Back to Search
Start Over
Time-dependence of graph theory metrics in functional connectivity analysis
- Source :
- AAN 68th Annual Meeting, Neurology, 86(16 Supplement). LIPPINCOTT WILLIAMS & WILKINS, Neuroimage, 125, 601-615. Elsevier Science, Maastricht University
- Publication Year :
- 2016
-
Abstract
- Brain graphs provide a useful way to computationally model the network structure of the connectome, and this has led to increasing interest in the use of graph theory to quantitate and investigate the topological characteristics of the healthy brain and brain disorders on the network level. The majority of graph theory investigations of functional connectivity have relied on the assumption of temporal stationarity. However, recent evidence increasingly suggests that functional connectivity fluctuates over the length of the scan. In this study, we investigate the stationarity of brain network topology using a Bayesian hidden Markov model (HMM) approach that estimates the dynamic structure of graph theoretical measures of whole-brain functional connectivity. In addition to extracting the stationary distribution and transition probabilities of commonly employed graph theory measures, we propose two estimators of temporal stationarity: the S-index and N-index. These indexes can be used to quantify different aspects of the temporal stationarity of graph theory measures. We apply the method and proposed estimators to resting-state functional MRI data from healthy controls and patients with temporal lobe epilepsy. Our analysis shows that several graph theory measures, including small-world index, global integration measures, and betweenness centrality, may exhibit greater stationarity over time and therefore be more robust. Additionally, we demonstrate that accounting for subject-level differences in the level of temporal stationarity of network topology may increase discriminatory power in discriminating between disease states. Our results confirm and extend findings from other studies regarding the dynamic nature of functional connectivity, and suggest that using statistical models which explicitly account for the dynamic nature of functional connectivity in graph theory analyses may improve the sensitivity of investigations and consistency across investigations.
- Subjects :
- 0301 basic medicine
Male
Theoretical computer science
Image Processing
Functional magnetic resonance imaging
computer.software_genre
Medical and Health Sciences
Hidden Markov Model
0302 clinical medicine
Computer-Assisted
Neural Pathways
Image Processing, Computer-Assisted
Hidden Markov model
Temporal lobe epilepsy
Mathematics
Brain
Middle Aged
Magnetic Resonance Imaging
Temporal Lobe
Markov Chains
Neurology
Neurological
Connectome
Female
Algorithms
Adult
Cognitive Neuroscience
Bayesian probability
Machine learning
Article
03 medical and health sciences
Young Adult
Betweenness centrality
Humans
Dynamic functional connectivity
Epilepsy
Neurology & Neurosurgery
Markov chain
business.industry
Psychology and Cognitive Sciences
Neurosciences
Graph theory
Statistical model
Bayes Theorem
030104 developmental biology
Epilepsy, Temporal Lobe
Artificial intelligence
business
computer
030217 neurology & neurosurgery
Subjects
Details
- Language :
- English
- ISSN :
- 00283878 and 10538119
- Database :
- OpenAIRE
- Journal :
- AAN 68th Annual Meeting, Neurology, 86(16 Supplement). LIPPINCOTT WILLIAMS & WILKINS, Neuroimage, 125, 601-615. Elsevier Science, Maastricht University
- Accession number :
- edsair.doi.dedup.....ba752e32db5f90869e9a021682d4da1a