Turner Gregory H, Twieg Donald B
Institute of Imaging Science, Vanderbilt University, Nashville, TN 37232, USA.
IEEE Trans Med Imaging. 2005 Jun;24(6):712-8. doi: 10.1109/TMI.2005.846852.
Spatial independent component analysis (ICA) was used to study the temporal stationarity and spatial consistency of structured functional MRI (fMRI) noise. Spatial correlations have been used in the past to generate filters for the removal of structured noise for each time-course in an fMRI dataset. It would be beneficial to produce a multivariate filter based on the same principles. ICA is examined to determine if it has properties that are beneficial for this type of filtering. Six fMRI baseline datasets were decomposed via spatial ICA. The time-courses associated with each component were tested for wide-sense stationarity using the wide sense stationarity quotient (WSS). Each dataset was divided into three subsets and each subset was decomposed. The components of first and third subset were matched by the strength of their correlation. The components produced by ICA were found to have largely nonstationary time-courses. Despite the temporal nonstationarity in the data, ICA was found to produce consistent spatial components. The degree of correlation among components differed depending on the amount of dimension reduction performed on the data. It was found that a relatively small number of dimensions produced components that are potentially useful for generating a spatial fMRI filter.
空间独立成分分析(ICA)被用于研究结构化功能磁共振成像(fMRI)噪声的时间平稳性和空间一致性。过去曾使用空间相关性为功能磁共振成像数据集中的每个时间进程生成去除结构化噪声的滤波器。基于相同原理生成多变量滤波器将是有益的。对ICA进行研究以确定它是否具有适用于此类滤波的特性。通过空间ICA对六个功能磁共振成像基线数据集进行分解。使用广义平稳性商(WSS)测试与每个成分相关的时间进程的广义平稳性。每个数据集被分成三个子集,每个子集进行分解。第一和第三子集的成分按其相关性强度进行匹配。发现ICA产生的成分在很大程度上具有非平稳的时间进程。尽管数据存在时间非平稳性,但发现ICA能产生一致的空间成分。成分之间的相关程度因对数据进行降维的量而异。结果发现,相对较少的维度产生的成分可能有助于生成空间功能磁共振成像滤波器。