We propose a Bayesian method to extract single-trial event related potentials (ERPs). The method is formulated
in two stages. In the first stage, each of the N raw sweeps is processed by an individual “optimal”
filter, where the 2nd order a priori statistical information on the background EEG and on the unknown
ERP is, respectively, estimated from pre-stimulus data and obtained through the multiple integration
of a white noise process model which is identifiable from post-stimulus data thanks to a smoothing
criterion. Then, a mean ERP is determined as the weighted average of the filtered sweeps, where each
weight is inversely proportional to the expected value of the norm of the correspondent filter error. In
the second stage, single-sweep estimation is dealt with within the same framework, by using the average
ERP estimated in the previous stage as a priori expected response. The method is successfully tested on
simulated data and then employed on real data with the aim of investigating the variability of the P300
component during a cognitive visual task. A comparison with other literature methods is also performed.
Results encourage further use of the proposed method to investigate if and how diseases, e.g., cirrhosis,
are associated to differences in P300 variability
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