Title: Mathematics of Neural Systems
1Mathematics of Neural Systems
- Guttmans Phase Locking, Biological Rhythms,
Neural Networks Model, MATLAB Simulator,
Intercellular Communication - (Synaptic Transmission)
2References
- Hoppensteadt and Peskin, Modeling and Simulation
in Medicine and the Life Sciences, 2nd Edition,
2002, Springer-Verlag New York, Inc., Chapter 6 - Keener and Sneyd, Mathematical Physiology,
Springer 1998 - Bio 301 Human Physiology Lecture Notes Neurons
and the Nervous System, www.biology.eku.edu/RITCHI
SO/301notes2.htm
3Neural Systems
- Commonly modeled with electrical analog
representations. - Possible uses for neural system include
- 1) prosthetics
- 2) neurological disease treatment
- 3) pain management
- 4) control systems applications
4Neural Systems
- Many differing models have been developed to
model the neural system. - A.L. Hodgkins (1948) application of a voltage
across a neural membrane yielded two
relationships - Class 1 Membrane voltage oscillates with
approximate constant amplitude, frequency
increases with increasing stimulus. - Class 2 Membrane voltage oscillates with a small
amplitude that increases with stimulus, frequency
remains approximately constant. - Both relationships occur in vivo
- Class 1 sensor neurons
- Class 2 motor neurons
5Neural Systems
- Neurons voltage-controlled oscillators.
- Hoppensteadt-Peskin model the neuron as a
voltage-controlled oscillator, an integrated
circuit. - H-P discuss two neural systems
- Thalamus ability to sort signals and relay
message to neocortex - Hippocampus creation of theta-rhythm patterns,
based on inputs from the medial septum and the
enthorhinal cortex.
6Considerations in Neuron Modeling
- Four neurophysiological considerations used in
neuron modeling - Frequency relations between inputs into a neuron
and its output - Inter-neuron communication is time dependent
- Inhibitory/Excitatory neuron connections
- Multiple time scale involvement in neuron firing
7Phase Locking
- Phase locking is observed in both physical and
biological systems. - Observed as lyre strings or approximately same
physical dimensions where heard to vibrate at the
same frequency. - Case of oscillatory signals of the form
- cos(?tf)
- where t time msecs
- ? frequency, signal period 2p/ ?
- f phase deviation
- This relationship is described as FM radio
transmission and is described in H-P pg. 196
8Phase Locking continued
- Phase locking roughly described as the ability to
achieve an output proportionally related to the
input. - Where output frequency response is a ratio of
the regular voltage oscillation frequency, ?, to
the stimuli frequency, µ. - Output frequency response ?/ µ
- 11 phase locking occurs when ?/ µ 1
9Biological Rhythms
- Biological clocks move rapidly during certain
parts of the day and slower at later times. - The biological clock can be represented by a wall
clock with closely spaced time intervals around
the edge of a clock during morning times and
farther time interval spacing during the
afternoon.
10Simple Clock Model
- Time minutes represented as radians around the
unit circle. - T ?t f
- Where T time
- t Greenwich mean time sec
- ? number of radians moved per second
- f longitude
- - Mathematical representation of a clock is
described by a differential equation - Simple clock model
- T ? (the rate of change of T is equal to ?)
11Clock Modulating
- T phase variable
- ? frequency
- Coordinates of the tips of the hand, on the clock
are given by - xRcos(?) yRsin(?)
- where R length of the hand
- Note Counterclockwise rotation of the hand
unless ?lt0.
?
12Clock Modulation
- Classic frictionless pendulum oscillations are
modeled by - ??2?0
- Solutions have the form ?Acos(?tf), where A and
f inititial condition constants - How is the harmonic oscillator related to the
simple clock? - Let ?Acos(?), where ? ?tf
- Then d?/dt ?
- Therefore, harmonic oscillator is related to a
simple clock by the rate change shown above,
provided that A?0.
13Clock Modulating
- Simple clock is driven by a motor, which moves
time at a constant rate. However, the human
biological clock doesnt behavior in this manner. - Natural clocks can become modulated by many
things, for example solar time perception through
sensors. - Represented by ??f(2pt/1440)
- Where, fmodulating external signal with
period2p - ttime minutes, 1440min/day
- f passes through a full cycle when t1440.
14Biological Clock Movement
- ??f(2pt/1440), describes an irregular movement
of the hand throughout the day. - Hand is accelerated when fgt0, decelerated when
flt0, due to time of the day or sunlight. - Recall that hand vector is represented by
(cos?,sin?). - Now ??tF(t)
- Where dF/dtf(2pt/1440)
- Gravity also contributes to the hand velocity as
when hand is traveling from top to bottom,
gravity contributes to a faster movement of the
hand, while the opposite is true when the hand is
traveling from bottom to top of the clock. - x??sin?
- Where ? measures time (?0 _at_ noon, ?p _at_ 6
oclock) - ?sin? is gravitys influence of the clock
hand - This is an example of feedback the rate which
the hand moves depends on its current position
15Simple Clock vs. Biological Clock
- Simple clock has three parts
- Oscillating system (energy source)
- Pendulum
- Spring
- Electrical circuit
- Trigger mechanism
- Connects the energy source to the output
- Clock face
- Presents the output of the oscillator
- Biological clock
- Energy source
- Nerve cells metabolism
- Trigger mechanism
- Controlled by ionic channels in cell membrane
- Cell membrane capable of handling oscillations.
- Output
- Cycle of nerve voltage
16Biological Clocks
- Time is not easily measured as the overall timing
of the clock differs depending on time of day,
light cycles and natural rhythms, known as
circadian rhythms which was first observed by
Aristotle. - Neurons are the timers in a biological clock.
- Biological clocks can modulate one another and
networks of neurons interact.
17Voltage-Controlled Oscillators (VCO)
- Recall feedback example described earlier where
the rate at which the hand moves depends on its
current position. - A phase-locked loop (PLL) model, where 11 phase
locking occurs when ?/ µ 1. - PLL model described as ??cos(?)
- Where ? VCOs center frequency
- cos(?) VCOs output
- ??cos(?) represents the canonical model for
Hodgkins Class 1 neurons.
18Excitatory and Inhibitory Relationships in Neural
Networks
- Two types of interrelationships between neurons
- Excitatory relationship
- N1 N2 , describes a network of two
neurons, neuron 1 (N1) having an excitatory
synapse impinging on neuron 2 (N2). - Where membrane potentials are modeled by cos?1
and cos?2, respectively. - ?1?cos?1, ?2 ?cos?2Acos(?1 f12)
- where Agt0, is the connection strength between N1
and N2. - f12 are time delays in the connection and those
due to external sources - Inhibitory relationship
- N1 -N2 , describes a network of two
neurons, neuron 1 (N1) having an inhibitory
synapse impinging on neuron 2 (N2). - Modeled as the excitatory except that Alt0.
- A network of M neurons is modeled as
- The factor Ck,j is the connection strength from
network element k to j, and fk,j is the phase
deviation due to the connection. These may be
constant or change with time. Ej describes an
external signal applied to the system.
19Thalamocortical Circuit
- Two interacting neurons, one inhibitory and the
other excitatory, in which one fires a rapid
burst of action potentials followed by a slower
pulse from the other is a common in the brain. - This phenomena takes place in two time scales.
- Sensory input to the brain is processed in the
thalamus, which sorts and routes signals for
further processing in the entorhinal cortex and
the hippocampus. - The parallel structure circuit formed between in
excitatory and inhibitory cells is called the
reticular complex. - Thalamic cells fire rapidly while the reticular
cells fire (relatively) slowly. (Figure 6.2 of
H-P text illustrate this interaction)
20Thalamocortical Circuit
- The thalamic cell (TC) interacts with the
reticular complex (RC) and eventually excites a
neocortical structure (NS). - The atoll model is used to model a single channel
from TC to NS - x5.0(1scosx-cosy) y0.04(1cosy10cosx)
- The ratio of time scales is 5/.04125, bursting
when sgt0.
21Thalamocortical System
- Multiple parallel structures is the TH thru NC
single line connection described previously. TH
send an excitatory output to the RC and receives
an inhibitory signal from the RC, which then
routes the signal to NC. - Parallel structures connected by RC units and all
parallel connections are inhibitory.
22Thelacortical System Network Model
- TH and RC cells
- xj5.0(1cosxj-cosyjsj(t))
- yj0.04(1cosyjtanh(2cosxj-10L(t)))
- NC projections
- Zj10(0.1coszj-cosyj)
- Where j0,,N and L accounts for the inhibition
between parallel structures, connected at the RC
cells. - Note a0.5(aa)
Where
23ThalamocorticalSingle Channel Model
- We can see the single channel from stimulus to TH
to RC to NC, described from the previous
equations. - As mentioned earlier, there are two time scales
involved in the interaction between excitatory
and inhibitory cells in the brain. - These differing time scales are due to the rapid
firing, of a burst of action potential, followed
by the firing of a slower burst from the other
cell. - This phenomenon is shown as
24ThalamocorticalSingle Channel Model (Atoll Model)
25Thelacortical System Network Model
- There exists a chosen ratio of time scales
between the network constants of 1001. - The cos-functions mimic neuron action potentials,
while the tanh-functions is scales the inputs to
the RC to lie on the interval -1,1. Where the
positive terms are excitatory and negative terms
are inhibitory. - This model has been simulated by H-P and is shown
in Figure 6.5 in the text. This simulation
illustrates how the dominant frequency input to
the TH is the one which eventually dominates NC
activity and essentially suppresses the other
signals.
26Simulation of the thalamocortical model
27Simulation of the thalamocortical model
- Thalamocortical model based on 15 channels
- What does this figure represent?
- Top 15 lines coszj(t)
- Middle 15 lines cosyj(t)
- Bottom 15 lines cosxj(t)
- Stimulation applied at t0, 500, 1000.
- The largest frequency stimulus allows message
propagation to the neocortex. - Illustrates how the channel with the largest
frequency input to the TH, eventually dominates
NC activity as discussed earlier.
28Hippocampus
- Responsible for possible roles in navigation and
memory. - Very complex brain structure.
- Hippocampus formation consists of a long axis,
with two smaller axis perpendicular to the
longer. Both smaller axis consists of three
regions, called the dentate gyrus. These are
known as the CA1 and CA3 field, both consisting
inhibitory and excitatory neurons. - Neurons operate with two frequencies
- Theta (?) frequency (5-12Hz)
- Gamma (G) frequency (40Hz)
29Hippocampus
- Two inputs to the Hippocampus
- Entorhinal Cortex (EC)
- Medial Septum (MS)
- Slices of the hippocampus have been shown to
contain oscillations, without input, and that
these oscillations operate in the G frequency
range. - H-P model the thin slice oscillator, consisting
of inhibitory and excitatory cells, as a phase
locked loop, with a chain of oscillations along
the hippocampus long axis. (See Figure 6.6)
30Hippocampus Oscillator Model
- Phases
- MS ?tfs
- EC ?tfc
- jth oscillator input phases
- ?s ?tf(N-j)? f
- ?c ?t?j? f
- Where ? ftime lag from signal propagation from
segment to segment.
31Hippocampus Model Pattern Analysis
- Let ? segment oscillator phase,?s Input S
(Is) phase, ?C Input C (Ic) phase - Modeled as (T5Hz)
- Substituting for ?c and ?s yields
Substituting F?-Tt-f yields
32Hippocampus Model Pattern Analysis
- Does this equation have a steady state (FF)?
If
Therefore, the oscillator will exhibit a theta
rhythm with the three parameters K, G-T, and ?
being the conditions for stability.
33Hippocampus Spatiotemporal Pattern of Neural
Activity
- Taking a look at the actual pattern observed
along the long axis of the model for 32 segments,
we can see the output frequency vs. phase
deviation between their input signals.
34Hippocampus Spatiotemporal Pattern of Neural
Activity
35Intracellular Communication
- Many differing models of intracellular
communication. - Some important facts
- Occurs at synapse junction
- Synapse located between axon of one cell and
closely spaced, connected, dendrite of a second
cell.
36Synapses
- Two types of synapses
- Electrical Synapse Typically muscle or cardiac
cells, connected through a gap junction in the
cell membrane, that form a relatively
nonselective, low resistance pore in which
electrical current or chemical species flow. - Chemical Synapse Neurons typically communicate
by the release of a chemical from one cell to
another.
37Synapse
38Chemical Synapse
- We will deal primarily with the chemical synapse
type as we are interested in neural intercellular
communication. - As mentioned earlier, the synapse is located at
the base of an axon of one neuron and the
dendrite, also known as the postsynaptic cell or
membrane, of the other neuron.
39Chemical Neuron
- The very small region, 500 angstroms wide,
separating the two cells is called the synaptic
cleft. - As an action potential reaches the nerve
terminal, Ca2, voltage-gated, channels are
opened, allowing a sudden influx in the terminal. - This influx of Ca2 allows a neurotransmitter to
be released into the synaptic cleft, by
diffusion, which then binds to the postsynaptic
cell at receptors.
40Chemical Synapses
- The binding of the neurotransmitter causes the
postsynaptic membrane potential to change. - The neurotransmitter is then removed from the
synaptic cleft by diffusion and hydrolysis.
41Synapse
42Chemical Synapses
- Due to close packaging of many neuron to neuron
connections, many earlier experiments carried out
on neuron to muscle cell connections. - Muscle cell response to neuronal stimulus is
termed an end-plate potential, or epp.
43Epps
- Two types
- Minimum epp caused by low Ca2 concentrations
in response to an action potential, appear in
multiples of the spontaneous epp. - Spontaneous epp formed in the absence of
stimulation, caused by random background activity
in which vesicles fuse with the cell membrane
releasing ACh into the synaptic cleft.
44Quantal Nature of Synaptic Transmission
- The neurotransmitter chemical, acetylcholine
(ACh) binds to ACh receptors, which in muscle
cells act as cation channels. - The flow of cation causes a change in membrane
potential. - It is now known that the packaging of ACh into
discrete vesicles results in quantal synaptic
transmission.
45Simple Chemical Synapse Model
- Assumptions
- Synaptic terminal of the neuron consists of a
large number, n, of releasing units. - Each releasing unit releases a fixed amount of
ACh with a probability, p. - Release sites are independent, allowing a
binomially distributed number of quanta of ACh,
released by an action potential.
46ACh Releasing Sites
- Probability that k sites fire
where firing refers to the release of a quantum
of ACh.
47ACh Release Sites
- Under normal conditions, p is normally large.
- However, if there is some low extra cellular
concentration of Ca2, p will be small. - If n, which represents the total number of ACh
release sites, is large, and npm remains fixed,
where m is the mean or expected value, then the
binomial distribution assumption can be
approximated by a Poisson distribution.
48ACh Release Sites
- Binomial distribution given by a Poisson
distribution
49Mean Value, m
- Two was to estimate m.
- Method 1
- Notice that P(0) e-m.
- e-m number of action potentials with no epps
- total number of action potentials
50Mean Value Calculation Method 2
- Due to our previous assumptions, a spontaneous
epp results from the release of a single quantum
of ACh, and a minimum epp is a linear sum of
spontaneous epps. - m mean amplitude of a miniature epp mean
amplitude of a spontaneous epp
51Spontaneous Epps
- Dont have a constant amplitude, because amounts
of ACh released from each channel are not
identical. - Approximation, the amplitudes of single-unit
release, A1(x), normally distributed (Gaussian
distribution), with a mean µ and a variance a2. - Amplitude distribution can be calculated as
follows - If k vesicles released, the amplitude
distribution, Ak(x), will be normally distributed
with mean kµ and ka2.
52Amplitude Distribution (Normally Distributed)
53Amplitude Distribution (Normally Distributed)
- There are clear peaks associated with a certain
number of quanta, yet these peaks are smeared out
and flattened by the normal distribution of
amplitudes. - This can be observed by an excerpt from Keener
and Snydes, Mathematical Physiology, Figure
7.5.
54Amplitude Distribution (Normally Distributed)
55Presynaptic Voltage-Gated Calcium Channels
- The process of chemical synaptic transmission
begins with an action potential reaching the
nerve terminal and opening voltage-gated Ca2
channels. - This causes a sudden influx of Ca2 which then
releases the neurotransmitter.
56Chemical Synaptic Transmission
57Presynaptic Voltage-Gated Calcium Channels
- Early experiments, with voltage clamp data, by
Llinas et al. (1976), on a giant squid synapse
yielded a model of the relationship between
current Ca2 and synaptic transmission. - Presynaptic voltage stepped up and clamping at
some constant level has shown that the
presynaptic Ca2 current Ica increases in a
sigmoidal fashion.
58Presynaptic Voltage-Gated Calcium Channels
- How is this relationship modeled?
- First of all, let us assume that these channels
consists of n identical subunits. - Each of these subunits can be in one of two
states S (shut) and O (open). - Only when all n subunits are in state O can the
channel admit Ica.
59Presynaptic Voltage-Gated Calcium Channels
- This process is modeled as
- Where the number of open channels is
proportional to On, where O is the number of open
channels
60Presynaptic Voltage-Gated Calcium Channels
- The voltage dependence of the channels is given
by the opening and closing rate constants k1 and
k2.
constants
Where kBoltzmanns constant Tabsolute temp
Vmembrane potential z1 and z2 are the number of
charges moving across the width of the membrane
from shut to open and vice-versa, respectively.
61Presynaptic Voltage-Gated Calcium Channels
62Presynaptic Voltage-Gated Calcium Channels
- The unknown constants can be calculated by
fitting the voltage to the clamp data shown in
Figure 7.5
Where s0 total number of subunits
63Presynaptic Voltage-Gated Calcium Channels
- Assuming that membrane potential jumps instantly
from 0 to V _at_ t0 and that o(0)0. - Then
64Presynaptic Voltage-Gated Calcium Channels
- We can model the single-channel current as
Where ci and ce are the internal and external
Ca2 concentrations and PCa is the permeability
of the Ca2 channel.
65Presynaptic Voltage-Gated Calcium Channels
- Knowing this we can not calculate the presynaptic
Ca2 current Ica.
Where
total number of channels
percentage of open channels
66Presynaptic Voltage-Gated Calcium Channels
- From curve fitting Llinas was able to determine
some best-fit values for the 5 unknown constants.
These are
Shows charge dependence from conversion from
State S to O.
Shows no voltage dependence from conversion from
State O to S.
Fixed Parameters
67Synaptic Suppression
- Steady-state percentage of open channels is
68Synaptic Suppression
- Single channel current, j, is a decreasing bell
shaped function of V. - ICa is a bell shaped function of V as well, due
to it being the function of the product of V and
j. - Illustrated as Figure 7.6 in K-S.
69Steady-state ICa
70Synaptic Suppression
- As in our previous discussion with the
Thalamocortical model, this model also has two
time scales. - Fast time scale js dependence instantaneously
on the voltage - Slower time scale Voltage controls the number of
open channels
71Synaptic Suppression
- What impact does the two differing time scales
have on the single channels? - A stepped-up voltage causes a decreasing in the
single channel current. - However, the number of open channels is low, so
the decrease in single channel current doesnt
greatly impact the overall Ica. - Looking at the longer time scale, slower time
scale, a greater number of channels start to
gradually open, due to the increase in voltage. - This response to a stepped-up voltage is shown in
K-S Figure 7.7
72Synaptic Suppression
73Synaptic Suppression
- A step-decrease in voltage causes an increase in
the single channel current. - However, the number of open channels is now high,
so the increase of single channel current greatly
increases Ica. - Looking at the longer time scale, the number of
channels start to gradually close, due to the
decrease in voltage, causing the overall current
to decrease slowly.
74Synaptic Suppression
- Figure 7.7 shows three separate curves, a b and
c. These curves describe the following - A ICas response to a small positive steps
on/off switching is a monotonic increase followed
by a decrease. - B An increase in positive step to 70mV yields
the same monotonic increase, however the decrease
in preceded by a slight increase in current. - C A larger step of 150mV causes an initial
complete suppression, due to j0. When
suppression is released, a large voltage response
is seen, followed by a decrease to some resting
state. (Synaptic Suppression)
75Real Model???
- Previous examples have been carried out under
clamped voltage conditions. This is not a
realistic approach as the action potential at a
nerve terminal is a time-varying voltage. - There also exists some debate as to the role Ca2
plays in neurotransmitter release. There are
actually two viewpoints on this issue - 1 Calcium Hypothesis Sudden influx of calcium
results in neurotransmitter release. (Modeled
earlier) - 2 CalciumVoltage Hypothesis Neurotransmitter
release is triggered by presynaptic membrane
potential, with Ca2 playing a regulatory role.
76Conclusion
- There are many differing models tackling the
concept of synaptic transmission. - The model we have discussed makes many
assumptions that dont completely describe real
neuron behavior. - However, with the basic model we can see many
interesting relationships and characteristics of
neurotransmitter release, channel opening and
closing relationships to membrane voltage,
synaptic suppression and total channel current.