Department of Computer Science, National Tsing Hua University, Hsinchu, Taiwan.
Institute of Statistical Science, Academia Sinica, Taipei, Taiwan.
J Neural Eng. 2022 Jul 21;19(4). doi: 10.1088/1741-2552/ac7f5e.
. Functional magnetic resonance imaging (fMRI) requires thresholds by which to identify brain regions with significant activation, particularly for experiments involving real-life paradigms. One conventional non-parametric approach to generating surrogate data involves decomposition of the original fMRI time series using the Fourier transform, after which the phase is randomized without altering the magnitude of individual frequency components. However, it has been reported that spontaneous brain signals could be non-stationary, which, if true, could lead to false-positive results.. This paper introduces a randomization procedure based on the Hilbert-Huang transform by which to account for non-stationarity in fMRI time series derived from two fMRI datasets (stationary or non-stationary). The significance of individual voxels was determined by comparing the distribution of empirical data versus a surrogate distribution.. In a comparison with conventional phase-randomization and wavelet-based permutation methods, the proposed method proved highly effective in generating activation maps indicating essential brain regions, while filtering out noise in the white matter.. This work demonstrated the importance of considering the non-stationary nature of fMRI time series when selecting resampling methods by which to probe brain activity or identify functional networks in real-life fMRI experiments. We propose a statistical testing method to deal with the non-stationarity of continuous brain signals.
. 功能磁共振成像(fMRI)需要设定阈值来识别具有显著激活的脑区,特别是对于涉及现实生活范式的实验。一种传统的非参数方法是使用傅里叶变换对原始 fMRI 时间序列进行分解,然后在不改变单个频率分量幅度的情况下随机化相位。然而,据报道,自发脑信号可能是非平稳的,如果这是真的,可能会导致假阳性结果。. 本文介绍了一种基于希尔伯特-黄变换的随机化方法,用于处理来自两个 fMRI 数据集(平稳或非平稳)的 fMRI 时间序列中的非平稳性。通过将经验数据的分布与替代数据的分布进行比较,确定了单个体素的显著性。. 与传统的相位随机化和基于小波的置换方法相比,该方法在生成激活图以指示关键脑区方面非常有效,同时过滤了白质中的噪声。. 这项工作表明,在选择用于探测大脑活动或识别现实 fMRI 实验中的功能网络的重采样方法时,考虑 fMRI 时间序列的非平稳性非常重要。我们提出了一种统计检验方法来处理连续脑信号的非平稳性。