Abstract #4157
Analysis of resting state sub-networks from high-dimensional ICA: disconnections in Alzheimer's disease
Ludovica Griffanti 1,2 , Ottavia Dipasquale 1,2 , Francesca Baglio 1 , Raffaello Nemni 1,3 , Mario Clerici 1,3 , and Giuseppe Baselli 2
1
IRCCS, Fondazione don Carlo Gnocchi, Milano,
Milan, Italy,
2
Department
of Electronics, Information and Bioengineering,
Politecnico di Milano, Milan, Italy,
3
Physiopatholgy
Department, Universit degli Studi di Milano, Milan,
Italy
With high-dimensional independent component analysis
(ICA) the resting state (RS) networks typically found
with low-dimensional ICA are decomposed in sub-networks,
giving further insight into functional connectivity
changes in pathological conditions, e.g. in Alzheimer's
disease (AD). We performed temporal analyses of RS-fMRI
data in healthy subjects and AD patients, focusing on
the primarily altered default mode network (DMN) and
exploring the sensory motor network. Low-dimensional
results confirmed literature, while high-dimensional
decomposition in sub-networks was essential to better
localize functional connectivity alterations in AD,
suggesting that the connectivity damage is not confined
to the DMN.
This abstract and the presentation materials are available to members only;
a login is required.
Join Here