Difference between revisions of "Team:Bielefeld-CeBiTec/Results/HeavyMetals"

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<h1>Lead</h1>  
 
<h1>Lead</h1>  
  
Lead is one of the most used metals, because of this lead is found in different parts of the environment (WHO: Fact sheet number 379, Lead poisoning and health).. The contamination of drinking water is often based on obstruct pipes. Long time absorption leads to adverse health effects in most organs in the body(EPA Health Effects: How Lead Affects the body). The main targets are the nervous system, brain and liver. These damages can finally cause death. The World Health Organization recommends a limit of 10 µg/L in drinking water (WHO: Guidelines for Drinking-water Quality,fourth edition).
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Lead is one of the most frequently used metals. Therefore, lead is found in many different parts of the environment (World Health Organization (WHO): Fact sheet number 379, Lead poisoning and health). The contamination of drinking water is often caused by obstructed pipes. Long time absorption leads to adverse health effects in most organs in the body (EPA Health Effects: How Lead Affects the body). The main targets are the nervous system, brain and liver. These damages can finally cause death. The World Health Organization recommends a limit of 10 µg/L in drinking water (WHO: Guidelines for Drinking-water Quality, fourth edition (2015)).  
  
 
<h2><i>in vivo</i></h2></br>
 
<h2><i>in vivo</i></h2></br>
<p>In addition to these we constructed a sensor for lead detection. It consists of PbrR, the repressor, and the lead specific promoter PbrAP. The promoter is regulated by the RcnR, which binds Pb<sup>2+</sup>-ions. As the former sensors this one encloses a sfGFP for detection via fluorescence. </p>
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<p>In addition to these we constructed a sensor for lead detection. It consists of PbrR, the repressor, and the lead specific promoter <i>PbrAP</i>. The promoter is regulated by the RcnR, which binds Pb<sup>2+</sup>-ions. As the former sensors this one encloses a sfGFP for detection via fluorescence. </p>
  
<p>Our lead sensor consists of parts of the chromosomal lead operon of <EM> Cupriavidusmetallidurans (Ralstoniametallidurans) </EM>. This operon includes the promoter PbrAP (<a href="http://parts.igem.org/Part:BBa_K1758332" target="_blank">BBa_K1758332 </a>) , which is regulated by the repressor pbrR. The PbrR belongs to the MerR family, of metal-sensing regulatoryproteins, and is Pb<sup>2+</sup>-inducible. Our sensor system comprises PbrR (<a href="http://parts.igem.org/Part:BBa_K1758330" target="_blank"> BBa_K1758330 </a>), which is under the control of a constitutive Promoter and PbrAP and a 5’ untranslated region, which controls the transcription of a sfGFP and increases the fluorescence. Fluorescence implemented by sfGFP protein is the measured output signal. </p>
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<p>Our lead sensor consists of parts of the chromosomal lead operon of <i>Cupriavidus metallidurans</i> (figure 2). This operon includes the promoter <i>PbrAP</i> (<a href="http://parts.igem.org/Part:BBa_K1758332" target="_blank">BBa_K1758332 </a>), which is regulated by the repressor PbrR. The PbrR belongs to the MerR family, of metal-sensing regulatory proteins, and is Pb<sup>2+</sup>-inducible. Our sensor system comprises <i>pbrR</i> (<a href="http://parts.igem.org/Part:BBa_K1758330" target="_blank"> BBa_K1758330 </a>), which is under the control of a constitutive Promoter and <i>PbrAP</i> and a 5’ untranslated region, which controls the transcription of a sfGFP and increases the fluorescence. Fluorescence implemented by sfGFP protein is the measured output signal (figure 3 and figure 4). </p>
  
 
  <figure style="width: 600px">
 
  <figure style="width: 600px">
 
<a href="https://static.igem.org/mediawiki/2015/a/a3/Bielefeld-CebiTec_in_vivo_Lead.jpeg" data-lightbox="heavymetals" data-title="  "><img src="https://static.igem.org/mediawiki/2015/a/a3/Bielefeld-CebiTec_in_vivo_Lead.jpeg" alt="genetical approach"></a>
 
<a href="https://static.igem.org/mediawiki/2015/a/a3/Bielefeld-CebiTec_in_vivo_Lead.jpeg" data-lightbox="heavymetals" data-title="  "><img src="https://static.igem.org/mediawiki/2015/a/a3/Bielefeld-CebiTec_in_vivo_Lead.jpeg" alt="genetical approach"></a>
<figcaption>Construct  konst.Prom + PbrR+CopAP-UTR-sfGFP <a href="http://parts.igem.org/Part:BBa_K1758334" target="_blank"> BBa_K1758334</a> consisting of konst.Prom + PbrR <a href="http://parts.igem.org/Part:BBa_K1758330" target="_blank"> BBa_K17583230</a> and PbrA-UTR-sfGF <a href="http://parts.igem.org/Part:BBa_K1758333" target="_blank"> BBa_K1758333</a> used for<i>in vivo</i> characterization.</figcaption>
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<figcaption>Figure 2: The concept of our <i>in vivo</i> lead sensor (<a href="http://parts.igem.org/Part:BBa_K1758333" target="_blank"> BBa_K1758333</a>), which consists of the repressor under the control of a constitutive promoter (<a href="http://parts.igem.org/Part:BBa_K1758330" target="_blank"> BBa_K17583230</a>) and the operator and promoter sequence of the lead inducible promoter. An untranslated region in front of the sfGFP, which is used for detection, enhances its expression (<a href="http://parts.igem.org/Part:BBa_K1758332" target="_blank"> BBa_K1758332</a>).</figcaption>
 
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<div class="col-md-6 text-center" style="margin-bottom: 50px"> <figure style="width: 600px">
 
<div class="col-md-6 text-center" style="margin-bottom: 50px"> <figure style="width: 600px">
<a href="http://https://static.igem.org/mediawiki/2015/d/d5/Bielefeld-CeBiTec_Biolector_lead.jpg" data-lightbox="heavymetals" data-title="Time course of the induction of a lead biosensor with sfGFP for different lead concentrations in vivo. The data are measured with BioLector and normalized on OD<sub>600</sub>. Error bars represent the standard deviation of two biological replicates. "><img src="https://static.igem.org/mediawiki/2015/d/d5/Bielefeld-CeBiTec_Biolector_lead.jpg" alt="Adjusting the detection limit"></a>
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<a href="http://https://static.igem.org/mediawiki/2015/d/d5/Bielefeld-CeBiTec_Biolector_lead.jpg" data-lightbox="heavymetals" data-title="Figure 3: Time course of the induction of a lead biosensor with sfGFP for different lead concentrations <i>in vivo</i>. The data are measured with BioLector and normalized to the OD<sub>600</sub>. Error bars represent the standard deviation of two biological replicates. "><img src="https://static.igem.org/mediawiki/2015/d/d5/Bielefeld-CeBiTec_Biolector_lead.jpg" alt="Adjusting the detection limit"></a>
<figcaption>Time course of the induction of a lead biosensor with sfGFP for different lead concentrations in vivo. The data are measured with BioLector and normalized on OD<sub>600</sub>. Error bars represent the standard deviation of two biological replicates. </figcaption>
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<figcaption>Figure 3: Time course of the induction of a lead biosensor with sfGFP for different lead concentrations <i>in vivo</i>. The data are measured with BioLector and normalized to the OD<sub>600</sub>. Error bars represent the standard deviation of two biological replicates. </figcaption>
 
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<div class="col-md-6 text-center" style="margin-bottom: 50px"><figure style="width: 600px">
 
<div class="col-md-6 text-center" style="margin-bottom: 50px"><figure style="width: 600px">
<a href="https://static.igem.org/mediawiki/2015/a/aa/Bielefeld-CeBiTec_Biolector_lead_Balkendiagramm.jpeg" data-lightbox="heavymetals" data-title="Fluorescence levels at three different stages of cultivation. Shown are levels after 60 minutes, 150 minutes and 650 minutes. Error bars represent the standard deviation of three biological replicates."><img src="https://static.igem.org/mediawiki/2015/a/aa/Bielefeld-CeBiTec_Biolector_lead_Balkendiagramm.jpeg" alt="Adjusting the detection limit"></a>
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<a href="https://static.igem.org/mediawiki/2015/a/aa/Bielefeld-CeBiTec_Biolector_lead_Balkendiagramm.jpeg" data-lightbox="heavymetals" data-title="Figure 4: Fluorescence levels at three different stages of cultivation. Shown are levels after 60 minutes, 150 minutes and 650 minutes. Error bars represent the standard deviation of two biological replicates. "><img src="https://static.igem.org/mediawiki/2015/a/aa/Bielefeld-CeBiTec_Biolector_lead_Balkendiagramm.jpeg" alt="Adjusting the detection limit"></a>
<figcaption>Fluorescence levels at three different stages of cultivation. Shown are levels after 60 minutes, 150 minutes and 650 minutes. Error bars represent the standard deviation of three biological replicates.</figcaption>
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<figcaption>Figure 4: Fluorescence levels at three different stages of cultivation. Shown are levels after 60 minutes, 150 minutes and 650 minutes. Error bars represent the standard deviation of two biological replicates. </figcaption>
 
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<p> The results of the lead sensor show in vivo no significant differences between the different concentrations. But you can see that the decreasing concentrations show a decrease in fluorescence. This biosensor showed the right trend. For using this sensor it has to be optimized. We don’t use this sensor in Cell-free-Protein-synthesis, because of the low expression of sfGFP and not enough time at our in vivo tests. In future it should be characterized with CFPS to show if this sensor have potential in this system in spite of the results in vivo.  
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<p>We tested our lead sensor with sfGFP as reporter gene, to test the functionality of the system. Moreover we tested different concentrations. The kinetic of our sensors response to different lead concentrations is shown in figure 3. The first 40 hours show a strong increase in fluorescence. After that the increase in fluorescence is slower. For better visualization the kinetics of figure 3 are represented as bars in figure 4. A fluorescence level difference for 60 min, 150 min and 650 min is represented.</p>
  
  
The differences between inductions with various lead concentrations are really slight therefore this sensor needs further optimization which was not possible in this limited time. But as there is a fluorescence response to lead this sensor has the potential work as expected. In the future a characterization in CFPS systems would be interesting. </p>
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<p> The results of the lead sensor show <i>in vivo</i> no significant differences between the different concentrations (figure 3). But you can see that the decreasing concentrations show a decrease in fluorescence. This biosensor showed the right trend. For using this sensor it has to be optimized. We did not use this sensor in Cell-free-Protein-synthesis, because of the low expression of sfGFP and a lack of time for <i>in vivo</i> tests. In future, it should be characterized with CFPS to show, that this sensor have potential in this system despite <i>in vivo</i> the results.
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The differences between inductions with various lead concentrations are really slight. Therefore, this sensor needs further optimization which was not possible in the limited time. Nevertheless,  there is a fluorescence response to lead. Therefore, this sensor should  work as expected. In the future a characterization in CFPS systems would be interesting </p>
  
 
<h3>References</h3>
 
<h3>References</h3>

Revision as of 00:07, 19 September 2015

iGEM Bielefeld 2015


Heavy Metals

Results

Adjusting the detection limit
Influence of heavy metals on the growth of E.coli KRX. The tested concentrations were 20 µg/L lead, 60 µg/L mercury, 60 µg/L chromium, 80 µg/L nickel, 40 mg/L copper, which represent ten times the WHO guideline. The influence of arsenic was not tested as E. coli is known to be resistant to arsenic.

We tested our heavy metal biosensors in Escherichia coli as well as in our cell-free protein synthesis.

Prior to the in vivo characterization, we tested whether the heavy metals have a negative effect on the growth of E. coli.

As can be seen from the figure, we observed no significant difference between the growth in the presence of heavy metals and the controls. This first experiment showed us that in vivo characterization of these sensors is possible. Most cultivations for in vivo characterization were performed in the BioLector. Due to the accuracy of this device, we could measure our samples in duplicates. Subsequently, all functional biosensors were tested in vitro.

Click on the test strip for the results of our biosensor tests in E. coli and in our CFPS:

teststrip

To summarize all

We have characterized heavy metal sensors for arsenic, chromium, copper, lead, mercury and nickel. The results for our nickel characterization indicated that the constructed nickel sensor is not suitable for our test strip. The sensors for lead and chromium showed great potential, as they showed responses to chromium or lead, but require further optimization. Copper, our new heavy metal sensor, worked as expected and was able to detect different copper concentrations. The already well-characterized sensors for arsenic and mercury were tested as well. While the arsenic sensor worked well in vivo, it requires some omptimization for the use in vitro. Mercury showed that a fully optimized sensor works very well in our in vitro system and has the potential to detect even lower concentrations than in vivo.