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| <h1>Models</h1> | | <h1>Models</h1> |
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| The members of the dry lab are simulating the different components of the full system. Three main components can be identified: | | The members of the dry lab are simulating the different components of the full system. Three main components can be identified: |
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| <li>The difussion of the chemoattractant through the medium. </li> | | <li>The difussion of the chemoattractant through the medium. </li> |
| <li>The motion of the bacterias through the medium due to the gradient on the chemoattractant concentration.</li> | | <li>The motion of the bacterias through the medium due to the gradient on the chemoattractant concentration.</li> |
- | <li>The chemoattractant generation within the bacteria. </li> | + | <li>The circuits and devices for the chemoattractant generation within the bacteria. </li> |
| </ol> | | </ol> |
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- | | + | <p>For the first two points, we have developed a simulation using Java. The explanation of the simulation can be found in the Chemotaxis link below. Moreover, you can <b>download the bacterial crowding simulation</b> <a href="https://static.igem.org/mediawiki/2010/3/3f/BacterialCrowdingSimulation.zip">here</a> |
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- | <h2>Chemoattractant Diffusion</h2>
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- | <p> | + | |
- | The basic equations for the diffusion of the chemoattractant in the medium are the <a href="http://en.wikipedia.org/wiki/Fick%27s_laws_of_diffusion" target="_blank">Fick laws of diffusion</a>, which govern the variation of the concentration of a substance within a medium. | + | |
| </p> | | </p> |
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| <p> | | <p> |
- | The flux <b>J</b> (that is, the amount of substance that flows through a given surface per unit of time mol m<sup>-2</sup>s<sup>-1</sup>) is given by: | + | The circuits and transduction signals inside the cell is simulated by using Matlab's Simbiology Toolbox. The model and results can be found in the Signaling link below. |
| </p> | | </p> |
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| + | <div class="center"> |
| + | <a href="https://2010.igem.org/Team:UPO-Sevilla/Modeling/Chemotaxis"> <img class="subBanner" src="https://static.igem.org/mediawiki/2010/2/24/BacterialCrowdingChemotaxis.png" alt="Chemotaxis" /></a> |
| + | <a href="https://2010.igem.org/Team:UPO-Sevilla/Modeling/Signaling"><img class="subBanner" src="https://static.igem.org/mediawiki/2010/5/59/BacterialCrowdingSignaling.png" alt="Signaling" /></a> |
| + | </div> |
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- | <center>
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- | <img src="https://static.igem.org/mediawiki/2010/6/6f/UPO-Model-Eq1.png" width="150 "alt="First Fick Law"/>
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- | </center>
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| + | </div> |
| + | </html> |
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- | <p>
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- | where φ is the concentration (mol m<sup>-3</sup>) in a given point. <i>D</i> is a constant called the diffusion coefficient, and that depends on the medium .
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- | </p>
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- | <p>
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- | Basically, the equation states that the is directed towards places with lower concentration (thus the minus sign). If the concentration is constant in the space (∇φ=0) there is no flux.
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- | </p>
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- | <p>
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- | If the flux is known, it is possible to determine the amount of substance that goes through a small surface <b>S</b> and a small amount of time <i>dt</i></p>
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- | <center>
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- | <img src="https://static.igem.org/mediawiki/2010/f/f8/UPO-Model-Eq2.png" width="170 "alt="First Fick Law"/>
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- | </center>
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- | <p>
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- | In order to simulate the diffusion, we define the environment and discretize it in very small cells. Each cell determines a given volume <i>V</i>, and has a surface <b>S</b>. At a given time instant, the cell has an amount of substance <i>c</i> (and then a concentration <i>c</i>\<i>V</i>).
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- | </p>
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- | <p>
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- | If the cells and time step Δ<i>t</i> are small, we can consider that the gradient of concentration can be approximated though the differences in concentration between a cell <i>i</i> and 4 (or 8) neighbors <i>j</i>. Thus:
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- | </p>
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- | <center>
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- | <img src="https://static.igem.org/mediawiki/2010/e/ea/UPO-Model-Eq3.png" width="190 "alt="First Fick Law"/>
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- | </center>
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- | <p>
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- | and then, the amount of substance that diffusses from <i>i</i> to <i>j</i>:
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- | </p>
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- | <center>
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- | <img src="https://static.igem.org/mediawiki/2010/6/6f/UPO-Model-Eq4.png" width="190 "alt="First Fick Law"/>
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- | </center>
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- | <h2> Bacteria motion</h2>
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- | <p>
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- | The main actuator of <i>E. Coli</i> is a flagellar motor that can rotate clock and counterclockwise. Through a set of transmembrane receptors proteins, <i>E. Coli</i> is able to detect chemoattractants. Moreover, this detection influences the motion of the flagellar motor <a href=#topp>[Topp and Gallivan, 2007]</a>.
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- | </p>
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- | <p>
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- | E. Coli has two main motion modes, which we will name:
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- | <ol>
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- | <li> Random Walk </li>
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- | <li> Gradient climbing </li>
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- | </ol>
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- | </p>
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- | <p><b>Random walk mode</b></p>
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- | <p>
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- | When no gradient of chemoattractant is present, <i>E. Coli</i> is in random walk mode. In this case, the bacteria performs smooth runs followed by tumbles.
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- | </p>
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- | Mathematically, we will model this as a Brownian motion:
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- | </p>
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- | <center>
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- | <img src="https://static.igem.org/mediawiki/2010/b/bc/UPO-Model-Eq5.png" width="300 "alt="First Fick Law"/>
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- | </center>
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- | <p>
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- | where <b>x</b> is the position of the bacteria and <b>v</b> is the velocity. This (vector) velocity is randomly sampled from a normal distribution of zero mean and a certain covariance matrix that models the potential .
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- | </p>
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- | <center>
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- | <img src="https://static.igem.org/mediawiki/2010/b/bd/UPO-Model-Eq6.png" width="150 "alt="First Fick Law"/>
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- | </center>
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- | <p>
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- | The bacteria will move for a time Δ <i>t</i><sub>rm</sub> with constant velocity <b>v</b>(<i>t</i>). At next time instant, a new velocity is (randomly selected) selected
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- | </p>
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- | <b>Gradient climbing behaviour</b>
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- | When a positive difference of concentration (a gradient) on the chemoattractant is detected, the bacteria enters into a new mode that we will call gradient climbing.
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- | </p>
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- | <p>
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- | In this mode, the flagellar motor tends to move counterclockwise; as a result, the smooth runs last for more time, and the tumbling frequency decreases.
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- | </p>
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- | In order to model that, we use the same model than above, but a larger tumbling interval (smaller tumbling frequency) Δ <i>t</i><sub>gc</sub>;
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- | <p id="topp">
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- | <small>[Topp and Gallivan, 2007] Topp, S. and Gallivan, J. (2007). Guiding Bacteria with Small Molecules and RNA. J. Am. Chem. Soc., 129:6807–6811.</small>
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- | </p>
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- | <h2>Chemical reactions</h2>
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- | <h1>Modeling Tools</h1>
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| {{:Team:UPO-Sevilla/footer}} | | {{:Team:UPO-Sevilla/footer}} |
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