to attenuate synchronized signal transients induced by abrupt head movements. The Wavelet Despiking software described in this article is freely available for download at www.brainwavelet.org.
扫描仪内头部运动对功能磁共振成像(fMRI)信号的影响一直被认为是不利的。传统上,这些影响通过诸如头部运动参数的线性回归等方法来校正。然而,最近一些独立研究表明,这些技术不足以消除运动干扰,即使是微小的运动也可能会虚假地影响功能连接性的估计。在此,我们提出一种新的数据驱动、空间自适应、基于小波的方法,用于识别、建模和去除fMRI时间序列中由头部运动引起的非平稳事件,而无需数据清理。该方法只需在标准预处理流程中额外增加一个步骤,即小波去尖峰。通过这种方法,我们在群体和个体水平上,使用一系列先前发表的和新的诊断指标,展示了能够稳健地去除一系列不同的运动伪影和与运动相关的偏差,包括距离依赖性连接伪影。小波去尖峰能够适应运动伪影在空间和时间上的显著异质性,因此可以从fMRI时间序列中去除一系列高频和低频伪影,这些伪影可能与身体运动呈线性或非线性关系。我们通过对三个静息态fMRI数据集的分析来证明我们的方法,其中包括两个高运动数据集:一个先前发表的儿童数据集(N = 22)和一个关于兴奋剂药物依赖成年人的新数据集(N = 40)。我们得出结论,在fMRI数据的连接性分析中存在与运动相关偏差的实际风险,但通过旨在衰减突然头部运动引起的同步信号瞬变的有效时间序列去噪策略,这种风险通常是可控的。本文所述的小波去尖峰软件可在www.brainwavelet.org上免费下载。