Team:Tianjin/Project

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<h2>Overview </h2>
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<h1>Overview </h1>
<p> Nowadays, scientists have put great attentions on biofuels, hoping to find a solution to energy crisis and climate change. Among all kinds of biofuels, alkanes stand out because of its excellent properties. In the research of alkane bio-synthesis, there is always a need to sense or detect alkanes. However, due to the inconspicuous property of alkanes, the current alkane detection or sensing methods can hardly meet the demands of alkane sensing or detection.</p>
<p> Nowadays, scientists have put great attentions on biofuels, hoping to find a solution to energy crisis and climate change. Among all kinds of biofuels, alkanes stand out because of its excellent properties. In the research of alkane bio-synthesis, there is always a need to sense or detect alkanes. However, due to the inconspicuous property of alkanes, the current alkane detection or sensing methods can hardly meet the demands of alkane sensing or detection.</p>
<p> Our project offers a novel solution to the problem. In our project we constructed a sensor, named AlkSensor, that could respond to certain alkanes. AlkSensor is composed of a transcription factor protein ALKR and a inducible promoter PalkM. We developed a mathematical model to find ways to optimize and regulate the sensor. After the construction and reconstruction of AlkSensor, we performed an in vivo alkane sensing test. The qualitative test showed AlkSensor could function as we expected. Besides, we characterized AlkSensor with different inducers and obtained the quantitative relationship between AlkSensor’s input and output. What is more, we designed an selection strategy based on AlkSensor to select out the strains with high productivity of alkanes . A preliminary test was performed and the result verified the feasibility of this design.</p>
<p> Our project offers a novel solution to the problem. In our project we constructed a sensor, named AlkSensor, that could respond to certain alkanes. AlkSensor is composed of a transcription factor protein ALKR and a inducible promoter PalkM. We developed a mathematical model to find ways to optimize and regulate the sensor. After the construction and reconstruction of AlkSensor, we performed an in vivo alkane sensing test. The qualitative test showed AlkSensor could function as we expected. Besides, we characterized AlkSensor with different inducers and obtained the quantitative relationship between AlkSensor’s input and output. What is more, we designed an selection strategy based on AlkSensor to select out the strains with high productivity of alkanes . A preliminary test was performed and the result verified the feasibility of this design.</p>

Revision as of 02:30, 29 October 2013


Introduction Design & Construction Characterization Alk-Selector & Direct Evolution Futurework

Overview

Nowadays, scientists have put great attentions on biofuels, hoping to find a solution to energy crisis and climate change. Among all kinds of biofuels, alkanes stand out because of its excellent properties. In the research of alkane bio-synthesis, there is always a need to sense or detect alkanes. However, due to the inconspicuous property of alkanes, the current alkane detection or sensing methods can hardly meet the demands of alkane sensing or detection.

Our project offers a novel solution to the problem. In our project we constructed a sensor, named AlkSensor, that could respond to certain alkanes. AlkSensor is composed of a transcription factor protein ALKR and a inducible promoter PalkM. We developed a mathematical model to find ways to optimize and regulate the sensor. After the construction and reconstruction of AlkSensor, we performed an in vivo alkane sensing test. The qualitative test showed AlkSensor could function as we expected. Besides, we characterized AlkSensor with different inducers and obtained the quantitative relationship between AlkSensor’s input and output. What is more, we designed an selection strategy based on AlkSensor to select out the strains with high productivity of alkanes . A preliminary test was performed and the result verified the feasibility of this design.


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