会议专题

Comparison between Spatial and Temporal Independent Component Analysis for Blind Source Separation in fMRI Data

Independent component analysis (ICA) is an exploratory method for analyzing spatial and temporal properties of fMRI data and requires no explicit temporal model, necessary for conventional fMRI analysis. Two varieties of ICA are employed to achieve maximal independence component in space or time yields for functional MRI (fMRI) analysis: spatial ICA (sICA) and temporal ICA (tICA). sICA is widely studied and used in signal separation of fMRI data. In this study, we compared the performance of sica and tICA to extract and separate signals with spatial and temporal independence based on simulated data. Our results reveal that sICA is able to extract and separate relatively highly independent signals. tICA can fulfill the separation of mutually independent component signal in time course and classify the temporally corresponding signal as one group in spite of having a spatially independent component. The results suggest that tICA can be applied to detect a special signal overlapping with the physiological signals by evoking other activations using the special signal.

independent component analysis sICA tICA signal separation fMRI

Xin Gao Tao Zhang Jinhu Xiong

Medical Image Lab Suzhou Inst. of Biomedical Eng. and Tech, CAS Suzhou, China Department of Radiology University of Iowa, Hospital & Clinics Iowa, USA

国际会议

2011 4th International Conference on Biomedical Engineering and Informatics(第四届生物医学工程与信息学国际会议 BMEI 2011)

上海

英文

687-689

2011-10-15(万方平台首次上网日期,不代表论文的发表时间)