4.7 Article

Dynamic modeling of neuronal responses in fMRI using cubature Kalman filtering

Journal

NEUROIMAGE
Volume 56, Issue 4, Pages 2109-2128

Publisher

ACADEMIC PRESS INC ELSEVIER SCIENCE
DOI: 10.1016/j.neuroimage.2011.03.005

Keywords

Neuronal; fMRI; Blind deconvolution; Cubature Kalman filter; Smoother; Stochastic; Hemodynamic modeling; Dynamic expectation maximization; Nonlinear

Funding

  1. Ministry of Education of the Czech Republic [MSM0021630513, MSM0021622404]
  2. research center DAR, Ministry of Education of the Czech Republic [1 M0572]
  3. NIH, USA [R01EB000840]
  4. Wellcome Trust

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This paper presents a new approach to inverting (fitting) models of coupled dynamical systems based on state-of-the-art (cubature) Kalman filtering. Crucially, this inversion furnishes posterior estimates of both the hidden states and parameters of a system, including any unknown exogenous input. Because the underlying generative model is formulated in continuous time (with a discrete observation process) it can be applied to a wide variety of models specified with either ordinary or stochastic differential equations. These are an important class of models that are particularly appropriate for biological time-series, where the underlying system is specified in terms of kinetics or dynamics (i.e., dynamic causal models). We provide comparative evaluations with generalized Bayesian filtering (dynamic expectation maximization) and demonstrate marked improvements in accuracy and computational efficiency. We compare the schemes using a series of difficult (nonlinear) toy examples and conclude with a special focus on hemodynamic models of evoked brain responses in fMRI. Our scheme promises to provide a significant advance in characterizing the functional architectures of distributed neuronal systems, even in the absence of known exogenous (experimental) input; e.g., resting state fMRI studies and spontaneous fluctuations in electrophysiological studies. Importantly, unlike current Bayesian filters (e.g. DEM), our scheme provides estimates of time-varying parameters, which we will exploit in future work on the adaptation and enabling of connections in the brain. (C) 2011 Elsevier Inc. All rights reserved.

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