Department of Psychological and Brain Sciences, Indiana University, Bloomington, IN 47405, USA.
Magn Reson Imaging. 2010 May;28(4):574-82. doi: 10.1016/j.mri.2009.12.014. Epub 2010 Jan 21.
Respiratory noise is a confounding factor in functional magnetic resonance imaging (MRI) data analysis. A novel method called Respiratory noise Correction using Phase information is proposed to retrospectively correct for the respiratory noise in functional MRI (fMRI) time series. It is demonstrated that the respiratory movement and the phase of functional MRI images are highly correlated in time. The signal fluctuation due to respiratory movements can be effectively estimated from the phase variation and removed from the functional MRI time series using a Wiener filtering technique. In our experiments, this new method is compared with RETROICOR, which requires recording respiration signal simultaneously in an fMRI experiment. The two techniques show comparable performance with respect to the respiratory noise correction for fMRI time series. However, this technique is more advantageous because there is no need for monitoring the subjects' respiration or changing functional MRI protocols. This technique is also potentially useful for correcting respiratory noise from abnormal breathing or when the respiration is not periodic.
呼吸噪声是功能磁共振成像(fMRI)数据分析中的一个混杂因素。提出了一种称为基于相位信息的呼吸噪声校正的新方法,用于对功能磁共振成像(fMRI)时间序列中的呼吸噪声进行回溯校正。结果表明,呼吸运动和功能磁共振图像的相位在时间上高度相关。可以使用维纳滤波技术从相位变化中有效地估计出由于呼吸运动引起的信号波动,并从 fMRI 时间序列中去除。在我们的实验中,将这种新方法与需要在 fMRI 实验中同时记录呼吸信号的 RETROICOR 进行了比较。这两种技术在 fMRI 时间序列的呼吸噪声校正方面表现出相当的性能。然而,由于不需要监测受试者的呼吸或改变功能磁共振成像协议,因此该技术更具优势。当呼吸不规则或不规则时,该技术也可能有助于校正呼吸噪声。