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Factors Mediating Learning and Application of Computational Modeling by Life Scientists

机译:介导学习与应用逼真科学家计算建模的因素

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This Work-in-Progress paper in the Research Category uses a retrospective mixed-methods study to better understand the factors that mediate learning of computational modeling by life scientists. Key stakeholders, including leading scientists, universities and funding agencies, have promoted computational modeling to enable life sciences research and improve the translation of genetic and molecular biology high-throughput data into clinical results. Software platforms to facilitate computational modeling by biologists who lack advanced mathematical or programming skills have had some success, but none has achieved widespread use among life scientists. Because computational modeling is a core engineering skill of value to other STEM fields, it is critical for engineering and computer science educators to consider how we help students from across STEM disciplines learn computational modeling. Currently we lack sufficient research on how best to help life scientists learn computational modeling. To address this gap, in 2017, we observed a short-format summer course designed for life scientists to learn computational modeling. The course used a simulation environment designed to lower programming barriers. We used semi-structured interviews to understand students' experiences while taking the course and in applying computational modeling after the course. We conducted interviews with graduate students and post- doctoral researchers who had completed the course. We also interviewed students who took the course between 2010 and 2013. Among these past attendees, we selected equal numbers of interview subjects who had and had not successfully published journal articles that incorporated computational modeling. This Work-in-Progress paper applies social cognitive theory to analyze the motivations of life scientists who seek training in computational modeling and their attitudes towards computational modeling. Additionally, we identify important social and environmental variables that influence successful application of computational modeling after course completion. The findings from this study may therefore help us educate biomedical and biological engineering students more effectively. Although this study focuses on life scientists, its findings can inform engineering and computer science education more broadly. Insights from this study may be especially useful in aiding incoming engineering and computer science students who do not have advanced mathematical or programming skills and in preparing undergraduate engineering students for collaborative work with life scientists.
机译:该研究范畴中的这份正在进行的纸张使用回顾性的混合方法研究,以更好地了解改变生命科学家的计算建模的因素。主要利益攸关方,包括领先的科学家,大学和资助机构,促进了计算模型,使生命科学研究和改善遗传和分子生​​物学高通量数据的翻译成临床结果。为了促进缺乏高级数学或编程技能的生物学家计算建模的软件平台已经取得了一些成功,但没有取得广泛使用的生活科学家。由于计算建模是对其他茎领域的价值的核心工程技能,因此对于工程和计算机科学教育者至关重要,以考虑我们如何帮助学生从Step学科学习计算建模。目前,我们缺乏足够的研究如何最好地帮助生活科学家学习计算建模。为了解决这一差距,在2017年,我们观察了一个为生命科学家设计的短格式夏季课程,以学习计算建模。该课程使用仿真环境,旨在降低编程障碍。我们使用半结构化访谈来了解学生的经验,同时参加课程,并在课程后应用计算建模。我们与研究生和博士后研究人员进行了采访,他们完成了课程。我们还采访了在2010年至2013年之间进行了课程的学生。在这些过去的与会者中,我们选择了平等数量的访谈主题,他们没有成功地发布了纳入计算建模的期刊文章。这种进步论文适用于社会认知理论,分析在计算建模中寻求培训的生命科学家的动机及其对计算建模的态度。此外,我们确定了影响课程完成后的计算模型成功应用的重要社交和环境变量。因此,本研究的调查结果可以帮助我们更有效地教育生物医学和生物工程学生。虽然这项研究侧重于生活科学家,但其调查结果可以更广泛地向工程和计算机科学教育提供信息。本研究的见解可能特别有用,在辅助没有高级数学或编程技能的进入工程和计算机科学学生以及准备本科生工程学生,以便与生活科学家合作。

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