| Literature DB >> 25924166 |
Rong Chen1, Edward Herskovits2.
Abstract
Dysfunction of brain structural and functional connectivity is increasingly being recognized as playing an important role in many brain disorders. Diffusion tensor imaging (DTI) and functional magnetic resonance (fMR) imaging are widely used to infer structural and functional connectivity, respectively. How to combine structural and functional connectivity patterns for predictive modeling is an important, yet open, problem. We propose a new method, called Bayesian prediction based on multidimensional connectivity profiling (BMCP), to distinguish subjects at the individual level based on structural and functional connectivity patterns. BMCP combines finite mixture modeling and Bayesian network classification. We demonstrate its use in distinguishing young and elderly adults based on DTI and resting-state fMR data.Entities:
Keywords: brain functional connectivity; brain structural connectivity; classification; magnetic resonance imaging; multimodality
Mesh:
Year: 2015 PMID: 25924166 PMCID: PMC4757118 DOI: 10.15274/NRJ-2014-10111
Source DB: PubMed Journal: Neuroradiol J ISSN: 1971-4009