In
computational neuroscience
Computational neuroscience (also known as theoretical neuroscience or mathematical neuroscience) is a branch of neuroscience which employs mathematics, computer science, theoretical analysis and abstractions of the brain to understand th ...
, the Wilson–Cowan model describes the dynamics of interactions between populations of very simple excitatory and inhibitory model
neuron
A neuron (American English), neurone (British English), or nerve cell, is an membrane potential#Cell excitability, excitable cell (biology), cell that fires electric signals called action potentials across a neural network (biology), neural net ...
s. It was developed by
Hugh R. Wilson and
Jack D. Cowan and extensions of the model have been widely used in modeling neuronal populations.
The model is important historically because it uses phase plane methods and numerical solutions to describe the responses of neuronal populations to stimuli. Because the model neurons are simple, only elementary limit cycle behavior, i.e.
neural oscillations
Neural oscillations, or brainwaves, are rhythmic or repetitive patterns of neural activity in the central nervous system. Neural tissue can generate oscillatory activity in many ways, driven either by mechanisms within individual neurons or by ...
, and stimulus-dependent evoked responses are predicted. The key findings include the existence of multiple stable states, and hysteresis, in the population response.
Mathematical description
The Wilson–Cowan model considers a homogeneous population of interconnected neurons of excitatory and inhibitory subtypes. All cells receive the same number of excitatory and inhibitory afferents, that is, all cells receive the same average excitation, x(t). The target is to analyze the evolution in time of number of excitatory and inhibitory cells firing at time t,
and
respectively.
The equations that describes this evolution are the Wilson-Cowan model:
where:
*
and
are functions of sigmoid form that depends on the distribution of the trigger thresholds (see below)
*
is the stimulus decay function
*
and
are respectively the connectivity coefficient giving the average number of excitatory and inhibitory synapses per excitatory cell;
and
its counterparts for inhibitory cells
*
and
are the external input to the excitatory/inhibitory populations.
If
denotes a cell's
threshold potential
In electrophysiology, the threshold potential is the critical level to which a membrane potential must be depolarized to initiate an action potential. In neuroscience, threshold potentials are necessary to regulate and propagate signaling in both ...
and
is the distribution of thresholds in all cells, then the expected proportion of neurons receiving an excitation at or above threshold level per unit time is:
,
that is a function of
sigmoid
Sigmoid means resembling the lower-case Greek letter sigma (uppercase Σ, lowercase σ, lowercase in word-final position ς) or the Latin letter S. Specific uses include:
* Sigmoid function, a mathematical function
* Sigmoid colon, part of the l ...
form if
is unimodal.
If, instead of all cells receiving same excitatory inputs and different threshold, we consider that all cells have same threshold but different number of afferent synapses per cell, being
the distribution of the number of afferent synapses, a variant of function
must be used:
Derivation of the model
If we denote by
the refractory period after a trigger, the proportion of cells in refractory period is
and the proportion of sensitive (able to trigger) cells is
.
The average excitation level of an excitatory cell at time
is:
Thus, the number of cells that triggers at some time
is the number of cells not in refractory interval,
AND that have reached the excitatory level,
, obtaining in this way the product at right side of the first equation of the model (with the assumption of uncorrelated terms). Same rationale can be done for inhibitory cells, obtaining second equation.
Simplification of the model assuming time coarse graining
When time
coarse-grained
Granularity (also called graininess) is the degree to which a material or system is composed of distinction (philosophy), distinguishable pieces, granular material, "granules" or grain, "grains" (metaphorically).
It can either refer to the exten ...
modeling is assumed the model simplifies, being the new equations of the model: