Xie Xiaoping, Cao Zhitong, Weng Xuchu
Physics Department, Zhejiang University, Hangzhou, China.
Neuroimage. 2008 May 1;40(4):1672-85. doi: 10.1016/j.neuroimage.2008.01.007. Epub 2008 Jan 17.
In this work, the spatiotemporal nonlinearity in resting-state fMRI data of the human brain was detected by nonlinear dynamics methods. Nine human subjects during resting state were imaged using single-shot gradient echo planar imaging on a 1.5T scanner. Eigenvalue spectra for the covariance matrix, correlation dimensions and Spatiotemporal Lyapunov Exponents were calculated to detect the spatiotemporal nonlinearity in resting-state fMRI data. By simulating, adjusting, and comparing the eigenvalue spectra of pure correlated noise with the corresponding real fMRI data, the intrinsic dimensionality was estimated. The intrinsic dimensionality was used to extract the first few principal components from the real fMRI data using Principal Component Analysis, which will preserve the correct phase dynamics, while reducing both computational load and noise level of the data. Then the phase-space was reconstructed using the time-delay embedding method for their principal components and the correlation dimension was estimated by the Grassberger-Procaccia algorithm of multiple variable series. The Spatiotemporal Lyapunov Exponents were calculated by using the method based on coupled map lattices. Through nonlinearity testing, there are significant differences of correlation dimensions and Spatiotemporal Lyapunov Exponents between fMRI data and their surrogate data. The fractal dimension and the positive Spatiotemporal Lyapunov Exponents characterize the spatiotemporal nonlinear dynamics property of resting-state fMRI data. Therefore, the results suggest that fluctuations presented in resting state may be an inherent model of basal neural activation of human brain, cannot be fully attributed to noise.
在这项工作中,利用非线性动力学方法检测了人类大脑静息态功能磁共振成像(fMRI)数据中的时空非线性。在静息状态下,对9名人类受试者使用1.5T扫描仪上的单次激发梯度回波平面成像进行成像。计算协方差矩阵的特征值谱、关联维数和时空李雅普诺夫指数,以检测静息态fMRI数据中的时空非线性。通过模拟、调整并比较纯相关噪声的特征值谱与相应的真实fMRI数据,估计了本征维数。利用主成分分析从真实fMRI数据中提取前几个主成分,本征维数用于此过程,这将保留正确的相位动力学,同时降低数据的计算量和噪声水平。然后,使用时间延迟嵌入方法对其主成分进行相空间重构,并通过多变量序列的格拉斯伯格 - 普罗卡恰算法估计关联维数。利用基于耦合映射格子的方法计算时空李雅普诺夫指数。通过非线性测试,fMRI数据与其替代数据之间的关联维数和时空李雅普诺夫指数存在显著差异。分形维数和正时空李雅普诺夫指数表征了静息态fMRI数据的时空非线性动力学特性。因此,结果表明静息状态下呈现的波动可能是人类大脑基础神经激活的固有模型,不能完全归因于噪声。