Title: Example of Modeling Signal Transduction Systems
1Example of Modeling Signal Transduction Systems
2References and Readings
- P53 Models and data Oscillations and variability
in the p53 system. Geva-Zatorsky N, Rosenfeld N,
Itzkovitz S, Milo R, Sigal A, Dekel E, Yarnitzky
T, Liron Y, Polak P, Lahav G, Alon U., Mol Syst
Biol 200622006.0033. - Biomodels.net database of models from
publications - SBML.org systems biology markup language
definitions links to tools and models
3Biological Problem
- In the p53 system, p53 transcriptionally
activates mdm2. Mdm2, in turn, negatively
regulates p53 by both inhibiting its activity as
a transcription factor and by enhancing its
degradation rate - The concentration of p53 increases in response to
stress signals, such as DNA damage. The main
mechanism for this increase is stabilization of
p53 due to reduced interaction with Mdm2. - Following stress signals, p53 activates
transcription of several hundred genes that are
involved in growth arrest, apoptosis, senescence,
and DNA repair. - Isogenic cells in the same environment behaved in
highly variable ways following DNA-damaging gamma
irradiation some cells showed undamped
oscillations for at least 3 days (more than 10
peaks). - Reference Oscillations and variability in the
p53 system. Geva-Zatorsky N, Rosenfeld N,
Itzkovitz S, Milo R, Sigal A, Dekel E, Yarnitzky
T, Liron Y, Polak P, Lahav G, Alon U., Mol Syst
Biol 200622006.0033.
4Modeling Problem
- The amplitude of the oscillations was much more
variable than the period. Sister cells continued
to oscillate in a correlated way after cell
division, but lost correlation after about 11 h
on average. Other cells showed low-frequency
fluctuations that did not resemble oscillations. - Why does this occur? Can models help us
understand this? - Different families of mathematical models of the
system point to the possible source of the
variability in the oscillations low-frequency
noise in protein production rates, rather than
noise in other parameters such as degradation
rates. - Models available at biomodels.net (numbers
154-159, curated models)
5Transcriptional activation
Negative regulation Inhibits transcription Enhance
s degradation
6Also activates 100s of genes DNA
repair Apoptosis Growth arrest
Transcriptional activation
Stress signals DNA Damage
Negative regulation Inhibits transcription Enhance
s degradation
7Feedback loops
- Oscillatory dynamics, changing dynamics
monotone
Damped Oscillations
Sustained oscillation
8P53 system
- Studies with this system that used averages of
cell responses showed damped oscillations
following DNA damage. - Individual cell studies show a variation in
responses in cells - Amplitudes changed, frequency did not change much
9Fluorescent Microscopy
- Fluorescence microscopy is one of the most used
approaches in studying the location and movement
of molecules and subcellular components in the
cell. - Sample is itself the light source.
- Based on the phenomenon that certain material
emits energy detectable as visible light when
irradiated with the light of a specific
wavelength. - Samples can either be fluorescing in their
natural form like chlorophyll and some minerals,
or treated with fluorescing chemicals. - Usually, cellular components do not fluoresce
themselves. Fluorescent markers are therefore
introduced.
10- Fluorescent DyesFluorescent dyes are directly
taken up by the cells. They are incorporated and
concentrated in specific subcellular
compartments. The living cells are then mounted
on a microscope slide and examined. - ImmunofluorescenceImmunofluorescence involves
the use of antibodies to which a fluorescent
marker has been attached. Antibodies are
molecules that recognize and bind selectively to
specific target molecules in the cell. The
fluorescent signal can be amplified by using an
unlabelled primary antibody and detecting it with
labelled secondary antibodies. - Tagging of ProteinsProtein molecules are tagged
with a fluorescing marker. When a specific
protein is modified in this way, the location of
that protein can be studied. It is also possible
to watch the movements of the proteins and its
interactions with other cellular components
inside the cell.
http//nobelprize.org/educational_games/physics/mi
croscopes/fluorescence/preparation.html
11C. Elegans Nervous System The image shows the
brain region of a living C. elegans animal.
Different classes of neurons are labelled with
different colors. Photo H. Hutter, Max Planck
Institut, Heidelberg
Fluorescence triple-labeling of human cells. The
DNA in two interphase cell nuclei (left and
right) and in metaphase chromosomes from a third
cell (middle) are shown in blue. Specific DNA
sequences are labeled in red and green. Photo
Petra Björk, Stockholm University
Fluorescence triple-labeling of human cells.
Cytoplasmic fiber structures (microfilament) are
shown in red. Components of the cell nuclei are
shown in blue (nucleoli) and green (splicing
factor). Photo Petra Björk, Stockholm University
Epithelium Cells Immunofluorescence staining of
epithelium cell (Hep-2) mitochondria. (Zeiss)
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13Time Lapse microscopy of cells
From supplementary data Oscillations and
variability in the p53 system. Geva-Zatorsky N,
Rosenfeld N, Itzkovitz S, Milo R, Sigal A, Dekel
E, Yarnitzky T, Liron Y, Polak P, Lahav G, Alon
U., Mol Syst Biol 200622006.0033.
14- Prolonged oscillations in the nuclear levels of
fluorescently tagged p53 and Mdm2 in individual
MCF7, U280, cells following gamma irradiation.
(A) Time-lapse fluorescence images of one cell
over 29 h after 5 Gy of gamma irradiation.
Nuclear p53-CFP and Mdm2-YFP are imaged in green
and red, respectively. Time is indicated in
hours. - (B) Normalized nuclear fluorescence levels of
p53-CFP (green) and Mdm2-YFP (red) following
gamma irradiation. Top left the cell shown in
panel A. Other panels five cells from one field
of view, after exposure to 2.5 Gy gamma
irradiation. - Mol Syst Biol. 2006 2 2006.0033.
- Published online 2006 June 13. doi
10.1038/msb4100068.
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16Signal Analysis
- Used Fourier analysis and spectrograms to
estimate period of signals
17Pitch (characteristic period) of Mdm2-YFP signals
of cells at various gamma irradiation doses. (A)
Histogram of the pitch values from movies of
cells exposed to 0, 0.3, 5, and 10 Gy, and from
all the movies together. For each movie, the
total number of cells is indicated, and the
number of oscillating (osc.) cells that had a
detectable pitch. (B) Fraction of cells (out of
the total number of cells) with a pitch value of
47 h, for different gamma doses. Black line is a
guide to the eye. Mol Syst Biol. 2006 2
2006.0033. Published online 2006 June 13. doi
10.1038/msb4100068.
18Average amplitude, width, and time delay of
oscillation peaks and their variance. (AC)
Average values of the first five p53-CFP (green
triangles) and Mdm2-YFP (red squares) oscillation
peaks in 146 cells exposed to 5 Gy of gamma
irradiation, shown with their standard errors.
(A) Average oscillation amplitude of each of the
first five peaks (peak to trough). (B) Average
width (full-width half-maximum). (C) Average time
delay between the p53 peaks and the consecutive
Mdm2 peak. Mol Syst Biol. 2006 2 2006.0033.
Published online 2006 June 13. doi
10.1038/msb4100068.
19Modeling
- Find simplest models that can explain these
different behaviors - Negative feedback
- Delay oscillators with delay in response to
signals - Relaxation oscillators negative feedback loop is
supplemented with a positive loop on p53 - Checkpoint model, two negative feedback loops,
direct and an effect on an upstream regulator of
p53.
20Describing Models
- Systems Biology Markup Language (SBML) is a
computer-readable format for representing models
of biochemical reaction networks in software.
It's applicable to models of metabolism,
cell-signaling, and many others. (sbml.org)
21- Function definition
- A named mathematical function that may be used
throughout the rest of a model. - Unit definition
- A named definition of a new unit of measurement,
or a redefinition of an existing SBML unit. - Compartment Type
- A type of location where reacting entities such
as chemical substances may be located. - Species type
- A type of entity that can participate in
reactions. Typical examples of species types
include ions such as Ca2, molecules such as
glucose or ATP, and more. - Compartment
- A well-stirred container of a particular type and
finite size where species may be located. A model
may contain multiple compartments of the same
compartment type. Every species in a model must
be located in a compartment. - Species
- A pool of entities of the same species type
located in a specific compartment. - Parameter
- A quantity with a symbolic name. In SBML, the
term parameter is used in a generic sense to
refer to named quantities regardless of whether
they are constants or variables in a model.
22- Initial Assignment
- A mathematical expression used to determine the
initial conditions of a model. - Rule
- A mathematical expression added to the set of
equations constructed based on the reactions
defined in a model. Rules can be used to define
how a variable's value can be calculated from
other variables, or used to define the rate of
change of a variable. The set of rules in a model
can be used with the reaction rate equations to
determine the behavior of the model with respect
to time. - Constraint
- A means of detecting out-of-bounds conditions
during a dynamical simulation and optionally
issuing diagnostic messages. Constraints are
defined by an arbitrary mathematical expression
computing a true/false value from model
variables, parameters and constants. - Reaction
- A statement describing some transformation,
transport or binding process that can change the
amount of one or more species. For example, a
reaction may describe how certain entities
(reactants) are transformed into certain other
entities (products). Reactions have associated
kinetic rate expressions describing how quickly
they take place. - Event
- A statement describing an instantaneous,
discontinuous change in a set of variables of any
type (species quantity, compartment size or
parameter value) when a triggering condition is
satisfied.
23Example
- Identifier EnzymaticReaction.
- Compartment (with identifier cytosol)
- four species (with identifiers ES, P, S, and E)
- Reactions (veq and vcat).
- Veq
- listOfReactants (E and S) and listOfProducts
(ES). kinectic law - listOfParameters kon and koff
- Vcat
- listOfReactants (E S) and listOfProducts (E and
P). kinectic law, not reversible. - listOfParameters kcat
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25Model I
- Delay Oscillator
- Action of Mdm2 on p53 is linear, first-order
kinetics
x
y0
y
26Model III
- Delay Oscillator
- Action of Mdm2 has a delay term, production rate
of Mdm2 depends on earlier value of p53
27Parameter sensitivity
28Model IV
- Delay Oscillator
- Action of Mdm2 on p53 is nonlinear, saturating
Michaelis-Menten
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30Model II
- Relaxation operator, positive feedback loop to
upregulate p53
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32Model V
- Relaxation operator, positive feedback loop to
upregulate p53
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34Model VI
S
- Checkpoint
- Mdm2 also affects a p53 precursor signaling
protein, S, e.g., Phosphorylated ATM
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36Effect of cooperativity, n
n increasing
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42Noise model
- Periodic noise that varied in phase for protein
production - Not white high frequency noise
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44Model VI Simple
45Model VI active/inactive p53
46Model VI