Difference between revisions of "Team:Newcastle/Results"

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           <h2 style="font-family: Rubik; text-align: left; margin-top: 1%"> Rationale and Aim </h2>
 
           <h2 style="font-family: Rubik; text-align: left; margin-top: 1%"> Rationale and Aim </h2>
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           <p> Biosensors, synthetic systems designed to detect and respond to a target analyte, are a common application of synthetic biology. However, the production and screening of multiple biosensor system variants is hindered by the inefficiency and specificity of the gene assembly techniques used. The production of circuit variants is important in biosensor production, as sensitivity to target molecules must be tuned. </br></p>
 
           <p> Biosensors, synthetic systems designed to detect and respond to a target analyte, are a common application of synthetic biology. However, the production and screening of multiple biosensor system variants is hindered by the inefficiency and specificity of the gene assembly techniques used. The production of circuit variants is important in biosensor production, as sensitivity to target molecules must be tuned. </br></p>
 
<p><b>Aim:</b> To develop a multicellular biosensor development platform which utilises cell-mixing, as opposed to genetic re-engineering, to construct biosensor variants.</p>
 
<p><b>Aim:</b> To develop a multicellular biosensor development platform which utilises cell-mixing, as opposed to genetic re-engineering, to construct biosensor variants.</p>
  
 
           <h2 style="font-family: Rubik; text-align: left; margin-top: 1%"> Background Information </h2>
 
           <h2 style="font-family: Rubik; text-align: left; margin-top: 1%"> Background Information </h2>
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           <p><b>Human Practices Quotes:</br></br>
 
           <p><b>Human Practices Quotes:</br></br>
 
<p>
 
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<h2 style="font-family: Rubik; text-align: left; margin-top: 1%"> Cell-to-Cell communication </h2>
 
<h2 style="font-family: Rubik; text-align: left; margin-top: 1%"> Cell-to-Cell communication </h2>
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           <p>Bacteria have native quorum sensing systems which enable cell-to-cell communication through the production and detection of hormone-like auto-inducers. These molecules allow the synchronisation of behaviour in large populations of bacterial cells (Waters & Bassler, 2005). One such system involves the autoinducer AHL (Acylated Homoserine Lactone). AHLs compose of a lactone ring with an acyl side chain containing between 4 and 18 carbons (Churchill & Chen, 2011). Various AHL synthases exist, which produce AHL with different modifications and side change lengths. AHL receptors are sensitive to AHLs of specific length. For example, it has been found that the Rhl system, producing and detecting AHL of acyl carbon length 4 and the Las system, producing and detecting AHL of acyl carbon length 12, exhibit little crosstalk – the receptor component of the system is sensitive only to carbon chains of the correct length (Brenner <i>et al</i>., 2007). The orthogonal nature of the AHL family of autoinducers has enabled their use in a variety of synthetic systems. They are often used as biological “wires”, linking either inter- or intracellular processes. These “wires” have been previously used in a number of synthetic biology systems, e.g. Gupta <i>et al</i>. (2013) and Tasmir <i>et al</i>. (2011).
 
           <p>Bacteria have native quorum sensing systems which enable cell-to-cell communication through the production and detection of hormone-like auto-inducers. These molecules allow the synchronisation of behaviour in large populations of bacterial cells (Waters & Bassler, 2005). One such system involves the autoinducer AHL (Acylated Homoserine Lactone). AHLs compose of a lactone ring with an acyl side chain containing between 4 and 18 carbons (Churchill & Chen, 2011). Various AHL synthases exist, which produce AHL with different modifications and side change lengths. AHL receptors are sensitive to AHLs of specific length. For example, it has been found that the Rhl system, producing and detecting AHL of acyl carbon length 4 and the Las system, producing and detecting AHL of acyl carbon length 12, exhibit little crosstalk – the receptor component of the system is sensitive only to carbon chains of the correct length (Brenner <i>et al</i>., 2007). The orthogonal nature of the AHL family of autoinducers has enabled their use in a variety of synthetic systems. They are often used as biological “wires”, linking either inter- or intracellular processes. These “wires” have been previously used in a number of synthetic biology systems, e.g. Gupta <i>et al</i>. (2013) and Tasmir <i>et al</i>. (2011).
 
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           <h2 style="font-family: Rubik; text-align: left; margin-top: 1%"> Preliminary Experiment </h2>
 
           <h2 style="font-family: Rubik; text-align: left; margin-top: 1%"> Preliminary Experiment </h2>
 
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           <p>In order to support our theory that genetic assembly is the rate limiting step in biosensor development, we attempted to assemble a simple GFP producing system using three engineering techniques: BioBrick, Gibson and Golden Gate. Further information about this experiment can be found on our <a href="https://2017.igem.org/Team:Newcastle/InterLab">interlab page</a> . Gibson was the only successful technique we trailed, however, Gibson assembly is not an ideal method for circuit variant production due the the specificity of the overlapping regions: For example, to assemble ten genetic parts into all possible orders would require the use of 90 different overlapping sequences (Ellis <i>et al</i>., 2011). Therefore, the ability to generate circuit variants without the need for further genetic engineering would be useful.</p>
 
           <p>In order to support our theory that genetic assembly is the rate limiting step in biosensor development, we attempted to assemble a simple GFP producing system using three engineering techniques: BioBrick, Gibson and Golden Gate. Further information about this experiment can be found on our <a href="https://2017.igem.org/Team:Newcastle/InterLab">interlab page</a> . Gibson was the only successful technique we trailed, however, Gibson assembly is not an ideal method for circuit variant production due the the specificity of the overlapping regions: For example, to assemble ten genetic parts into all possible orders would require the use of 90 different overlapping sequences (Ellis <i>et al</i>., 2011). Therefore, the ability to generate circuit variants without the need for further genetic engineering would be useful.</p>
  
 
           <h2 style="font-family: Rubik; text-align: left; margin-top: 1%"> Design Stage </h2>
 
           <h2 style="font-family: Rubik; text-align: left; margin-top: 1%"> Design Stage </h2>
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</br>
 
           <p>To modularise biosensor components, it was necessary to first confirm which devices types are commonly found in biosensors. An in depth systematic review was conducted to determine these components. Team seeker, a tool for keyword searches of iGEM team titles and abstracts for the years 2008 to 2016, was used to identify biosensor based projects (Aalto-Helsinki iGEM team, 2014). The search terms used to identify potentially relevant projects were “sense” and “biosensor”. 121 projects were identified by these search terms. In projects including multiple sensors, the most well characterised sensors were used for this review. Sensor designs, rather than constructed biosensors, were used for analysis, as time constraints in iGEM often prevents project completion.
 
           <p>To modularise biosensor components, it was necessary to first confirm which devices types are commonly found in biosensors. An in depth systematic review was conducted to determine these components. Team seeker, a tool for keyword searches of iGEM team titles and abstracts for the years 2008 to 2016, was used to identify biosensor based projects (Aalto-Helsinki iGEM team, 2014). The search terms used to identify potentially relevant projects were “sense” and “biosensor”. 121 projects were identified by these search terms. In projects including multiple sensors, the most well characterised sensors were used for this review. Sensor designs, rather than constructed biosensors, were used for analysis, as time constraints in iGEM often prevents project completion.
 
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           <h2 style="font-family: Rubik; text-align: left; margin-top: 1%"> Implementation </h2>
 
           <h2 style="font-family: Rubik; text-align: left; margin-top: 1%"> Implementation </h2>
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</br>
 
           <p>To prove that our concept of splitting biosensors across multiple cells would work, we designed an IPTG sensor. The design of this system can be found in Figure 4. In this system, LacI is constitutively expressed in the detector cell and represses the production of LasI. When IPTG is added, it binds LacI, preventing repression. Therefore, in the presence of IPTG, LasI will produce C12, our first connector molecule. To determine that our system would work, it was first tested <i>in silico</i>. Details on the model of this system can be found on our <a href="https://2017.igem.org/Team:Newcastle/Model#sim">Modelling page</a>.
 
           <p>To prove that our concept of splitting biosensors across multiple cells would work, we designed an IPTG sensor. The design of this system can be found in Figure 4. In this system, LacI is constitutively expressed in the detector cell and represses the production of LasI. When IPTG is added, it binds LacI, preventing repression. Therefore, in the presence of IPTG, LasI will produce C12, our first connector molecule. To determine that our system would work, it was first tested <i>in silico</i>. Details on the model of this system can be found on our <a href="https://2017.igem.org/Team:Newcastle/Model#sim">Modelling page</a>.
 
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           <h2 style="font-family: Rubik; text-align: left; margin-top: 1%"> Characterisation </h2>
 
           <h2 style="font-family: Rubik; text-align: left; margin-top: 1%"> Characterisation </h2>
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           <p>The Framework characterisation has been performed using a BMG-Labtech fluostar optima plate reader in order to monitor the absorbance (OD<sub>600</sub> nm) and GFP fluorescence (excitation 485 nm, emission 510 nm).</p>
 
           <p>The Framework characterisation has been performed using a BMG-Labtech fluostar optima plate reader in order to monitor the absorbance (OD<sub>600</sub> nm) and GFP fluorescence (excitation 485 nm, emission 510 nm).</p>
 
<p>
 
<p>
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           <h2 style="font-family: Rubik; text-align: left; margin-top: 1%"> References </h2>
 
           <h2 style="font-family: Rubik; text-align: left; margin-top: 1%"> References </h2>
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           <p>Aalto-Helsinki iGEM team (2014) Team Seeker [online] Available <a href="http://igem-qsf.github.io/iGEM-Team-Seeker/dist/">here</a>. [Accessed 11/07/17]
 
           <p>Aalto-Helsinki iGEM team (2014) Team Seeker [online] Available <a href="http://igem-qsf.github.io/iGEM-Team-Seeker/dist/">here</a>. [Accessed 11/07/17]
 
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           <h2 style="font-family: Rubik; text-align: left; margin-top: 1%"> Rationale and Aim </h2>
 
           <h2 style="font-family: Rubik; text-align: left; margin-top: 1%"> Rationale and Aim </h2>
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           <p>Cell free protein synthesis (CFPS) systems have large potential as alternative chassis for applications such biosensors or diagnostic tests. This is because generally, biosensors are needed to function outside of the laboratory environment. Whole cells, which are traditionally used as chassis, can be problematic in these scenarios due to issues with containment and release of genetically modified organisms.
 
           <p>Cell free protein synthesis (CFPS) systems have large potential as alternative chassis for applications such biosensors or diagnostic tests. This is because generally, biosensors are needed to function outside of the laboratory environment. Whole cells, which are traditionally used as chassis, can be problematic in these scenarios due to issues with containment and release of genetically modified organisms.
 
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           <h2 style="font-family: Rubik; text-align: left; margin-top: 1%"> Background Information </h2>
 
           <h2 style="font-family: Rubik; text-align: left; margin-top: 1%"> Background Information </h2>
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           <h4 style="font-family: Rubik; text-align: left; margin-top: 1%"> Cell Free Protein Synthesis Systems </h4>
 
           <h4 style="font-family: Rubik; text-align: left; margin-top: 1%"> Cell Free Protein Synthesis Systems </h4>
 
           <p>Cell free protein synthesis (CFPS) systems are capable of performing transcription and translation of exogenous DNA <i>in vitro</i>. CFPS systems have been in use for many decades (Nirenberg & Matthaei, 1961), however the field of synthetic biology has resulted in a CFPS renaissance (Lu, 2017; Lee & Kim, 2013). Commonly, CFPS systems are based on cell extracts, which provide the transcription/translation machinery, as well as enzymes required to generate ATP required for protein synthesis.
 
           <p>Cell free protein synthesis (CFPS) systems are capable of performing transcription and translation of exogenous DNA <i>in vitro</i>. CFPS systems have been in use for many decades (Nirenberg & Matthaei, 1961), however the field of synthetic biology has resulted in a CFPS renaissance (Lu, 2017; Lee & Kim, 2013). Commonly, CFPS systems are based on cell extracts, which provide the transcription/translation machinery, as well as enzymes required to generate ATP required for protein synthesis.
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           <h2 style="font-family: Rubik; text-align: left; margin-top: 1%"> Implementation </h2>
 
           <h2 style="font-family: Rubik; text-align: left; margin-top: 1%"> Implementation </h2>
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</br>
 
           <p>Cell free extract preparation procedures were based on methods reported in literature previously (Kwon & Jewett, 2015). Cell free extracts were prepared from Escherichia coli BL21 and Bacillus subtilis 168. Cells were streak plated out from glycerol stocks on LB agar (15 mg/mL agar, 10 mg/mL tryptone, 5 mg/mL yeast extract, 0.17 M sodium chloride) and incubated overnight at 37oC. A single colony was used to inoculate 10 mL LB broth (10 mg mL-1 tryptone, 5 mg mL-1 yeast extract, 0.17 M sodium chloride) before shake-incubation at 37oC for approximately 16 hours overnight. 2 mL of overnight liquid culture was used to inoculate 200 mL LB broth in a 2 L flask and shake-incubated at 37oC until late exponential phase was reached (OD600 nm of approximately 2.5 for <i>E. coli</i> BL21 cells). The culture was split in half and cells were harvested by centrifugation at 4,500 RPM and 4oC for 20 minutes in pre-weighed falcon tubes. The wet cell pellet weight was determined before storage at -20oC. Cells were defrosted on ice for approximately 1.5 hours and resuspended in approximately 10 mL of ice-cold CFPS wash buffer (60 mM potassium glutamate, 14 mM magnesium glutamate, 10 mM TRIS (pH 8.2 with acetic acid); autoclave sterilised; supplemented with 2 mM DTT immediately before use) per gram of wet cell pellet. Resuspended cells were centrifuged at 4,500 RPM and 4oC for 20 mins. The supernatant was discarded and cell pellets were resuspended and centrifuged in CFPS wash buffer twice more. The washed pellets were then resuspended in 1 mL CFPS wash buffer per gram of wet cell pellet and aliquoted to 1 mL in 2 mL tubes. Cells were lysed by sonication (20% amplitude, cycles of 40 seconds on – 59.9 seconds off, 432.5 Joules) and the lysates were clarified by centrifugation at 12,000 RPM for 10 mins, flash frozen in liquid nitrogen, and stored at -80oC. A CFPS supplement solution was prepared based on previously reported protocols (Yang, <i>et al</i>., 2012). Amino acid stock solutions were prepared according to Table 1. Briefly, amino acids were weighed in 2 mL tubes, dissolved in 5 M potassium hydroxide, and stored at -20oC. A 10x amino acid solution was prepared by mixing the stock solutions together in amounts according to Table 1, and the pH was adjusted to 7.9 with acetic acid. The solution was aliquoted to 1.5 mL and stored at -80oC.
 
           <p>Cell free extract preparation procedures were based on methods reported in literature previously (Kwon & Jewett, 2015). Cell free extracts were prepared from Escherichia coli BL21 and Bacillus subtilis 168. Cells were streak plated out from glycerol stocks on LB agar (15 mg/mL agar, 10 mg/mL tryptone, 5 mg/mL yeast extract, 0.17 M sodium chloride) and incubated overnight at 37oC. A single colony was used to inoculate 10 mL LB broth (10 mg mL-1 tryptone, 5 mg mL-1 yeast extract, 0.17 M sodium chloride) before shake-incubation at 37oC for approximately 16 hours overnight. 2 mL of overnight liquid culture was used to inoculate 200 mL LB broth in a 2 L flask and shake-incubated at 37oC until late exponential phase was reached (OD600 nm of approximately 2.5 for <i>E. coli</i> BL21 cells). The culture was split in half and cells were harvested by centrifugation at 4,500 RPM and 4oC for 20 minutes in pre-weighed falcon tubes. The wet cell pellet weight was determined before storage at -20oC. Cells were defrosted on ice for approximately 1.5 hours and resuspended in approximately 10 mL of ice-cold CFPS wash buffer (60 mM potassium glutamate, 14 mM magnesium glutamate, 10 mM TRIS (pH 8.2 with acetic acid); autoclave sterilised; supplemented with 2 mM DTT immediately before use) per gram of wet cell pellet. Resuspended cells were centrifuged at 4,500 RPM and 4oC for 20 mins. The supernatant was discarded and cell pellets were resuspended and centrifuged in CFPS wash buffer twice more. The washed pellets were then resuspended in 1 mL CFPS wash buffer per gram of wet cell pellet and aliquoted to 1 mL in 2 mL tubes. Cells were lysed by sonication (20% amplitude, cycles of 40 seconds on – 59.9 seconds off, 432.5 Joules) and the lysates were clarified by centrifugation at 12,000 RPM for 10 mins, flash frozen in liquid nitrogen, and stored at -80oC. A CFPS supplement solution was prepared based on previously reported protocols (Yang, <i>et al</i>., 2012). Amino acid stock solutions were prepared according to Table 1. Briefly, amino acids were weighed in 2 mL tubes, dissolved in 5 M potassium hydroxide, and stored at -20oC. A 10x amino acid solution was prepared by mixing the stock solutions together in amounts according to Table 1, and the pH was adjusted to 7.9 with acetic acid. The solution was aliquoted to 1.5 mL and stored at -80oC.
 
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           <h2 style="font-family: Rubik; text-align: left; margin-top: 1%"> Design Stage 1</h2>
 
           <h2 style="font-family: Rubik; text-align: left; margin-top: 1%"> Design Stage 1</h2>
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           <p>Previous research has shown that the concentration of certain salts in the CFPS supplement premix are crucial for maximal protein synthesis activity (Yang <i>et al.</i> 2012). A Design of Experiments approach was used to determine which of the four salts (magnesium glutamate, potassium glutamate, sodium oxalate, and ammonium acetate) are the most important using the JMP software. A classical screening design was created with all four salts as continuous factors and CFPS activity as the response to be maximised. A concentration of ‘0’ was used as the lower limit for each factor, and the concentration used normally in CFPS supplement premixes was used as the upper limit. The main effects screening design was then used to generate the experimental design.
 
           <p>Previous research has shown that the concentration of certain salts in the CFPS supplement premix are crucial for maximal protein synthesis activity (Yang <i>et al.</i> 2012). A Design of Experiments approach was used to determine which of the four salts (magnesium glutamate, potassium glutamate, sodium oxalate, and ammonium acetate) are the most important using the JMP software. A classical screening design was created with all four salts as continuous factors and CFPS activity as the response to be maximised. A concentration of ‘0’ was used as the lower limit for each factor, and the concentration used normally in CFPS supplement premixes was used as the upper limit. The main effects screening design was then used to generate the experimental design.
 
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           <h2 style="font-family: Rubik; text-align: left; margin-top: 1%"> Experimental Procedure 1</h2>
 
           <h2 style="font-family: Rubik; text-align: left; margin-top: 1%"> Experimental Procedure 1</h2>
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           <p>Cell extracts were prepared from <i>E. coli</i> BL21 cells using sonication. A CFPS supplement premix solution was prepared as above, except the salts were omitted. Separate solutions for each salt were prepared and added to each CFPS reaction according to the main effects screening design. Reactions were performed as above and CFPS activity was measured as fluorescence at each time point minus fluorescence at 15 mins (Figure 4). Endpoint data was then used, along with the JMP software, to build a model predicting the important factors (Figure 5).
 
           <p>Cell extracts were prepared from <i>E. coli</i> BL21 cells using sonication. A CFPS supplement premix solution was prepared as above, except the salts were omitted. Separate solutions for each salt were prepared and added to each CFPS reaction according to the main effects screening design. Reactions were performed as above and CFPS activity was measured as fluorescence at each time point minus fluorescence at 15 mins (Figure 4). Endpoint data was then used, along with the JMP software, to build a model predicting the important factors (Figure 5).
 
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           <h2 style="font-family: Rubik; text-align: left; margin-top: 1%"> Design Stage 2</h2>
 
           <h2 style="font-family: Rubik; text-align: left; margin-top: 1%"> Design Stage 2</h2>
 
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<div>
 
<div>
 
<img src="https://static.igem.org/mediawiki/2017/5/5f/T--Newcastle--BB_CFPS_figure5.png" width="600px" class="img-fluid border border-dark rounded mx-auto d-block" style="background-color:white; margin-right: 2%; margin-bottom: 2%;" alt=""/>
 
<img src="https://static.igem.org/mediawiki/2017/5/5f/T--Newcastle--BB_CFPS_figure5.png" width="600px" class="img-fluid border border-dark rounded mx-auto d-block" style="background-color:white; margin-right: 2%; margin-bottom: 2%;" alt=""/>
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           <h2 style="font-family: Rubik; text-align: left; margin-top: 1%"> Experimental Procedure 2</h2>
 
           <h2 style="font-family: Rubik; text-align: left; margin-top: 1%"> Experimental Procedure 2</h2>
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           <p>Cell extracts were prepared and CFPS reactions performed as before, except the magnesium glutamate, potassium glutamate, and sodium oxalate concentrations were according to the surface response experimental design. Ammonium acetate was kept at the default amount. CFPS activity was measured as fluorescence at each time point minus fluorescence at 15 mins (Figure 7). Endpoint data was then used, along with the JMP software, to build a model predicting optimal concentrations for the three salts analysed (predictions visualised in figure 8). These predictions were then tested by preparing a supplement solution premix with amounts of magnesium glutamate, potassium glutamate, and sodium oxalate at concentrations of 6 mM, 195 mM, and 2 mM respectively. This supplement solution premix was used to supplement two batches of cell extract which were prepared identically. The first batch was the same extract used to collect data on which the predictions were made, whereas the second batch was newly prepared. It was found that for the first extract, CFPS activity was enhanced when the premix containing ‘optimised’ concentrations of salts was used compared to the un-altered supplement solution premix (Figure 9a). Additionally, CFPS activity was observed as being within the confidence intervals predicted by the DoE model.
 
           <p>Cell extracts were prepared and CFPS reactions performed as before, except the magnesium glutamate, potassium glutamate, and sodium oxalate concentrations were according to the surface response experimental design. Ammonium acetate was kept at the default amount. CFPS activity was measured as fluorescence at each time point minus fluorescence at 15 mins (Figure 7). Endpoint data was then used, along with the JMP software, to build a model predicting optimal concentrations for the three salts analysed (predictions visualised in figure 8). These predictions were then tested by preparing a supplement solution premix with amounts of magnesium glutamate, potassium glutamate, and sodium oxalate at concentrations of 6 mM, 195 mM, and 2 mM respectively. This supplement solution premix was used to supplement two batches of cell extract which were prepared identically. The first batch was the same extract used to collect data on which the predictions were made, whereas the second batch was newly prepared. It was found that for the first extract, CFPS activity was enhanced when the premix containing ‘optimised’ concentrations of salts was used compared to the un-altered supplement solution premix (Figure 9a). Additionally, CFPS activity was observed as being within the confidence intervals predicted by the DoE model.
 
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           <h2 style="font-family: Rubik; text-align: left; margin-top: 1%"> Design Stage 3</h2>
 
           <h2 style="font-family: Rubik; text-align: left; margin-top: 1%"> Design Stage 3</h2>
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           <p>All 15 supplements in the supplement solution premix were analysed similarly to how the four salts were initially analysed (i.e. a main effects screening design). A classical screening design was created with all supplements as continuous factors (the nucleotides UTP, GTP, and CTP were combined to form a single factor), and CFPS activity as the response to be maximised. A concentration of ‘0’ was used as the lower limit for each factor, and the concentration used normally in CFPS supplement premixes was used as the upper limit. The main effects screening design was then used to generate the experimental design (Table 4).
 
           <p>All 15 supplements in the supplement solution premix were analysed similarly to how the four salts were initially analysed (i.e. a main effects screening design). A classical screening design was created with all supplements as continuous factors (the nucleotides UTP, GTP, and CTP were combined to form a single factor), and CFPS activity as the response to be maximised. A concentration of ‘0’ was used as the lower limit for each factor, and the concentration used normally in CFPS supplement premixes was used as the upper limit. The main effects screening design was then used to generate the experimental design (Table 4).
 
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           <h2 style="font-family: Rubik; text-align: left; margin-top: 1%"> Experimental Procedure 3</h2>
 
           <h2 style="font-family: Rubik; text-align: left; margin-top: 1%"> Experimental Procedure 3</h2>
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           <p>CFPS reactions were prepared and performed as usual, except the supplement solution had components at concentrations according to the main effects screening design. The experiment was repeated using two separate batches of cell extract; one which was initially moderately active (extract one) and one which initially had low activity (extract two). The results for each are shown below. It can be seen that for extract 1, the CFPS reaction with the highest CFPS activity was that with the original premix composition (R21), suggesting that the supplement solution was already near optimal. This is not surprising as the extract was already showing moderately high activity. Conversely, for extract 2, the reaction using the original premix was not the one with the highest CFPS activity.
 
           <p>CFPS reactions were prepared and performed as usual, except the supplement solution had components at concentrations according to the main effects screening design. The experiment was repeated using two separate batches of cell extract; one which was initially moderately active (extract one) and one which initially had low activity (extract two). The results for each are shown below. It can be seen that for extract 1, the CFPS reaction with the highest CFPS activity was that with the original premix composition (R21), suggesting that the supplement solution was already near optimal. This is not surprising as the extract was already showing moderately high activity. Conversely, for extract 2, the reaction using the original premix was not the one with the highest CFPS activity.
 
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           <h2 style="font-family: Rubik; text-align: left; margin-top: 1%"> Conclusions and Future Work </h2>
 
           <h2 style="font-family: Rubik; text-align: left; margin-top: 1%"> Conclusions and Future Work </h2>
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</br>
 
           <p>This study has begun multifactorial analysis on the components of the supplemental solution for cell free protein synthesis systems. It has provided evidence that some supplements have a greater effect on a systems protein synthesis activity than others, and that the important factors may differ between cell extract batches. The ability to use a Design of Experiments approach towards the optimisation of CFPS systems has also been demonstrated. While this study has provided evidence towards these claims, further work should be performed to validate the findings. A DoE screening design for the supplements of CFPS systems should be used on the same cell extract batch repeatedly. This will help confirm that the screening models derived from the experimental design data are accurate. The screening design should also be performed on many different batches of at least moderately active cell extracts to confirm that important supplements do differ between batches.
 
           <p>This study has begun multifactorial analysis on the components of the supplemental solution for cell free protein synthesis systems. It has provided evidence that some supplements have a greater effect on a systems protein synthesis activity than others, and that the important factors may differ between cell extract batches. The ability to use a Design of Experiments approach towards the optimisation of CFPS systems has also been demonstrated. While this study has provided evidence towards these claims, further work should be performed to validate the findings. A DoE screening design for the supplements of CFPS systems should be used on the same cell extract batch repeatedly. This will help confirm that the screening models derived from the experimental design data are accurate. The screening design should also be performed on many different batches of at least moderately active cell extracts to confirm that important supplements do differ between batches.
 
           </br></br>
 
           </br></br>
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           <h2 style="font-family: Rubik; text-align: left; margin-top: 1%"> References </h2>
 
           <h2 style="font-family: Rubik; text-align: left; margin-top: 1%"> References </h2>
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</br>
 
           <p>
 
           <p>
 
Algranati, I. D. & Goldemberg, S. H., 1977. Polyamines and their role in protein synthesis. <i>Trends in Biochem. Sci.</i>, 2(12), pp. 272-274.<br />
 
Algranati, I. D. & Goldemberg, S. H., 1977. Polyamines and their role in protein synthesis. <i>Trends in Biochem. Sci.</i>, 2(12), pp. 272-274.<br />

Revision as of 17:18, 1 November 2017

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Our Experimental Results


Below is a diagram of our Sensynova Framework. Clicking on each part of the framework (e.g. detector modules) links to the relevant results.

Alternatively, at the bottom of this page are tabs which will show you results for every part of the project



Framework

Framework Chassis

Biochemical Adaptor

Target

Detector Modules

Multicellular Framework Testing

C12 HSL: Connector 1

Processor Modules

Framework in Cell Free Protein Synthesis Systems

C4 HSL: Connector 2

Reporter Modules



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