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{{short description|Statistical modeling framework}}
'''Dynamic causal modeling''' ('''DCM''') is a framework for specifying models, fitting them to data and comparing their evidence using [[Bayes factor|Bayesian model comparison]]. It uses nonlinear [[State space|state-space]] models in continuous time, specified using [[Stochastic differential equation|stochastic]] or [[ordinary differential equation]]s. DCM was initially developed for testing hypotheses about [[Dynamical system|neural dynamics]].<ref name="Friston 2003">{{Cite journal|last1=Friston|first1=K.J.|last2=Harrison|first2=L.|last3=Penny|first3=W.|date=August 2003|title=Dynamic causal modelling|journal=NeuroImage|volume=19|issue=4|pages=1273–1302|doi=10.1016/s1053-8119(03)00202-7|pmid=12948688|s2cid=2176588|issn=1053-8119}}</ref> In this setting, differential equations describe the interaction of neural populations, which directly or indirectly give rise to functional neuroimaging data e.g., [[functional magnetic resonance imaging]] (fMRI), [[magnetoencephalography]] (MEG) or [[electroencephalography]] (EEG). Parameters in these models quantify the directed influences or effective connectivity among neuronal populations, which are estimated from the data using [[Bayesian inference|Bayesian]] statistical methods.
== Procedure ==
DCM is typically used to estimate the coupling among brain regions and the changes in coupling due to experimental changes (e.g., time or context).
# Experimental design. Specific hypotheses are formulated and
#Data preparation. The acquired data are pre-processed (e.g., to select relevant data features and remove confounds).
# Model specification. One or more forward models (DCMs) are specified for each
#Model estimation. The model(s) are fitted to the data to determine their evidence and parameters.
# Model comparison.
The key
== Experimental design ==
Functional neuroimaging experiments are typically either task-based or examine brain activity at rest ([[Resting state fMRI|resting state]]). In task-based experiments, brain responses are evoked by known deterministic inputs (experimentally controlled stimuli)
Resting state experiments have no experimental manipulations within the period of the neuroimaging recording. Instead,
== Model specification ==
All models in DCM have the following basic form:
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\end{align}</math>
The first
[[File:DCM for fMRI.svg|alt=DCM for fMRI neural circuit|thumb|The neural model in DCM for fMRI. z1 and z2 are the mean levels of activity in each region. Parameters A are the effective connectivity, B is the modulation of connectivity by a specific experimental condition and C is the driving input.]]
The neural model in DCM for fMRI
[[File:DCM for ERP and CMC.svg|thumb|Models of the cortical column used in EEG/MEG/LFP analysis. Self-connections on each population are present but not shown for clarity. Left: DCM for ERP. Right: Canonical Microcircuit (CMC). 1=spiny stellate cells (layer IV), 2=inhibitory interneurons, 3=(deep) pyramidal cells and 4=superficial pyramidal cells.]]
==== EEG / MEG / LFP ====▼
DCM for EEG and MEG data use more biologically detailed neural models than fMRI, due to the higher temporal resolution of these measurement techniques. These can be classed into physiological models, which recapitulate neural circuitry, and phenomenological models, which focus on reproducing particular data features. The physiological models can be further subdivided into two classes. [http://www.scholarpedia.org/article/Conductance-based_models Conductance-based models] derive from the equivalent circuit representation of the cell membrane developed by Hodgkin and Huxley in the 1950s.<ref name="Hodgkin 1952">{{Cite journal|last1=Hodgkin|first1=A. L.|last2=Huxley|first2=A. F.|date=1952-04-28|title=The components of membrane conductance in the giant axon ofLoligo|journal=The Journal of Physiology|volume=116|issue=4|pages=473–496|doi=10.1113/jphysiol.1952.sp004718|pmid=14946714|issn=0022-3751|pmc=1392209}}</ref> Convolution models were introduced by [[Wilson–Cowan model|Wilson & Cowan]]<ref>{{Cite journal|author2-link=Jack D. Cowan|last1=Wilson|first1=H. R.|last2=Cowan|first2=J. D.|date=September 1973|title=A mathematical theory of the functional dynamics of cortical and thalamic nervous tissue|journal=Kybernetik|volume=13|issue=2|pages=55–80|doi=10.1007/bf00288786|pmid=4767470|s2cid=292546|issn=0340-1200}}</ref> and Freeman <ref>{{Cite book|date=1975|title=Mass Action in the Nervous System|doi=10.1016/c2009-0-03145-6|isbn=9780122671500|last1=Freeman|first1=Walter J}}</ref> in the 1970s and involve a convolution of pre-synaptic input by a synaptic kernel function. Some of the specific models used in DCM are as follows:
* Physiological models:
** Convolution models:
*** DCM for evoked responses (DCM for ERP)
*** DCM for LFP (Local Field Potentials)
*** Canonical Microcircuit (CMC)
***Neural Field Model (NFM).<ref>{{Cite journal|last1=Pinotsis|first1=D.A.|last2=Friston|first2=K.J.|date=March 2011|title=Neural fields, spectral responses and lateral connections|journal=NeuroImage|volume=55|issue=1|pages=39–48|doi=10.1016/j.neuroimage.2010.11.081|pmid=21138771|pmc=3049874|issn=1053-8119}}</ref> Extends the models above into the spatial ___domain, modelling continuous changes in current across the cortical sheet.
** Conductance models:
***Neural Mass Model (NMM) and Mean-field model (MFM).<ref>{{Cite journal|last1=Marreiros|first1=André C.|last2=Daunizeau|first2=Jean|last3=Kiebel|first3=Stefan J.|last4=Friston|first4=Karl J.|date=August 2008|title=Population dynamics: Variance and the sigmoid activation function|journal=NeuroImage|volume=42|issue=1|pages=147–157|doi=10.1016/j.neuroimage.2008.04.239|pmid=18547818|s2cid=13932515|issn=1053-8119}}</ref><ref>{{Cite journal|last1=Marreiros|first1=André C.|last2=Kiebel|first2=Stefan J.|last3=Daunizeau|first3=Jean|last4=Harrison|first4=Lee M.|last5=Friston|first5=Karl J.|date=February 2009|title=Population dynamics under the Laplace assumption|journal=NeuroImage|volume=44|issue=3|pages=701–714|doi=10.1016/j.neuroimage.2008.10.008|pmid=19013532|s2cid=12369912|issn=1053-8119}}</ref> These have the same arrangement of neural populations as DCM for ERP, above, but are based on the [[Morris–Lecar model|Morris-Lecar model]] of the barnacle muscle fibre,<ref>{{Cite journal|last1=Morris|first1=C.|last2=Lecar|first2=H.|date=July 1981|title=Voltage oscillations in the barnacle giant muscle fiber|journal=Biophysical Journal|volume=35|issue=1|pages=193–213|doi=10.1016/s0006-3495(81)84782-0|pmid=7260316|pmc=1327511|bibcode=1981BpJ....35..193M|issn=0006-3495}}</ref> which in turn derives from the [[Hodgkin–Huxley model|Hodgin and Huxley]] model of the giant squid axon.<ref name="Hodgkin 1952" /> They enable inference about ligand-gated excitatory (Na+) and inhibitory (Cl-) ion flow, mediated through fast glutamatergic and GABAergic receptors. Whereas DCM for fMRI and the convolution models represent the activity of each neural population by a single number - its mean activity - the conductance models include the full density (probability distribution) of activity within the population. The 'mean-field assumption' used in the MFM version of the model assumes the density of one population's activity depends only on the mean of another. A subsequent extension added voltage-gated NMDA ion channels.<ref>{{Cite journal|last1=Moran|first1=Rosalyn J.|author1-link=Rosalyn Moran|last2=Stephan|first2=Klaas E.|last3=Dolan|first3=Raymond J.|last4=Friston|first4=Karl J.|date=April 2011|title=Consistent spectral predictors for dynamic causal models of steady-state responses|journal=NeuroImage|volume=55|issue=4|pages=1694–1708|doi=10.1016/j.neuroimage.2011.01.012|issn=1053-8119|pmc=3093618|pmid=21238593}}</ref>
****
* Phenomenological models:
**DCM for phase coupling.<ref>{{Cite journal|last1=Penny|first1=W.D.|last2=Litvak|first2=V.|last3=Fuentemilla|first3=L.|last4=Duzel|first4=E.|last5=Friston|first5=K.|date=September 2009|title=Dynamic Causal Models for phase coupling|journal=Journal of Neuroscience Methods|volume=183|issue=1|pages=19–30|doi=10.1016/j.jneumeth.2009.06.029|pmid=19576931|pmc=2751835|issn=0165-0270}}</ref> Models the interaction of brain regions as Weakly Coupled Oscillators (WCOs), in which the rate of change of phase of one oscillator is related to the phase differences between itself and other oscillators.
== Model estimation ==
Model inversion or estimation is implemented in DCM using
Model estimation also provides estimates of the parameters <math>p(\theta|y)</math>, for example == Model comparison ==
Neuroimaging studies typically investigate effects
# Specify and estimate multiple DCMs per subject, where each DCM (or set of DCMs) embodies a hypothesis.
# Perform
#
# Specify a single 'full' DCM per subject, which contains all
# Specify a Bayesian [[General linear model|General Linear Model
# Test hypotheses by comparing the full group-level model to reduced group-level models where certain combinations of connections have been switched off.
== Validation ==
Developments in DCM have been validated using
* Face validity establishes whether the parameters of a model can be recovered from simulated data. This
* Construct validity assesses consistency with other analytical methods.
* Predictive validity assesses the ability to predict known or expected effects. This has included testing against iEEG / EEG / stimulation <ref>{{Cite journal|
== Limitations / drawbacks ==
DCM is a hypothesis-driven approach for investigating the interactions among pre-defined regions of interest. It is not ideally suited for exploratory analyses
The variational Bayesian methods used for model estimation
== Software implementations ==
DCM is implemented in the [[Statistical parametric mapping|Statistical Parametric Mapping]] software package,
== References ==
{{Reflist}}
== Further reading ==
{{Scholia}}
* [http://www.scholarpedia.org/article/Dynamic_causal_modeling Dynamic Causal Modelling on Scholarpedia]
* Understanding DCM: ten simple rules for the clinician<ref>{{Cite journal|last1=Kahan|first1=Joshua|last2=Foltynie|first2=Tom|date=December 2013|title=Understanding DCM: Ten simple rules for the clinician|journal=NeuroImage|volume=83|pages=542–549|doi=10.1016/j.neuroimage.2013.07.008|pmid=23850463|issn=1053-8119|doi-access=free}}</ref>
* Neural masses and fields in dynamic causal modeling<ref>{{Cite journal|last1=Moran|first1=Rosalyn|author1-link=Rosalyn Moran|last2=Pinotsis|first2=Dimitris A.|last3=Friston|first3=Karl|date=2013|title=Neural masses and fields in dynamic causal modeling|journal=Frontiers in Computational Neuroscience|volume=7|pages=57|doi=10.3389/fncom.2013.00057|pmid=23755005|pmc=3664834|issn=1662-5188|doi-access=free}}</ref>
[[Category:Neuroimaging]]
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