Mitra P P, Pesaran B
Bell Laboratories, Lucent Technologies, Murray Hill, New Jersey 07974 USA.
Biophys J. 1999 Feb;76(2):691-708. doi: 10.1016/S0006-3495(99)77236-X.
Modern imaging techniques for probing brain function, including functional magnetic resonance imaging, intrinsic and extrinsic contrast optical imaging, and magnetoencephalography, generate large data sets with complex content. In this paper we develop appropriate techniques for analysis and visualization of such imaging data to separate the signal from the noise and characterize the signal. The techniques developed fall into the general category of multivariate time series analysis, and in particular we extensively use the multitaper framework of spectral analysis. We develop specific protocols for the analysis of fMRI, optical imaging, and MEG data, and illustrate the techniques by applications to real data sets generated by these imaging modalities. In general, the analysis protocols involve two distinct stages: "noise" characterization and suppression, and "signal" characterization and visualization. An important general conclusion of our study is the utility of a frequency-based representation, with short, moving analysis windows to account for nonstationarity in the data. Of particular note are 1) the development of a decomposition technique (space-frequency singular value decomposition) that is shown to be a useful means of characterizing the image data, and 2) the development of an algorithm, based on multitaper methods, for the removal of approximately periodic physiological artifacts arising from cardiac and respiratory sources.
用于探究脑功能的现代成像技术,包括功能磁共振成像、内在和外在对比光学成像以及脑磁图,会生成具有复杂内容的大数据集。在本文中,我们开发了适用于此类成像数据分析和可视化的技术,以从噪声中分离信号并对信号进行表征。所开发的技术属于多元时间序列分析的一般范畴,特别是我们广泛使用了谱分析的多窗谱框架。我们为功能磁共振成像、光学成像和脑磁图数据的分析制定了特定协议,并通过应用于这些成像模态生成的真实数据集来说明这些技术。一般来说,分析协议涉及两个不同阶段:“噪声”表征与抑制,以及“信号”表征与可视化。我们研究的一个重要总体结论是基于频率表示的效用,采用短的移动分析窗口来考虑数据中的非平稳性。特别值得注意的是:1)一种分解技术(空频奇异值分解)的开发,它被证明是表征图像数据的有用手段;2)一种基于多窗谱方法的算法的开发,用于去除由心脏和呼吸源产生的近似周期性生理伪影。