Team:Imperial College London/Project Chemotaxis Testing

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<div class="technology">3. Uptake of bacteria into roots</div>
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<p><i>Figure 13: GFP-expressing </i>E. coli<i> cells inside </i>Arabidopsis<i> roots (data and imaging by Imperial College iGEM 2011).</i></p>
<p><i>Figure 13: GFP-expressing </i>E. coli<i> cells inside </i>Arabidopsis<i> roots (data and imaging by Imperial College iGEM 2011).</i></p>

Revision as of 03:29, 22 September 2011




Module 1: Phyto-Route

Chemotaxis is the movement of bacteria based on attraction or repulsion of chemicals. Roots secrete a variety of compounds that E. coli are not attracted to naturally. Accordingly, we engineered a chemoreceptor into our chassis that can sense malate, a common root exudate, so that it can swim towards the root. Additionally, E. coli are actively taken up by plant roots, which will allow targeted IAA delivery into roots by our system.






Testing

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1. Introduction

The assembled PA2652 construct (BBa_K515102) and non-codon optimised mcpS (in pRK415 backone vector), have been inserted and tested for functionality in E. coli DH5α obtained from New England Biolabs. We carried out several tests in an attempt to characterise the rewired chemotaxis towards L(-)malic acid. We separated testing of chemotaxis towards malate into behavioral, qualitative & quantitative analyses.

To test bacterial uptake into the roots of the plants, we worked with Arabidopsis thaliana to replicate the experiment by Paungfoo-Lonhienne et al. Arabidopsis is a common plant model organism. It’s genome has been almost completely sequenced and replicates quickly, producing a large number of seeds. Many different mutant strains have been constructed to study its different characteristics[1]. While Arabidopsis may not represent plant populations naturally occurring in arid areas threatened by desertification, it is a useful model organism which we will be using to study the effect of the auxin plant hormone, indole-3-acetic acid (IAA) on roots, observe chemotaxis towards them, and observe them taking up bacteria as nutrients.

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2. Bacterial chemotaxis towards malate

2.1 Behavioral analysis


Bacteria perform two types of movement, smooth swimming and tumbling. In the absence of attractant the result of the two movements lead to random walk without directionality. In the presence of a concentration gradient of attractant, the probabilities of the two movements change and lead to the directional movement known as random biased walk.


Video 1: Mixed population of GFP-expressing control and non-GFP labelled PA2652 expressing E. coli. The bacteria have been placed in motility buffer without attractant and therefore there no difference in behaviour between the two is observed. Since no attractant is present, a majority of the bacteria perform tumbling, however there are individual bacteria that perform smooth swimming, a rapid movement. In this video, bacteria decide randomly between tumbling and smooth swimming, which is known as random walk. When bacteria perform chemotactic behaviour towards a concentration gradient(not pictured), the probability of the bacteria performing smooth swimming increases after a transient decrease due to saturation of chemoreceptors. This video has been taken as a set of frames, with one frame per four seconds. Imaging done by Imperial iGEM 2011.

During bacterial movement up a concentration gradient of attractant, the probability of the smooth swimming is higher than that of tumbling. Smooth swimming is a fast, uni-directional movement, whereas tumbling is random and although the speed may not be slow, overall velocity is far less than that of smooth swimming. Due to the complicated assay set up with a concentration gradient, we changed strategy to look for uniformity of the bacterial movement. We expected the cells, which are capable of malate recognition to show much more uniform response than those that do not. The bacteria were grown to mid-exponential phase (OD600 0.4-0.6) before being induced in motility buffer 2 hours prior to observation. Bacteria containing construct PA2652 (BBa_K515102) have been exposed to motility buffer (reference), 10 mM serine (positive control) & 10 mM malate (test).E. coli DH5α without any construct have been exposed to 10 mM malate (negative control). Observations were taken with a Zeiss Axiovert 200 Inverted Fluorescent Microscope and video collection Volocity software. ImageJ plug-in Manual Tracking was used to collect data and Chemotaxis Tool plug-in to analyze the data.


Figure 1: Probability density function of bacterial number at observed velocities. PA2652 cells exposed to 10 mM malate are more than 90% likely to be moving at just over 2 μm/s. PA2652 cells that were exposed to serine were 90% likely to be moving at velocity just over 2 μm/s. PA2652 cells that were not exposed to attractant were over 70% likely to be moving at 2 μm/s. Cells without BBa_K515102 construct were less than 50% likely to be moving at velocity between 2 and 4 μm/s. Data depicts difference in response between PA2652 cells, which were and which were not exposed to an attractant. Also cells without construct show lack of uniform response when exposed to 10 mM malate. Data collected by Imperial iGEM 2011.


From the data analysis it seems that the bacteria with construct BBa_K515102, when in 10 mM malate perform a very uniform behaviour. This is also confirmed by positive control cells exposed to 10 mM serine, where the response of cells is also highly uniform. Cells with construct PA2652 without exposure to saturating attractant show less uniform movement than PA2652 cells, whether exposed to malate or serine. Also negative control cells fail to show uniformity of the movement suggesting inability in recognition of the saturating medium with 10 mM malate and performing their movement randomly.

2.2 Qualitative analysis


Qualitative assays were done to observe the effect of rewiring chemotaxis in E. coli with the engineered constructs PA2652 and mcpS (BBa_K515102).

A number of methods exist that show chemotaxis towards a source [2]. Most of them are based on the properties of semi-solid agar, which allows diffusion of molecules and bacterial movement. We have modified an agar plug assay, which involves plating bacteria at opposite end of attractant on a petri-dish, to observe chemotaxis. The bacteria used were in mid-exponential phase (OD600 0.4-0.6). Cells suspended in the semi-solid agar were positioned 2 cm away from the attractant source and left overnight to grow. At the end of the assay the plates were imaged using Fujifilm LAS-3000 Imager.

This assay was done to show the functional chemotaxis of E. coli DH5α transformed with our PA2652 construct (BBa_K515102) compared to the inability of control E. coli DH5α to do the same. Positive control cells were exposed to increasing concentrations of serine, which is recognised by the endogenous chemoreceptors of E. coli, to observe what the movement we are looking for in cells with our construct. We have also tested cells containing the non-codon optimised mcpS gene for qualitative analysis.

Results from this assay should show clear differences in the shape of colonies formed. Bacteria attracted to the source move and distort the colony into an elliptical, directed shape towards the source. We expect the control colonies to look circular because bacteria are equally likely to swim into any direction.

Table 1: The concentrations of attractant tested

Molar range

0 mM

0.01 mM

0.1 mM

1 mM

10 mM

100 mM

Milimolar range

0 mM

5 mM

10 mM

15 mM

20 mM

25 mM


Positive control

Figure 2: Increasing concentrations of serine were tested. a) 0 mM control - circular colony b) 0.01 mM - circular colony c) 0.1 mM – rendered void due to mis-handling with semi-solid agar d) 1 mM - circular colony e) 10 mM - elliptical colony f) 100 mM - elliptical colony away from the attractant due to saturation. Data collected by Imperial iGEM 2011.

Figure 3: Increasing concentrations of serine were tested. a) 0 mM control - circular colony, b)5 mM - elliptical colony c) 10 mM - elliptical colony d) 15 mM - elliptical colony e) 20 mM - elliptical colony f) 25mM - elliptical colony.Data collected by Imperial iGEM 2011.

Negative control

Figure 4: Increasing concentrations of malate were tested. a) 0 mM control - circular colony b) 0.01 mM - circular colony c) 0.1 mM - circular colony d) 1 mM - circular colony e) 10 mM - circular colony f) 100 mM - circular colony. Data collected by Imperial iGEM 2011.

Figure 5: Increasing concentrations of malate were tested. a) 0 M control - circular colony b)5 mM - circular colony c) 10 mM - circular colony d) 15 mM - circular colony e) 20 mM - circular colony, f) 25mM - circular colony. Data collected by Imperial iGEM 2011.

McpS - pRK415

Figure 6: Increasing concentrations of malate were tested. a) 0 mM control - circular colony b) 0.01 mM - circular colony c) 0.1 mM - circular colony d) 1 mM - circular colony e) 10 mM - circular colony f) 100 mM - circular colony. Data collected by Imperial iGEM 2011.

Figure 7: Increasing concentrations of malate were tested. a) 0 mM control - circular colony b)5 mM - circular colony c) 10 mM - elliptical colony formed not in the direction expected d) 15 mM - possible elliptical colony e) 20 mM - possible elliptical colony f) 25 mM - circular colony. Data collected by Imperial iGEM 2011.

PA2652 - BBa_K515102

Figure 8: Increasing concentrations of malate were tested. a) 0 M control - circular colony b) 0.01 mM - possible elliptical colony the shape is hard to analyze c) 0.1 mM - strange shape of colony observed, we cannot explain this phenomenon d) 1 mM - colony shape is not perfectly circular however not elliptical either e) 10 mM - circular colony f) 100 mM - circular colony. Data collected by Imperial iGEM 2011.

Figure 9: Icreasing concentrations of serine were tested. a) 0 mM control - circular colony b)5 mM - colony shape was rendered void due to mishandling with semi-solid agar c) 10 mM - possible elliptical shape colony d) 15 mM - circular colony e) 20 mM - colony shape was rendered void due to mishandling with semi - solid agar f) 25mM - circular colony. Data collected by Imperial iGEM 2011.

Upon analysis of the data, a definitive conclusion could not be drawn. This is due to a number of factors in the setup of the assay. Attractant is localised, and it diffuses in all directions, however the plate is finite and therefore loss of concentration gradient occurs over time. Another factor is the semi-solid agar itself, a medium which is very difficult to manipulate. Although the results were vague, a number of points can be drawn. Positive controls have shown that E. coli DH5α are capable of chemotaxis. They have also shown that when the added serine concentration is too high (10-1 M), bacteria do not swim directly towards the attractant source because the surrounding medium is saturated. Instead they perform chemotaxis in a direction towards which the attractant concentration does not saturate the chemoreceptors. This movement still occurs regardless of the fact that the bacteria are moving away from the attractant source. Negative controls have shown that at any tested concentration of L(-)malic acid, E. coli DH5α without PA2652 or mcpS construct do not perform chemotaxis towards attractant. We could not conclude a result for the mcpS or PA2652 construct with this assay since the colonies observed have a range of shapes at different attractant concentrations.

2.3 Quantitative Analysis


In comparison to qualitative assays, quantitative assays are more informative as they provide cell count based on different attractant concentrations and therefore allow identification of the optimal attractant concentration. Our analyses were based on the high throughput capillary assay [3].

We have modified this assay to obtain cell count through a flow cytometer BD FACScan in contrast to commonly used CFU count. The assay itself is based on a number of capillary tubes filled with different concentrations of attractant placed into bacterial suspension for a period of 30 minutes. During this period, bacteria are expected to swim up the capillary and the cell count can be measured by flow cytometry.

Table 2: The concentrations of tested serine (control) & malate attractant.

Molar range

0 mM

0.001 mM

0.01 mM

0.1 mM

1 mM

10 mM

100 mM

Milimolar range

0 mM

5 mM

10 mM

15 mM

20 mM

25 mM

30 mM

The capillaries did not function as we wanted due to a number of issues, which we have not managed to fully address in our set up. The first problem was to keep the liquid in the capillary when it was not suspended in liquid. We tried parafilming the top of the glass capillary tubes but it did not create a full vacuum. This minimised our choice of capillaries to those that can suspend liquid, so we continued testing with syringes and 10 µL BioRobotix™ tips with aerosol resistant tips. The second main problem was the generation of surface tension when we tried to remove the capillaries from the liquid. This issue was unable to be rectified but in future setups we will address this problem by using capillaries with optimal diameter.

Figure 10: Failed set up of high-throughput capillary assay, using syringes loaded with 100 µL of attractant. Possible reason for non-functionality of this assay is surface tension upon removal of the syringes from bacterial suspension.

Figure 11: Failed set up of high-throughput capillary assay, using 10 µL BioRobotix™ tips. Possible reason for non-functionality of this assay was the use of multichannel pipette.

To improve the assay we built a grid for the capillary tubes and performed the experiment on a perfectly levelled surface. However, removal of the rack was impossible without the solutions being influenced by surface tension. The surface tension influenced syringe capillaries to greater extent than 10 µL BioRobotix™ tips. The BioRobotix™ tips however seemed to have a problem with releasing equal amounts of attractant with bacteria after the assay was finished and some of the tips did not release any of the liquid. One reason for this may be that we used a multichannel pipette. The problems in setup were translated in the data analyzed with CyflogicTM software, CyFlo Ltd, Finland.


Figure 12: Negative controls are cells without construct PA2652 exposed to increasing malate concentrations. Positive controls are cells containing the PA2652 construct exposed to increasing serine concentrations. PA2652 cells contain the construct, exposed to increasing malate concentrations. Blank consists of empty motility buffer exposed to increasing attractant concentrations. Due to an inability to find any statistically significant trends in the data we have concluded that the assay setup is unable to provide a positive or negative result.


We have partially managed to observe rewired chemotaxis towards malate in E. coliDH5α expressing the Phyto-Route construct by behavioural analysis. In future work we aim to obtain quantitative data demonstrating a chemotactic response towards a malate concentration gradient. Although many of the experimental setups failed to provide the desired results, the extensive troubleshooting in their has provided an insight into the specifications needed to design an assay appropriate to analyse the Phyto-Route construct.

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3. Uptake of bacteria into roots

Figure 13: GFP-expressing E. coli cells inside Arabidopsis roots (data and imaging by Imperial College iGEM 2011).

One important part of our project is the uptake of our bacteria into plant roots. The observation that this occurs in both Arabidopsis and tomatoes and that both E. coli and the yeast Saccharomyces cerevisiae can be taken up by roots (albeit under controlled lab settings) is new and was only published last year [4].

As the amount of IAA needed for enhancing plant growth depends on whether our bacteria are producing the compound outside or inside the plants, we attempted to replicate these findings.

In preparation for confocal imaging, we met with Dr Martin Spitaler and Mark Scott who advised us on how to prepare samples and image them. Confocal microscopy is much more precise than conventional light field microscopy as it eliminates background light by focusing the laser through a pinhole (Mark Scott, oral communication). The confocal microscopy we conducted was focused on imaging GFP expressing bacteria inside Arabidopsis roots to show that uptake of the bacteria takes place.

In an imaging trial run we found that natural fluorescence can be measured in roots in a spectrum that does not interfere with measuring the superfolder GFP expressed by our E. coli cells. In addition, the autofluorescence is strong enough to enable us to identify individual cells (Video 2). We did therefore not need to dye the roots before imaging.





Video 2: Stack of wt Arabidopsis root. The root can be imaged at around 488nm. Imaging carried out by Dr Martin Spitaler for Imperial College iGEM 2011.


In order to prepare the GFP-expressing bacteria for plant uptake, they were spun down and media was exchanged prior to incubation at 37°C to reach exponential phase. Bacteria were then spun down and resuspended in wash buffer (5mM MES) to reach OD 30. 8 ml, 4 ml and 2 ml were added to separate flasks, containing 100ml of half-MS media each. 4ml and 6ml of wash buffer were added to the flasks containing 4ml and 2ml bacteria, respectively. 8 ml of wash buffer was added to the negative control. Ten Arabidopsis seedlings were distributed into each of the flasks. Incubation was carried out for 15 hours prior to imaging.

Prior to imaging, roots were washed in PBS to wash off bacteria and facilitate imaging. We imaged the plants incubated with 8ml of bacteria and were able to find bacteria inside one of the roots. A 3D picture was taken of uninfected roots and roots containing bacteria by taking a Z stack image using confocal microscopy (Video 3).

Video 3: Bacteria inside of Arabidopsis thaliana roots. These videos were put together using Z-stack images taken on a confocal microscope. These images can be converted into 3D pictures that allow us to verify that the bacteria can indeed be found inside the roots rather than on the surface (data and imaging by Imperial College iGEM 2011).


We repeated this experiment at a later date with plants that had been allowed to grow for a longer period of time. The bacteria were predominantly found in root hairs and inside of cells on the root surface (Figure 13). These plants were older than the ones previously used for uptake experiments and bacterial uptake was much more predominant.

These results show that we would be able to expose plants to IAA from inside the roots themselves. This is extremely important for assessing the secretion of IAA by our bacteria. Nevertheless, we will need to conduct further uptake experiments in soil and with other plant species to confirm that uptake would be possible in the projet's eventual implementation stage.

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4. References

[1] National Institute of Health. (no date) Model Organisms for Biomedical Research. [Online]. Available from: http://www.nih.gov/science/models/arabidopsis/index.html [Accessed 21st September 2011].

[2] Jain RK and Pandey J (2010) Chemotactic responses. Timmis VKN, ed. Handbook of hydrocarbon and lipid microbiology. Berlin, Heidelberg: Springer Berlin Heidelberg, pp. 3933-3955. Available at: http://www.springerlink.com/content/x458521h8420l478/ [Cited September 16, 2011].

[3] Bainer R, Park H and Cluzel P (2003) A high-throughput capillary assay for bacterial chemotaxis. Journal of Microbiological Methods 55: 315-319.

[4] Paungfoo-Lonhienne C et al. (2010) Turning the table: plants consume microbes as a source of nutrients.PLoS One 5(7): e11915.

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