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− | <h1 class="headline"><a href="https://2017.igem.org/Team:ETH_Zurich/Experiments">Experiments</a>: | + | <h1 class="headline">Tumor Sensor Experiments</h1> |
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+ | <p><em>This is a detailed experiment page dedicated to an individual function. To access other experiments, visit <a href="https://2017.igem.org/Team:ETH_Zurich/Experiments">Experiments</a>. To get a quick glimpse at all of our achievements, check out <a href="https://2017.igem.org/Team:ETH_Zurich/Results">Results</a>.</em></p> | ||
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+ | |||
+ | <section class="emphasize"> | ||
+ | <h1>ACHIEVEMENTS</h1> | ||
+ | |||
+ | <ul> | ||
+ | <li>Built a hybrid promoter that implements AND-gate logic evaluation of L-lactate and AHL. </li> | ||
+ | <li>Part designed rationally, according to a preliminary functioning point search thanks to our model.</li> | ||
+ | <li>Characterized this promoter and found that it can distinguish lactate and AHL levels associated with healthy from those associated with tumor tissue.</li> | ||
+ | <li>Fed the obtained experimental data to the model to be able to chose the best version of the hybrid promoter for our application.</li> | ||
+ | </ul> | ||
+ | </section> | ||
<section> | <section> | ||
<h1>Introduction</h1> | <h1>Introduction</h1> | ||
− | <p>We incorporated a module into our system | + | <p>We incorporated a tumor sensor module into our system. With this, our engineered bacteria would be able to autonomously decide if they are in tumor tissue or not. This decision is taken upon AND-logic integration of two inputs: AHL and lactate (figure 1). Only if both chemicals are present, the downstream modules are activated. To achieve such behaviour, we designed a synthetic promoter consisting of operators taken from <a href="http://parts.igem.org/Part:BBa_K1847007">BBa_K1847007</a>, part of the Lactate sensing system <a href="#bib4" class="forward-ref">[4]</a> and the <a href="http://parts.igem.org/Part:BBa_R0062">pLux</a> promoter, part of the quorum sensing system. This promoter is regulated by the two proteins <a href="http://parts.igem.org/Part:BBa_K1847001">LldR</a> and <a href="http://parts.igem.org/Part:BBa_C0062">LuxR</a>. LldR binds to the operators O1 and O2. This introducing a loop in the DNA that masks putative transcription factor binding sites. When lactate is present and binds to LldR, the protein undergoes a conformational change leading to release of the loop. When LuxR binds to AHL, it also undergoes a conformational change which leads to formation of LuxR homo-dimers that bind to the pLux sequence and recruit RNA polymerase whereby transcription is initiated. For a more thorough explanation visit the <a href="https://2017.igem.org/Team:ETH_Zurich/Circuit/Fa_Tumor_Sensor">circuit page</a>.</p> |
<figure class="fig-nonfloat" style="width:700px;"> | <figure class="fig-nonfloat" style="width:700px;"> | ||
<img src="https://static.igem.org/mediawiki/2017/3/32/T--ETH_Zurich--WL_TS_figure1.png"> | <img src="https://static.igem.org/mediawiki/2017/3/32/T--ETH_Zurich--WL_TS_figure1.png"> | ||
− | <figcaption>Figure 1. Depictions of the three designs of the AND-gates we characterized. Design | + | <figcaption>Figure 1. Depictions of the three designs of the AND-gates we characterized. Design <b>A</b> is based on the part <a href="http://parts.igem.org/Part:BBa_K1847007">BBa_K1847007</a> while designs <b>B</b> and <b>C</b> differ in the spacing after O2 and the numbers of O1 and O2, respecitvely. In all cases, only if both inducers, AHL and Lactate, are present, the DNA should be accessible for binding of a dimerized <a href=http:"http://parts.igem.org/Part:BBa_C0062">LuxR</a>, thus activating expression of downstream genes.</figcaption> |
</figure> | </figure> | ||
</section> | </section> | ||
+ | <section> | ||
+ | <h1>Overview of the Experiments</h1> | ||
+ | |||
+ | <p>To build and characterize an AND-gate that would allow to differentiate between healthy and tumor tissue, we ran a sequence of experiments: | ||
+ | <ul> | ||
+ | <li>Phase I: We <a href="https://2017.igem.org/Team:ETH_Zurich/Experiments/Tumor_Sensor#phaseI">rationally designed</a> the genetic sequence of the hybrid promoter. To do so, we relied on work done by previous iGEM teams and <a href="https://2017.igem.org/Team:ETH_Zurich/Model/Environment_Sensing/parameter_space">let our model guide us</a> towards the most efficient design.</li> | ||
+ | <li>Phase II: We transformed <span class="bacterium">E. Coli</span> Nissle 1917 with plasmids containing only the quorum sensing system, grew single colonies to different densities and <a href="https://2017.igem.org/Team:ETH_Zurich/Experiments/Tumor_Sensor#QS_end_point">evaluated their response</a>. With this experiment, we aimed to find the threshold density at which the quorum sensing system would be activated. The data <a href="https://2017.igem.org/Team:ETH_Zurich/Model/Environment_Sensing/parameter_fitting">was also used to infer important parameters of the system</a> and thus guide further design. We found that we can modulate final population densities and that with the initial quorum sensing system (not in AND-gate context), the activation threshold lies at an OD of ~2.</li> | ||
+ | <li>We <a href="https://2017.igem.org/Team:ETH_Zurich/Experiments/Tumor_Sensor#AND_gate_wo_QS">evaluated the response</a> of our AND-gate designs to varying amounts of lactate and AHL. Based on this data we evaluated functionality of the rationally designed hybrid promoters and <a href="https://2017.igem.org/Team:ETH_Zurich/Model/In_Silico_Final">determined the design most suitable to our system's needs</a>. We concluded that the hybrid promoter enables <i>E. coli</i> to differentiate lactate and AHL levels associated with healthy and tumor tissue.</li> | ||
+ | <li>Phase III: Finally, we transformed <span class="bacterium">E. Coli</span> TOP10 with plasmids containing the whole tumor sensor circuit and <a href="https://2017.igem.org/Team:ETH_Zurich/Experiments/Tumor_Sensor#AND_gate_with_QS">evaluated</a> the cultures behaviour under healthy and tumor tissue conditions at steady-state population densities. With this experiment, we aimed at characterizing the bacteria's capability to autonomously interpret their environment with respect to lactate and population density. We found that at low densities, "tumor" lactate levels induce an increase in expression of GFP over conditions in healthy tissue. At high densities this effect is not very pronounced.</li> | ||
+ | </ul> | ||
+ | </p> | ||
+ | </section> | ||
<section id="phaseI"> | <section id="phaseI"> | ||
− | <h1>Initial System Design</h1> | + | <h1>Phase I: Initial System Design</h1> |
<p>The precise genetic design of our synthetic hybrid promoter was inspired by the <a href="https://2015.igem.org/Team:ETH_Zurich/Results#Characterization_of_synthetic_promoter_library">work of the ETH iGEM team 2015</a>. Based on their <a href="http://parts.igem.org/Part:BBa_K1847008">synthetic lactate-responsive promoter</a> we came up with the idea to introduce pLux at the place of their constitutive promoter. Considering potential steric requirements of LuxR, the regulator of pLux, we further suspected spacing between pLux and O2 to be of importance. Thus, we designed another version with increased spacing. Additionally, we hypothesized that including each operator site twice would result in a stronger effect of LldR.</p> | <p>The precise genetic design of our synthetic hybrid promoter was inspired by the <a href="https://2015.igem.org/Team:ETH_Zurich/Results#Characterization_of_synthetic_promoter_library">work of the ETH iGEM team 2015</a>. Based on their <a href="http://parts.igem.org/Part:BBa_K1847008">synthetic lactate-responsive promoter</a> we came up with the idea to introduce pLux at the place of their constitutive promoter. Considering potential steric requirements of LuxR, the regulator of pLux, we further suspected spacing between pLux and O2 to be of importance. Thus, we designed another version with increased spacing. Additionally, we hypothesized that including each operator site twice would result in a stronger effect of LldR.</p> | ||
− | <p>Before we started any designing of regulators, cloning or experimentation on the tumor sensor module, we built and | + | <p>Before we started any designing of regulators, cloning or experimentation on the tumor sensor module, we <a href="https://2017.igem.org/Team:ETH_Zurich/Model/Environment_Sensing/model">built a model</a> and made the most it to |
+ | <a href="https://2017.igem.org/Team:ETH_Zurich/Model/Environment_Sensing/parameter_space">find key parameters</a> relevant for the sequences design.</p> | ||
− | <p>< | + | <p> |
+ | <h2>KEY QUESTIONS</h2> | ||
<ul> | <ul> | ||
<li>Based on previous work done on quorum sensing: how strongly should LuxR and LuxI be expressed? <br> | <li>Based on previous work done on quorum sensing: how strongly should LuxR and LuxI be expressed? <br> | ||
− | <em> | + | <em><a href="https://2017.igem.org/Team:ETH_Zurich/Model/Environment_Sensing/parameter_space#parameter_search_sec">Long answer</a>. Quick answer:</em> Each 10 times stronger than the ones characterized <a href="https://2014.igem.org/Team:ETH_Zurich/expresults">here</a>.</li> |
<li>Similarly, what expression levels of LldP/LldR should be achieved in order to get enough sensitivity to differentiate tumor and non-tumor tissue?<br> | <li>Similarly, what expression levels of LldP/LldR should be achieved in order to get enough sensitivity to differentiate tumor and non-tumor tissue?<br> | ||
− | <em>Quick answer:</em> .. | + | <em><a href="https://2017.igem.org/Team:ETH_Zurich/Model/Environment_Sensing/parameter_space#experiment_guidelines">Long answer</a>. Quick answer:</em> Use the already well characterized part <a href="http://parts.igem.org/Part:BBa_K1847008">BBa_K1847008</a> </li> |
<li>At what density of the colony under experimental conditions should the quorum sensing system be activated?<br> | <li>At what density of the colony under experimental conditions should the quorum sensing system be activated?<br> | ||
− | <em>Quick answer:</em> At an optical density (<a href="https://en.wikipedia.org/wiki/OD600"> | + | <em><a href="https://2017.igem.org/wiki/index.php?title=Team:ETH_Zurich/Model/Environment_Sensing/parameter_fitting#od005">Long answer</a>. Quick answer:</em> At an optical density (<a href="https://en.wikipedia.org/wiki/OD600">OD600</a>) of 0.05. The population density in the colonized layer in tumors would translate to an OD of about 60. Contrary to <i>in vivo</i> conditions however, in our experimental setup there would be no diffusion of AHL out of the system, amounting to an "overestimation" of the population density compared to <i>in vivo</i> conditions. Therefore, the activation threshold of quorum sensing should be at such low ODs.</li> |
</ul< | </ul< | ||
</p> | </p> | ||
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</section> | </section> | ||
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<section id="QS_end_point"> | <section id="QS_end_point"> | ||
− | <h1>Quorum Sensing End-Point Characterization</h1> | + | <h1>Phase II: Quorum Sensing End-Point Characterization</h1> |
<p><b>OBJECTIVE</b><br> | <p><b>OBJECTIVE</b><br> | ||
− | Determine the population density at which the quorum system gets activated and provide | + | Determine the population density at which the quorum sensing system gets activated and provide data to <a href="https://2017.igem.org/Team:ETH_Zurich/Model/Environment_Sensing/parameter_fitting#QS_fitting">infer a<sub>LuxI</sub></a>, the production rate of LuxI in the model.</p> |
<p><b>PROCEDURE</b><br> | <p><b>PROCEDURE</b><br> | ||
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</figure> | </figure> | ||
− | <p>Subsequently, we let these colonies grow to different final population densities. This was achieved by varying glucose concentrations in a defined medium | + | <p>Subsequently, we let these colonies grow to different final population densities. This was achieved by varying glucose concentrations in a defined medium <a href="#bib1" class="forward-ref">[1]</a>. Population density was assessed by measuring absorbance at 600 nm wavelength. Fluorescence emitted by sfGFP and mCherry served as a read-out of the level of activation. A detailed protocol is available in <a href="https://2017.igem.org/Team:ETH_Zurich/Protocols">Protocols</a>.</p> |
<p><b>RESULTS</b><br> </p> | <p><b>RESULTS</b><br> </p> | ||
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</figure> | </figure> | ||
− | <p><b> | + | <p><b>CONCLUSIONS</b><br> |
<ul> | <ul> | ||
− | <li>We can modulate the density a bacterial population | + | <li>We can modulate the density of a bacterial population in defined media conditions by varying the amount of glucose.</li> |
<li>The quorum sensing system shows a response to increasing population densities.</li> | <li>The quorum sensing system shows a response to increasing population densities.</li> | ||
− | <li>The steep increase in fluorescence between | + | <li>The steep increase in fluorescence between Abs≤sub>600</sub> 0.4 and 0.5 indicates the threshold for activation of the quorum sensing system to be at around 0.4. As a rule of thumb, we established that OD values are around 4 times higher than A600 values (data not shown) for absorbances between 0.1 and 0.6 for the same sample. Thus, to fulfill the <a href="https://2017.igem.org/wiki/index.php?title=Team:ETH_Zurich/Model/Environment_Sensing/parameter_fitting#od005">criterium</a> according to the model (i.e activation at an OD of 0.05) further tuning of the system is needed.</li> |
</ul> | </ul> | ||
</p> | </p> | ||
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<section id="AND_gate_wo_QS"> | <section id="AND_gate_wo_QS"> | ||
− | <h1>AND-gate | + | <h1>Phase II: AND-gate Without Quorum Sensing</h1> |
<p><b>OBJECTIVE</b><br> | <p><b>OBJECTIVE</b><br> | ||
− | Determine the dose-response behaviour of our synthetic AND gate to the two | + | Determine the dose-response behaviour of our synthetic AND gate to the two inducers AHL and lactate. In this experiment we wanted to assess whether our designs would be capable to distinguish healthy and tumor tissue with respect to lactate and expected AHL concentrations.</p> |
<p><b>PROCEDURE</b><br> | <p><b>PROCEDURE</b><br> | ||
− | Two plasmids (<a href="https://static.igem.org/mediawiki/2017/4/4a/T--ETH_Zurich--piG17-2-004.gb">regulator</a> and actuator containing AND-gate designs <a href="https://static.igem.org/mediawiki/2017/b/b9/T--ETH_Zurich--piG17-1-008a.gb"> | + | Two plasmids (<a href="https://static.igem.org/mediawiki/2017/4/4a/T--ETH_Zurich--piG17-2-004.gb">regulator</a> and actuator containing AND-gate designs <a href="https://static.igem.org/mediawiki/2017/b/b9/T--ETH_Zurich--piG17-1-008a.gb"><b>A</b></a>, <a href="https://static.igem.org/mediawiki/2017/c/cb/T--ETH_Zurich--piG17-1-008b.gb"><b>B</b></a> and <a href="https://static.igem.org/mediawiki/2017/1/11/T--ETH_Zurich--piG17-1-008c.gb"><b>C</b></a>) required for the AND-gate were transformed into <span class="bacterium">E. coli</span> TOP10 (figure 4). Exponential-phase cultures were induced in microtiter plates under combinations of 8 different <a href="parts.igem.org/3OC6HSL">AHL</a> and 8 different L-lactate concentrations and measured after 5.5 hours growth in the plate. A detailed protocol is available under <a href="https://2017.igem.org/Team:ETH_Zurich/Protocols">Protocols.</a></p> |
<figure class="fig-nonfloat" style="width:400px;"> | <figure class="fig-nonfloat" style="width:400px;"> | ||
<img src="https://static.igem.org/mediawiki/2017/5/56/T--ETH_Zurich--WL_TS_ANDgate_wo_LuxI.png"> | <img src="https://static.igem.org/mediawiki/2017/5/56/T--ETH_Zurich--WL_TS_ANDgate_wo_LuxI.png"> | ||
− | <figcaption>Figure 4. Schematic depiction of the two plasmids that were transformed for this experiment. | + | <figcaption>Figure 4. Schematic depiction of the two plasmids that were transformed for this experiment. The regulator on top codes for constitutive expression of the regulators of our synthetic hybrid promoters, <a href="http://parts.igem.org/Part:BBa_K2500013">LldR/LldP</a> and <a href=http:"http://parts.igem.org/Part:BBa_C0062">LuxR</a>. The actuator plasmid consists of the AND-gate promoter as well as the fluorescent reporter <a href="http://parts.igem.org/Part:BBa_K515105">sfGFP</a>.</figcaption> |
</figure> | </figure> | ||
<p><b>RESULTS</b><br> | <p><b>RESULTS</b><br> | ||
− | All our synthetic promoters react to increasing inducer levels by increasing expression of the encoded gene. Hence, the highest level of activation coincides with the highest amounts of inducers. No activation is observed at low and intermediary concentrations of inducers and only in regimes with high amounts of inducer there is an increase in expression levels. | + | All our synthetic promoters react to increasing inducer levels by increasing expression of the encoded gene. Hence, the highest level of activation coincides with the highest amounts of both inducers. No activation is observed at low and intermediary concentrations of inducers and only in regimes with high amounts of inducer there is an increase in expression levels.<br> |
+ | We noticed that in a first experiment no plateau was reached and therefore expanded inducer concentration ranges in a second run. In this experiment we observe that a plateau was reached and we could use this data to <a href="https://2017.igem.org/wiki/index.php?title=Team:ETH_Zurich/Model/Environment_Sensing/AND_gate_fitting#fitand">fit our model of the AND-gate</a>. | ||
<figure class="fig-nonfloat" style="max-width:1200px"> | <figure class="fig-nonfloat" style="max-width:1200px"> | ||
<img src="https://static.igem.org/mediawiki/2017/9/91/T--ETH_Zurich--AND_gate_induction.png"> | <img src="https://static.igem.org/mediawiki/2017/9/91/T--ETH_Zurich--AND_gate_induction.png"> | ||
− | <figcaption>Figure 5. Dose-response of the different AND-gates to lactate and AHL. Shown are geometric means of two replicates of fold changes to the uninduced case. Note the strongly increased expression in regimes of highly concentrated inducers | + | <figcaption>Figure 5. a) Dose-response of the different AND-gates to lactate and AHL. Shown are geometric means of two replicates of fold changes to the uninduced case. Note the strongly increased expression in regimes of highly concentrated inducers versus the low expression in low-concentration regimes. b) Increased range of concentrations of both inducers. Shown are geometric means of fold-changes of biological triplicates. Note here that a plateau is reached at high inducer levels. This data was used to <a href="https://2017.igem.org/wiki/index.php?title=Team:ETH_Zurich/Model/Environment_Sensing/AND_gate_fitting#fitand">fit the model</a>.</figcaption> |
</figure> | </figure> | ||
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</p> | </p> | ||
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<ul> | <ul> | ||
<li>Our synthetic AND-gate promoter responds to both inputs lactate and AHL. Thus, it enables the engineered bacteria to sense the environment with regard to the inducers we chose.</li> | <li>Our synthetic AND-gate promoter responds to both inputs lactate and AHL. Thus, it enables the engineered bacteria to sense the environment with regard to the inducers we chose.</li> | ||
− | <li> | + | <li>Independently of the amount of the cognate inducer, both lactate and AHL alone at high concentrations lead to somewhat increased expression levels.</li> |
− | <li>While characterizing the <a href="https://2017.igem.org/Team:ETH_Zurich/Circuit/Fb_MRI_Contrast_Agent">MRI Imaging Module</a>, a <a href="https://2017.igem.org/Team:ETH_Zurich/Experiments/MRI_Contrast_Agent#dose-response">dose-response curve</a> of the pLux promoter to AHL was obtained. | + | <li>While characterizing the <a href="https://2017.igem.org/Team:ETH_Zurich/Circuit/Fb_MRI_Contrast_Agent">MRI Imaging Module</a>, a <a href="https://2017.igem.org/Team:ETH_Zurich/Experiments/MRI_Contrast_Agent#dose-response">dose-response curve</a> of the pLux promoter to AHL was obtained. We found that the threshold for induction is around 10<sup>-7</sup> M AHL. Here, this value lies around 10<sup>-5</sup> M AHL. Thus, we came to realize that we cannot assume the behaviour of pLux alone to be similar to that of pLux in the hybrid promoter context. Based on this result we decided to focus more on the quorum sensing system in the hybrid promoter context rather than on tuning it independently as in figure 3. Also, to find the AHL and lactate levels where expression plateaus, we ran the experiment again with a broader range of inducer concentrations (see figure 5 b).</li> |
− | <li>We hypothesize that this decrease in sensitivity is caused by reduced | + | <li>We hypothesize that this decrease in sensitivity is caused by reduced accessibility of LuxR to the pLux promoter in the hybrid promoter context. Indeed, we were able to <a href="https://2017.igem.org/wiki/index.php?title=Team:ETH_Zurich/Model/Environment_Sensing/AND_gate_fitting#KluxR_increase">identify this effect thanks to our model</a>.</li> |
− | <li> | + | <li>Healthy tissues usually contain up to 1 mM of Lactate, while tumor tissues see an increased level of up to 5mM <a href="#bib2" class="forward-ref">[2]</a>. Thus, for all promoter designs, independent of AHL levels, activity is increased consistently around 3 to 5 times from "healthy" to "tumor" lactate levels.</li> |
− | + | <li>Based on this data we conclude that our hybrid promoter allows CATE to distinguish levels of lactate and AHL in healthy tissue to those in tumor tissue. The highest fold-change differences were observed in designs a and b. </li> | |
− | <li>Based on this data we conclude that our hybrid promoter allows CATE to distinguish levels of lactate and AHL in healthy tissue to those in tumor tissue. The highest fold-change differences were observed in designs a and b.</li> | + | <li>These results were further utilized to <a href="https://2017.igem.org/Team:ETH_Zurich/Model/Environment_Sensing/AND_gate_fitting#improve">improve our model</a> and <a href="https://2017.igem.org/Team:ETH_Zurich/Model/Environment_Sensing/AND_gate_fitting#fitand">fit the parameters</a> regarding the hybrid promoters. A <a href="https://2017.igem.org/Team:ETH_Zurich/Model/In_Silico_Final">final simulation</a> integrating all the data fitted so far was performed to be able to chose the <a href="https://2017.igem.org/Team:ETH_Zurich/Model/In_Silico_Final#concl">best performing hybrid promoter</a> for our application.</li> |
</ul> | </ul> | ||
</p> | </p> | ||
</section> | </section> | ||
− | <section id=" | + | <section id="AND_gate_with_QS"> |
− | <h1>AND-gate with Quorum Sensing</h1> | + | <h1>Phase III: AND-gate with Quorum Sensing</h1> |
<p><b>OBJECTIVE</b><br> | <p><b>OBJECTIVE</b><br> | ||
− | Characterize the behaviour of the AND-gate to populations at steady-state but varying densities. In this case, the bacteria are transformed with the <a href="https://static.igem.org/mediawiki/2017/4/4a/T--ETH_Zurich--piG17-2-004.gb">regulator plasmid</a> and the actuator plasmid with designs <a href="https://static.igem.org/mediawiki/2017/1/12/T--ETH_Zurich--piG17-1-012a.gb"> | + | Characterize the behaviour of the AND-gate to populations at steady-state but varying densities. In this case, the bacteria are transformed with the <a href="https://static.igem.org/mediawiki/2017/4/4a/T--ETH_Zurich--piG17-2-004.gb">regulator plasmid</a> and the actuator plasmid with designs <a href="https://static.igem.org/mediawiki/2017/1/12/T--ETH_Zurich--piG17-1-012a.gb"><b>A</b></a> and <a href="https://static.igem.org/mediawiki/2017/d/d3/T--ETH_Zurich--piG17-1-012b.gb"><b>B</b></a> that, additionally to the one used in the experiment above, also contained a gene for <a href="http://parts.igem.org/Part:BBa_K1897009">LuxI</a>, the enzyme that catalyzes synthesis of AHL <a href="#bib5" class="forward-ref">[5]</a>. This enables the bacteria to perform quorum sensing themselves.</p> |
<p><b>PROCEDURE</b><br> | <p><b>PROCEDURE</b><br> | ||
− | The two plasmids required for the AND-gate and autonomous quorum sensing were transformed into <span class="bacterium">E. coli</span> | + | The two plasmids required for the AND-gate and autonomous quorum sensing were transformed into <span class="bacterium">E. coli</span> TOP10 (figure 6). Cultures were grown over night in deep-well plates in defined media with varying lactate and glucose concentrations. The measurements of population density and GFP fluorescence were taken on a plate reader after overnight growth. A detailed protocol is available under <a href="https://2017.igem.org/Team:ETH_Zurich/Protocols">Protocols.</a> |
<figure class="fig-nonfloat" style="width:400px;"> | <figure class="fig-nonfloat" style="width:400px;"> | ||
<img src="https://static.igem.org/mediawiki/2017/2/21/T--ETH_Zurich--ANDgate_w_LuxI.png"> | <img src="https://static.igem.org/mediawiki/2017/2/21/T--ETH_Zurich--ANDgate_w_LuxI.png"> | ||
− | <figcaption>Figure 6. Schematic depiction of the two plasmids that were transformed for this experiment. These two plasmids enable | + | <figcaption>Figure 6. Schematic depiction of the two plasmids that were transformed for this experiment. These two plasmids enable cells to perform quorum sensing autonomously and react to different lactate concentrations in their environment.</figcaption> |
</figure> | </figure> | ||
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<figure class="fig-nonfloat" style="width:700px;"> | <figure class="fig-nonfloat" style="width:700px;"> | ||
<img src="https://static.igem.org/mediawiki/2017/1/1b/T--ETH_Zurich--AND_vsLuxI_B_norm.png"> | <img src="https://static.igem.org/mediawiki/2017/1/1b/T--ETH_Zurich--AND_vsLuxI_B_norm.png"> | ||
− | <figcaption>Figure 7. Fluorescence normalized to population density | + | <figcaption>Figure 7. Fluorescence normalized to population density versus population density. Data reflects behaviour of AND-gate design <b>B</b>. Blue circles correspond to media lacking lactate, green to media containing 1 mM lactate ("healthy"), and red to 5 mM lactate ("tumor"). Circle styles correspond to three different biological replicates. Color-shading indicates the areas in which the data points are distributed for each concentration of lactate. The densities of the cultures at steady-state were modulated by varying the amount of provided glucose in the media. It becomes apparent that with higher densities comes higher activation and that for lower population densities, lactate has a positive influence on GFP expression levels.</figcaption> |
</figure> | </figure> | ||
− | There is a clear increase in fluorescence both for increasing lactate concentrations as well as population densities. Fold-changes in fluoresence per | + | There is a clear increase in fluorescence both for increasing lactate concentrations as well as population densities. Fold-changes in fluoresence per Abs<sub>600</sub> between least and highest culture densities range between 2 and 8, reflecting activation of the quorum sensing part of our AND-gate system. Also for lactate, increasing concentrations coindice with increasing fluorescence levels of around 2 to 4 between 0 and 5 mM lactate. For the lactate levels we want CATE to be able to differentiate, namely 1 mM for healthy tissue versus 5 mM for tumor tissue, the fold-changes in activation range from 1 to 2-fold. |
</p> | </p> | ||
Line 154: | Line 164: | ||
<li>Our system is able to react to different population densities by increasing expression levels of the gene under control of the hybrid promoter.</li> | <li>Our system is able to react to different population densities by increasing expression levels of the gene under control of the hybrid promoter.</li> | ||
<li>We conclude that our system would enable CATE to differentiate "healthy" and "tumor" tissue lactate levels.</li> | <li>We conclude that our system would enable CATE to differentiate "healthy" and "tumor" tissue lactate levels.</li> | ||
− | <li>The cultures didn't reach | + | <li>The cultures didn't reach OD600 as low as 0.05 (which would be the density <a href="https://2017.igem.org/wiki/index.php?title=Team:ETH_Zurich/Model/Environment_Sensing/parameter_fitting#od005">where we want the activation threshold</a>). Nevertheless, based on this data we conclude that the activation threshold is at an A600 of ~1.</li> |
<li>Compared to the experiment without autonomous quorum sensing, the influence of lactate is weakend. While in the first case, the fold change between "healthy" and "tumor" lactate levels is around 5, in the latter case this value is reduced to around 2. We hypothesize that this is an artefact caused by accumulation of GFP in non-dividing cells found in steady-state cultures such as the ones in this experiment.</li> | <li>Compared to the experiment without autonomous quorum sensing, the influence of lactate is weakend. While in the first case, the fold change between "healthy" and "tumor" lactate levels is around 5, in the latter case this value is reduced to around 2. We hypothesize that this is an artefact caused by accumulation of GFP in non-dividing cells found in steady-state cultures such as the ones in this experiment.</li> | ||
<li>Similarly, the fold-change is not as pronounced in this experiment compared to the one shown in figure 5 between very low and very high AHL amounts. This could indicate that AHL concentrations in the cultures were in the range of 10<sup>-11</sup> to 10<sup>-8</sup> M, which is where we observed similar fold-changes before. Another explanation for this could also be the artefact already mentioned.</li> | <li>Similarly, the fold-change is not as pronounced in this experiment compared to the one shown in figure 5 between very low and very high AHL amounts. This could indicate that AHL concentrations in the cultures were in the range of 10<sup>-11</sup> to 10<sup>-8</sup> M, which is where we observed similar fold-changes before. Another explanation for this could also be the artefact already mentioned.</li> | ||
Line 167: | Line 177: | ||
<ol> | <ol> | ||
<li id="bib1">Contois, D. E. "Kinetics of bacterial growth: relationship between population density and specific growth rate of continuous cultures." <cite>Microbiology</cite> 21.1 (1959): 40-50. <a href="https://doi.org/10.1099/00221287-21-1-40">doi: 10.1099/00221287-21-1-40</a></li> | <li id="bib1">Contois, D. E. "Kinetics of bacterial growth: relationship between population density and specific growth rate of continuous cultures." <cite>Microbiology</cite> 21.1 (1959): 40-50. <a href="https://doi.org/10.1099/00221287-21-1-40">doi: 10.1099/00221287-21-1-40</a></li> | ||
− | <li id="bib2 | + | <li id="bib2">Yong Wu, Yunzhou Dong, Mohammad Atefi, Yanjun Liu, Yahya Elshimali, and Jaydutt V. Vadgama, “Lactate, a Neglected Factor for Diabetes and Cancer Interaction,” <cite>Mediators of Inflammation</cite>, vol. 2016, Article ID 6456018, 12 pages, 2016. <a href="https://doi:10.1155/2016/6456018">doi:10.1155/2016/6456018</a></li> |
− | <li id="bib3" | + | <li id="bib3">Stritzker, Jochen, et al. "Tumor-specific colonization, tissue distribution, and gene induction by probiotic Escherichia coli Nissle 1917 in live mice." <cite>International journal of medical microbiology</cite> 297.3 (2007): 151-162.</li> |
<li id="bib4">Miller, Melissa B., and Bonnie L. Bassler. "Quorum sensing in bacteria." <cite>Annual Reviews in Microbiology</cite> 55.1 (2001): 165-199. <a href="https://doi.org/10.1146/annurev.micro.55.1.165">doi: 10.1146/annurev.micro.55.1.165</a></li> | <li id="bib4">Miller, Melissa B., and Bonnie L. Bassler. "Quorum sensing in bacteria." <cite>Annual Reviews in Microbiology</cite> 55.1 (2001): 165-199. <a href="https://doi.org/10.1146/annurev.micro.55.1.165">doi: 10.1146/annurev.micro.55.1.165</a></li> | ||
<li id="bib5">Fuqua, W. Claiborne, Stephen C. Winans, and E. Peter Greenberg. "Quorum sensing in bacteria: the LuxR-LuxI family of cell density-responsive transcriptional regulators." <cite>Journal of bacteriology</cite> 176.2 (1994): 269. <a href="https://doi.org/10.1128/jb.176.2.269-275.1994 ">doi: 10.1128/jb.176.2.269-275.1994</a></li> | <li id="bib5">Fuqua, W. Claiborne, Stephen C. Winans, and E. Peter Greenberg. "Quorum sensing in bacteria: the LuxR-LuxI family of cell density-responsive transcriptional regulators." <cite>Journal of bacteriology</cite> 176.2 (1994): 269. <a href="https://doi.org/10.1128/jb.176.2.269-275.1994 ">doi: 10.1128/jb.176.2.269-275.1994</a></li> | ||
− | |||
− | |||
</ol> | </ol> | ||
</section> | </section> |
Latest revision as of 00:22, 2 November 2017
Tumor Sensor Experiments
This is a detailed experiment page dedicated to an individual function. To access other experiments, visit Experiments. To get a quick glimpse at all of our achievements, check out Results.
ACHIEVEMENTS
- Built a hybrid promoter that implements AND-gate logic evaluation of L-lactate and AHL.
- Part designed rationally, according to a preliminary functioning point search thanks to our model.
- Characterized this promoter and found that it can distinguish lactate and AHL levels associated with healthy from those associated with tumor tissue.
- Fed the obtained experimental data to the model to be able to chose the best version of the hybrid promoter for our application.
Introduction
We incorporated a tumor sensor module into our system. With this, our engineered bacteria would be able to autonomously decide if they are in tumor tissue or not. This decision is taken upon AND-logic integration of two inputs: AHL and lactate (figure 1). Only if both chemicals are present, the downstream modules are activated. To achieve such behaviour, we designed a synthetic promoter consisting of operators taken from BBa_K1847007, part of the Lactate sensing system [4] and the pLux promoter, part of the quorum sensing system. This promoter is regulated by the two proteins LldR and LuxR. LldR binds to the operators O1 and O2. This introducing a loop in the DNA that masks putative transcription factor binding sites. When lactate is present and binds to LldR, the protein undergoes a conformational change leading to release of the loop. When LuxR binds to AHL, it also undergoes a conformational change which leads to formation of LuxR homo-dimers that bind to the pLux sequence and recruit RNA polymerase whereby transcription is initiated. For a more thorough explanation visit the circuit page.
Overview of the Experiments
To build and characterize an AND-gate that would allow to differentiate between healthy and tumor tissue, we ran a sequence of experiments:
- Phase I: We rationally designed the genetic sequence of the hybrid promoter. To do so, we relied on work done by previous iGEM teams and let our model guide us towards the most efficient design.
- Phase II: We transformed E. Coli Nissle 1917 with plasmids containing only the quorum sensing system, grew single colonies to different densities and evaluated their response. With this experiment, we aimed to find the threshold density at which the quorum sensing system would be activated. The data was also used to infer important parameters of the system and thus guide further design. We found that we can modulate final population densities and that with the initial quorum sensing system (not in AND-gate context), the activation threshold lies at an OD of ~2.
- We evaluated the response of our AND-gate designs to varying amounts of lactate and AHL. Based on this data we evaluated functionality of the rationally designed hybrid promoters and determined the design most suitable to our system's needs. We concluded that the hybrid promoter enables E. coli to differentiate lactate and AHL levels associated with healthy and tumor tissue.
- Phase III: Finally, we transformed E. Coli TOP10 with plasmids containing the whole tumor sensor circuit and evaluated the cultures behaviour under healthy and tumor tissue conditions at steady-state population densities. With this experiment, we aimed at characterizing the bacteria's capability to autonomously interpret their environment with respect to lactate and population density. We found that at low densities, "tumor" lactate levels induce an increase in expression of GFP over conditions in healthy tissue. At high densities this effect is not very pronounced.
Phase I: Initial System Design
The precise genetic design of our synthetic hybrid promoter was inspired by the work of the ETH iGEM team 2015. Based on their synthetic lactate-responsive promoter we came up with the idea to introduce pLux at the place of their constitutive promoter. Considering potential steric requirements of LuxR, the regulator of pLux, we further suspected spacing between pLux and O2 to be of importance. Thus, we designed another version with increased spacing. Additionally, we hypothesized that including each operator site twice would result in a stronger effect of LldR.
Before we started any designing of regulators, cloning or experimentation on the tumor sensor module, we built a model and made the most it to find key parameters relevant for the sequences design.
KEY QUESTIONS
- Based on previous work done on quorum sensing: how strongly should LuxR and LuxI be expressed?
Long answer. Quick answer: Each 10 times stronger than the ones characterized here. - Similarly, what expression levels of LldP/LldR should be achieved in order to get enough sensitivity to differentiate tumor and non-tumor tissue?
Long answer. Quick answer: Use the already well characterized part BBa_K1847008 - At what density of the colony under experimental conditions should the quorum sensing system be activated?
Long answer. Quick answer: At an optical density (OD600) of 0.05. The population density in the colonized layer in tumors would translate to an OD of about 60. Contrary to in vivo conditions however, in our experimental setup there would be no diffusion of AHL out of the system, amounting to an "overestimation" of the population density compared to in vivo conditions. Therefore, the activation threshold of quorum sensing should be at such low ODs.
Phase II: Quorum Sensing End-Point Characterization
OBJECTIVE
Determine the population density at which the quorum sensing system gets activated and provide data to infer aLuxI, the production rate of LuxI in the model.
PROCEDURE
We transformed E. coli Nissle with a regulator and an actuator plasmid (see figure 2), coding for constitutive expression of LuxR and Plux, sfGFP, mCherry and LuxI respectively (Figure 2).
Subsequently, we let these colonies grow to different final population densities. This was achieved by varying glucose concentrations in a defined medium [1]. Population density was assessed by measuring absorbance at 600 nm wavelength. Fluorescence emitted by sfGFP and mCherry served as a read-out of the level of activation. A detailed protocol is available in Protocols.
RESULTS
CONCLUSIONS
- We can modulate the density of a bacterial population in defined media conditions by varying the amount of glucose.
- The quorum sensing system shows a response to increasing population densities.
- The steep increase in fluorescence between Abs≤sub>600 0.4 and 0.5 indicates the threshold for activation of the quorum sensing system to be at around 0.4. As a rule of thumb, we established that OD values are around 4 times higher than A600 values (data not shown) for absorbances between 0.1 and 0.6 for the same sample. Thus, to fulfill the criterium according to the model (i.e activation at an OD of 0.05) further tuning of the system is needed.
Phase II: AND-gate Without Quorum Sensing
OBJECTIVE
Determine the dose-response behaviour of our synthetic AND gate to the two inducers AHL and lactate. In this experiment we wanted to assess whether our designs would be capable to distinguish healthy and tumor tissue with respect to lactate and expected AHL concentrations.
PROCEDURE
Two plasmids (regulator and actuator containing AND-gate designs A, B and C) required for the AND-gate were transformed into E. coli TOP10 (figure 4). Exponential-phase cultures were induced in microtiter plates under combinations of 8 different AHL and 8 different L-lactate concentrations and measured after 5.5 hours growth in the plate. A detailed protocol is available under Protocols.
RESULTS
All our synthetic promoters react to increasing inducer levels by increasing expression of the encoded gene. Hence, the highest level of activation coincides with the highest amounts of both inducers. No activation is observed at low and intermediary concentrations of inducers and only in regimes with high amounts of inducer there is an increase in expression levels.
We noticed that in a first experiment no plateau was reached and therefore expanded inducer concentration ranges in a second run. In this experiment we observe that a plateau was reached and we could use this data to fit our model of the AND-gate.
CONCLUSIONS
- Our synthetic AND-gate promoter responds to both inputs lactate and AHL. Thus, it enables the engineered bacteria to sense the environment with regard to the inducers we chose.
- Independently of the amount of the cognate inducer, both lactate and AHL alone at high concentrations lead to somewhat increased expression levels.
- While characterizing the MRI Imaging Module, a dose-response curve of the pLux promoter to AHL was obtained. We found that the threshold for induction is around 10-7 M AHL. Here, this value lies around 10-5 M AHL. Thus, we came to realize that we cannot assume the behaviour of pLux alone to be similar to that of pLux in the hybrid promoter context. Based on this result we decided to focus more on the quorum sensing system in the hybrid promoter context rather than on tuning it independently as in figure 3. Also, to find the AHL and lactate levels where expression plateaus, we ran the experiment again with a broader range of inducer concentrations (see figure 5 b).
- We hypothesize that this decrease in sensitivity is caused by reduced accessibility of LuxR to the pLux promoter in the hybrid promoter context. Indeed, we were able to identify this effect thanks to our model.
- Healthy tissues usually contain up to 1 mM of Lactate, while tumor tissues see an increased level of up to 5mM [2]. Thus, for all promoter designs, independent of AHL levels, activity is increased consistently around 3 to 5 times from "healthy" to "tumor" lactate levels.
- Based on this data we conclude that our hybrid promoter allows CATE to distinguish levels of lactate and AHL in healthy tissue to those in tumor tissue. The highest fold-change differences were observed in designs a and b.
- These results were further utilized to improve our model and fit the parameters regarding the hybrid promoters. A final simulation integrating all the data fitted so far was performed to be able to chose the best performing hybrid promoter for our application.
Phase III: AND-gate with Quorum Sensing
OBJECTIVE
Characterize the behaviour of the AND-gate to populations at steady-state but varying densities. In this case, the bacteria are transformed with the regulator plasmid and the actuator plasmid with designs A and B that, additionally to the one used in the experiment above, also contained a gene for LuxI, the enzyme that catalyzes synthesis of AHL [5]. This enables the bacteria to perform quorum sensing themselves.
PROCEDURE
The two plasmids required for the AND-gate and autonomous quorum sensing were transformed into E. coli TOP10 (figure 6). Cultures were grown over night in deep-well plates in defined media with varying lactate and glucose concentrations. The measurements of population density and GFP fluorescence were taken on a plate reader after overnight growth. A detailed protocol is available under Protocols.
RESULTS
There is a clear increase in fluorescence both for increasing lactate concentrations as well as population densities. Fold-changes in fluoresence per Abs600 between least and highest culture densities range between 2 and 8, reflecting activation of the quorum sensing part of our AND-gate system. Also for lactate, increasing concentrations coindice with increasing fluorescence levels of around 2 to 4 between 0 and 5 mM lactate. For the lactate levels we want CATE to be able to differentiate, namely 1 mM for healthy tissue versus 5 mM for tumor tissue, the fold-changes in activation range from 1 to 2-fold.
CONCLUSIONS
- Our system is able to react to different population densities by increasing expression levels of the gene under control of the hybrid promoter.
- We conclude that our system would enable CATE to differentiate "healthy" and "tumor" tissue lactate levels.
- The cultures didn't reach OD600 as low as 0.05 (which would be the density where we want the activation threshold). Nevertheless, based on this data we conclude that the activation threshold is at an A600 of ~1.
- Compared to the experiment without autonomous quorum sensing, the influence of lactate is weakend. While in the first case, the fold change between "healthy" and "tumor" lactate levels is around 5, in the latter case this value is reduced to around 2. We hypothesize that this is an artefact caused by accumulation of GFP in non-dividing cells found in steady-state cultures such as the ones in this experiment.
- Similarly, the fold-change is not as pronounced in this experiment compared to the one shown in figure 5 between very low and very high AHL amounts. This could indicate that AHL concentrations in the cultures were in the range of 10-11 to 10-8 M, which is where we observed similar fold-changes before. Another explanation for this could also be the artefact already mentioned.
References
- Contois, D. E. "Kinetics of bacterial growth: relationship between population density and specific growth rate of continuous cultures." Microbiology 21.1 (1959): 40-50. doi: 10.1099/00221287-21-1-40
- Yong Wu, Yunzhou Dong, Mohammad Atefi, Yanjun Liu, Yahya Elshimali, and Jaydutt V. Vadgama, “Lactate, a Neglected Factor for Diabetes and Cancer Interaction,” Mediators of Inflammation, vol. 2016, Article ID 6456018, 12 pages, 2016. doi:10.1155/2016/6456018
- Stritzker, Jochen, et al. "Tumor-specific colonization, tissue distribution, and gene induction by probiotic Escherichia coli Nissle 1917 in live mice." International journal of medical microbiology 297.3 (2007): 151-162.
- Miller, Melissa B., and Bonnie L. Bassler. "Quorum sensing in bacteria." Annual Reviews in Microbiology 55.1 (2001): 165-199. doi: 10.1146/annurev.micro.55.1.165
- Fuqua, W. Claiborne, Stephen C. Winans, and E. Peter Greenberg. "Quorum sensing in bacteria: the LuxR-LuxI family of cell density-responsive transcriptional regulators." Journal of bacteriology 176.2 (1994): 269. doi: 10.1128/jb.176.2.269-275.1994