Difference between revisions of "Team:Newcastle/Results"

Line 1,603: Line 1,603:
 
</br>
 
</br>
 
           <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>
 +
</br>
 
           <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.
 
           </br></br>
 
           </br></br>
Line 1,636: Line 1,637:
  
 
           <h4 style="font-family: Rubik; text-align: left; margin-top: 1%"> Multifactorial Design of Experiments </h4>
 
           <h4 style="font-family: Rubik; text-align: left; margin-top: 1%"> Multifactorial Design of Experiments </h4>
 +
</br>
 
           <p>Traditionally, biologists tend to use One Factor At a Time (OFAT) approaches to determine the effect and importance of factors on a system. This method can sometimes be a poor choice. By only determining the effect that a single factor has on a system at a time, important interactions can be missed. For example, removing only factor A may have no effect, and removing only factor B may also have no effect, but removing both may cause an adverse effect. Therefore, it is important to take a multifactorial approach when investigating the importance of conditions or components of a system, or when trying to optimise a system. An issue with this approach is that a large number of experiments may be required to fully investigate all factors. By using statistical methods, a Design of Experiments (DoE) can be determined which has the minimum number of experiments required to explore questions such as the importance of factors in a system. This approach also allows for robustness testing or determining batch-batch variation (Anderson & Whitcomb, 2010). As mentioned previously, CFPS systems can be plagued with issues rising from variation, so this approach offers a method to investigate the causes. There are several different types of DoE designs. One of these is the screening design (SD), which is used to create experimental designs to determine the factors with the highest effect on a system. Another design is the surface response design (SRD), which makes experimental designs to collect data for generating models which can predict optimal settings for many factors (SAS Institute Inc., 2016). Software tools, such as JMP (SAS Institute Inc., 2016), have been developed to create these experimental designs.</p>
 
           <p>Traditionally, biologists tend to use One Factor At a Time (OFAT) approaches to determine the effect and importance of factors on a system. This method can sometimes be a poor choice. By only determining the effect that a single factor has on a system at a time, important interactions can be missed. For example, removing only factor A may have no effect, and removing only factor B may also have no effect, but removing both may cause an adverse effect. Therefore, it is important to take a multifactorial approach when investigating the importance of conditions or components of a system, or when trying to optimise a system. An issue with this approach is that a large number of experiments may be required to fully investigate all factors. By using statistical methods, a Design of Experiments (DoE) can be determined which has the minimum number of experiments required to explore questions such as the importance of factors in a system. This approach also allows for robustness testing or determining batch-batch variation (Anderson & Whitcomb, 2010). As mentioned previously, CFPS systems can be plagued with issues rising from variation, so this approach offers a method to investigate the causes. There are several different types of DoE designs. One of these is the screening design (SD), which is used to create experimental designs to determine the factors with the highest effect on a system. Another design is the surface response design (SRD), which makes experimental designs to collect data for generating models which can predict optimal settings for many factors (SAS Institute Inc., 2016). Software tools, such as JMP (SAS Institute Inc., 2016), have been developed to create these experimental designs.</p>
  

Revision as of 17:20, 1 November 2017

spacefill

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



Looking for Interlab Study
related results? Click below!