Epilepsy as a dynamic disease: Musings by a clinical computationalist John Milton, MD, PhD William R. Kenan, Jr. Chair Computational Neuroscience The Claremont Colleges
Computational neuroscience?
Variables as a function of time
Differential equations = hypothesis = “Prediction”
Variables versus parameters Variable: Anything that can be measured Parameter: A variable which in comparison to other variables changes so slowly that it can be regarded to be constant.
Scientific Method Math/computer modeling Make better predictions Make better comparisons between observation and prediction In other words, essential scientific tools to enable science to “mature”
Inputs and outputs Measure outputs in response to inputs to figure out “what is inside the black box”
Linear black boxes
Neurons behave both as linear and nonlinear black boxes Linear aspects Graded potentials at axonal hillock sum linearly Nonlinear aspects Action potential Problem Cannot solve nonlinear problem with paper and pencil Qualitative methods
Qualitative theory of differential equations Consider system at equilibrium or steady state Assume for very small perturbations systems behaves linearly “If all you have is a hammer, then everything looks like a nail”
Qualitative theory: pictorial approach Potential, F(x), where
Potential surfaces and stability
Cubic nonlinearity: Bistability
Success story of computational neuroscience
Ionic pore behaves as RC circuit Membrane resistance Value intermediate between ionic solution and lipid bilayer Value was variable Membrane noise “shot noise”
Dynamics of RC circuit
Hodgkin-Huxley equations
HH equations (continued) “Linear” membrane hypothesis So equation looks like Problem: g is a variable not a parameter
Ion channel dynamics Hypothesis
HH equations Continuing in this way we obtain
Still too complicated: Fitzhugh-Nagumo equations
Graphical method: Nullcline V nullcline W nullcline
Neuron: Excitability
Neuron: Bistability
Neuron: Periodic spiking
Neuron: Starting & stopping oscillations
Dynamics and parameters Dynamics change as parameters change Not a continuous relationship Bifurcation: Abrupt qualitative change in dynamics as parameter passes through a bifurcation point
The challenge …..
A -> B -> C -> D -> ?
Is the anatomy important?
What should we be modeling?
Are differential equations appropriate? Physical Science Neurodynamics Neurons are “pulse-coupled” Such models meet requirement for low spiking frequency Models are not based on differential equations but instead focus on spike timing
Fundamental problem Models Measurements
Need for interdisciplinary teams Questions like these can only be answered using scientific method Epilepsy physicians are the only investigators who legally can investigate the brain of patient’s with epilepsy