Himberg Johan, Hyvärinen Aapo, Esposito Fabrizio
Neural Networks Research Centre, Helsinki University of Technology, Helsinki, Finland.
Neuroimage. 2004 Jul;22(3):1214-22. doi: 10.1016/j.neuroimage.2004.03.027.
Recently, independent component analysis (ICA) has been widely used in the analysis of brain imaging data. An important problem with most ICA algorithms is, however, that they are stochastic; that is, their results may be somewhat different in different runs of the algorithm. Thus, the outputs of a single run of an ICA algorithm should be interpreted with some reserve, and further analysis of the algorithmic reliability of the components is needed. Moreover, as with any statistical method, the results are affected by the random sampling of the data, and some analysis of the statistical significance or reliability should be done as well. Here we present a method for assessing both the algorithmic and statistical reliability of estimated independent components. The method is based on running the ICA algorithm many times with slightly different conditions and visualizing the clustering structure of the obtained components in the signal space. In experiments with magnetoencephalographic (MEG) and functional magnetic resonance imaging (fMRI) data, the method was able to show that expected components are reliable; furthermore, it pointed out components whose interpretation was not obvious but whose reliability should incite the experimenter to investigate the underlying technical or physical phenomena. The method is implemented in a software package called Icasso.
最近,独立成分分析(ICA)已被广泛应用于脑成像数据的分析。然而,大多数ICA算法存在一个重要问题,即它们是随机的;也就是说,在算法的不同运行中,其结果可能会有所不同。因此,对ICA算法单次运行的输出应有所保留地进行解释,并且需要对成分的算法可靠性进行进一步分析。此外,与任何统计方法一样,结果会受到数据随机抽样的影响,因此也应该对统计显著性或可靠性进行一些分析。在此,我们提出一种评估估计独立成分的算法可靠性和统计可靠性的方法。该方法基于在略有不同的条件下多次运行ICA算法,并在信号空间中可视化所获得成分的聚类结构。在对脑磁图(MEG)和功能磁共振成像(fMRI)数据的实验中,该方法能够表明预期的成分是可靠的;此外,它还指出了一些成分,其解释并不明显,但其可靠性应促使实验者去研究潜在的技术或物理现象。该方法在一个名为Icasso的软件包中实现。