Data di Pubblicazione:
2019
Abstract:
RS-fMRI data analysis for functional connectivity explorations is a challenging topic in computational
neuroimaging. Several approaches have been investigated to discover whole-brain data features.
Among these, clustering techniques based on Competitive Learning (CL) and Spectral Methods (SM)
have been shown effective in providing useful information in various contexts. We selected three
clustering algorithms and two spectral methods, i.e the clustering algorithm are Self-organising Maps
(SOM), Neural Gas (NG) and Growing Neural Gas (GNG), whereas the spectral methods are the classic
Principal Component Analysis (PCA) and the Nonlinear Robust Fuzzy Principal Component Analysis
(NRFPCA). We validated clustering with Davies–Bouldin Index (DBI) and we selected informative
principal components using Random Matrix Theory (RMT). tools. We adopted these techniques to
study the intrinsic functional properties of images coming from a shared repository of resting state
fMRI experiments (1000 Functional Connectome Project).
neuroimaging. Several approaches have been investigated to discover whole-brain data features.
Among these, clustering techniques based on Competitive Learning (CL) and Spectral Methods (SM)
have been shown effective in providing useful information in various contexts. We selected three
clustering algorithms and two spectral methods, i.e the clustering algorithm are Self-organising Maps
(SOM), Neural Gas (NG) and Growing Neural Gas (GNG), whereas the spectral methods are the classic
Principal Component Analysis (PCA) and the Nonlinear Robust Fuzzy Principal Component Analysis
(NRFPCA). We validated clustering with Davies–Bouldin Index (DBI) and we selected informative
principal components using Random Matrix Theory (RMT). tools. We adopted these techniques to
study the intrinsic functional properties of images coming from a shared repository of resting state
fMRI experiments (1000 Functional Connectome Project).
Tipologia CRIS:
Articolo su Rivista
Keywords:
RS-fMRI; functional
connectivity; competitive
clustering; self organizing
map; neural gas; growing
neural gas; Davies-Bouldin
index; spectral methods;
principal component
analysis; Nonlinear Robust
Fuzzy Principal Component
Analysis; random matrix
theory
Elenco autori:
Vergani, Alberto Arturo; Martinelli, Samuele; Binaghi, Elisabetta
Link alla scheda completa:
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