Abstract

This technical note considers a simple but important methodological issue in estimating effective connectivity; namely, how do we integrate measurements from multiple subjects to infer functional brain architectures that are conserved over subjects. We offer a solution to this problem that rests on a generalization of random effects analyses to Bayesian inference about nonlinear models of electrophysiological time-series data. Specifically, we present an empirical Bayesian scheme for group or hierarchical models, in the setting of dynamic causal modeling (DCM). Recent developments in approximate Bayesian inference for hierarchical models enable the efficient estimation of group effects in DCM studies of multiple trials, sessions, or subjects. This approach estimates second (e.g., between-subject) level parameters based on posterior estimates from the first (e.g., within-subject) level. Here, we use empirical priors from the second level to iteratively optimize posterior densities over parameters at the first level. The motivation for this iterative application is to finesse the local minima problem inherent in the (first level) inversion of nonlinear and ill-posed models. Effectively, the empirical priors shrink the first level parameter estimates toward the global maximum, to provide more robust and efficient estimates of within (and between-subject) effects. This paper describes the inversion scheme using a worked example based upon simulated electrophysiological responses. In a subsequent paper, we will assess its robustness and reproducibility using an empirical example.

Highlights

  • This technical note describes an application of Bayesian model reduction to the inversion of hierarchical or empirical Bayesian models (Efron and Morris, 1973; Kass and Steffey, 1989)

  • In a recent paper (Friston et al, 2015) we described the use of Bayesian model reduction to invert a dynamic causal models (DCM) for each subject in a group study and evaluate the posterior density over group effects, using the posterior densities from subject-specific inversions

  • We have described an iterative extension to an empirical Bayesian scheme for nonlinear models

Read more

Summary

Introduction

This technical note describes an application of Bayesian model reduction to the inversion of hierarchical or empirical Bayesian models (Efron and Morris, 1973; Kass and Steffey, 1989). In a recent paper (Friston et al, 2015) we described the use of Bayesian model reduction to invert a DCM for each subject in a group study and evaluate the posterior density over group effects, using the posterior densities from subject-specific inversions. This means that one does not have to re-fit the subject-specific models to accumulate evidence in favor of one or more models from successive subjects.

Objectives
Methods
Conclusion
Full Text
Paper version not known

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call

Disclaimer: All third-party content on this website/platform is and will remain the property of their respective owners and is provided on "as is" basis without any warranties, express or implied. Use of third-party content does not indicate any affiliation, sponsorship with or endorsement by them. Any references to third-party content is to identify the corresponding services and shall be considered fair use under The CopyrightLaw.