A K-means multivariate approach for clustering independent components from magnetoencephalographic data
Articolo
Data di Pubblicazione:
2012
Abstract:
Independent component analysis (ICA) is typically applied on functional magnetic resonance imaging, electroencephalographic
and magnetoencephalographic (MEG) data due to its data-driven nature. In these applications,
ICA needs to be extended from single to multi‐session and multi‐subject studies for interpreting and
assigning a statistical significance at the group level. Here a novel strategy for analyzing MEG independent
components (ICs) is presented, Multivariate Algorithm for Grouping MEG Independent Components K-means
based (MAGMICK).
The proposed approach is able to capture spatio-temporal dynamics of brain activity in MEG studies by running
ICA at subject level and then clustering the ICs across sessions and subjects. Distinctive features of MAGMICK
are: i) the implementation of an efficient set of “MEG fingerprints” designed to summarize properties of MEG
ICs as they are built on spatial, temporal and spectral parameters; ii) the implementation of a modified version
of the standard K-means procedure to improve its data-driven character. This algorithmgroups the obtained ICs
automatically estimating the number of clusters through an adaptive weighting of the parameters and a constraint
on the ICs independence, i.e. components coming from the same session (at subject level) or subject
(at group level) cannot be grouped together. The performances of MAGMICK are illustrated by analyzing two
sets of MEG data obtained during a finger tapping task and median nerve stimulation. The results demonstrate
that the method can extract consistent patterns of spatial topography and spectral properties across sessions
and subjects that are in good agreement with the literature. In addition, these results are compared to those
from amodified version of affinity propagation clusteringmethod. The comparison, evaluated in terms of different
clustering validity indices, shows that our methodology often outperforms the clustering algorithm. Eventually,
these results are confirmed by a comparison with a MEG tailored version of the self-organizing group
ICA, which is largely used for fMRI IC clustering.
Tipologia CRIS:
1.1 Articolo in rivista
Elenco autori:
Spadone, Sara; DE PASQUALE, Francesco; Mantini, D.; DELLA PENNA, Stefania
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