𝔖 Bobbio Scriptorium
✦   LIBER   ✦

Dynamic causal modeling for EEG and MEG

✍ Scribed by Stefan J. Kiebel; Marta I. Garrido; Rosalyn Moran; Chun-Chuan Chen; Karl J. Friston


Publisher
John Wiley and Sons
Year
2009
Tongue
English
Weight
874 KB
Volume
30
Category
Article
ISSN
1065-9471

No coin nor oath required. For personal study only.

✦ Synopsis


Abstract

We present a review of dynamic causal modeling (DCM) for magneto‐ and electroencephalography (M/EEG) data. DCM is based on a spatiotemporal model, where the temporal component is formulated in terms of neurobiologically plausible dynamics. Following an intuitive description of the model, we discuss six recent studies, which use DCM to analyze M/EEG and local field potentials. These studies illustrate how DCM can be used to analyze evoked responses (average response in time), induced responses (average response in time‐frequency), and steady‐state responses (average response in frequency). Bayesian model comparison plays a critical role in these analyses, by allowing one to compare equally plausible models in terms of their model evidence. This approach might be very useful in M/EEG research; where correlations among spatial and neuronal model parameter estimates can cause uncertainty about which model best explains the data. Bayesian model comparison resolves these uncertainties in a principled and formal way. We suggest that DCM and Bayesian model comparison provides a useful way to test hypotheses about distributed processing in the brain, using electromagnetic data. Hum Brain Mapp, 2009. © 2009 Wiley‐Liss, Inc.


📜 SIMILAR VOLUMES


Hypothesis testing in distributed source
✍ Lourens J. Waldorp; Hilde M. Huizenga; Raoul P.P.P. Grasman; Koen B.E. Böcker; P 📂 Article 📅 2006 🏛 John Wiley and Sons 🌐 English ⚖ 1013 KB

## Abstract Hypothesis testing in distributed source models for the electro‐ or magnetoencephalogram is generally performed for each voxel separately. Derived from the analysis of functional magnetic resonance imaging data, such a statistical parametric map (SPM) ignores the spatial smoothing in hy

Directed information flow—A model free m
✍ Hermann Hinrichs; Toemme Noesselt; Hans-Jochen Heinze 📂 Article 📅 2008 🏛 John Wiley and Sons 🌐 English ⚖ 607 KB

## Abstract In a study that combined event related potential (ERP) and magnetic field (ERMF) data, we analyzed the timing and direction of information flow between striate (S) and extrastriate (ES) cortex by applying a generalized mutual information measure (DIT for “directed information transfer”)

Task-related gamma-band dynamics from an
✍ Karim Jerbi; Tomás Ossandón; Carlos M. Hamamé; S. Senova; Sarang S. Dalal; Julie 📂 Article 📅 2009 🏛 John Wiley and Sons 🌐 English ⚖ 869 KB

## Abstract Although non‐invasive techniques provide functional activation maps at ever‐growing spatio‐temporal precision, invasive recordings offer a unique opportunity for direct investigations of the fine‐scale properties of neural mechanisms in focal neuronal populations. In this review we prov

Dynamical grouping model for distributed
✍ Abderrahim Benslimane; Abdelhafid Abouaissa 📂 Article 📅 2002 🏛 Elsevier Science 🌐 English ⚖ 909 KB

This paper proposes a hierarchical architecture of communication allowing scalability in the case of multimedia applications such as teleconferencing where there is a large number of participants. From an unspeci®ed communication network, we propose to decompose the system into local groups. Each lo