Methods based on the use of multivariate
autoregressive models (MVAR) have proved to be an accurate
tool for the estimation of functional links between the activity
originated in different brain regions. A well-established method
for the parameters estimation is the Ordinary Least Square
(OLS) approach, followed by an assessment procedure that can
be performed by means of Asymptotic Statistic (AS). However,
the performances of both procedures are strongly influenced by
the number of data samples available, thus limiting the
conditions in which brain connectivity can be estimated. The aim
of this paper is to introduce and test a regression method based
on Least Absolute Shrinkage and Selection Operator (LASSO)
to broaden the estimation of brain connectivity to those
conditions in which current methods fail due to the limited data
points available. We tested the performances of the LASSO
regression in a simulation study under different levels of data
points available, in comparison with a classical approach based
on OLS and AS. Then, the two methods were applied to real
electroencephalographic (EEG) signals, recorded during a
motor imagery task. The simulation study and the application to
real EEG data both indicated that LASSO regression provides
better performances than the currently used methodologies for
the estimation of brain connectivity when few data points are
available. This work paves the way to the estimation and
assessment of connectivity patterns with limited data amount
and in on-line settings
Dettaglio pubblicazione
2019, 2019 41th Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC), Pages 6422-6425
Single-trial Connectivity Estimation through the Least Absolute Shrinkage and Selection Operator (04b Atto di convegno in volume)
Antonacci Yuri, Toppi Jlenia, Mattia Donatella, Pietrabissa Antonio, Astolfi Laura
Gruppo di ricerca: Networked Systems
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