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Fusing and Composing Macromolecular Regulatory Network Models Ranjit Randhawa* Clifford A. Shaffer* John J. Tyson + Departments of Computer Science* and.

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Presentation on theme: "Fusing and Composing Macromolecular Regulatory Network Models Ranjit Randhawa* Clifford A. Shaffer* John J. Tyson + Departments of Computer Science* and."— Presentation transcript:

1 Fusing and Composing Macromolecular Regulatory Network Models Ranjit Randhawa* Clifford A. Shaffer* John J. Tyson + Departments of Computer Science* and Biology + Virginia Tech Blacksburg, VA 24061

2 Regulatory Network Modeling Wish to deduce physiological properties of a cell from wiring diagrams of control systems

3 Frogegg Model

4 Budding Yeast Model Wiring diagrams are converted to reactions for simulation Example: Chen and Tyson’s budding yeast model contains over 30 ODEs, some nonlinear. About 140 rate constant parameters Validate model by comparing simulation results against morphological outcomes from over 100 mutants defective in the regulatory network.

5 Budding Yeast Wiring Diagram

6 Budding Yeast Model

7 Problem These models are reaching the limits of human comprehension Making the model suitable for stochastic simulation increases the number of reactions by a factor of 3-5. Models of the Mammalian cell cycle will require 100-1000 (more for stochastic simulation).

8 Solution Some mechanism must be found to describe models as collections of small building blocks that are combined to form the full model.

9 Systems Biology Markup Language SBML is the current standard interchange language within the community of systems biology modelers. We implement our proposals within the context of SBML language additions.

10 Sample Models

11 Fused and Composed Models

12 Fusion Given two or more existing models, we wish to create a new model that combines the information. Remains standard SBML We provide a tool to support users combining models. Implemented in “wizard” style

13 Fusion: Matching Tables Fusion is done primarily by defining matching of SBML components Compartments, reactions, species, etc. A series of matching tables Order is important to deal with dependencies mfmf m1m1 m2m2 1AAA 2BB 3DD mfmf m1m1 m2m2 1A1A 2CBD 3A2A

14 Fusion Tool Setup Wizard

15 Species Mapping Table

16 Reaction Mapping Table

17 Composition Connects submodels together to form a hierarchy of models Submodels are each valid SBML models Add language features to SBML to support composition Describe hierarchy Describe interactions, links, replacements No information hiding within models

18 Composition and the Fusion Wizard There are significant similarities between fusion and composition Fusion defines a series of steps taken to merge models Series of steps captured by the fusion tool can be viewed as an “audit trail” used in generating the mapping tables Precisely this same information can be used to describe the set of instructions needed to connect/link the submodels for composition

19 Composition Hierarchy <compartment id="comp2" volume="1"/>

20 Links <to object="Submodel_Little"

21 Is Composition the Right Model? Composition allows us to take existing models and use them as components to build larger models No information hiding Submodels might fit together more or less well Links let us replace things in one model with things in another Good for legacy models(?) We might do better to build models from components designed to work as components, with proper information hiding.

22 Aggregation In aggregation, models are built up from components Each component could be, for example, a collection of reactions This collection exposes certain variables for input/output via “ports” Hopefully this is a natural concept for modelers Not intended as a solution for reusing legacy models.

23 Toggle Switch

24 Iconified Toggle Switch

25 Toggle Switch Component

26 Flattening Flattening generates a standard SBML file from our modified file, for the purpose of running simulations, etc. An automated form of fusion. The additional language features provide what the user would provide during fusion, so automation is possible.

27 Summary We recognize four distinct activities related to model decomposition [Status] Fusion: Take existing models and merge them [Implemented] Composition: Build up from existing models, no information hiding [Implemented] Aggregation: Build up from building blocks, controlled interfaces [Designing stage] Flattening: Merge the building blocks back into a “flat” (non-composed) model (for making simulation runs) [Implemented]


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