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− | The amount of antagonist (µU) needed for every µU of TSI was calculated to be 0.2666667x. Fares et al. (2000) reported that the TSH antagonist had a maximal effect (reducing TSI-related cAMP production by 90%) <i> in vitro </i> when there was 200µU/ml of antagonist for every 750µU/ml TSI. Here in our equation, 'An' represents antagonist concentration (200µU/ml), and 'Ag' represents agonist concentration (750µU/ml). Thus, we calculate that we need the antagonist concentration 0.2666667x the amount of TSI in a patients body - both measured in µU/ml. Here, we make the assumption that the <i> in vitro </i> study by Fares et al. can be directly applied to patients <i> in | + | The amount of antagonist (µU) needed for every µU of TSI was calculated to be 0.2666667x. Fares et al. (2000) reported that the TSH antagonist had a maximal effect (reducing TSI-related cAMP production by 90%) <i> in vitro </i> when there was 200µU/ml of antagonist for every 750µU/ml TSI. Here in our equation, 'An' represents antagonist concentration (200µU/ml), and 'Ag' represents agonist concentration (750µU/ml). Thus, we calculate that we need the antagonist concentration 0.2666667x the amount of TSI in a patients body - both measured in µU/ml. Here, we make the assumption that the <i> in vitro </i> study by Fares et al. can be directly applied to patients <i> in vivo </i>. <br><br> |
<hr> | <hr> | ||
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<h3> Integrating human practices, and scaling up <br><br></h3> | <h3> Integrating human practices, and scaling up <br><br></h3> | ||
</center> | </center> | ||
− | <p> Finally, our human practices involved communication with several professionals in the field of plant GM. Consequently, they gave us advice about plant GM, and informed us of some of the pros and cons. For example, we communicated extensively with Dr. Mauritz Venter, co-founder and the CEO of AzarGen Biotechnologies, and he explained some of these benefits. He kindly referred us to read some articles about AzarGen and plants as biofactories in general. Holtz et al. (2015), Nandi et al. (2016), Rybicki (2010), Ibioinc.com (2017), and Engineering News (2017) all report about the scalability of plants, reporting that they are one of (if not the) easiest platforms to scale up, and that scaling up is linear. Additionally we communicated with Anne Shiraishi, the communications manager at Medicago. She kindly referred us to read a paper from Lomonossoff and DAoust (2016), which reinforced the information provided by Dr. Venter. For more information about this research visit the <a href="https://2017.igem.org/Team:Cardiff_Wales/Our_research"> research </a> section of our human practices. Using this information, we can scale up our model and create a theoretical biofactory, and calculate how many plants we would need to treat every sufferer of Graves' disease in the US, assuming an average severity. | + | <p> Finally, our human practices involved communication with several professionals in the field of plant GM. Consequently, they gave us advice about plant GM, and informed us of some of the pros and cons. For example, we communicated extensively with Dr. Mauritz Venter, co-founder and the CEO of AzarGen Biotechnologies, and he explained some of these benefits. He kindly referred us to read some articles about AzarGen and plants as biofactories in general. Holtz et al. (2015), Nandi et al. (2016), Rybicki (2010), Ibioinc.com (2017), and Engineering News (2017) all report about the scalability of plants, reporting that they are one of (if not the) easiest platforms to scale up, and that scaling up is linear. Additionally we had a phone call with the company 'Leaf Expression Systems', who informed us about Medicago. Following this, we communicated with Anne Shiraishi, the communications manager at Medicago. She kindly referred us to read a paper from Lomonossoff and DAoust (2016), which reinforced the information provided by Dr. Venter. For more information about this research visit the <a href="https://2017.igem.org/Team:Cardiff_Wales/Our_research"> research </a> section of our human practices. Using this information, we can scale up our model and create a theoretical biofactory, and calculate how many plants we would need to treat every sufferer of Graves' disease in the US, assuming an average severity. Information from the NIH suggests that 1/200 people suffer from Graves disease in the US (Genetics Home Reference, 2017). Assuming the US population is around 323.1 million, it is estimated that around 1,615,500 people suffer from Graves' disease in the US. Seeing as our research showed that scaling up is linear, we can estimate how many plants of each expression system would be needed to give a single effective dose to every sufferer (assuming a mean severity). This is displayed below. |
+ | <br><br> | ||
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+ | <img src="https://static.igem.org/mediawiki/2017/thumb/7/77/T--Cardiff_Wales--NumberOfPlantToTreatGravesDiseaseInUSOnce.PNG/800px-T--Cardiff_Wales--NumberOfPlantToTreatGravesDiseaseInUSOnce.PNG"/> | ||
+ | </center> | ||
+ | <br><br> | ||
<center> | <center> | ||
<object width="80%" height="1000" data="https://static.igem.org/mediawiki/2017/7/7a/T--Cardiff_Wales--Modelling_Extra_Material2.pdf"></object> | <object width="80%" height="1000" data="https://static.igem.org/mediawiki/2017/7/7a/T--Cardiff_Wales--Modelling_Extra_Material2.pdf"></object> |
Revision as of 11:44, 29 October 2017