Analyzing information flow in brain networks with nonparametric Granger causality


Autoria(s): Dhamala, Mukeshwar; Rangarajan, Govindan; Ding, Mingzhou
Data(s)

01/06/2008

Resumo

Multielectrode neurophysiological recording and high-resolution neuroimaging generate multivariate data that are the basis for understanding the patterns of neural interactions. How to extract directions of information flow in brain networks from these data remains a key challenge. Research over the last few years has identified Granger causality as a statistically principled technique to furnish this capability. The estimation of Granger causality currently requires autoregressive modeling of neural data. Here, we propose a nonparametric approach based on widely used Fourier and wavelet transforms to estimate both pairwise and conditional measures of Granger causality, eliminating the need of explicit autoregressive data modeling. We demonstrate the effectiveness of this approach by applying it to synthetic data generated by network models with known connectivity and to local field potentials recorded from monkeys performing a sensorimotor task.

Formato

application/pdf

Identificador

http://eprints.iisc.ernet.in/25884/1/567.pdf

Dhamala, Mukeshwar and Rangarajan, Govindan and Ding, Mingzhou (2008) Analyzing information flow in brain networks with nonparametric Granger causality. In: NeuroImage, 41 (2). pp. 354-362.

Publicador

Elsevier Science

Relação

http://www.sciencedirect.com/science?_ob=ArticleURL&_udi=B6WNP-4RXBCDY-2&_user=512776&_coverDate=06%2F30%2F2008&_rdoc=1&_fmt=high&_orig=search&_sort=d&_docanchor=&view=c&_searchStrId=1223389863&_rerunOrigin=google&_acct=C000025298&_version=1&_urlVersion=0

http://eprints.iisc.ernet.in/25884/

Palavras-Chave #Mathematics
Tipo

Journal Article

PeerReviewed