MARBILab, Museo storico della fisica e Centro di studi e ricerche "Enrico Fermi" Roma, Italy.
Magn Reson Imaging. 2009 Oct;27(8):1058-64. doi: 10.1016/j.mri.2009.06.004. Epub 2009 Aug 19.
Correlated fluctuations of low-frequency fMRI signal have been suggested to reflect functional connectivity among the involved regions. However, large-scale correlations are especially prone to spurious global modulations induced by coherent physiological noise. Cardiac and respiratory rhythms are the most offending component, and a tailored preprocessing is needed in order to reduce their impact. Several approaches have been proposed in the literature, generally based on the use of physiological recordings acquired during the functional scans, or on the extraction of the relevant information directly from the images. In this paper, the performances of the denoising approach based on general linear fitting of global signals of noninterest extracted from the functional scans were assessed. Results suggested that this approach is sufficiently accurate for the preprocessing of functional connectivity data.
低频 fMRI 信号的相关波动被认为反映了相关区域之间的功能连接。然而,大尺度的相关性特别容易受到相干生理噪声引起的虚假全局调制的影响。心脏和呼吸节律是最具干扰性的成分,需要进行定制的预处理以降低其影响。文献中已经提出了几种方法,通常基于在功能扫描期间获得的生理记录,或直接从图像中提取相关信息。在本文中,评估了基于从功能扫描中提取的无兴趣的全局信号的广义线性拟合的去噪方法的性能。结果表明,该方法对于功能连接数据的预处理足够准确。