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<h1>Introduction</h1> | <h1>Introduction</h1> | ||
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Organosilicons are organometallic compounds that consist of carbon-silicon bonds. They are comparable to their corresponding organic analogs but differ in their intrinsic properties. These differences, especially the chemical properties of silicon and the bond formation tendencies, have a significant impact on their bioavailability and their application in medicine. | Organosilicons are organometallic compounds that consist of carbon-silicon bonds. They are comparable to their corresponding organic analogs but differ in their intrinsic properties. These differences, especially the chemical properties of silicon and the bond formation tendencies, have a significant impact on their bioavailability and their application in medicine. | ||
Recent publications cluster their unique features into three categories: | Recent publications cluster their unique features into three categories: | ||
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As a result, organosilicons address the major issue in the synthesis of bioactive pharmaceuticals, the design of pro-drugs, as well as a safe medicine with a genuine biomedical benefit. Thus, their main advantage is to operate as pro-drugs due to their thermodynamic stability, but aqueous and acidic instability. | As a result, organosilicons address the major issue in the synthesis of bioactive pharmaceuticals, the design of pro-drugs, as well as a safe medicine with a genuine biomedical benefit. Thus, their main advantage is to operate as pro-drugs due to their thermodynamic stability, but aqueous and acidic instability. | ||
On top, as we know so far, silicon is nonhazardous by itself, which makes it a valuable source for further biomedical research. | On top, as we know so far, silicon is nonhazardous by itself, which makes it a valuable source for further biomedical research. | ||
− | Our Idea | + | <h1>Our Idea</h1> |
As a proof of principle, we wanted to show and harness the potential of organosilicon-forming proteins. | As a proof of principle, we wanted to show and harness the potential of organosilicon-forming proteins. | ||
Therefore, we use a previously engineered cytochrome c enzyme and couple organosilicon-production directly to a reporter expression. Thereby, we are focusing on the “small-molecule binding riboswitch” as proposed underlying mechanism. (citation) | Therefore, we use a previously engineered cytochrome c enzyme and couple organosilicon-production directly to a reporter expression. Thereby, we are focusing on the “small-molecule binding riboswitch” as proposed underlying mechanism. (citation) | ||
− | This riboswitch was designed in silico using the MAWS software, that was provided by the iGEM Team Heidelberg 2015. In a step-by-step approach, we wanted to produce an organosilicon which could, in the end, be tested with the designed riboswitch to express the {{#tag:html|Test text <a href="https://www.promega.de/resources/technologies/nanoluc-luciferase-redefining-reporter-assays/">NanoLuc reporter</a>}} (Promega). | + | This riboswitch was designed in silico using the MAWS software, that was provided by the iGEM Team Heidelberg 2015. In a step-by-step approach, we wanted to produce an organosilicon which could, in the end, be tested with the designed riboswitch to express the {{#tag:html|Test text <a href="https://www.promega.de/resources/technologies/nanoluc-luciferase-redefining-reporter-assays/">NanoLuc reporter</a>}}(Promega). |
− | NanoLuc is the most {{#tag:html|Test text <a href="https://www.promega.de/products/reporter-assays-and-transfection/reporter-assays/nano_glo-luciferase-assay-system/?catNum=N1110">sensitive luciferase</a>}} until today and is able to show us a significant output despite using only a small amount of substrate . | + | NanoLuc is the most {{#tag:html|Test text <a href="https://www.promega.de/products/reporter-assays-and-transfection/reporter-assays/nano_glo-luciferase-assay-system/?catNum=N1110">sensitive luciferase</a>}}until today and is able to show us a significant output despite using only a small amount of substrate . |
− | Outlook | + | <h1>Outlook</h1> |
By establishing this proof of principle, we aim to further extend the use of organosilicon-producing proteins especially in combination with our PREDCEL approach and to bring silicon to life one big step closer. | By establishing this proof of principle, we aim to further extend the use of organosilicon-producing proteins especially in combination with our PREDCEL approach and to bring silicon to life one big step closer. | ||
Revision as of 20:58, 29 October 2017
Organosilicons or compounds containing bonds between silicon and carbon and provide completely new structural moieties with altered properties and metabolism. By utilizing a well-known and previously engineered Cytochrome c
Introduction
Organosilicons are organometallic compounds that consist of carbon-silicon bonds. They are comparable to their corresponding organic analogs but differ in their intrinsic properties. These differences, especially the chemical properties of silicon and the bond formation tendencies, have a significant impact on their bioavailability and their application in medicine. Recent publications cluster their unique features into three categories: The first category comprises the chemical properties of silicon bonds. Typically, silicon forms longer bonds at different angles, which leads to diverse ring conformations and thus, alterations in reactivity. Furthermore, its preference to form single bonds leads to chemical compounds that have a higher intrinsic stability than their carbon analogs. The second category represents the bioavailability of organosilicons. They are more likely to overcome the membrane barrier of cells as they are more lipophilic compared to their respective carbon counterparts. The third - and most important - category deals with the medical application of these compounds. Due to their aforementioned tendency to form single rather than double or triple bonds, they display a viable source for stable pharmaceuticals, which are inaccessible with carbon-based molecules. Additionally, the more electropositive nature of silicon facilitates hydrogen bond formation and conveniently increases the acidity of the compounds. As a result, organosilicons address the major issue in the synthesis of bioactive pharmaceuticals, the design of pro-drugs, as well as a safe medicine with a genuine biomedical benefit. Thus, their main advantage is to operate as pro-drugs due to their thermodynamic stability, but aqueous and acidic instability. On top, as we know so far, silicon is nonhazardous by itself, which makes it a valuable source for further biomedical research.Our Idea
As a proof of principle, we wanted to show and harness the potential of organosilicon-forming proteins. Therefore, we use a previously engineered cytochrome c enzyme and couple organosilicon-production directly to a reporter expression. Thereby, we are focusing on the “small-molecule binding riboswitch” as proposed underlying mechanism. (citation) This riboswitch was designed in silico using the MAWS software, that was provided by the iGEM Team Heidelberg 2015. In a step-by-step approach, we wanted to produce an organosilicon which could, in the end, be tested with the designed riboswitch to express the Test text NanoLuc reporter(Promega). NanoLuc is the most Test text sensitive luciferaseuntil today and is able to show us a significant output despite using only a small amount of substrate .Outlook
By establishing this proof of principle, we aim to further extend the use of organosilicon-producing proteins especially in combination with our PREDCEL approach and to bring silicon to life one big step closer.Table 1: Additional Variables and Parameters used in the numeric solution of the model. List of all paramters and variables used in the analytic solution of this model and in the corresponding interactive webtool
Symbol | Value and Unit | Explanation |
---|---|---|
\(V_{T}\) | [ml] | Volume of Turbidostat |
\(V_{M}\) | [ml] | Volume of Medium consumed |
\(t_{E} \) | [min] | E. coli generation time |
\(\Phi_{T}\) | [ml/h] | Flow rate through turbidostat |
\(t_{max}\) | [min] | Duration of the experiment |
Minmal Turbidostat Volume
Larger turbidostats or chemostats with a larger flow needs more medium for the same duration than smaller ones. When working with the minimal required volume or flow you can save medium and thus energy. The minimal flow that is required can be calculated using $$ \Phi_{T} = b \cdot V_{L} \cdot N_{L} \cdot \Phi_{L} $$ Which is simply the product of the lagoon volume, count and flow rate and a buffer.In case of fluctuations in the generation time of the E. coli cells it is crucial to have a buffer so that the turbidostat is not diluted when the culture grows slower. A buffer of 50 %, means \(b\) is set to \(1.5\). For a turbidostat, the volume can be calculated from the flow using $$ V_{T} = \Phi_{T} \cdot \frac{t_{E} }{log(2)} $$ For chemostats only the needed flow rate \(\Phi_{T}\) is calculated, the volume needs to be chosen so that the flow rate can be reached.
Table 2: Additional Variables and Parameters used for this calculation. List of all additional paramters and variables used in the analytic solution of this model and in the corresponding interactive webtool
Symbol | Value and Unit | Explanation |
---|---|---|
\(V_{L}\) | [ml] | Volume of Lagoons |
\(N_{L}\) | Number of Lagoons | |
\(\Phi_{L}\) | [ml/min] | E. coli generation time |
\(b\) | \(1.5\) | Buffer |
Minimal Lagoon Volume
Obviously smaller lagoons require smaller turbidostats or chemostats with a lower flow rate and are therefore saving medium. However, there is a lower limit to lagoon size, if the phage population is too small, the sequence space that can be covered is insufficient to find variants that are better than previous ones. Lagoon sizes used by other vary from 15 mlTable 3: Additional Variables and Parameters used for this calculation. List of all additional paramters and variables used in the analytic solution of this model and in the corresponding interactive webtool
Symbol | Value and Unit | Explanation |
---|---|---|
\(N_{P}\) | [pfu] | Amount of phages per lagoon |
\(c_{P}\) | [pfu/ml] | Phage concentration |
\(L_{S}\) | [bp] | Sequence length in basepairs |
\(L_{T}\) | [bp] | Total sequence length in basepairs in lagoon |
\(N_{M}\) | Number of mutations | |
\(r_{M}\) | [1/generation] | Number of mutated basepairs per basepair per generation |
\(n\) | [bp] | Number of mutated basepairs |
\(M_{n}\) | Number of real sequences with \(n\) mutations | |
\(N_{n}\) | Number of possible sequences with \(n\) mutations | |
\(t\) | Theortical coverage of double |