Team:EPF-Lausanne/Project

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If there is green but no red, the AHL<SUB>Rhl</SUB> will bind to the RhlR to allow transcription of ''lacI<SUB>m</SUB>'' . This LacI<SUB>m</SUB> will inhibit transcription of both the ''GFP'' and the ''tetR'' genes. This latter inhibition then allows the transcription of the ''RFP'' and ''luxI'' genes.
If there is green but no red, the AHL<SUB>Rhl</SUB> will bind to the RhlR to allow transcription of ''lacI<SUB>m</SUB>'' . This LacI<SUB>m</SUB> will inhibit transcription of both the ''GFP'' and the ''tetR'' genes. This latter inhibition then allows the transcription of the ''RFP'' and ''luxI'' genes.
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If there is a high level of red and no green, this means that there is a lot of AHL<SUB>Lux</SUB> which will bind to the LuxR and allow the transcription of ''lacIm'' and ''cI''. cI will then inhibit ''lacI'', but LacI<SUB>m</SUB> will inhibit on the one hand the ''GFP'' (leading to no GFP production) and on the other hand ''tetR''. Thus, as no TetR is produced, RFP will be produced.  
If there is a high level of red and no green, this means that there is a lot of AHL<SUB>Lux</SUB> which will bind to the LuxR and allow the transcription of ''lacIm'' and ''cI''. cI will then inhibit ''lacI'', but LacI<SUB>m</SUB> will inhibit on the one hand the ''GFP'' (leading to no GFP production) and on the other hand ''tetR''. Thus, as no TetR is produced, RFP will be produced.  
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Revision as of 18:08, 29 October 2008


Genetic Network Generating Spatial Patterns Through Cell-Cell Communication


and Controlled Information Processing

Contents

Abstract

Biological systems are unique in their ability to combine information and energy to generate complex entities. Genetically encoded networks drive many of these patterning processes. Furthermore, developmental studies have highlighted the importance of gradient formation and cell-cell communication for the generation of cellular patterns in the early stages of life. It has been shown that simple networks can form both static and dynamic patterns. Nonetheless, a system whose pattern formation is dependent on combinations of multiple signals has yet to be demonstrated. Here we address this question by designing a network, involving two different quorum-sensing based signaling mechanisms. Upon introduction in E.coli, the system can sense the relative amounts of two input molecules. Using a pre-defined set of rules, which was selected on its ability to generate spatial patterns, the cell can then express its final state by emitting red or green fluorescence and transmit its state to its neighbors.

General concept2.png

Towards an in-vivo self organizing system...

In recent years, quorum sensing has been of wide-spread interest in synthetic biology. The ability for populations of cells to communicate in such a way that they either relay information or create specific patterns in culture is one which has been used in several studies (cite...). Some have relied on two different cell populations (predator-prey ref. for example) to engineer novel in vitro behavior.

The idea of the project is to build a system which uses two different quorum sensing systems of molecules that enable the cell to integrate three different levels of signal, and emit a different response according to a predetermined rule-set, producing a given fluorescent protein and a quorum sensing molecule.

Our project uses a single population of cells, which all contain the same genetic information. Thus, the different behavior of the sub-populations will only be dictated by neighboring sub-populations.

We also take advantage of the high-level engineering competences found in our Institute (EPFL) by using microfluidic devices in order to culture the cells in an ordered and controllable manner. Furthermore, this will also permit to have control on the information flux dynamics between the cells.

In other words, we want to implement an in-vivo self organizing system. The cell population is self-organized in the sense that, unlike other experimental setups, no artificial gradient nor sender cells are required to generate a pattern. In these other situations, the cells are placed in different conditions at the initial stages of the experiment.

In our idealized case, if a perturbation is applied to a subpart of the population, the same pattern can be generated regardless of what subpart of the cell population was actually subjected to this perturbation. Now the microfluidics-based control on the information flux across the population is not in essence contradictory to the "self organized" nature desired for our system, considering that the use of this control will only depend on the state of the cells. In other words, control on the signaling is equivalent to choosing a cell-cell communication protocol.


Our devices are custom-made for the project, fabricated using PDMS and multilayer soft lithography (MSL). We designed an array of miniature chambers to culture cells. The chambers are linked to one another with a network of ducts enabling us to culture sub-populations of our cells in contact with each other. Depending on the chamber connectivity and the genetic rule-set used, we expect complex patterns of GFP/RFP expression to form (see patterns below).

The aim is to initiate a signal on one side of the channel and observe the propagation along the plate.

Initiation.png
   
Establishment.png


Our microfluidic devices are also used in a side-project in order to characterize the binding site specificity and affinity of quorum sensing-related transcription factors (the MITOMI devices).

Biomedical application

Our system could be further developed to function as a diagnostics device detecting disease-related biomarkers in bodily fluids. Each first column chip well would contain specialized bacterial cells engineered to detect specific biomarkers, allowing the simultaneous sampling of hundreds to even thousands of patient samples. Depending on which samples contain the biomarker of interest, a specific pattern would be generated. Using our algorithm, we would have a priori defined all possible patterns generated by all potential combinations of positive wells. Simple scanning and analysis of the pattern by a computer would then automatically identify which wells are positive, providing a cost-effective and high-throughput mechanism to analyze patient samples.

Initiation of the project

Our goal was to produce a system as simple as possible giving patterns as complex as possible. We therefore decided to use only two quorum sensing systems - and two fluorescent proteins - while testing various network geometries and rule sets. We tried two different fluidic networks, determining the patterns formed by all possible rule-sets. We mean by "rule-set" the law determining the output response of the system to a given input.


The first fluidic network, with simple connections, gave two simple patterns, like the "barcode" one.

Connection2.png 5050.jpg


The second network, with more complex connectivity, gave more interesting patterns like the "triangles" one.

Connection1b.png Fullpatches 1010.jpg Triangles.jpg


We choose to keep the "triangles" pattern, and to try to implement its rule set, given in the following table. You can see the desired expression level of each fluorescent protein on the graph below.


Input Output
GGG R
RGG R
RRG G
RRR R


The rules in this table are what we tried to implement in our system. When the cell receives a given input, it will respond by producing the correct output.


Rule6.JPG

Project Details

General scheme :

The genetic circuit which will be implemented in the cells is the following :

Genscheme2.jpg

Pattern:

This genetic circuit must give this following pattern :

Triangles.jpg

Plasmids:

Our system introduces a new plasmid in a pre-existing system ("A synthetic multicellular system for programmed pattern formation", from Ron Weiss et al., Nature, vol.434, April 2005) which detects different levels of the luxI quorum sensing molecule and gives a specific response according to the detected or observed concentration . As shown on the previous genetic circuit, we will clone the gene coding for the RhlI molecule at the 3' end of the GFP gene, with C4-HSL being our second quorum sensing molecule used. In addition to the two Ron Weiss system plasmids, we have to build an additional plasmid for the second part of the proposed genetic circuit. We will add an extra copy of the lacIm gene from the Ron Weiss system so that we can test it independently from the latter system.

Here is the scheme of the plasmid with the Registry of Standard Parts references for each Biobrick that is used.

PiGEM3.png

Response:

The response of our network depends on the incoming signal. Four cases can be found :

1) GGG

If there is green but no red, the AHLRhl will bind to the RhlR to allow transcription of lacIm . This LacIm will inhibit transcription of both the GFP and the tetR genes. This latter inhibition then allows the transcription of the RFP and luxI genes.

GGGfin.JPG

2) RRR

If there is a high level of red and no green, this means that there is a lot of AHLLux which will bind to the LuxR and allow the transcription of lacIm and cI. cI will then inhibit lacI, but LacIm will inhibit on the one hand the GFP (leading to no GFP production) and on the other hand tetR. Thus, as no TetR is produced, RFP will be produced.

RRRfin.JPG


3) GGR

When both AHLRhl and AHLLux are present, we need to consider the influence of each molecule. The input of a green state means that AHLRhl will also be present, which will bind to the RhlR allowing the transcription of lacIm. This one will inhibit GFP and also the tetR, leading to the production of RFP. The low input of the red state means that there is also a low level of AHLLux. This AHLLux will bind to LuxR to produce cI and inhibit lacI. But, LacIm initiated by the rhlR promoter will remain in the cell and repress GFP and tetR, therefore leading to the production of RFP and LuxI.

GGR.JPG

4) GRR

When both AHLRhl and AHLLux are present, we need to consider once more the influence of each molecule. Here the green input is weak and AHLRhl concentration is low. Therefore, the AHLRhl concentration will not be enough to express LacIm. The medium input of red means that AHLLux is present in a concentration which is within the range of the band-pass. In that case, AHLLux will bind to LuxR to produce cI but will not activate lacIm. The cI will inhibit lacI, leading to the production of GFP and TetR. The latter will finally repress the RFP leading to a final green state with production of RhlI.

GRR2.JPG


XCl3.JPG
XCl2.JPG

Experiments

In order to complete our project, we followed mainly three courses of action. The first focuses on the network design and the mathematical modeling; it aims to draw the principles of information processing by individual cells and the cell population, with ODEs used to model the reaction of the system. Details on this part are available in the corresponding page of the Wiki : Modeling. This part was done with the help of professor Felix Naef.

The second part of the project was of course the concrete generation of the required plasmids in the laboratory, which was executed in the facilities provided by the Laboratory of Systems Biology and Genetics (http://deplanckelab.epfl.ch/) of Prof. Bart Deplancke. Using Biobricks and material obtained from the Ron Weiss group, we followed a cloning scheme to obtain our genetic circuit in E. coli.

Most of the information on the cloning can be found on the Parts section of this Wiki, with respect to the parts submitted, on this Project page higher up (description of the plasmid), and in the Notebook section for the protocols used in culture, transformation, digestion and ligation.

The third part of the project consisted in the building and using of the microfluidic chips for the two sides of the project in the Laboratory of Biological Network Characterization (http://lbnc.epfl.ch/) of Prof. Sebastian Maerkl. First, the MITOMI approach was implemented in the laboratory to characterize the DNA binding specificity and affinity of quorum sensing-related transcription factors . Then, the chips for cell culture and test of the genetic circuit were designed. Information on this part of the project can be found on the corresponding page of the Wiki : Microfluidics. Protocols for the fabrication of the devices and the preparation of DNA and transcription factors can also be found on the Notebook page of this Wiki.

Results

We were able to obtain the cloned plasmid with all the components. We don't finish cloned plasmid with all components, so we don't start to do mesurements of functionality. We had problem in last ligation.


We really need more detail on all of this, including Keshav's fluorescence measurements. We can link to the significant steps of the cloning in the Notebook part as well.