Difference between revisions of "Team:Newcastle/Model"

Line 611: Line 611:
 
Anderson, M. J. & Whitcomb, P. J., 2010. Design of Experiments. In: Kirk-Othmer Encyclopedia of Chemical Technology. <i>s.l.:John Wiley & Sons, Inc</i>, pp. 1-22. <br />
 
Anderson, M. J. & Whitcomb, P. J., 2010. Design of Experiments. In: Kirk-Othmer Encyclopedia of Chemical Technology. <i>s.l.:John Wiley & Sons, Inc</i>, pp. 1-22. <br />
  
Garamella, J., Marshall, R., Rustad, M. & Noireaux, V., 2016. The All E. coli TX-TL Toolbox 2.0: A Platform for Cell-Free Synthetic Biology. <i>ACS Syn. Biol.</i>, 5(4), pp. 344-355.<br />
+
Garamella, J., Marshall, R., Rustad, M. & Noireaux, V., 2016. The All <i>E. coli</i> TX-TL Toolbox 2.0: A Platform for Cell-Free Synthetic Biology. <i>ACS Syn. Biol.</i>, 5(4), pp. 344-355.<br />
  
 
Kelwick, R., Webb, A. J., MacDonald, J. & Freemont, P. S., 2016. Development of a Bacillus subtilis cell-free transcription-translation system for prototyping regulatory elements. <i>Metab. Eng.</i>, Volume 38, pp. 370-381.<br />
 
Kelwick, R., Webb, A. J., MacDonald, J. & Freemont, P. S., 2016. Development of a Bacillus subtilis cell-free transcription-translation system for prototyping regulatory elements. <i>Metab. Eng.</i>, Volume 38, pp. 370-381.<br />

Revision as of 18:16, 1 November 2017

spacefill

Our Models

For our project, we built three types of models. The first was an agent-based model which simulated our multicellular biosensor framework. This model gave insight into the optimal ratio of cell-types to have in the system. This information was used during experimental characterisation to optimise our system.

Our second model was a statistical, multifactorial Design of Experiments (DoE) approach towards optimising Cell-Free Protein Synthesis (CFPS) systems. This statistical model was used to generate an experimental design to gather data on the importance of certain supplements in CFPS systems, and then use the experimental data to optimise CFPS systems.

Our third model was an agent-based model designed to replicate the functions of a digital microfluidic chip and schedule the tasks for the device. The final piece of software controls agents which are the microfluidic droplets and moves them around the simulated chip according to predefined movement plans which can be read from either the program itself or custom external files. This provides a quicker, more inexpensive means of testing the chip than repeated real-world experiments.