Title: Mathematical Model for Cell Cycle Regulation and Cancer
1Mathematical Model for Cell Cycle Regulation and
Cancer
- Mandri Obeyesekere
- UT M.D.Anderson Cancer Center
- Dept. of
- Biostatistics and Applied Mathematics
- Houston
2The Cell Cycle
3Concept of ModelingPathways-possible
M/G1
S
G2
M/G1
4Concept of ModelingPathways-known
M/G1
S
G2
M/G1
5Concept of ModelingPathways-chosen
M/G1
S
G2
M/G1
6Concept of ModelingPathways-modeled
M/G1
S
G2
M/G1
7Models for cell regulationAgur- 2
variable, M-phase,Science-1991Goldbeter-
coupling of multiple cyclesTyson-
6,12,variables YeastThron- Switches,
bistabilityObeyesekere- M,G1,S/M mammalianKohn
- step by step networksAguda-
networks-modules
8Related Kinetics for Modeling
- Production/degradation
- Activation/deactivation
- Sequestration/release
- Association/disassociation
- promotion/inhibition
9Intracellular Proteins in Consideration
- G1 phase
- Cyclin D/cdk4
- Cyclin E/cdk2
- Rb
- E2F
- (Growth Factors)
- S-M Phase
- Cyclin A/cdk1
- Cyclin A/cdk2
- Cyclin B/cdk1
- Cdc25c
- P53 (tumor suppressor)
- P21 (kinase inhibitor)
- Mdm2 (oncogene)
10A Cancer Related Problem
- About 30 of all sarcomas show an amplification
of the MDM2 gene - mdm2 causes cancer.
- When mdm2 is over expressed, polyploidy is
observed. - Polyploidy is a common sign in many cancers.
- Function of mdm2 causing cancer is not yet known
11Multi Nucleated cells
(Guillermina Lozano-M.D.Anderson Cancer Center)
Polyploidy of mammary cells when MDM2 is over
expressed.
12Outline
- Biological Problem The Cell Cycle
- Mathematical Model
- Mathematical/Numerical Studies
- Predictions and Biological Impact
13P53 involved S-M phase interactions
- p53 activates p21
- p53 promotes mdm2 production
- Mdm2 deactivates p53 by binding to p53
- p21 inhibits the activity of cyclin A and B
14S-M Phase ModelIntracellular Proteins in
Consideration
- Cyclin A/cdk1
- Cyclin A/cdk2
- Cyclin B/cdk1
- Cdc25c
- P53 (tumor suppressor)
- P21 (kinase inhibitor)
- Mdm2 (oncogene)
15S-M Pathway
16The Mathematical Model
Y1
17Normal S-M cycle
18Normal S-M Cycle Parameter Values
- Production ratesA10.2
- A20.06 A30.2
A60.3
A70.1
A80.1 - Inhibition ratesH15.0
H25.0 H35.0
H60.2 - OthersDM1.5C0.1
B72.0 B80.8
- Michaelis Menten parametersP34.0
Q30.1
P410.0 Q42.0
P514.0Q51.0P63.5Q62.0 - Degradation rates
- D10.8 D20.7
D30.15
D40.3 D60.2
D70.1
- D80.2
19Other Variables
20Cell Arrest
Degradation rate of p53(d6) is reduced from 0.2
to 0.01 at time t 75.
21Important Facts of This Problem
-
- When mdm2 is over expressed, polyploidy is
observed. - Polyploidy is a common sign in many cancers.
- Function of mdm2 causing cancer is not yet known
22Ploidy and BrdU in Mammary Epithelial Cells
Control, p53 -/- , MDM2 and DNA content
(Genes Dev. 11714-7251997)
23Comparison of p53 -/- and MDM2/p53 -/-
24Irregular S-M cycle
25Mathematical Inferences
- Period doubling mimics polyploidy
- What are the possible pathways for mdm2 action?
- If there exists many, are all possible?
- Design experiments.
26Dynamics of Cell Cycle Control Bifurcation
Properties
27Bifurcation Diagram
28Irregular S-M Cycle
29More Results
30Choosing a Pathway
high levels of cyclinA/cdk1 together with a high
MPF signal
31Conclusion
- Mathematical Modeling allows system analysis of
a complex problem. - Qualitative approaches can produce valuable
results. - Evaluation of parameter values could be achieved
by mathematical methods as well as by experiments.
32Acknowledgments
Dr. Gigi Lozano Dept. of Molecular Genetics UT
M.D. Anderson Cancer Center Dr. Edwin
Tecarro NIH/NIGMS - GM59918
33Acknowledgements
Dr. Edwin Tecarro Dr. David Goodrich Dr. Shaochun
Bai Dr. Dennis Thron Dr. Gigi Lozano Dr. Jean
Wang NIH/NIGMS - GM59918
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36G1 phase Model
37G1 phase Mathematical Model
38Normal Cell Cycle- Mathematical Solutions
39Normal Cell Cycle -Time course
40Mathematical Analysis-BifurcationSystem Behavior
41Experimental Results(David Goodrich-Roswell Park)
42Experiments-Continued
43Problems?
- Parameter values-model
- (System behavior)
- Experimental evaluation
- (experimental limitations)
- Numerical estimation-
- ( Time dependent variable profiles)
- How crucial is this information?
- Qualitative vs. Quantitative - a balance