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Brain Connectivity and Model Comparison. Will Penny. Wellcome Trust Centre for Neuroimaging, University College London, UK. 26 th November 20 10. Dynamic Causal Models. Neural state equation :. inputs. Dynamic Causal Models. Neural state equation :. MEG. Neural model:
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Brain Connectivity and Model Comparison Will Penny Wellcome Trust Centre for Neuroimaging, University College London, UK 26th November 2010
Dynamic Causal Models Neural state equation: inputs
Dynamic Causal Models Neural state equation: MEG Neural model: 8 state variables per region nonlinear state equation propagation delays inputs
Dynamic Causal Models Electric/magnetic forward model:neural activityEEGMEG LFP (linear) Neural state equation: MEG Neural model: 8 state variables per region nonlinear state equation propagation delays inputs
Dynamic Causal Models Electric/magnetic forward model:neural activityEEGMEG LFP (linear) Neural state equation: fMRI MEG Neural model: 1 state variable per region bilinear state equation no propagation delays Neural model: 8 state variables per region nonlinear state equation propagation delays inputs
Dynamic Causal Models Hemodynamicforward model:neural activityBOLD (nonlinear) Electric/magnetic forward model:neural activityEEGMEG LFP (linear) Neural state equation: fMRI MEG Neural model: 1 state variable per region bilinear state equation no propagation delays Neural model: 8 state variables per region nonlinear state equation propagation delays inputs
Dynamic Causal Models DCM for ERP/ERF DCM for Steady State Spectra DCM for fMRI DCM for Time Varying Spectra DCM for Phase Coupling
Synchronization Gamma sync synaptic plasticity, forming ensembles Theta sync system-wide distributed control (phase coding) Pathological (epilepsy, Parkinsons) Phase Locking Indices, Phase Lag etc are useful characterising systems in their steady state
Weakly Coupled Oscillators For studying synchronization among brain regions Relate change of phase in one region to phase in others Region 2 Region 1 ? ? Region 3
Mutual Entrainment 0.3 0.3
DCM for Phase Coupling Phase interaction function is an arbitrary order Fourier series
MEG Example Fuentemilla et al, Current Biology, 2010
Delay activity (4-8Hz) Duzel et al. (2005) find different patterns of sensor-space theta-coupling in the delay period dependent on task. We are now looking at source space and how this coupling evolves.
Data Preprocessing • Pick 3 regions based on source reconstruction • 1. Right MTL [27,-18,-27] mm • 2. Right VIS [10,-100,0] mm • 3. Right IFG [39,28,-12] mm • Project MEG sensor activity onto 3 regions • with fewer sources than sensors and known location, • then pinv will do (Baillet et al., 2001)
Data Preprocessing • Pick 3 regions based on source reconstruction • 1. Right MTL [27,-18,-27] mm • 2. Right VIS [10,-100,0] mm • 3. Right IFG [39,28,-12] mm • Project MEG sensor activity onto 3 regions • with fewer sources than sensors and known location, • then pinv will do (Baillet et al., 2001) • Bandpass data into frequency range of interest • Hilbert transform data to obtain instantaneous phase
Data Preprocessing • Pick 3 regions based on source reconstruction • 1. Right MTL [27,-18,-27] mm • 2. Right VIS [10,-100,0] mm • 3. Right IFG [39,28,-12] mm • Project MEG sensor activity onto 3 regions • with fewer sources than sensors and known location, • then pinv will do (Baillet et al., 2001) • Bandpass data into frequency range of interest • Hilbert transform data to obtain instantaneous phase • Fit models to control data (10 trials) and memory data (10 trials). • Each trial comprises first 1sec of delay period.
? 2.46 IFG VIS ? 2.89 MTL Question Which connections are modulated by memory task? This question can be answered using Bayesian parameter inference
MTL Master VIS Master IFG Master 1 IFG 3 5 VIS IFG VIS IFG VIS Master- Slave MTL MTL MTL IFG 6 VIS 2 IFG VIS 4 IFG VIS Partial Mutual Entrainment MTL MTL MTL 7 IFG VIS Total Mutual Entrainment MTL Q. How do we compare these hypotheses ? A. Bayesian Model Comparison
LogBF model 3 versus model 1 > 20 LogEv Model
0.77 2.46 IFG VIS 0.89 2.89 MTL Model 3
Control fIFG-fVIS fMTL-fVIS
Memory fIFG-fVIS fMTL-fVIS
Recordings from rats doing spatial memory task: Jones and Wilson, PLoS B, 2005
Summary • Differential equation models of brain connectivity • Bayesian inference over parameters and models • DCM for Phase Coupling
Hippocampus Septum Connection to Neurobiology: Septo-Hippocampal theta rhythm Denham et al. 2000: Wilson-Cowan style model
Hippocampus Septum Hopf Bifurcation A B A B
For a generic Hopf bifurcation (Erm & Kopell…) See Brown et al. 04, for PRCs corresponding to other bifurcations