This page summarises our achievements during the project. Essentially our project can be divided into three sections: biosensing, bioremediation and realisation.



In the native DCM-degrading bacterium the following genetic construct exists:
Figure 1shows the the gene region under investigation and manipulation in the design of our biosensor. PdcmA and PdcmR describe the two directions of a bidirectional promoter that is bound and modulated by DcmR

Oxford iGEM has isolated this intergenic region that contains a bidirectional promoter. We have termed these "PdcmA" acting towards the right in the direction of the gene encoding DcmA, and "PdcmR" acting towards the left in the direction of the gene encoding DcmR. The literature claims DcmR to be a regulatory protein acting to control the expression genes encoding DcmA and DcmR. Little is known about the different parameters in each direction.
We have observed and characterised the effect of DcmR regulating both promoters; in both directions under the influence of DcmR.

This is a new tool for molecular biologists wishing to manipulate stoichiometries of genetic products in the same construct.

We have also characterised PdcmA repression as a double repression system with DCM modulating DcmR activity resulting in derepression of genes downstream of PdcmA. This DCM sensitivity is not observed in the PdcmR direction. Wetlab Results:

Is DcmR a repressor or an activator at PdcmA/PdcmR promoters?

Figure 2(PJ404-PdcmA-sfGFP or Pj404-PdcmA-sfGFP with or without POXON-2 (DcmR)) The effect of adding DcmR to the system (through addition of plasmid POXON-2). Timecourse fluorescence data normalised to OD (600nm) is shown and summarised in the bar charts. Data is shown for both promoter directions (PdcmA and PdcmR). Standard error bars are shown.

Conclusion: DcmR is a repressor of both the PdcmA and PdcmR promoter.

DcmR at the bidirectional promoter - A new tool for molecular biologists

Figure 3(PJ404-PdcmA-sfGFP or Pj404-PdcmA-sfGFP with or without POXON-2 (DcmR)) OD(600nm) growth curve for all transformed bacteria investigated. The effect of DcmR is measured on the relative stoichiometry of activation of PdcmA/PdcmR. This is shows in the bar charts for stationary phase and for exponential phase. The cut of for exponential phase was set at 600 minutes.

We can see from these results that at both growth stages the relative expression is weighted towards PdcmR. An interesting result is that in the presence of DcmR this ratio is reduced such that expression through PdcmR is relatively increased while expression through PdcmA is relatively decreased. This result is observed as a decrease in the PdcmA/PdcmR expression ratio. From our results this appears more statistically relevant in stationary phase. The cut off for exponential/stationary phase was set at 600 minutes as seen in the above graph.

Through analysing this new bidirectional promoter we have discovered a new tool for molecular biologists. Our new intergenic region is able to modulate different stoichiometries between genes inserted either side of it in response to the presence or absence of DcmR (available in our BioBrick BBa_K1446003). The relative stoichiometry (PdcmA/PdcmR activation) of ~0.9 being reduced to ~0.3 upon DcmR addition.

DCM interacting with DcmR - the basis for our biosensor

For the PdcmA promoter both with and without DcmR:

For the PdcmR promoter both with and without DcmR:

Figure 4 (PJ404-PdcmA-sfGFP or Pj404-PdcmA-sfGFP with or without POXON-2 (DcmR)). The effect of DCM on all both promoters both alone and under the influence of DcmR. Fluorescence measurements were made at mid-log phase with 30mM DCM where added. Yellow charts show the effect of DCM on expression downstream of the PdcmA promoter. Blue charts show the effect of DCM on expression downstream of the PdcmR promoter. Fluorescence measurements were normalised for OD (600nm).

From these results we can see that in the direction of PdcmA DCM has a modulating effect of relieving DcmR repression thus DCM acts through depression. Interestingly, DCM appears to decrease sfGFP fluorescence in the absence of DcmR. In the direction of PdcmR DCM appears to have no significant effect on the expression of sfGFP. Therefore in the native system we suggest that DCM has a modulating effect through depression of dcmA expression. Additionally DCM shows no effect on the auto regulation of dcmR expression.

In the context of our biosensor this means that DCM is capable of modulating expression of sfGFP through interaction through the PdcmA repressor DcmR.

Ultimately we can conclude that DCM acts to encourage expression of sfGFP through derepression: consistent with our double repression model.


The results displayed here demonstrate the repression nature of DcmR on PdcmA and PdcmR bidirectional promoter. The modulation by DCM on the PdcmA promoter we have observed offers a constructive route towards a Dichloromethane biosensor. In this way we are able to use a reporter gene downstream of PdcmA to respond to the concentration of DCM.

Additionally the nature of the bidirectional promoter offers a uniquely useful tool to molecular biologists. The relative stoichiometry of two genes inserted either side of the bidirectional promoter can be can be modulated through the addition of DcmR (BBa_K1446003 - Oxford iGEM). This can be utilised easily for investigations into the effect of protein stoichiometries between two interacting proteins.

For the bioremediation aspect of DCMation, we managed to achieve the following:

dcmA-sfGFP is expressed in E. coli

DCMA-sfGFP can be expressed in E.coli. E. coli cells were transformed with the construct in figure A. Once transformed, the expression of dcmA-sfGFP was induced using IPTG at various concentrations (see figure 2 and 3). It was shown that there is a basal level of expression when using this system however upon induction, there was a significant increase in the protein levels. Following this conformation that dcmA-sfGFP is expressed in E. coli, an assay that has been previously used to measure the activity of DCM dehalongenase (Krausova, 2003) was utilised to access the activity of the protein product. Upon addition of DCM to the cell lysate, there was no change in the NAD+/NADH2 ratio. However, upon addition of the positive control formate, there was a change. This suggests the cell extract has no activity towards DCM. This may be due to a point mutation that was introduced during PCR. Further experiments will have to be performed to determine if this is the reason no activity is observed.

Figure 1
(A) The IPTG inducible construct used in these experiments.
(B)A western blot showing the expression of a protein at 62 kDa (the calculated molecular weight of DCMA-sfGFP). The existence of some protein product at 0 mM IPTG suggests that the promoter is slightly ‘leaky’ and allows a basal expression level when no inducer is present.
(C) The image shows the expression of GFP under blue LED light in E. coli at various concentrations of the inducer IPTG. The graph quantifies the observed fluorescence, correcting for differences in optical density at 600 nm. Expression significantly increases with IPTG concentration as expected well above the basal level at 0 mM IPTG.
(D)The reaction mechanism of the assay we used to measure DCM dehalogenase activity (Krausova, 2003). The enzyme that catalyses the first step is DCMA, the second step is catalysed by formate dehydrogenase. By adding formate it can be determined which step is not working if the assay does not initially work, thus it acts as a positive control.

Successful expression of microcompartments in E.coli

We successfully expressed the pdu-ABTUNJK microcompartment in E.coli, as indicated in the Western-blot of subunits B, U, N and K in the figure below: Figure 2
This figure shows the a western blot using anti-his tag antibodies. Subunits B, U, N and K have a C-terminal his-tag each.

Proteins can be targeted to microcompartments

Proteins can be inserted into the microcompartment when they have an N-terminal targeting sequence. In order to show that this targeting mechanism works for our constructs, we have constructed a plasmid with sfGFP fused to the N-terminal tag. When transforming this vector into E.coli along with the pUNI-ABTUNJK vector, we observed high-density fluorescence spots in those cells that expressed both the microcompartment and microcompartment-tagged sfGFP. This is shown in the image on the left, whereas the image on the right shows a control sample without the pUNI-ABTUNJK vector, thus expressing sfGFP evenly in the cell.

Figure 3 A and B
(Figure 3 A- Left) Fluorescence image of E.coli transformed with vectors containing microcompartment tagged sfGFP and the microcompartment
(Figure 3 B - Right) Fluorescence image of E.coli transformed with a vector (pOxon1) containing microcompartment-tagged sfGFP only

In order to further our understanding of the systems we are dealing with, we developed the following simulations:

1. Microcompartment Shape Model: (see 'Predicting the microcompartment structure') a model that simulates the effect of random point deviations in the microcompartment structure from the perfect icosahedral structure seen in carboxysomes.

Figure 4
The output of the microcompartment shape model is a simulated microcompartment structure (blue) plotted alongside the perfect icosahedral structure of a carboxysome (red) which we used as a starting point for predicting the geometric structure of a microcompartment.

2. Prediction of number of enzymes per microcompartment: (see 'Modelling the number of enzymes in a microcompartment') By modelling enzymes as ellipsoids with axis length dependent on the maximum x,y and z dimensions of our enzyme complexes, this was broken down into the well-documented sand-packing problem. This enabled us to predict the maximum theoretical number of enzymes that can be packed into a microcompartment.

3. Effect of microcompartments on collision rates: (see 'Microcompartment rate of collision model') By using our stochastic diffusion models and discretizing the motion of our simulated particles, this compared the rate of collision of two particles when spatially constrained within a microcompartment versus in unconstrained motion.

Figure 5
We have plotted the trajectories of two different molecules along random, stochastically driven discretized paths. What we illustrate here is that the rate of collision (marked in red) is substantially increased through the use of spatial constraints.

4. Stochastic diffusion of formaldehyde within microcompartments: (see 'Modelling the diffusion of formaldehyde inside the microcompartment') Stochastic diffusion of formaldehyde within cell: Building on the stochastic diffusion models developed previously, we then predicted how the concentration of formaldehyde within a cell would change over time given the restrictions imposed by the microcompartment.

5. Star-peptide model: (see 'The Star-Peptide Model') Our major collaboration with Unimelb iGEM involved modelling the effect of attaching multiple enzymes to a star peptide. This built upon the stochastic diffusion models developed earlier and represents an alternative method of reducing toxic intermediate accumulation to microcompartments.

Figure 6
Plotted here is the logarithmic relationship between star peptide bond length and reaction rate. This was simulated for Melbourne iGEM and suggests that the rate of reaction will be inversely proportional to average peptide length to the power of four.


For the containment of our bacteria, we have managed to:

1. Synthesise novel agarose beads: these have a polymeric coating which limits DCM diffusion into the beads. This allows optimum degradation by the bioremediation bacteria, while physically containing the bacteria for safety reasons.

Figure 1
Illustrated here is the concept design of our biopolymer containers. Not only does the diffusion-limiting polymer coating prevent the concentration of DCM the cells are in contact with from reaching toxic levels but maintains it at the optimum concentration for DCM turnover. Furthermore, by decreasing the size of the beads, this results in a decrease in the depth of penetration for DCM required to reach the bacteria.

2. Verify the functioning of the biopolymeric beads: this was done by measuring diffusion using indigo dye.

3. Design and construct the sensor system: this was achieved with the aid of 3D CAD software, 1 2 3-D Design, and a 3-D printer .

Figure 2
This is a simulation we developed of the biosensor case using 3-D CAD software. This was then converted to a 3-D printer-compatible format and printed using ABS plastic. The final print out was a full scale version of the actual design.

4. 3D print a cartridge to hold our biosensor bacteria: this sensor was designed to be easily replaced by a user.

5. Construct a prototype circuit: the circuit lights up when the photodiodes detect light emission from our biosensing bacteria that are contained in the cartridge. This lets the user have a simple yes/no response to whether the contents of the container are safe for disposal.

Figure 3
The electronic circuit shown above picks up incoming light from the sfGFP at the photodiode and through several amplification and offset steps manipulates the light level into a useable readable signal. This signal is then compared to a threshold safe value and can illuminate a red or green LED to indicate if the water is DCM contaminated or not.