Team:Jefferson VA SciCOS/Project
From 2014hs.igem.org
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'''''<h3>Taking a Previous Encoding Scheme a Step Further</h3>''' | '''''<h3>Taking a Previous Encoding Scheme a Step Further</h3>''' | ||
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- | The 2007 Davidson-Missouri iGEM team proposed three encoding schemes given by Figure 3, where cities correspond to given genes and adjacent gene halves separated by hixC sites represent edges on the graph. To encode our 4-node problem we decided on using genes encoding for (1). blue fluorescent protein , (2) green fluorescent protein , (3) red fluorescent protein and a (4) terminator. | + | The 2007 Davidson-Missouri iGEM team proposed three encoding schemes given by Figure 3, where cities correspond to given genes and adjacent gene halves separated by hixC sites represent edges on the graph. To encode our 4-node problem we decided on using genes encoding for (1). blue fluorescent protein , (2) green fluorescent protein , (3) red fluorescent protein and a (4) terminator. <br /> |
[[File:Encoding.png]] | [[File:Encoding.png]] | ||
To encode for the distances between graphs we decided to use varying Ribosome Binding Strengths. Using the following gene sequence to RBS calculator (http://salis.psu.edu/RBS_Calculator.shtml), we proposed a function to go from the distance between cities to RBS. The function was constructed in such a way that the shorter the distance between cities, the greater the RBS. This way the solution encoding for a path with the shortest distance would fluoresce the brightest. | To encode for the distances between graphs we decided to use varying Ribosome Binding Strengths. Using the following gene sequence to RBS calculator (http://salis.psu.edu/RBS_Calculator.shtml), we proposed a function to go from the distance between cities to RBS. The function was constructed in such a way that the shorter the distance between cities, the greater the RBS. This way the solution encoding for a path with the shortest distance would fluoresce the brightest. | ||
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'''''<h3>The Hin Recombinase/hixC Site System</h3>''' | '''''<h3>The Hin Recombinase/hixC Site System</h3>''' | ||
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- | The Hin Recombinase/hixC Site System is what breathes life into the encoding scheme we designed above. The system designed by a 2006 iGEM team is derived from Salmonella, where Hin regulates how flagellin genes are expressed. In our project, the system was used to constitutively shuffle the gene halves until a solution is arrived at. | + | The Hin Recombinase/hixC Site System is what breathes life into the encoding scheme we designed above. The system designed by a 2006 iGEM team is derived from Salmonella, where Hin regulates how flagellin genes are expressed. In our project, the system was used to constitutively shuffle the gene halves until a solution is arrived at. <br /> |
+ | [[File:Hin.png]] | ||
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Latest revision as of 00:05, 21 June 2014
Solving a 4-Node Traveling Salesman Problem Using the Hin/hixC Recombinant SystemOur project’s goal was to assess the accuracy, scalability, and feasibility of a novel bacterial computer paradigm for solving a 4-node Traveling Salesman Problem. |
Bacterial Computing: The Future of the IT Industry All in an Agar PlateWhere would humanity be without the advent and rise of the computer? The 21st century has marked humanity’s entrance into a new Digital Age; now, more than ever, does the global marketplace and humanity itself depend on a thriving information technology sector. From the pocket-sized computing devices that we use to manage our day-to-day tasks to the massive supercomputers that mirror human intelligence, from the databases that store millions of patient’s records to the Big Data servers that analyze the vast number of financial transactions that take place every second, computing has evolved into a ubiquitous science that is both humanity’s present as well as its future. For years, the physical limitations that deterred the development of faster, more efficient computing devices were easily maneuverable, allowing computing to present itself as the seemingly perpetual gale force that propelled the sails of our global economy.
With these guiding questions in mind, our group has proposed a project that assesses the accuracy, scalability, and feasibility of a bacterial computer paradigm for solving different initial configurations of a 4-node Traveling Salesman Problem. Our work proposes a novel way of encoding the Traveling Salesman Problem using variable Ribosome Binding Site strengths and DNA constructs that can be solved by the Hin recombinase/HixC site system. |