13.
Background
Although a large body of knowledge about both brain structure and function has been gathered over the last decades, we still
have a poor understanding of their exact relationship. Graph theory provides a method to study the relation between network
structure and function, and its application to neuroscientific data is an emerging research field. We investigated topological
changes in large-scale functional brain networks in patients with Alzheimer's disease (AD) and frontotemporal lobar degeneration
(FTLD) by means of graph theoretical analysis of resting-state EEG recordings. EEGs of 20 patients with mild to moderate AD,
15 FTLD patients, and 23 non-demented individuals were recorded in an eyes-closed resting-state. The synchronization likelihood
(SL), a measure of functional connectivity, was calculated for each sensor pair in 0.5–4 Hz, 4–8 Hz, 8–10 Hz, 10–13 Hz, 13–30
Hz and 30–45 Hz frequency bands. The resulting connectivity matrices were converted to unweighted graphs, whose structure
was characterized with several measures: mean clustering coefficient (local connectivity), characteristic path length (global
connectivity) and degree correlation (network 'assortativity'). All results were normalized for network size and compared
with random control networks.
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