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MICCAI
2004
Springer

Solving Incrementally the Fitting and Detection Problems in fMRI Time Series

14 years 5 months ago
Solving Incrementally the Fitting and Detection Problems in fMRI Time Series
We tackle the problem of real-time statistical analysis of functional magnetic resonance imaging (fMRI) data. In a recent paper, we proposed an incremental algorithm based on the extended Kalman filter (EKF) to fit fMRI time series in terms of a general linear model with autoregressive errors (GLM-AR model). We here improve the technique using a new Kalman filter variant specifically tailored to the GLM-AR fitting problem, the Refined Kalman Filter (RKF), that avoids both the estimation bias and initialization issues typical from the EKF, at the price of increased memory load. We then demonstrate the ability of the method to perform online analysis on a "functional calibration" eventrelated fMRI protocol.
Alexis Roche, Philippe Pinel, Stanislas Dehaene, J
Added 15 Nov 2009
Updated 15 Nov 2009
Type Conference
Year 2004
Where MICCAI
Authors Alexis Roche, Philippe Pinel, Stanislas Dehaene, Jean-Baptiste Poline
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