Kociuba Mary C, Rowe Daniel B
Department of Mathematics, Statistics, and Computer Science, Marquette University, Milwaukee, WI, USA.
Department of Mathematics, Statistics, and Computer Science, Marquette University, Milwaukee, WI, USA; Department of Biophysics, Medical College of Wisconsin, Milwaukee, WI, USA.
Magn Reson Imaging. 2016 Jul;34(6):765-770. doi: 10.1016/j.mri.2016.03.011. Epub 2016 Mar 14.
To develop a linear matrix representation of correlation between complex-valued (CV) time-series in the temporal Fourier frequency domain, and demonstrate its increased sensitivity over correlation between magnitude-only (MO) time-series in functional MRI (fMRI) analysis.
The standard in fMRI is to discard the phase before the statistical analysis of the data, despite evidence of task related change in the phase time-series. With a real-valued isomorphism representation of Fourier reconstruction, correlation is computed in the temporal frequency domain with CV time-series data, rather than with the standard of MO data. A MATLAB simulation compares the Fisher-z transform of MO and CV correlations for varying degrees of task related magnitude and phase amplitude change in the time-series. The increased sensitivity of the complex-valued Fourier representation of correlation is also demonstrated with experimental human data. Since the correlation description in the temporal frequency domain is represented as a summation of second order temporal frequencies, the correlation is easily divided into experimentally relevant frequency bands for each voxel's temporal frequency spectrum. The MO and CV correlations for the experimental human data are analyzed for four voxels of interest (VOIs) to show the framework with high and low contrast-to-noise ratios in the motor cortex and the supplementary motor cortex.
The simulation demonstrates the increased strength of CV correlations over MO correlations for low magnitude contrast-to-noise time-series. In the experimental human data, the MO correlation maps are noisier than the CV maps, and it is more difficult to distinguish the motor cortex in the MO correlation maps after spatial processing.
Including both magnitude and phase in the spatial correlation computations more accurately defines the correlated left and right motor cortices. Sensitivity in correlation analysis is important to preserve the signal of interest in fMRI data sets with high noise variance, and avoid excessive processing induced correlation.
在时间傅里叶频域中开发一种复值(CV)时间序列相关性的线性矩阵表示,并证明其在功能磁共振成像(fMRI)分析中比仅幅度(MO)时间序列之间的相关性具有更高的灵敏度。
fMRI的标准做法是在对数据进行统计分析之前丢弃相位,尽管有证据表明相位时间序列中存在与任务相关的变化。通过傅里叶重建的实值同构表示,在时间频域中使用CV时间序列数据计算相关性,而不是使用MO数据的标准方法。一个MATLAB模拟比较了MO和CV相关性的Fisher-z变换,用于时间序列中不同程度的与任务相关的幅度和相位幅度变化。通过实验人体数据也证明了复值傅里叶相关性表示的更高灵敏度。由于时间频域中的相关性描述表示为二阶时间频率的总和,因此相关性很容易被划分为每个体素时间频率谱的实验相关频带。对感兴趣的四个体素(VOI)的实验人体数据的MO和CV相关性进行分析,以展示运动皮层和辅助运动皮层中具有高和低对比度噪声比的框架。
模拟表明,对于低幅度对比度噪声时间序列,CV相关性比MO相关性的强度增加。在实验人体数据中,MO相关图比CV图更嘈杂,并且在空间处理后更难在MO相关图中区分运动皮层。
在空间相关性计算中同时包含幅度和相位可以更准确地定义相关的左右运动皮层。相关性分析中的灵敏度对于在具有高噪声方差的fMRI数据集中保留感兴趣的信号很重要,并避免过度处理引起的相关性。