Dimension reduction for individual ica to decompose FMRI during real-world experiences: principal component analysis vs. canonical correlation analysis

نویسندگان

  • Valeri Tsatsishvili
  • Fengyu Cong
  • Tuomas Puoliväli
  • Vinoo Alluri
  • Petri Toiviainen
  • Asoke K. Nandi
  • Elvira Brattico
  • Tapani Ristaniemi
چکیده

Group independent component analysis (ICA) with special assumptions is often used for analyzing functional magnetic resonance imaging (fMRI) data. Before ICA, dimension reduction is applied to separate signal and noise subspaces. For analyzing noisy fMRI data of individual participants in free-listening to naturalistic and long music, we applied individual ICA and therefore avoided the assumptions of Group ICA. We also compared principal component analysis (PCA) and canonical correlation analysis (CCA) for dimension reduction of such fMRI data. We found interesting brain activity associated with music across majority of participants, and found that PCA and CCA were comparable for dimension reduction.

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تاریخ انتشار 2013