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LECTURE 2: NEURONS and SYNAPSES 1) Neuronal Electrical Behavior The membrane The membrane separates the inside of the cell from the outside. The membrane contains many conducting channels which each have a given permeability to certain ions. In addition to these conductive channels, the lipid layer of the membrane separates internal and external conducting solutions by an extremely thin insulating layer. Such a narrow gap between two conductors forms a significant electrical capacitor. The membrane potential can be measured by inserting a microelectrode into the inside of a cell’s membrane and comparing the voltage at the outside to that at the inside of the neuron. This voltage, typically several tens of mV’s, is called the membrane potential. The inside of the cell is negative with respect to the outside. The difference in voltage between the inside and the outside of the cell is due to a difference in ion concentrations between the inside and the outside of the cell. This difference can exist because the membrane is not completely permeable to these ions. Outside Inside Na+ Na+ K+ K+ Capacitance is a measure of how much charge needs to be transferred from one conductor (one side of the membrane) to another to set up a given potential difference. Capacity (C) is defined by charge/voltage, its unit is a the farad (F). A 1 F capacitor will be charged to 1 Volt when +1.0 C of charge is one side and –1.0 C on the other side. Electrically, the membrane is often represented as a resistance (representing the conductivity to ions) and a capacity (representing the capacity to separate charges) in parallel. Inside Capacity (C) Resistance (R) or Conductance (G) Em Outside In general, capacitance slows down the voltage response to any given current by a characteristic time t that depends on the product of RC. Example: RC lowpass filter R C Vin Vout Resistance Capacitance Voltage Vin Vout O.63 V in τ=RC V out = Vin (1-e- t/RC) when Vin > 0 V out = Vin e-t/RC when Vin = 0 time Example: Current injection into a simplified membrane Inside Vm Outside Resistance Capacitance Current Injection Membrane potential From: Book of Genesis, James E. Bower and David Beeman (eds), Springer Verlag.(page 88) Nernst Potential Two forces act on the ions at both sides of the membrane: 1) an electrical force due to the difference in electrical potential between the inside and the outside of the cell attracts positive ions to the more negative inside of the cell and 2) a force resulting from the concentration difference between the ions on the outside and on the inside tends to equilibrate the ion concentrations (for example K+ ions would move from the inside of the cell to the outside if they could freely pass the membrane). Outside Inside [Ion]+ Electrical attraction Low High [Ion]+ Concentration difference When a neuron is “at rest”, it has found an equilibrium point defined by the permeability of the various ions and their concentration differences. This equilibrium is often called the resting membrane potential. However, this equilibrium point is not stable. This means that if a perturbation occurs (for example a current injection, a change in voltage or a change in permeability), the concentrations differences and the voltage across the membrane will change. Imagine that suddenly the permeability for a given ion, for example K+, is infinite. Then K+ ions will want to leave the cell’s inside because of the concentration difference, but they will also want to rush into the cell because of the voltage difference. All other parameters being constant, these two tendencies of K+ will equilibrate when the cell reaches a certain voltage called the “Nernst potential” (or reversal potential or also zero current potential). For each type of ion, the Nernst potential can be calculated. It’s value tells you towards which voltage the membrane will potential will move if suddenly the permeability of the membrane for a given ion is higher. If the Nernst potential for a given ion (for example K+) is more negative then the resting membrane potential, then the cell will hyperpolarize (become more negative) when the permeability to that ion increases. If the Nernst potential is less negative then the resting potential, then the cell will depolarize (become more positive). Example: The membrane potential of a frog satorious muscle fiber is held at various levels by two microelectrode voltage clamp. The motor nerve is stimulated by an electric schock (indicated by the arrow in the current record). About 1 ms later, the nerve action potential reaches the nerve terminal, releasing transmitter vesicles and opening postsynaptic endplate channels transiently. The endplate current reverses sign near 0mV. From Bertil Hille, Ionic Channels of Excitable Membranes, Sinauer Associates page 146. Electrically, the permeability can be modeled as a conductance, or inverse resistance. The conductance measures how permeable the membrane is to a given ion. The Nernst potential can be modeled as a “driving force”, or a battery. Remember that the Nernst potential is the voltage at which no more ions of a given kind would flow across the membrane; this means that of the membrane potential is equal to the Nernst potential, then even for an “infinite conductance” (no resistance), no more ions (current) will flow. Thus the term “driving force”, which is given by the difference between the Nernst potential and the membrane potential. Inside Capacity (C) Resistance (R) or Conductance (G) Em = -70 mV Battery ( Ek ) Ek Ik = g K (Em - Ek ) current through the conductance Outside Why is this important? Because the current that will flow when a conductance change occurs, depends, among other things, on the difference between the Nernst potential of the conductance and the membrane potential. Note that the current itself will change the membrane potential! All together: Outside Variable conductance gNA gK Rm ENA EK Em Cm Inside Most often, you will see a complicated looking differential equation describing the dynamical behavior of the circuit shown above: d C V dt m m = (E − V R m m ) + (E − V m) g + (E K K Na − V Na) g Na m This equation describes how the membrane potential of the modeled neuron (or part of a neuron) changes when conducatnces change. Usually, computer algorithms are used to solve such equations. 2) Modeling synapses The variable conductances can change as a function of a number of parameters, for example voltage or the presence of a neurotransmitter. The representation of voltage dependent conductances often necessitates a number of inter-dependent differential equations. [A differential equation expresses how one variable changes as a function of the changes of one or more other variables. An example is the expression of speed as a change of space occurring during a change of time. Simple differential equations like those for the RC low pass filter can be solved analytically, but often numerical solutions have to be calculated on a computer. ] Some conductance changes occur at synapses when an action potential on a presynaptic terminal leads to the release of neurotransmitter, changing the conductance of a particular ion channel, allowing ions to move across the membrane more freely. The change in conductance leads to a current entering or leaving the cell (depending on the Nernst potential of the ion under consideration), which in turn leads to a change in voltage. Remember that the change in voltage is delayed with respect to the change in current because of the membrane capacitance! In the case of a fast synapse, the release of neurotransmitter from the presynaptic terminal directly results in the opening of chemically gated ion channels at the postsynaptic membrane. The input produced is primarily expressed as a local conductance change. Specific ions can flow through these channels and produce what is called the postsynaptic potential (PSP). From: From: Book of Genesis, James E. Bower and David Beeman (eds), Springer Verlag.(page 94) [Note that although both the synaptic input and the electrode which injects current result in the flow of ions across the membrane, the two types of inputs differ in a significant way. While the electrode across the membrane does not change the properties of the membrane, the synaptic input changes the characteristics of the postsynpatic cell: it opens new channels there. ] If we were to consider that the release of neurotransmitter at the presynaptic terminal produced a synaptic conductance change which is a rectangular pulse, the observed phenomena are close to those described above for a current injection. The conductance change is however better described by a smooth function rather than a rectangular pulse. A fairly good approximation may be obtained b y an analytical function called the alpha function, which is a special case of a double exponential function. g syn ( t) = g t max (1− t / tp ) t e p is called the alpha function. This function increases rapidly to a maximum of gmax at t = tp. Following its peak, g syn (t) decreases more slowly to zero. A slow synapses will be modeled by a large t p , a strong synapse by a large g max. The dual exponential equation is a more general form often used for the description of synapses: g syn = Ag (e τ −τ max 1 τ1− −t / e τ 2) for −t / τ >τ 1 1 ; where A is a normalization factor chosen so that g syn reaches a 2 maximum of g max. 3) Space Thus far, we have considered local processes as isolated temporal events. However, a neuron extends in space, and the electrical signals produced by synaptic interactions or current injection have to travel along the dendrites to the soma and to the axon. How the electrical signals change across a dendrite considered passive (no voltage dependent conductances) can be described by means of a calculation first developed by engineers: cable theory. Briefly, the flow of the electrical signal along the dendrite has behaviors similar to that across the membrane described above, and can be described by means of a differential equation. To this purpose, the dendrite is decomposed into a large number of small cylinders which are all attached to each other via resistors. A current injection then results in currents flowing across the membrane as well as currents flowing along the membrane. Both decay in time, and the current flowing along the membrane also decays with distance. From: From: From: Book of Genesis, James E. Bower and David Beeman (eds), Springer Verlag.(page 70) Each compartment is modeled by an equation similar to those described above, but in addition, terms are added that take into account the currents flowing in and out of the compartment via neighboring compartments: Outside Variable conductance gN A gK Rm EN A EK Em Cm Ra Ra’ Vm Vm’’ Vm ’ Inside The equation describing the dynamical behavior of this circuit becomes: C dV m m dt = (E − V R m m m ) + ( E −V m ) g + ( E K K Na − V Na ) g Na + (V '−V R' m a m ) + (V m ' '−V m) R a Time and space are neglected in many neural network models! Synaptic integration, spatial integration in the dendrites, refractory periods are only a few of the many complicated things that neurons do that modelers often neglect! When dendrites are modeled in detail, the location and temporal interactions of synaptic events can play an important role in the resulting neural activity. Example (from Anderson, page 43-45) : The electrical activation seen at the soma depends on the location of the conducatnces on the dendrite. The signal decays both in space and in time. The summation of several synaptic events as seen at the some depends on the order in which these events occur: 3 The Single Neuron 3.1 The neuron as an electrical device • Potential difference across membrane due to differences in ion concentrations between the inside and outside of the cell • • • • • [SH88 Fig. 4.3 pg 67] Membrane has a different level of permeability to different ions Changes in permeability lead to the flow of ions across the membrane with a resultant change in the voltage (membrane potential) Action potential is a sharp deviation from rest caused by a rapid change in permeability Main ions are sodium (Na +), potassium (K+), calcium (Ca 2+) and chloride (Cl−) Nernst equation describes equilibrium (reversal) potential for a single ionic species: [X+]o RT EX = ln zF • • [X+]i Different ions have different reversal potentials e.g. ENa = 55mV, EK = −75mV Individual ionic currents o permeability ≡ electrical conductance IX = (Vm−EX)GX • • Different ion channels for different ions Membrane potential due to the combined permeability of different ionic species is given by the Goldman-Hodgkin-Katz equation: RT Vm = zF • Ko +[p Na/p K ]Na o +[p Cl /p K ]Cli ln Ki +[p Na/p K ]Na i +[p Cl /p K ]Clo Total membrane current is given by the sum of individual currents: Im = INa+IK +ICl • • Rest potential of cell due to combined current through different ion channels summing to zero o typically around -65mV A small patch of membrane can be described by an equivalent electrical circuit consisting of: o capacitance o batteries in series with conductances representing the different ion channels o biochemical pumps [SH88 Fig. 4.6 pg 71] 3.2 Electrical signalling • Electrical signals are changes in the membrane potential at specific points in the neuron • Such changes are due to the opening and closing of ion channels o the inputs from other neurons create synaptic potentials o the output from a neuron is called the action potential • [CS92 Fig. 2.19 pg 44] The action potential: o Signal from one neuron to another consisting of a sharp voltage wave 100mV in amplitude and 1-2msec in duration [BR92 Fig. 1.20 pg 25] Generated by a rapid opening and then inactivation and closing of voltage-dependent sodium channels which generate a depolarizing current, followed by the slower opening and closing of potassium channels which generate a repolorizing current o Initiated in axon hillock if membrane potential reaches a threshold value above rest due to excitatory input to the neuron § high density of sodium channels in axon hillock § threshold of around 20mV above rest is determined by voltage dependence of sodium channels o Travels along the axon to the synaptic terminals at velocities of from 1 (unmyelinated axon, continuous conduction) to 120m/sec (myelinated axon, saltatory conduction) o Complete output signal from a neuron generally consists of many action potentials, either in regular bursts or a steady frequency of single action potentials Excitatory inputs: o Excitatory response to a presynaptic action potential is an excitatory postsynaptic potential (EPSP) § generated by influx of sodium and/or calcium through ligand-gated ion channels at the synapse § reversal potentials of Na and Ca are well above rest, so an EPSP is a depolarizing response o Excitatory inputs increase the probability of a neuron firing an action potential o Excitatory synapses (connections) are on the dendrites o EPSPs propagate passively (like electricity down a wire) along the dendrites to the soma o Separate EPSPs sum together (possibly non-linearly) on the way to the soma and at the soma o If the EPSPs raise the membrane potential at the axon hillock (next to the soma) to above threshold an action potential is fired o May take 20 to 100 coincident EPSPs to fire an action potential Inhibitory inputs: o Inhibitory response to a presynaptic action potential is an inhibitory postsynaptic potential (IPSP) § generated by influx of potassium and/or chloride ions through ligand-gated ion channels at the synapse § reversal potentials of K and Cl are near or below rest, so an IPSP is mostly a conductance change, with little change in the membrane potential, but small hyperpolarizing responses may be seen o Inhibitory synapses (connections) may be on the dendrites, the soma or the axon o Inhibitory inputs decrease the probability of a neuron firing an action potential o IPSPs may increase, decrease or have no effect on the membrane potential, but will decrease the amplitude of a coincident EPSP o • • • The synapse: o Presynaptic action potential causes calcium entry in the presynaptic terminal o Calcium (in some way) causes vesicles filled with neurotransmitter to bind to the presynaptic membrane and release their transmitter into the synaptic cleft o Transmitter diffuses across the cleft and binds to receptors on the postsynaptic membrane o This causes, either directly (ionotropic) or indirectly (metabotropic), ion channels to open o The consequent flow of ions results in a voltage response (EPSP or IPSP) in the postsynaptic membrane [SH88 Fig. 6.14 pg 122 and BR92 pg 29] 3.3 Places to Start • Brodal (1992) The Central Nervous System, Chapt. 1: Cellular elements of nervous tissue and their functions • Shepherd (1994) Neurobiology, Chapters 3-7 • Levitan and Kaczmarek (1991) The Neuron: Cell and Molecular Biology, Oxford University Press