Difference between revisions of "Team:Paris Bettencourt/Model"

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<b> Figure X: Schema and reaction equations for an ODE model of stain removal.</b> <b>A</b> Bla Bla. <b>B</b> Bla Bla
 
<b> Figure X: Schema and reaction equations for an ODE model of stain removal.</b> <b>A</b> Bla Bla. <b>B</b> Bla Bla

Revision as of 22:49, 19 October 2016



Goals

  • To make a computational model to analyze stain-enzyme dynamics
  • To find optimum parameters

Results

  • Developed a mass-action model to analyze stain dynamics
  • A stochastic computational approach using Gillespie algorithm
  • A diffusion model using explicit finite difference method for three dimensional modeling

Methods

  • Matlab
  • ODE solvers
  • Gillespie Algorithm
  • Explicit Finite Difference method (FDM)

Abstract

To act on stains, an enzyme must be concentrated at the fabric surface. Our project began with the idea that we can effectively increase this concentration with a fabric binding domain (FBD). But does this idea hold up to detailed scrutiny? What is the optimal affinity for a stain removing enzyme? How much activity improvement can we expect to achieve? To answer these questions, we built three models of the enzyme-fabric-stain interaction: a differential equation model, a stochastic process model and a 3D reaction-diffusion model. The results of these models agreed on three main points. At low affinity, enzymes diffuse away from fabric and into solution. At high affinity, enzymes become trapped on clean sections of fabric and are unable to reach the stain. But for a wide range of conditions, enzymatic activity is optimized at a binding activity around 10-4 M. For reference, this affinity is much lower than typical antibody-antigen interactions (10-9 M) and is within reach of our protein engineering methods. Under realistic conditions we predict that an optimal binding domain will improve activity by 100 or 1000 fold.

Motivation and Background

Mass-Action Models

In the simplest model, reactant concentrations are assumed to be uniform throughout the system. We make the mass action assumption: that reaction rates are directly proportional to reactant concentrations. In this way, we can represent the system with just a few simple differential equations. These great advantage of these models is conceptual simplicity and computational speed. It is possible to repeat the simulations many times over large parameter ranges. But it is important to remember that these models do not account for spatial structure. It is as though the fabric has been split into many small pieces and thoroughly mixed.

Stochastic Models

With Gillespie simulations, we are able to keep track of individual molecules. This allows us to account for single molecule dynamics that aren't part of mass action modes. In a mass action model, interactions are averaged over large numbers and continuous, but in a Gillespie model they are discrete.For example, a single enzyme may bind and unbind a stain without ever acting on a stain. A disadvantage of Gillespie simulations is that they can only by computed for very small numbers of molecules. They also do not represent spatial structure.

Diffusion Models

Using the Method of Explicit Fine Differences, we represent the system as a three-dimensional grid of discrete volumes. Within a volume, reactions are modelled as Mass Action, but species may diffuse between volumes at the borders. This allows us to account for the fact that different volumes contain different amounts of enzymes. In particular, we allow the enzyme-fabric binding to concentrate the enzyme near the fabric, where it is most effective. But it is important to remember that we model only passive diffusion, not active mixing. So this type of modelling may tend to overstate spatial effects.

Challenge: Modelling stain removal in a compact washing machine

A typical garment is composed of several square meters of fabric and a typical compact washing machine has a volme of 70 liters.

Quercetin strains degradation

Figure X: Schema and reaction equations for an ODE model of stain removal. A An enzyme may reversibly bind to clean fabric or stained fabric. For simplicity we assume that these binding constants are equal. Once the enzyme is bound to stained fabric it may be converted to clean fabric. Stain removal is assumed to be irreversible. B The schema gives rise to two binding equilibria and one irreversible reaction. C Three differential equations capture the dynamics of free enzyme, stain-bound enzyme and clean-fabric-bound enzyme. Not shown are similar equations modeling the unbound stained and clean fabric.

Results

Key Parameters
Volme of a washing machine 70 L
Volume of a wine stain 50 μL
Malvidin concentration in wine 200mg/L
Area of cotton t-shot 150000cm^2
Weight of cotton 20mg/cm^2
Total mass of detergent 5g
Enzyme fraction in detergent 1%
Activity of CatA enzyme 200s^-1

Model1: Mass-Action Model

Massaction_model

Figure X: Schema and reaction equations for an ODE model of stain removal. A Bla Bla. B Bla Bla

Massaction_model

Figure X: Schema and reaction equations for an ODE model of stain removal. A Bla Bla. B Bla Bla

Model2: Stochastic Models

Figure X: Schema and reaction equations for an ODE model of stain removal. A Bla Bla. B Bla Bla

Model3: Diffusion Models

Diffusion_model

Figure X: Schema and reaction equations for an ODE model of stain removal. A Bla Bla. B Bla Bla


Methods

Mass-Action Model


Stochastic Models


Diffusion Models

Explicit Finite Different scheme is used to model three dimensional stain - enzyme dynamics. The enzyme is assumed to be homogeneously spread through out the spatial domain at the start of the experiment. The scheme was applied on a reaction and diffusion equation thereafter. No flux boundary condition was applied at all boundaries which specifically meant for zero enzyme loss from the system. One of the boundaries is taken as the shirt with stain (1cm^2 area). The parameters and the initial conditions used in the simulations were chosen as realistic as possible. MATLAB was used to computationally model the system and perform thee simulations.

Attributions

This project was done mostly by Mislav Acman and Mani Sai Suryateja Jammalamadaka.

References

  • Enzyme Database- BRENDA
  • Numerical Analysis and Optimization, An Introduction to Mathematical Modelling and Numerical Simulation- Grégoire Allaire
Centre for Research and Interdisciplinarity (CRI)
Faculty of Medicine Cochin Port-Royal, South wing, 2nd floor
Paris Descartes University
24, rue du Faubourg Saint Jacques
75014 Paris, France
+33 1 44 41 25 22/25
igem2016parisbettencourt@gmail.com
2016.igem.org