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  DCM for complex-valued data: Cross-spectra, coherence and phase-delays

Friston, K., Bastos, A., Litvak, V., Stephan, K., Fries, P., & Moran, R. (2012). DCM for complex-valued data: Cross-spectra, coherence and phase-delays. NeuroImage, 59(1), 439-455. doi:10.1016/j.neuroimage.2011.07.048.

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Friston_2012_DCMForComplex-valuedData.pdf (Publisher version), 2MB
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Friston_2012_DCMForComplex-valuedData.pdf
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2011
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Friston, K.J., Author
Bastos, A.1, 2, Author
Litvak, V., Author
Stephan, K.E., Author
Fries, Pascal1, 2, Author                 
Moran, R.J., Author
Affiliations:
1Ernst Strüngmann Institute (ESI) for Neuroscience in Cooperation with Max Planck Society, Max Planck Society, ou_2074314              
2Fries Lab, Ernst Strüngmann Institute (ESI) for Neuroscience in Cooperation with Max Planck Society, Max Planck Society, Deutschordenstraße 46, 60528 Frankfurt, DE, ou_3381216              

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Free keywords: dynamic causal-models steady-state responses neural mass model subthalamic nucleus beta-oscillations evoked-responses cerebral-cortex brain eeg synchronization
 Abstract: This note describes an extension of Bayesian model inversion procedures for the Dynamic Causal Modeling (DCM) of complex-valued data. Modeling complex data can be particularly useful in the analysis of multivariate ergodic (stationary) time-series. We illustrate this with a generalization of DCM for steady-state responses that models both the real and imaginary parts of sample cross-spectra. DCM allows one to infer underlying biophysical parameters generating data (like synaptic time constants, connection strengths and conduction delays). Because transfer functions and complex cross-spectra can be generated from these parameters, one can also describe the implicit system architecture in terms of conventional (linear systems) measures; like coherence, phase-delay or cross-correlation functions. Crucially, these measures can be derived in both sensor and source-space. In other words, one can examine the cross-correlation or phase-delay functions between hidden neuronal sources using non-invasive data and relate these functions to synaptic parameters and neuronal conduction delays. We illustrate these points using local field potential recordings from the subthalamic nucleus and globus pallidus, with a special focus on the relationship between conduction delays and the ensuing phase relationships and cross-correlation time lags between population activities. (C) 2011 Elsevier Inc. All rights reserved.

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 Dates: 2011-07-282012
 Publication Status: Issued
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 Rev. Type: Peer
 Identifiers: DOI: 10.1016/j.neuroimage.2011.07.048
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Title: NeuroImage
Source Genre: Journal
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Pages: - Volume / Issue: 59 (1) Sequence Number: - Start / End Page: 439 - 455 Identifier: ISSN: 10538119