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Published in: Medical & Biological Engineering & Computing 9/2019

12-07-2019 | Original Article

Leveraging network analysis to support experts in their analyses of subjects with MCI and AD

Authors: Paolo Lo Giudice, Nadia Mammone, Francesco Carlo Morabito, Rocco Giuseppe Pizzimenti, Domenico Ursino, Luca Virgili

Published in: Medical & Biological Engineering & Computing | Issue 9/2019

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Abstract

In this paper, we propose a network analysis–based approach to help experts in their analyses of subjects with mild cognitive impairment (hereafter, MCI) and Alzheimer’s disease (hereafter, AD) and to investigate the evolution of these subjects over time. The inputs of our approach are the electroencephalograms (hereafter, EEGs) of the patients to analyze, performed at a certain time and, again, 3 months later. Given an EEG of a subject, our approach constructs a network with nodes that represent the electrodes and edges that denote connections between electrodes. Then, it applies several network-based techniques allowing the investigation of subjects with MCI and AD and the analysis of their evolution over time. (i) A connection coefficient, supporting experts to distinguish patients with MCI from patients with AD; (ii) A conversion coefficient, supporting experts to verify if a subject with MCI is converting to AD; (iii) Some network motifs, i.e., network patterns very frequent in one kind of patient and absent, or very rare, in the other. Patients with AD, just by the very nature of their condition, cannot be forced to stay motionless while undergoing examinations for a long time. EEG is a non-invasive examination that can be easily done on them. Since AD and MCI, if prodromal to AD, are associated with a loss of cortical connections, the adoption of network analysis appears suitable to investigate the effects of the progression of the disease on EEG. This paper confirms the suitability of this idea
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Appendix
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Footnotes
1
At this moment, we do not make any assumptions about the subject whom eeg refers to. She/he could be a control subject, a patient with MCI or a patient with AD.
 
2
Recall that blue edges are the strongest ones, red edges have an intermediate weight, whereas green edges are the weakest ones.
 
3
Recall that a clique of dimension k in a network represents a completely connected subnetwork formed by k nodes.
 
4
We recall that a triad is a subnetwork consisting of three nodes. The totally connected triad is considered the most stable structure in network analysis. A totally connected triad can be considered as a clique of dimension 3.
 
5
Clearly, for derived motifs, noccM and noccA refer to the number of occurrences of motifs, instead of triads.
 
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Metadata
Title
Leveraging network analysis to support experts in their analyses of subjects with MCI and AD
Authors
Paolo Lo Giudice
Nadia Mammone
Francesco Carlo Morabito
Rocco Giuseppe Pizzimenti
Domenico Ursino
Luca Virgili
Publication date
12-07-2019
Publisher
Springer Berlin Heidelberg
Published in
Medical & Biological Engineering & Computing / Issue 9/2019
Print ISSN: 0140-0118
Electronic ISSN: 1741-0444
DOI
https://doi.org/10.1007/s11517-019-02004-y

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