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DCM: Advanced issues. Klaas Enno Stephan Laboratory for Social & Neural Systems Research Institute for Empirical Research in Economics University of Zurich Functional Imaging Laboratory (FIL) Wellcome Trust Centre for Neuroimaging University College London.
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DCM: Advanced issues Klaas Enno Stephan Laboratory for Social & Neural Systems Research Institute for Empirical Research in Economics University of Zurich Functional Imaging Laboratory (FIL) Wellcome Trust Centre for Neuroimaging University College London Methods & models for fMRI data analysis, University of Zurich27 May 2009
Overview • Bayesian model selection (BMS) • Nonlinear DCM for fMRI • Timing errors & sampling accuracy • Integrating tractography and DCM • DCMs for electrophysiological data
Pitt & Miyung (2002) TICS Model comparison and selection Given competing hypotheses on structure & functional mechanisms of a system, which model is the best? Which model represents thebest balance between model fit and model complexity? For which model m does p(y|m) become maximal?
Bayesian model selection (BMS) Bayes’ rule: Model evidence: accounts for both accuracy and complexity of the model allows for inference about structure (generalisability) of the model integral usually not analytically solvable, approximations necessary
Model evidence p(y|m) Balance between fit and complexity Generalisability of the model Gharamani, 2004 p(y|m) a specific y all possible datasets y Model evidence: probability of generating data y from parameters that are randomly sampled from the prior p(m). Maximum likelihood: probability of the data y for the specific parameter vector that maximises p(y|,m).
Approximations to the model evidence in DCM Maximizing log model evidence = Maximizing model evidence Logarithm is a monotonic function Log model evidence = balance between fit and complexity No. of parameters In SPM2 & SPM5, interface offers 2 approximations: No. of data points Akaike Information Criterion: Bayesian Information Criterion: AIC favours more complex models, BIC favours simpler models. Penny et al. 2004, NeuroImage
Bayes factors To compare two models, we can just compare their log evidences. But: the log evidence is just some number – not very intuitive! A more intuitive interpretation of model comparisons is made possible by Bayes factors: positive value, [0;[ Kass & Raftery classification: Kass & Raftery 1995, J. Am. Stat. Assoc.
The negative free energy approximation • Under Gaussian assumptions about the posterior (Laplace approximation), the negative free energy F is a lower bound on the log model evidence:
The complexity term in F • In contrast to AIC & BIC, the complexity term of the negative free energy F accounts for parameter interdependencies. • The complexity term of F is higher • the more independent the prior parameters ( effective DFs) • the more dependent the posterior parameters • the more the posterior mean deviates from the prior mean • NB: SPM8 only uses F for model selection !
M3 attention M2 better than M1 PPC BF 2966 F = 7.995 stim V1 V5 M4 attention PPC stim V1 V5 BMS in SPM8: an example attention M1 M2 PPC PPC attention stim V1 V5 stim V1 V5 M3 M1 M4 M2 M3 better than M2 BF 12 F = 2.450 M4 better than M3 BF 23 F = 3.144
Fixed effects BMS at group level Group Bayes factor (GBF) for 1...K subjects: Average Bayes factor (ABF): Problems: • blind with regard to group heterogeneity • sensitive to outliers
Random effects BMS for group studies: a variational Bayesian approach Dirichlet parameters = “occurrences” of models in the population Dirichlet distribution of model probabilities Multinomial distribution of model labels Measured data Stephan et al. 2009, NeuroImage
• • • Task-driven lateralisation Does the word contain the letter A or not? letter decisions > spatial decisions group analysis (random effects),n=16, p<0.05 whole-brain corrected time Is the red letter left or right from the midline of the word? spatial decisions > letter decisions Stephan et al. 2003, Science
LG left MOG right MOG left FG right LG right FG left Inter-hemispheric connectivity in the visual ventral stream Right FG 38,-52,-20 Left MOG -38,-90,-4 Left FG -44,-52,-18 Right MOG -38,-94,0 LD|LVF 0.20 0.04 0.00 0.01 0.07 0.02 LD>SD, p<0.05 cluster-level corrected (p<0.001 voxel-level cut-off) p<0.01 uncorrected 0.27 0.06 0.11 0.03 LD LD 0.01 0.03 0.00 0.04 Left LG -12,-70,-6 Left LG -14,-68,-2 0.01 0.01 0.01 0.01 0.06 0.02 LD|RVF RVF stim. LVF stim. LD>SD masked incl. with RVF>LVF p<0.05 cluster-level corrected (p<0.001 voxel-level cut-off) LD>SD masked incl. with LVF>RVF p<0.05 cluster-level corrected (p<0.001 voxel-level cut-off) Stephan et al. 2007, J. Neurosci.
LD LD|LVF LD|RVF LD|LVF LD LD RVF stim. LD LVF stim. RVF stim. LD|RVF LVF stim. MOG MOG MOG MOG LG LG LG LG FG FG FG FG m2 m1 Stephan et al. 2009, NeuroImage
LD LD|LVF LD|RVF LD|LVF LD LD RVF stim. LD LVF stim. RVF stim. LD|RVF LVF stim. MOG MOG MOG MOG LG LG LG LG FG FG FG FG Simulation study: sampling subjects from a heterogenous population m1 • Population where 70% of all subjects' data are generated by model m1 and 30% by model m2 • Random sampling of subjects from this population and generating synthetic data with observation noise • Fitting both m1 and m2 to all data sets and performing BMS m2 Stephan et al. 2009, NeuroImage
A B true values: 1=220.7=15.4 2=220.3=6.6 mean estimates: 1=15.4, 2=6.6 true values: r1 = 0.7, r2=0.3 mean estimates: r1 = 0.7, r2=0.3 <r> m2 m2 m1 m1 C D true values: 1 = 1, 2=0 mean estimates: 1 = 0.89, 2=0.11 m2 log GBF12 m1
Overview • Bayesian model selection (BMS) • Nonlinear DCM for fMRI • Timing errors & sampling accuracy • Integrating tractography and DCM • DCMs for electrophysiological data
Neural state equation intrinsic connectivity modulation of connectivity direct inputs modulatory input u2(t) driving input u1(t) t t y BOLD y y y λ hemodynamic model activity x2(t) activity x3(t) activity x1(t) x neuronal states integration Stephan & Friston (2007),Handbook of Brain Connectivity
non-linear DCM modulation driving input bilinear DCM driving input modulation Two-dimensional Taylor series (around x0=0, u0=0): Nonlinear state equation: Bilinear state equation:
Neural population activity x3 fMRI signal change (%) x1 x2 u2 u1 Nonlinear dynamic causal model (DCM): Stephan et al. 2008, NeuroImage
SPC V1 IFG Attention V5 Photic .52 (98%) .37 (90%) .42 (100%) .56 (99%) .69 (100%) .47 (100%) .82 (100%) Motion .65 (100%) Nonlinear DCM: Attention to motion Stimuli + Task Previous bilinear DCM Büchel & Friston (1997) 250 radially moving dots (4.7 °/s) Friston et al. (2003) Conditions: F – fixation only A – motion + attention (“detect changes”) N – motion without attention S – stationary dots Friston et al. (2003):attention modulates backward connections IFG→SPC and SPC→V5. Q: Is a nonlinear mechanism (gain control) a better explanation of the data?
M3 attention M2 better than M1 PPC BF= 2966 stim V1 V5 M4 BF= 12 attention PPC M3 better than M2 stim V1 V5 BF= 23 M4 better than M3 attention M1 M2 modulation of back- ward or forward connection? PPC PPC attention stim V1 V5 stim V1 V5 additional driving effect of attention on PPC? bilinear or nonlinear modulation of forward connection? Stephan et al. 2008, NeuroImage
attention MAP = 1.25 0.10 PPC 0.26 0.39 1.25 0.26 V1 stim 0.13 V5 0.46 0.50 motion Stephan et al. 2008, NeuroImage
motion & attention static dots motion & no attention V1 V5 PPC observed fitted Stephan et al. 2008, NeuroImage
rivalry non-rivalry 0.02 -0.03 MFG 1.05 0.08 2.43 2.41 -0.31 0.51 0.30 PPA FFA -0.80 0.04 -0.03 0.02 0.06 faces houses faces houses Nonlinear DCM: Binocular rivalry Stephan et al. 2008, NeuroImage
FFA PPA MFG BR nBR time (s) Stephan et al. 2008, NeuroImage
Overview • Bayesian model selection (BMS) • Nonlinear DCM for fMRI • Timing errors & sampling accuracy • Integrating tractography and DCM • DCMs for electrophysiological data
Timing problems at long TRs/TAs • Two potential timing problems in DCM: • wrong timing of inputs • temporal shift between regional time series because of multi-slice acquisition 2 slice acquisition 1 visualinput • DCM is robust against timing errors up to approx. ± 1 s • compensatory changes of σ and θh • Possible corrections: • slice-timing in SPM (not for long TAs) • restriction of the model to neighbouring regions • in both cases: adjust temporal reference bin in SPM defaults (defaults.stats.fmri.t0) • Best solution: Slice-specific sampling within DCM
Slice timing in DCM: three-level model sampled BOLD response 3rd level 2nd level BOLD response neuronal response 1st level x = neuronal states u = inputs xh = hemodynamic states v = BOLD responses n, h = neuronal and hemodynamic parameters T = sampling time points Kiebel et al. 2007, NeuroImage
Slice timing in DCM: an example 3 TR 1 TR 2 TR 4 TR 5 TR Default sampling t 3 TR 1 TR 2 TR 4 TR 5 TR Slice-specific sampling t Kiebel et al. 2007, NeuroImage
Overview • Bayesian model selection (BMS) • Nonlinear DCM for fMRI • Timing errors & sampling accuracy • Integrating tractography and DCM • DCMs for electrophysiological data
Diffusion-weighted imaging Parker & Alexander, 2005, Phil. Trans. B
Probabilistic tractography: Kaden et al. 2007, NeuroImage • computes local fibre orientation density by spherical deconvolution of the diffusion-weighted signal • estimates the spatial probability distribution of connectivity from given seed regions • anatomical connectivity = proportion of fibre pathways originating in a specific source region that intersect a target region • If the area or volume of the source region approaches a point, this measure reduces to method by Behrens et al. (2003)
Integration of tractography and DCM R1 R2 low probability of anatomical connection small prior variance of effective connectivity parameter R1 R2 high probability of anatomical connection large prior variance of effective connectivity parameter Stephan, Tittgemeyer, Knoesche, Moran, Friston, in revision
probabilistic tractography FG right LG right anatomical connectivity connection-specific priors for coupling parameters LG left LG (x1) FG (x4) LG (x2) FG (x3) FG left LD|LVF LD LD DCM structure LD|RVF BVF stim. RVF stim. LVF stim.
Overview • Bayesian model selection (BMS) • Nonlinear DCM for fMRI • Timing errors & sampling accuracy • Integrating tractography and DCM • DCMs for electrophysiological data
DCM: generative model for fMRI and ERPs Hemodynamicforward model:neural activityBOLD (nonlinear) Electric/magnetic forward model:neural activityEEGMEG LFP (linear) Neural state equation: fMRI ERPs 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
DCMs for M/EEG and LFPs • can be fitted both to frequency spectra and ERPs • models different neuronal cell types, different synaptic types (and their plasticity) and spike-frequency adaptation (SFA) • ongoing model validation by LFP recordings in rats, combined with pharmacological manipulations standards deviants A1 A2 Example of single-neuron SFA Tombaugh et al. 2005, J.Neurosci.
Neural mass model of a cortical macrocolumn E x t r i n s i c i n p u t s Excitatory Interneurons He, e mean firing rate mean postsynaptic potential (PSP) 1 2 Pyramidal Cells He, e MEG/EEG signal 3 4 mean PSP mean firing rate Inhibitory Interneurons Hi, e Excitatory connection Inhibitory connection • te, ti : synaptic time constant (excitatory and inhibitory) • He, Hi: synaptic efficacy (excitatory and inhibitory) • g1,…,g4: intrinsic connection strengths • propagation delays Parameters: Jansen & Rit (1995) Biol. Cybern. David et al. (2003) NeuroImage
g 5 g g g g 4 4 3 3 = x x & 1 4 = k g - + - k - k 2 x H ( s ( x a ) u ) 2 x x & 4 e e 1 9 e 4 e 1 g g g g 1 1 2 2 Intrinsic connections Synaptic ‘alpha’ kernel Inhibitory cells in agranular layers Excitatory spiny cells in granular layers Excitatory spiny cells in granular layers Exogenous input u Sigmoid function Excitatory pyramidal cells in agranular layers Extrinsic Connections: Forward Backward Lateral David et al. 2006, NeuroImage Kiebel et al. 2007, NeuroImage Moran et al. 2009, NeuroImage
Electromagnetic forward model for M/EEG Forward model: lead field & gain matrix Depolarisation of pyramidal cells Scalp data Forward model Kiebel et al. 2006, NeuroImage
DCM for steady-state responses • models the cross-spectral density of recorded data • feature extraction by means of p-order VAR model • spectral form of neuronal innovations (i.e. baseline cortical activity) are estimated using a mixture of white and pink (1/f) components • assumes quasi-stationary responses (i.e. changes in neuronal states are approximated by small perturbations around some fixed point) 10 Frequency (Hz) 20 30 Time (s) 0 10 Moran et al. 2009, NeuroImage
Validation study using microdialysis (in collaboration with Conway Inst., UC Dublin) • two groups of rats with different rearing conditions • LFP recordings and microdialysis measurements (Glu & GABA) from mPFC Moran et al. 2008, NeuroImage
Experimental data FFT 10 mins time series: one area (mPFC) blue: control animals red: isolated animals * p<0.05, Bonferroni-corrected Moran et al. 2008, NeuroImage
Predictions about expected parameter estimates from the microdialysis measurements upregulation of AMPA receptors amplitude of synaptic kernels ( He) • SFA (2) chronic reduction in extracellular glutamate levels EPSPs activation of voltage-sensitive Ca2+ channels → intracellular Ca2+→ Ca-dependent K+ currents → IAHP sensitisation of postsynaptic mechanisms Van den Pool et al. 1996, Neuroscience Sanchez-Vives et al. 2000, J. Neurosci.