Patel Ameera X, Bullmore Edward T
Brain Mapping Unit, Department of Psychiatry, University of Cambridge, Cambridge, UK.
Brain Mapping Unit, Department of Psychiatry, University of Cambridge, Cambridge, UK; GlaxoSmithKline, ImmunoPsychiatry, Alternative Discovery & Development, Stevenage, UK; Cambridgeshire & Peterborough NHS Foundation Trust, Cambridge, UK.
Neuroimage. 2016 Nov 15;142:14-26. doi: 10.1016/j.neuroimage.2015.04.052. Epub 2015 May 3.
Connectome mapping using techniques such as functional magnetic resonance imaging (fMRI) has become a focus of systems neuroscience. There remain many statistical challenges in analysis of functional connectivity and network architecture from BOLD fMRI multivariate time series. One key statistic for any time series is its (effective) degrees of freedom, df, which will generally be less than the number of time points (or nominal degrees of freedom, N). If we know the df, then probabilistic inference on other fMRI statistics, such as the correlation between two voxel or regional time series, is feasible. However, we currently lack good estimators of df in fMRI time series, especially after the degrees of freedom of the "raw" data have been modified substantially by denoising algorithms for head movement. Here, we used a wavelet-based method both to denoise fMRI data and to estimate the (effective) df of the denoised process. We show that seed voxel correlations corrected for locally variable df could be tested for false positive connectivity with better control over Type I error and greater specificity of anatomical mapping than probabilistic connectivity maps using the nominal degrees of freedom. We also show that wavelet despiked statistics can be used to estimate all pairwise correlations between a set of regional nodes, assign a P value to each edge, and then iteratively add edges to the graph in order of increasing P. These probabilistically thresholded graphs are likely more robust to regional variation in head movement effects than comparable graphs constructed by thresholding correlations. Finally, we show that time-windowed estimates of df can be used for probabilistic connectivity testing or dynamic network analysis so that apparent changes in the functional connectome are appropriately corrected for the effects of transient noise bursts. Wavelet despiking is both an algorithm for fMRI time series denoising and an estimator of the (effective) df of denoised fMRI time series. Accurate estimation of df offers many potential advantages for probabilistically thresholding functional connectivity and network statistics tested in the context of spatially variant and non-stationary noise. Code for wavelet despiking, seed correlational testing and probabilistic graph construction is freely available to download as part of the BrainWavelet Toolbox at www.brainwavelet.org.
使用功能磁共振成像(fMRI)等技术进行脑连接组图谱绘制已成为系统神经科学的一个焦点。从血氧水平依赖性功能磁共振成像(BOLD fMRI)多变量时间序列分析功能连接性和网络结构仍然存在许多统计挑战。任何时间序列的一个关键统计量是其(有效)自由度df,它通常会小于时间点数(或名义自由度N)。如果我们知道df,那么对其他fMRI统计量进行概率推断,比如两个体素或区域时间序列之间的相关性,就是可行的。然而,我们目前缺乏对fMRI时间序列中df的良好估计方法,特别是在“原始”数据的自由度因头部运动去噪算法而大幅改变之后。在这里,我们使用基于小波的方法对fMRI数据进行去噪,并估计去噪过程的(有效)df。我们表明,针对局部可变df校正后的种子体素相关性,可以比使用名义自由度的概率连接性图谱更有效地控制I型错误,并提高解剖图谱的特异性,从而对假阳性连接性进行检验。我们还表明,小波去尖峰统计量可用于估计一组区域节点之间的所有成对相关性,为每条边分配一个P值,然后按P值递增的顺序迭代地将边添加到图中。这些概率阈值化图可能比通过对相关性进行阈值化构建的可比图对头部运动效应的区域变化更具鲁棒性。最后,我们表明df的时间窗口估计可用于概率连接性测试或动态网络分析,以便对功能连接组的明显变化进行适当校正,以消除瞬态噪声突发的影响。小波去尖峰既是一种用于fMRI时间序列去噪的算法,也是去噪fMRI时间序列(有效)df的估计器。准确估计df为在空间变化和非平稳噪声背景下对功能连接性和网络统计量进行概率阈值化提供了许多潜在优势。小波去尖峰、种子相关性测试和概率图构建的代码可作为BrainWavelet Toolbox的一部分在www.brainwavelet.org上免费下载。