Meyer-Baese A, Wismueller Axel, Lange Oliver
Department of Electrical and Computer Engineering, Florida State University, Tallahassee. FL 32310-6046, USA.
IEEE Trans Inf Technol Biomed. 2004 Sep;8(3):387-98. doi: 10.1109/titb.2004.834406.
Exploratory data-driven methods such as unsupervised clustering and independent component analysis (ICA) are considered to be hypothesis-generating procedures, and are complementary to the hypothesis-led statistical inferential methods in functional magnetic resonance imaging (fMRI). In this paper, we present a comparison between unsupervised clustering and ICA in a systematic fMRI study. The comparative results were evaluated by 1) task-related activation maps, 2) associated time-courses, and 3) receiver operating characteristic analysis. For the fMRI data, a comparative quantitative evaluation between the three clustering techniques, self-organizing map, "neural gas" network, and fuzzy clustering based on deterministic annealing, and the three ICA methods, FastICA, Infomax and topographic ICA was performed. The ICA methods proved to extract features relatively well for a small number of independent components but are limited to the linear mixture assumption. The unsupervised Clustering outperforms ICA in terms of classification results but requires a longer processing time than the ICA methods.
探索性的数据驱动方法,如无监督聚类和独立成分分析(ICA),被认为是产生假设的程序,并且是功能磁共振成像(fMRI)中以假设为导向的统计推断方法的补充。在本文中,我们在一项系统性的fMRI研究中对无监督聚类和ICA进行了比较。通过1)任务相关激活图、2)相关时间进程和3)接收器操作特征分析对比较结果进行了评估。对于fMRI数据,对三种聚类技术,即自组织映射、“神经气体”网络和基于确定性退火的模糊聚类,以及三种ICA方法,即快速独立成分分析(FastICA)、信息最大化(Infomax)和拓扑ICA,进行了比较定量评估。ICA方法被证明对于少量独立成分能较好地提取特征,但限于线性混合假设。无监督聚类在分类结果方面优于ICA,但比ICA方法需要更长的处理时间。