Dynamic Causal Modelling for ERP/ERFs

Slides:



Advertisements
Similar presentations
EEG-MEG source reconstruction
Advertisements

Wellcome Dept. of Imaging Neuroscience University College London
Dynamic causal Modelling for evoked responses Stefan Kiebel Wellcome Trust Centre for Neuroimaging UCL.
EEG/MEG Source Localisation
Dynamic Causal Modelling for ERP/ERFs
DCM for ERP/ERF A presentation for Methods for Dummies By Ashwini Oswal and Elizabeth Mallia.
DCM for evoked responses Harriet Brown SPM for M/EEG course, 2013.
Dynamic Causal Modelling for ERP/ERFs Valentina Doria Georg Kaegi Methods for Dummies 19/03/2008.
Early auditory novelty processing in humans: auditory brainstem and middle-latency responses Slabu L, Grimm S, Costa-Faidella J, Escera C.
What do you need to know about DCM for ERPs/ERFs to be able to use it?
DCM demo André Bastos and Martin Dietz Wellcome Trust Centre for Neuroimaging.
EEG / MEG: Experimental Design & Preprocessing Denisa Jamecna Sofie Meyer (Archy de Berker(
Contrasts & Inference - EEG & MEG Outi Tuomainen & Rimona Weil mfd.
Pre-processing for EEG and MEG
General Linear Model & Classical Inference
J. Daunizeau Motivation, Brain and Behaviour group, ICM, Paris, France Wellcome Trust Centre for Neuroimaging, London, UK Dynamic Causal Modelling for.
GUIDE to The… D U M M I E S’ DCM Velia Cardin. Functional Specialization is a question of Where? Where in the brain is a certain cognitive/perceptual.
Rosalyn Moran Virginia Tech Carilion Research Institute Dynamic Causal Modelling for Cross Spectral Densities.
From Localization to Connectivity and... Lei Sheu 1/11/2011.
Dynamic Causal Modelling
Max Planck Institute for Human Cognitive and Brain Sciences Leipzig, Germany A hierarchy of time-scales and the brain Stefan Kiebel.
Dynamic Causal Modelling (DCM): Theory Demis Hassabis & Hanneke den Ouden Thanks to Klaas Enno Stephan Functional Imaging Lab Wellcome Dept. of Imaging.
Source localization for EEG and MEG Methods for Dummies 2006 FIL Bahador Bahrami.
18 th February 2009 Stephanie Burnett Christian Lambert Methods for Dummies 2009 Dynamic Causal Modelling Part I: Theory.
DCM for ERPs/EFPs Clare Palmer & Elina Jacobs Expert: Dimitris Pinotsis.
EEG/MEG Source Localisation SPM Course – Wellcome Trust Centre for Neuroimaging – Oct ? ? Jérémie Mattout, Christophe Phillips Jean Daunizeau Guillaume.
Contrasts & Inference - EEG & MEG Himn Sabir 1. Topics 1 st level analysis 2 nd level analysis Space-Time SPMs Time-frequency analysis Conclusion 2.
J. Daunizeau Wellcome Trust Centre for Neuroimaging, London, UK UZH – Foundations of Human Social Behaviour, Zurich, Switzerland Dynamic Causal Modelling:
Dynamic Causal Modelling of Evoked Responses in EEG/MEG Wellcome Dept. of Imaging Neuroscience University College London Stefan Kiebel.
Dynamic causal modelling of electromagnetic responses Karl Friston - Wellcome Trust Centre for Neuroimaging, Institute of Neurology, UCL In recent years,
J. Daunizeau ICM, Paris, France ETH, Zurich, Switzerland Dynamic Causal Modelling of fMRI timeseries.
Input Single-state DCM Intrinsic (within- region) coupling Extrinsic (between- region) coupling Multi-state DCM with excitatory and inhibitory connections.
Abstract This talk summarizes our recent attempts to integrate action and perception within a single optimization framework. We start with a statistical.
Abstract This talk will present a general approach (DCM) to the identification of dynamic input-state-output systems such as the network of equivalent.
Dynamic Causal Modelling Advanced Topics SPM Course (fMRI), May 2015 Peter Zeidman Wellcome Trust Centre for Neuroimaging University College London.
Dynamic Causal Modelling for EEG and MEG
1 Experimental Design, Contrasts & Inference - EEG & MEG Joseph Brooks (ICN) Maria Joao (FIL) Methods for Dummies 2007 Wellcome Department For Neuroimaging.
Brain modes and network discovery Karl Friston The past decade has seen tremendous advances in characterising functional integration in the brain. Much.
Abstract This tutorial is about the inversion of dynamic input-state-output systems. Identification of the systems parameters proceeds in a Bayesian framework.
Dynamic Causal Modelling (DCM) Marta I. Garrido Thanks to: Karl J. Friston, Klaas E. Stephan, Andre C. Marreiros, Stefan J. Kiebel,
Dynamic Causal Model for evoked responses in MEG/EEG Rosalyn Moran.
DCM for evoked responses Ryszard Auksztulewicz SPM for M/EEG course, 2015.
Dynamic Causal Modeling (DCM) A Practical Perspective Ollie Hulme Barrie Roulston Zeki lab.
Methods for Dummies M/EEG Analysis: Contrasts, Inferences and Source Localisation Diana Omigie Stjepana Kovac.
Bayesian Model Selection and Averaging SPM for MEG/EEG course Peter Zeidman 17 th May 2016, 16:15-17:00.
DCM for ERP/ERF: theory and practice Melanie Boly Based on slides from Chris Phillips, Klaas Stephan and Stefan Kiebel.
Dynamic Causal Modelling for event-related responses
Principles of Dynamic Causal Modelling
5th March 2008 Andreina Mendez Stephanie Burnett
Dynamic Causal Modeling of Endogenous Fluctuations
DCM for ERP/ERF: theory and practice
Effective Connectivity
GCHSR 2016 Junior Journal Club
M/EEG Analysis in SPM Rik Henson (MRC CBU, Cambridge)
M/EEG Statistical Analysis & Source Localization
DCM for Time Frequency Will Penny
Wellcome Trust Centre for Neuroimaging University College London
Dynamic Causal Model for evoked responses in M/EEG Rosalyn Moran.
Dynamic Causal Model for Steady State Responses
DCM for evoked responses
Dynamic Causal Modelling for M/EEG
DCM - the practical bits
Dynamic Causal Modelling
CRIS Workshop: Computational Neuroscience and Bayesian Modelling
Effective Connectivity
M/EEG Statistical Analysis & Source Localization
Bayesian Inference in SPM2
Dynamic Causal Modelling for evoked responses
DCM Demo – Model Specification, Inversion and 2nd Level Inference
Group DCM analysis for cognitive & clinical studies
Presentation transcript:

Dynamic Causal Modelling for ERP/ERFs Practical session Stefan Kiebel and Rosalyn Moran

estimated by perturbing the system and measuring the response DCM for Evoked Responses 3 4 STG STG functional connectivity vs. effective connectivity causal architecture of interactions estimated by perturbing the system and measuring the response 1 2 A1 A1 input modulation of effective connectivity The aim of DCM is to estimate and make inferences about the coupling among brain areas, and how that coupling is influences by changes in the experimental context. differences in the evoked responses changes in effective connectivity

Data acquisition and processing mode 1 Data acquisition and processing Oddball paradigm standards deviants mode 2 pseudo-random auditory sequence 80% standard tones – 500 Hz 20% deviant tones – 550 Hz time preprocessing mode 3 raw data convert to matlab file filter epoch down sample artifact correction average data reduction to principal spatial modes (explaining most of the variance) 128 EEG scalp electrodes ERPs / ERFs time (ms)

The Mismatch Negativity (MMN) is the ERP component elicited by deviations within a structured auditory sequence peaking at about 100 – 200 ms after change onset. b 4 standards deviants 3 MMN HEOG VEOG 2 a 1 V m -1 -2 -3 -4 -100 -50 50 100 150 200 250 300 350 400 ms c

Motivation for MMN model plausible models… Forward - F Backward - B Both - FB Opitz et al., 2002 3 4 STG STG lA1 rA1 lSTG rSTG 1 2 A1 A1 input Doeller et al., 2003 modulation of effective connectivity

Intrinsic connections Matlab spm eeg choose time window choose data number of spatial components sources or nodes in your graph from DCM.AF DCM.AB DCM.AL specify extrinsic connections driving input to DCM.C modulations Intrinsic connections DCM.B estimate the model visualise output

DCM specification – testing different models Forward and Forward - F Backward - B Backward - FB STG STG STG STG STG STG STG A1 A1 A1 A1 A1 A1 input input input Forward Forward Forward Backward Backward Backward Lateral Lateral Lateral modulation of effective connectivity

results Bayesian Model Comparison log-evidence group level subjects Forward (F) Backward (B) Forward and Backward (FB)