Weis2014 - Data driven Mammalian Cell Cycle Model

This a model from the article:
A Data-Driven, Mathematical Model of Mammalian Cell Cycle Regulation.
Michael C. Weis, Jayant Avva, James W. Jacobberger, Sree N. Sreenath PLoS ONE
2014 May 13: 9(5): e97130 24824602
,
Abstract:
Progression of a cell through the division cycle is tightly controlled at different steps to ensure the integrity of genome
replication and partitioning to daughter cells. From published experimental evidence, we propose a molecular
mechanism for control of the cell division cycle in Caulobacter crescentus. The mechanism, which is based on the
synthesis and degradation of three ‘‘master regulator’’ proteins (CtrA, GcrA, and DnaA), is converted into a quantitative
model, in order to study the temporal dynamics of these and other cell cycle proteins. The model accounts for
important details of the physiology, biochemistry, and genetics of cell cycle control in stalked C. crescentus cell. It
reproduces protein time courses in wild-type cells, mimics correctly the phenotypes of many mutant strains, and
predicts the phenotypes of currently uncharacterized mutants. Since many of the proteins involved in regulating the
cell cycle of C. crescentus are conserved among many genera of a-proteobacteria, the proposed mechanism may be
applicable to other species of importance in agriculture and medicine.
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To cite BioModels Database, please use: Li C, Donizelli M, Rodriguez N, Dharuri H, Endler L, Chelliah V, Li L, He E, Henry A, Stefan MI, Snoep JL, Hucka M, Le Novère N, Laibe C (2010) BioModels Database: An enhanced, curated and annotated resource for published quantitative kinetic models. BMC Syst Biol., 4:92.
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A data-driven, mathematical model of mammalian cell cycle regulation.
- Sreenath SN
- PloS one , 1/ 2014 , Volume 9 , Issue 5 , pages: e97130 , PubMed ID: 24824602
- Department of Electrical Engineering and Computer Science, Case Western Reserve University, Cleveland, Ohio, United States of America.
- Few of >150 published cell cycle modeling efforts use significant levels of data for tuning and validation. This reflects the difficultly to generate correlated quantitative data, and it points out a critical uncertainty in modeling efforts. To develop a data-driven model of cell cycle regulation, we used contiguous, dynamic measurements over two time scales (minutes and hours) calculated from static multiparametric cytometry data. The approach provided expression profiles of cyclin A2, cyclin B1, and phospho-S10-histone H3. The model was built by integrating and modifying two previously published models such that the model outputs for cyclins A and B fit cyclin expression measurements and the activation of B cyclin/Cdk1 coincided with phosphorylation of histone H3. The model depends on Cdh1-regulated cyclin degradation during G1, regulation of B cyclin/Cdk1 activity by cyclin A/Cdk via Wee1, and transcriptional control of the mitotic cyclins that reflects some of the current literature. We introduced autocatalytic transcription of E2F, E2F regulated transcription of cyclin B, Cdc20/Cdh1 mediated E2F degradation, enhanced transcription of mitotic cyclins during late S/early G2 phase, and the sustained synthesis of cyclin B during mitosis. These features produced a model with good correlation between state variable output and real measurements. Since the method of data generation is extensible, this model can be continually modified based on new correlated, quantitative data.
Submitter of this revision: Ashley Xavier
Modellers: Ashley Xavier
Metadata information
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isDescribedBy (2 statements)
hasProperty (1 statement)
Connected external resources
Name | Description | Size | Actions |
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Model files |
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Weis2014.xml | SBML lvl2 file containing the model | 276.14 KB | Preview | Download |
Additional files |
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Weis2014-generate_plot.R | R code used to plot the curation data | 2.17 KB | Preview | Download |
Weis2014.cps | Copasi file to generate the curation figure data | 411.48 KB | Preview | Download |
- Model originally submitted by : Ashley Xavier
- Submitted: Nov 22, 2018 12:24:13 PM
- Last Modified: Nov 22, 2018 12:24:13 PM
Revisions
: Variable used inside SBML models
Species | Initial Concentration/Amount |
---|---|
DRG Transcriptional regulator ERG |
0.0 mmol |
E2F CCO:42550 |
0.716055 mmol |
pE2F CCO:42550 |
1.388537 mmol |
Rb Retinoblastoma-associated protein |
0.1071 mmol |
actCycACdk1 Cyclin-A2 ; Cyclin-dependent kinase 1 |
0.003801725709734 mmol |
actCycB G2/mitotic-specific cyclin-B3 |
0.01 mmol |
Cdh1 Cadherin-1 |
0.99736 mmol |
Reactions | Rate | Parameters |
---|---|---|
DRG => | cell*k18*DRG | k18 = 176.35 |
E2F + Rb => E2FRB | cell*v48 | v48 = 1352.4191649675 |
pE2F => ; pE2F, Cdh1 | cell*kde2fcdh1*pE2F*Cdh1 | kde2fcdh1 = 1.7635 |
Rb => ppRB | cell*v43 | v43 = 35.2584572674058 |
ppRB => Rb | cell*v44 | v44 = 4495.61597904523 |
actCycACdk1 => ; actCycACdk1 | cell*kasa*actCycACdk1*freeCK1 | kasa = 19733.57; freeCK1 = 0.55403292 |
=> actCycB + cycB; mass | cell*Vsb*mass*k2 | Vsb = 7.16092423585105; k2=2.0 |
=> Cdh1; Cdc20A | cell*(kah1p+kah1pp*Cdc20A)*(1-Cdh1)/((Jah1+1)-Cdh1) | kah1p = 155.8708; Jah1 = 0.15; kah1pp = 176350.0 |
=> DRG | cell*k17*(DRG/J17)^2/(1+(DRG/J17)^2) | k17 = 2645.25; J17 = 0.3 |
(added: 22 Nov 2018, 12:16:56, updated: 22 Nov 2018, 12:23:33)