Compartmental neuron models

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Compartmental modelling of dendrites deals with

conductance and current but now it has been understood that they may have active Voltage-gated ion channels, which influences the firing properties of the neuron and also the response of neuron to synaptic inputs.[1]
Many mathematical models have been developed to understand the electric behavior of the dendrites. Dendrites tend to be very branchy and complex, so the compartmental approach to understand the electrical behavior of the dendrites makes it very useful. [1][2]

Introduction

  • Compartmental modelling is a very natural way of modelling dynamical systems that have certain inherent properties with conservation principles. The compartmental modelling is an elegant way, a state space formulation to elegantly capture the dynamical systems that are governed by the conservation laws. Whether it is the conservation of mass, energy, fluid flow or information flow. Basically, they are models whose
    macroscopic view we see that these follow some universal laws. In the same way brain has numerous interconnections, which is almost impossible to write a differential equation for. (These words were said in an interview by Dr. Wassim Haddad
    )
  • General observations about how the brain functions can be made by looking at the first and second
    neurons have to somehow behave like the chemical reaction system, so, it has to somehow obey the chemical thermodynamic laws. This approach may lead to more generalized model of brain. (These words were said in an interview by Dr. Wassim Haddad
    )

Multiple compartments

a) Branched dendrites viewed as cylinders for modelling. b) Simple model with three compartments
  • Complicated dendritic structures can be treated as multiple compartments interconnected. The dendrites are divided into small compartments and they are linked together as shown in the figure.[1]
  • It is assumed that the compartment is isopotential and spatially uniform in its properties. Membrane non-uniformity such as diameter changes, and voltage differences are occurred in between the compartments but not inside them.[1]
  • An example of a simple two-compartment model:
Consider a two-compartmental model with the compartments viewed as isopotential cylinders with radius and length .
is the membrane potential of ith compartment.
is the specific membrane capacitance.
is the specific membrane resistivity.
The total electrode current, assuming that the compartment has it, is given by .
The longitudinal resistance is given by .
Now according to the balance that should exist for each compartment, we can say
.....eq(1)
where and are the capacitive and ionic currents per unit area of ith compartment membrane. i.e. they can be given by
and .....eq(2)
If we assume the resting potential is 0. Then to compute , we need total axial resistance. As the compartments are simply cylinders we can say
.....eq(3)
Using ohms law we can express current from ith to jth compartment as
and .....eq(4)
The coupling terms and are obtained by inverting eq(3) and dividing by surface area of interest.
So we get
and
Finally,
is the surface area of the compartment i.
If we put all these together we get
.....eq(5)
If we use and then eq(5) will become
.....eq(6)
Now if we inject current in cell 1 only and each cylinder is identical then
Without loss in generality we can define
After some algebra we can show that
also
i.e. the input resistance decreases. For increment in the potential, coupled system current should be greater than that is required for uncoupled system. This is because the second compartment drains some current.
Now, we can get a general compartmental model for a treelike structure and the equations are
[1]

Increased computational accuracy in multi-compartmental cable models

  • Input at the center

Each dendritic section is subdivided into segments, which are typically seen as uniform circular cylinders or tapered circular cylinders. In the traditional compartmental model, point process location is determined only to an accuracy of half segment length. This will make the model solution particularly sensitive to segment boundaries. The accuracy of the traditional approach for this reason is O(1/n) when a point current and synaptic input is present. Usually the trans-membrane current where the membrane potential is known is represented in the model at points, or nodes and is assumed to be at the center. The new approach partitions the effect of the input by distributing it to the boundaries of the segment. Hence any input is partitioned between the nodes at the proximal and distal boundaries of the segment. Therefore, this procedure makes sure that the solution obtained is not sensitive to small changes in location of these boundaries because it affects how the input is partitioned between the nodes. When these compartments are connected with continuous potentials and conservation of current at segment boundaries then a new compartmental model of a new mathematical form is obtained. This new approach also provides a model identical to the traditional model but an order more accurate. This model increases the accuracy and precision by an order of magnitude than that is achieved by point process input.[2]

Cable theory

Dendrites and axons are considered to be continuous (cable-like), rather than series of compartments.[1]

Some applications

Information processing

Midbrain dopaminergic neuron

Mode locking

Compartmental neural simulations with spatial adaptivity

  • The computational cost of the method scales not with the physical size of the system being simulated but with the amount of activity present in the simulation. Spatial adaptivity for certain problems reduces up to 80%.[6]

Action potential (AP) initiation site

  • Establishing a unique site for AP initiation at the axon initial segment is no longer accepted. The APs can be initiated and conducted by different sub-regions of the neuron morphology, which widened the capabilities of individual neurons in computation.[7]
  • Findings from a study of the Action Potential Initiation Site Along the Axosomatodendritic Axis of Neurons Using Compartmental Models:
    • Dendritic APs are initiated more effectively by synchronous spatially clustered inputs than equivalent disperse inputs.[7]
    • The initiation site can also be determined by the average electrical distance from the dendritic input to the axon trigger zone, but it may be strongly modulated by the relative excitability of the two trigger zones and a number of factors.[7]

A finite-state automaton model

  • Multi-neuron simulations with
    finite state automaton model is capable of modelling the most important characteristics of neural membranes.[8]

Constraining compartmental models

Multi-compartmental model of a CA1 pyramidal cell

  • To study changes in hippocampal excitability that result from aging-induced alterations in calcium-dependent membrane mechanisms, the multi-compartmental model of CA1 pyramidal cell can be used. We can model the aging-induced alterations in CA1 excitability can be with simple coupling mechanisms that selectively link specific types of calcium channels to specific calcium-dependent potassium channels.[11]

Electrical compartmentalization

  • Spine Neck Plasticity Controls Postsynaptic Calcium Signals through Electrical Compartmentalization. The spine neck plasticity through a process of electrical compartmentalization can dynamically regulate Calcium influx into spines (a key trigger for synaptic plasticity).[12]

Robust coding in motion-sensitive neurons

  • Different receptive fields in axons and dendrites underlie robust coding in motion-sensitive neurons.[13]

Conductance-based neuron models

  • The capabilities and limitations of conductance-based compartmental neuron models with reduced branched or unbranched morphologies and active
    dendrites.[14]

See also

References

  1. ^ .
  2. ^ a b Lindsay, A. E., Lindsay, K. A., & Rosenberg, J. R. (2005). Increased computational accuracy in multi-compartmental cable models by a novel approach for precise point process localization. Journal of Computational Neuroscience, 19(1), 21–38.
  3. ^ a b c d e f g h Poirazi, P. (2009). Information Processing in Single Cells and Small Networks: Insights from Compartmental Models. In G. Maroulis & T. E. Simos (Eds.), Computational Methods in Science and Engineering, Vol 1 (Vol. 1108, pp. 158–167).
  4. ^ a b c d Kuznetsova, A. Y., Huertas, M. A., Kuznetsov, A. S., Paladini, C. A., & Canavier, C. C. (2010). Regulation of firing frequency in a computational model of a midbrain dopaminergic neuron. Journal of Computational Neuroscience, 28(3), 389–403.
  5. ^ a b c d e Svensson, C. M., & Coombes, S. (2009). MODE LOCKING IN A SPATIALLY EXTENDED NEURON MODEL: ACTIVE SOMA AND COMPARTMENTAL TREE. International Journal of Bifurcation and Chaos, 19(8), 2597–2607.
  6. ^ Rempe, M. J., Spruston, N., Kath, W. L., & Chopp, D. L. (2008). Compartmental neural simulations with spatial adaptivity. Journal of Computational Neuroscience, 25(3), 465–480.
  7. ^ a b c Ibarz, J. M., & Herreras, O. (2003). A study of the action potential initiation site along the axosomatodendritic axis of neurons using compartmental models. In J. Mira & J. R. Alvarez (Eds.), Computational Methods in Neural Modeling, Pt 1 (Vol. 2686, pp. 9–15).
  8. ^ Schilstra, M., Rust, A., Adams, R., & Bolouri, H. (2002). A finite state automaton model for multi-neuron simulations. Neurocomputing, 44, 1141–1148.
  9. ^ Gold, C., Henze, D. A., & Koch, C. (2007). Using extracellular action potential recordings to constrain compartmental models. Journal of Computational Neuroscience, 23(1), 39–58.
  10. ^ Keren, N., Peled, N., & Korngreen, A. (2005). Constraining compartmental models using multiple voltage recordings and genetic algorithms. Journal of Neurophysiology, 94(6), 3730–3742.
  11. ^ Markaki, M., Orphanoudakis, S., & Poirazi, P. (2005). Modelling reduced excitability in aged CA1 neurons as a calcium-dependent process. Neurocomputing, 65, 305–314.
  12. ^ Grunditz, A., Holbro, N., Tian, L., Zuo, Y., & Oertner, T. G. (2008). Spine Neck Plasticity Controls Postsynaptic Calcium Signals through Electrical Compartmentalization. Journal of Neuroscience, 28(50), 13457–13466.
  13. ^ Elyada, Y. M., Haag, J., & Borst, A. (2009). Different receptive fields in axons and dendrites underlie robust coding in motion-sensitive neurons. Nature Neuroscience, 12(3), 327–332.
  14. ^ Hendrickson, E. B., Edgerton, J. R., & Jaeger, D. (2011). The capabilities and limitations of conductance-based compartmental neuron models with reduced branched or unbranched morphologies and active dendrites. Journal of Computational Neuroscience, 30(2), 301–321.

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