Dynamical components analysis of fMRI data

B. Thirion1, O. Faugeras1
1INRIA Sophia-Antipolis Projet Robotvis, Sophia Antipolis

Tóm tắt

We present a new multivariate analysis method for the analysis of fMRI data. This method tries to capture the deterministic structure present in the time series, using either an autoregressive scheme or the knowledge of the experimental paradigm, so that the interpretation of the spatiotemporal patterns is achieved in parallel with their detection. In the spatial domain, the components are made maximally independent through an ICA-like criterion. A global criterion is derived to express the model priors as well as the goodness of fit. The method is a priori adaptable to every sort of experimental conditions (block or event-related design). An experiment is presented on real data to show the potential of the method for the detection of signals, the analysis of their content as well as their localization.

Từ khóa

#Data analysis #Predictive models #Robots #Signal detection #Magnetic resonance imaging #Principal component analysis #Decorrelation #Covariance matrix #Clustering methods #Inference algorithms

Tài liệu tham khảo

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