| Literature DB >> 25147001 |
Wenqiong Xue1, Jian Kang, F DuBois Bowman, Tor D Wager, Jian Guo.
Abstract
Studying the interactions between different brain regions is essential to achieve a more complete understanding of brain function. In this article, we focus on identifying functional co-activation patterns and undirected functional networks in neuroimaging studies. We build a functional brain network, using a sparse covariance matrix, with elements representing associations between region-level peak activations. We adopt a penalized likelihood approach to impose sparsity on the covariance matrix based on an extended multivariate Poisson model. We obtain penalized maximum likelihood estimates via the expectation-maximization (EM) algorithm and optimize an associated tuning parameter by maximizing the predictive log-likelihood. Permutation tests on the brain co-activation patterns provide region pair and network-level inference. Simulations suggest that the proposed approach has minimal biases and provides a coverage rate close to 95% of covariance estimations. Conducting a meta-analysis of 162 functional neuroimaging studies on emotions, our model identifies a functional network that consists of connected regions within the basal ganglia, limbic system, and other emotion-related brain regions. We characterize this network through statistical inference on region-pair connections as well as by graph measures.Entities:
Keywords: EM algorithm; Emotion; Functional brain networks; Functional co-activation pattern identification; Poisson Graphical Model
Mesh:
Year: 2014 PMID: 25147001 PMCID: PMC4276452 DOI: 10.1111/biom.12216
Source DB: PubMed Journal: Biometrics ISSN: 0006-341X Impact factor: 2.571