Difference between revisions of "Team:Aalto-Helsinki/Questionnaire"
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<p>Mathematical modeling is a key component of synthetic biology, serving as a crucial link between the idea and realization of an engineered biological system. In our project, modeling played a central role in 1) helping us focus our bioengineering efforts on the rate-limiting steps of our synthetic metabolic propane pathway and 2) giving us useful predictions on whether our concepts could work.</p> | <p>Mathematical modeling is a key component of synthetic biology, serving as a crucial link between the idea and realization of an engineered biological system. In our project, modeling played a central role in 1) helping us focus our bioengineering efforts on the rate-limiting steps of our synthetic metabolic propane pathway and 2) giving us useful predictions on whether our concepts could work.</p> | ||
− | <p>As is often the case with interdisciplinary work, cooperation between modelers and biologists is not always easy, a problem that has also been identified by other iGEM teams such as <a href="https://2011.igem.org/Team:Grenoble/HumanPractice/identifying" target="_blank">Grenoble 2011</a>. We faced this challenge in our project, too. If we had understood the potential pitfalls and known good practices of this cooperation, we would have saved a lot of time and been able to achieve more in our project. | + | <p>As is often the case with interdisciplinary work, cooperation between modelers and biologists is not always easy, a problem that has also been identified by other iGEM teams such as <a href="https://2011.igem.org/Team:Grenoble/HumanPractice/identifying" target="_blank">Grenoble 2011</a>. We faced this challenge in our project, too. If we had understood the potential pitfalls and known good practices of this cooperation, we would have saved a lot of time and been able to achieve more in our project. <a href="http://www.sciencedirect.com/science/article/pii/S1369848610001159" target="_blank">It has even been said</a> that the development of synthetic biology depends on sociology, reflecting the necessity of creating an environment where scientists with different expertises can effectively work as a team.</p> |
− | <p>Whereas interdisciplinary cooperation has previously been studied in professional research environments | + | <p>Whereas interdisciplinary cooperation <a href="http://books.google.fi/books?id=30R7BgAAQBAJ&lpg=PA1949&ots=kdviu0F3bM&dq=Collaboration%20in%20the%20New%20Life%20Sciences%2C%20Aldershot%3A%20Ashgate.&hl=sv&pg=PT142#v=onepage&q&f=false" target="_blank">has previously been studied</a> in professional research environments, iGEM offers a unique possibility to study how students perceive and approach the challenges of interdisciplinary work. To specifically study the relationship of mathematical modeling and laboratory work in iGEM teams and gather information about pitfalls, good practices, and the integration of modeling and laboratory work we created a questionnaire and sent it to a number of teams. We also studied the expectations students had for modeling, how the modeling efforts were organized and how well modeling and experimentation was integrated in iGEM teams.</p> |
<p>Having finished the questionnaire, we found the share of respondents from a mathematical background surprisingly low. To find out how well our sample represents iGEM teams we looked up the majors of students from 84 iGEM teams from 2014. We also compared the results to compositions of professional synthetic biology research groups to see if there are any differences.</p> | <p>Having finished the questionnaire, we found the share of respondents from a mathematical background surprisingly low. To find out how well our sample represents iGEM teams we looked up the majors of students from 84 iGEM teams from 2014. We also compared the results to compositions of professional synthetic biology research groups to see if there are any differences.</p> | ||
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<p>In some iGEM teams the modeling challenges were approached by having the same person do both experimental work and modeling. This is an obvious way to avoid the difficulties in interdisciplinary communication. However, drawbacks to this approach were also recognised. It was mentioned that by having the same person do experimentation and modeling can more easily lead to errors due to the lack of discussion.</p> | <p>In some iGEM teams the modeling challenges were approached by having the same person do both experimental work and modeling. This is an obvious way to avoid the difficulties in interdisciplinary communication. However, drawbacks to this approach were also recognised. It was mentioned that by having the same person do experimentation and modeling can more easily lead to errors due to the lack of discussion.</p> | ||
− | <p>It was often very time-consuming for people with a biology background to learn even the basics of modeling and for modelers to learn basics of biology. Especially respondents doing mostly modeling reported the difficulty of learning other fields, perhaps pointing out that more often a person with a modeling background starts learning biology rather than biologists taking the time to learn modeling. If a person divides her or his time in learning and doing both, the level of understanding is inevitably lower than a specialized person could have. Therefore, having one person doing everything significantly limits what can be achieved within the project. Similar advantages and disadvantages of bimodal modelers have also been recognised in professional groups | + | <p>It was often very time-consuming for people with a biology background to learn even the basics of modeling and for modelers to learn basics of biology. Especially respondents doing mostly modeling reported the difficulty of learning other fields, perhaps pointing out that more often a person with a modeling background starts learning biology rather than biologists taking the time to learn modeling. If a person divides her or his time in learning and doing both, the level of understanding is inevitably lower than a specialized person could have. Therefore, having one person doing everything significantly limits what can be achieved within the project. Similar advantages and disadvantages of bimodal modelers have also been <a href="http://onlinelibrary.wiley.com/doi/10.1002/jez.b.22568/abstract;jsessionid=A0B2D3278EA21E0838489E9C6CA7B461.f04t02" target="_blank">recognised in professional groups</a>.</p> |
<h4>Cooperation</h4> | <h4>Cooperation</h4> | ||
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<h4>Challenges in cooperation</h4> | <h4>Challenges in cooperation</h4> | ||
− | <p>The most significant challenge in cooperation appears to be communication, hindered by the knowledge gap, different vocabularies and different ways of thinking between modelers and experimentalists. Communication between modelers and biologists has also been recognised to be a significant problem in professional research organizations | + | <p>The most significant challenge in cooperation appears to be communication, hindered by the knowledge gap, different vocabularies and different ways of thinking between modelers and experimentalists. Communication between modelers and biologists <a href="http://books.google.fi/books?id=30R7BgAAQBAJ&lpg=PA1949&ots=kdviu0F3bM&dq=Collaboration%20in%20the%20New%20Life%20Sciences%2C%20Aldershot%3A%20Ashgate.&hl=sv&pg=PT142#v=onepage&q&f=false" target="_blank">has also been recognised</a> to be a significant problem in professional research organizations. Lack of knowledge means a lack of understanding, and not understanding what the other person is talking about obviously makes cooperation difficult. Without training or hands-on experience, modelers have problems understanding the constraints of experimental work and experimentalists difficulties in understanding why modelers need what they do, as <a href="http://onlinelibrary.wiley.com/doi/10.1002/jez.b.22568/abstract;jsessionid=A0B2D3278EA21E0838489E9C6CA7B461.f04t02" target="_blank">MacLeod and Nersessian point out</a>. Lack of a common vocabulary and using different terminology to refer to the same concept creates confusion, contributing to the difficulties of cooperation. Differences in the way of thinking between students with a mathematical background and a biological background is considered by some to be the biggest obstacle in interdisciplinary cooperation. This problem <a href="http://books.google.fi/books?id=30R7BgAAQBAJ&lpg=PA1949&ots=kdviu0F3bM&dq=Collaboration%20in%20the%20New%20Life%20Sciences%2C%20Aldershot%3A%20Ashgate.&hl=sv&pg=PT142#v=onepage&q&f=false" target="_blank">has also been recognised</a> in professional research environments, and is often referred to using the metaphor of language: the other field seems to “speak a different language”, implying a different way of thinking. The same expression of speaking a different language can also be taken more literally, referring to technical words (e.g. “polymerase” or “stochastic model”) and thus to the two other problems in communication, lack of knowledge and common terminology.</p> |
<p> Engaging the whole team in modeling was seen as difficult, perhaps due to the knowledge gap between modelers and biologists. However, it was considered important to have experimentalists take part in the model development to make sure that the modeling is connected to reality - if the model is disconnected from reality, it is of little use in the project.</p> | <p> Engaging the whole team in modeling was seen as difficult, perhaps due to the knowledge gap between modelers and biologists. However, it was considered important to have experimentalists take part in the model development to make sure that the modeling is connected to reality - if the model is disconnected from reality, it is of little use in the project.</p> | ||
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</figure> | </figure> | ||
− | <p>All common issues of cooperation iGEM teams faced seem to be solvable by taking the time to learn at least the very basics of the other field and with thorough communication. Only the essentials of the other field need to be learned to be successful | + | <p>All common issues of cooperation iGEM teams faced seem to be solvable by taking the time to learn at least the very basics of the other field and with thorough communication. Only the essentials of the other field need to be learned to be successful, as <a href="http://www.clic.gatech.edu/papers/ID%20engineering_Nersessian&Newstetter_%202013.pdf" target="_blank">pointed out by Nersessian et al</a>. Grenoble 2011 iGEM team has made <a href="https://2011.igem.org/Team:Grenoble/HumanPractice/developing" target="_blank">flyers</a> specifically for this purpose, for both biologists and modelers to learn the basics of the other field. Besides studying textbooks of biology, modelers can for instance take some time to get familiar with the labwork in the beginning of the project. Likewise, it can be beneficial for biologists to get some hands-on experience in modeling. This approach has successfully been used also in professional research environments, as <a href="http://onlinelibrary.wiley.com/doi/10.1002/jez.b.22568/abstract;jsessionid=A0B2D3278EA21E0838489E9C6CA7B461.f04t02" target="_blank">Macleod and Nersessian explain</a>. </p> |
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<p>Regular meetings where progress and issues of every field are presented and discussed with the whole team are one option. These can take a lot of time, but ensure all team members stay informed and can voice their insights. Some teams hold meetings weekly, others daily. Brief daily meetings can be accompanied with more thorough weekly meetings</p> | <p>Regular meetings where progress and issues of every field are presented and discussed with the whole team are one option. These can take a lot of time, but ensure all team members stay informed and can voice their insights. Some teams hold meetings weekly, others daily. Brief daily meetings can be accompanied with more thorough weekly meetings</p> | ||
− | <p>For facilitating communication, having the modelers and experimentalists working closely together is beneficial. This can be achieved by having the modelers take part in the experiments or the experimentalists work together with modelers to discuss the modeling and answer biology-related questions. To enhance interaction, simply situating the modelers in the lab can be helpful | + | <p>For facilitating communication, having the modelers and experimentalists working closely together is beneficial. This can be achieved by having the modelers take part in the experiments or the experimentalists work together with modelers to discuss the modeling and answer biology-related questions. To enhance interaction, simply situating the modelers in the lab <a href="http://onlinelibrary.wiley.com/doi/10.1002/jez.b.22568/abstract;jsessionid=A0B2D3278EA21E0838489E9C6CA7B461.f04t02" target="_blank">can be helpful</a>. Ideally, the experimentalists involved in modeling would spend some time to study the basics of modeling and take part in modeling meetings to complement the knowledge of the modelers. This helps modeling in taking into account all biologically relevant interactions and avoiding biologically unrealistic assumptions. In professional environments, on the other hand, modelers <a href="http://onlinelibrary.wiley.com/doi/10.1002/jez.b.22568/abstract;jsessionid=A0B2D3278EA21E0838489E9C6CA7B461.f04t02" target="_blank">have been seen</a> as more likely to be able to adapt to experimental contexts than vice-versa.</p> |
<h4>Team compositions</h4> | <h4>Team compositions</h4> | ||
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<p>Most of the mathematical majors in professional teams seemed to be traditional computer science with no biological background, whereas iGEM teams had majors that directly combined modeling and biology, such as systems biology or bioinformatics. It is of course likely that the computer scientists in synthetic biology had more or less learnt bioinformatics, systems biology, or other subspecialty through their work. The division may be caused by the fact that these fields are relatively young as separate majors. Thus, we may see more of them in the future within research as well.</p> | <p>Most of the mathematical majors in professional teams seemed to be traditional computer science with no biological background, whereas iGEM teams had majors that directly combined modeling and biology, such as systems biology or bioinformatics. It is of course likely that the computer scientists in synthetic biology had more or less learnt bioinformatics, systems biology, or other subspecialty through their work. The division may be caused by the fact that these fields are relatively young as separate majors. Thus, we may see more of them in the future within research as well.</p> | ||
− | <p>Additionally, professional research groups have a lot less researchers with a biotechnology background (8%) compared to iGEM teams (26%). This could reflect the notion that technology and engineering students are less likely to work with academical research and more often work in companies. People with a biotechnology background appeared to work as mediators between biology and modeling. Bioengineers have also been noticed to work as boundary agents in both industry and academia, as they have been trained to be interdisciplinary and integrative | + | <p>Additionally, professional research groups have a lot less researchers with a biotechnology background (8%) compared to iGEM teams (26%). This could reflect the notion that technology and engineering students are less likely to work with academical research and more often work in companies. People with a biotechnology background appeared to work as mediators between biology and modeling. Bioengineers <a href="http://www.clic.gatech.edu/papers/ID%20engineering_Nersessian&Newstetter_%202013.pdf" target="_blank">have also been noticed</a> to work as boundary agents in both industry and academia, as they have been trained to be interdisciplinary and integrative. The fairly large amount of biotechnology students in iGEM teams could therefore improve communication between modelers with a mathematical background and experimentalists. This requires of course that there are people with a mathematical background in the team to begin with, which surprisingly often is not the case.</p> |
<p>Based on the answers above we conclude that more diverse teams help with integration of modeling and experimental work. The proportion of mathematical students in iGEM teams is relatively low in comparison with professional research teams. To better incorporate the modeling aspect of synthetic biology in iGEM projects, it might be preferable to include more students with a strong background in mathematical sciences in teams. On the other hand, including biotechnology students could enhance the cooperation between modelers and experimentalists.</p> | <p>Based on the answers above we conclude that more diverse teams help with integration of modeling and experimental work. The proportion of mathematical students in iGEM teams is relatively low in comparison with professional research teams. To better incorporate the modeling aspect of synthetic biology in iGEM projects, it might be preferable to include more students with a strong background in mathematical sciences in teams. On the other hand, including biotechnology students could enhance the cooperation between modelers and experimentalists.</p> | ||
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<p > | <p > | ||
<ol> | <ol> | ||
− | <li><p>Calvert J, Fujimura JH. 2011. Calculating life? Duelling discourses in interdisciplinary systems biology. Studies in History and Philosophy of Science Part C: Studies in History and Philosophy of Biological and Biomedical Sciences.</p></li> | + | <li><p>Calvert J, Fujimura JH. 2011. Calculating life? Duelling discourses in interdisciplinary systems biology. Studies in History and Philosophy of Science Part C: Studies in History and Philosophy of Biological and Biomedical Sciences. <a href="http://www.sciencedirect.com/science/article/pii/S1369848610001159" target="_blank">Online text.</a></p></li> |
− | <li><p>Calvert J. 2010. Systems biology, interdisciplinarity and disciplinary identity. Collaboration in the New Life Sciences, Aldershot: Ashgate.</p></li> | + | <li><p>Calvert J. 2010. Systems biology, interdisciplinarity and disciplinary identity. Collaboration in the New Life Sciences, Aldershot: Ashgate. <a href="http://books.google.fi/books?id=30R7BgAAQBAJ&lpg=PA1949&ots=kdviu0F3bM&dq=Collaboration%20in%20the%20New%20Life%20Sciences%2C%20Aldershot%3A%20Ashgate.&hl=sv&pg=PT142#v=onepage&q&f=false" target="_blank">Online text.</a></p></li> |
− | <li><p>MacLeod, M., & Nersessian, N. J. (2014). Strategies for Coordinating Experimentation and Modeling in Integrative Systems Biology. J. Exp. Zool. (Mol. Dev. Evol.), 9999, 1-10. <a href="http://onlinelibrary.wiley.com/doi/10.1002/jez.b.22568/abstract;jsessionid=A0B2D3278EA21E0838489E9C6CA7B461.f04t02" target="_blank">Online | + | <li><p>MacLeod, M., & Nersessian, N. J. (2014). Strategies for Coordinating Experimentation and Modeling in Integrative Systems Biology. J. Exp. Zool. (Mol. Dev. Evol.), 9999, 1-10. <a href="http://onlinelibrary.wiley.com/doi/10.1002/jez.b.22568/abstract;jsessionid=A0B2D3278EA21E0838489E9C6CA7B461.f04t02" target="_blank">Online text.</a></p></li> |
− | <li><p>Nersessian, Nancy J. and Wendy C. Newstetter. 2014. "Interdisciplinarity in Engineering". Cambridge Handbook of Engineering Education Research. J. Aditya and B. Olds. Cambridge: Cambridge University Press. | + | <li><p>Nersessian, Nancy J. and Wendy C. Newstetter. 2014. "Interdisciplinarity in Engineering Research and Learning". Cambridge Handbook of Engineering Education Research. J. Aditya and B. Olds. Cambridge: Cambridge University Press. <a href="http://www.clic.gatech.edu/papers/ID%20engineering_Nersessian&Newstetter_%202013.pdf" target="_blank">Online text.</a></p></li> |
</ol> | </ol> | ||
</p> | </p> |
Latest revision as of 19:10, 14 September 2015