| Literature DB >> 27222584 |
Alexander Friedman1, Alanna F Slocum1, Danil Tyulmankov1, Leif G Gibb1, Alex Altshuler2, Suthee Ruangwises1, Qinru Shi1, Sebastian E Toro Arana1, Dirk W Beck1, Jacquelyn E C Sholes3, Ann M Graybiel4.
Abstract
A universal need in understanding complex networks is the identification of individual information channels and their mutual interactions under different conditions. In neuroscience, our premier example, networks made up of billions of nodes dynamically interact to bring about thought and action. Granger causality is a powerful tool for identifying linear interactions, but handling nonlinear interactions remains an unmet challenge. We present a nonlinear multidimensional hidden state (NMHS) approach that achieves interaction strength analysis and decoding of networks with nonlinear interactions by including latent state variables for each node in the network. We compare NMHS to Granger causality in analyzing neural circuit recordings and simulations, improvised music, and sociodemographic data. We conclude that NMHS significantly extends the scope of analyses of multidimensional, nonlinear networks, notably in coping with the complexity of the brain.Entities:
Keywords: causal analysis; decoding; functional connectivity; hidden Markov models; machine learning
Mesh:
Year: 2016 PMID: 27222584 PMCID: PMC4988606 DOI: 10.1073/pnas.1606280113
Source DB: PubMed Journal: Proc Natl Acad Sci U S A ISSN: 0027-8424 Impact factor: 11.205