Dynamical graph theory networks techniques for the analysis of sparse connectivity networks in dementia Conference Paper


Authors: Tahmassebi, A.; Pinker-Domenig, K.; Wengert, G.; Lobbes, M.; Stadlbauer, A.; Romero, F. J.; Morales, D. P.; Castillo, E.; Garcia, A.; Botella, G.; Meyer-Bäse, A.
Editors: Cullum, B. M.; Kiehl, D. L.; McLamore, E. S.
Title: Dynamical graph theory networks techniques for the analysis of sparse connectivity networks in dementia
Conference Title: Smart Biomedical and Physiological Sensor Technology XIV
Abstract: Graph network models in dementia have become an important computational technique in neuroscience to study fundamental organizational principles of brain structure and function of neurodegenerative diseases such as dementia. The graph connectivity is reflected in the connectome, the complete set of structural and functional connections of the graph network, which is mostly based on simple Pearson correlation links. In contrast to simple Pearson correlation networks, the partial correlations (PC) only identify direct correlations while indirect associations are eliminated. In addition to this, the state-of-the-art techniques in brain research are based on static graph theory, which is unable to capture the dynamic behavior of the brain connectivity, as it alters with disease evolution. We propose a new research avenue in neuroimaging connectomics based on combining dynamic graph network theory and modeling strategies at different time scales. We present the theoretical framework for area aggregation and time-scale modeling in brain networks as they pertain to disease evolution in dementia. This novel paradigm is extremely powerful, since we can derive both static parameters pertaining to node and area parameters, as well as dynamic parameters, such as system's eigenvalues. By implementing and analyzing dynamically both disease driven PC-networks and regular concentration networks, we reveal differences in the structure of these network that play an important role in the temporal evolution of this disease. The described research is key to advance biomedical research on novel disease prediction trajectories and dementia therapies. © 2017 SPIE.
Keywords: neuroimaging; physiology; dementia; disease control; graph theory; dynamics; neurodegenerative diseases; correlation; nonlinear dynamics; clustering; correlation methods; computation theory; theoretical framework; dynamic graph; dementia graph theory; eigenvalues and eigenfunctions; computational technique; functional connection; organizational principles; state-of-the-art techniques
Journal Title Proceedings of SPIE
Volume: 10216
Conference Dates: 2017 Apr 9-10
Conference Location: Anaheim, CA
ISBN: 0277-786X
Publisher: SPIE  
Date Published: 2017-06-13
Start Page: 10216 09
Language: English
DOI: 10.1117/12.2263555
PROVIDER: scopus
DOI/URL:
Notes: Conference Paper -- Export Date: 2 August 2017 -- Source: Scopus
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