Research-driven education: An introductory course to systems and synthetic biology

Robert W. Smith, Luis Garcia-Morales, V. M. D. Martins dos Santos, E. Saccenti
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Abstract

Systems and Synthetic Biology are complementary fields emerging side-by-side into mainstream scientific research. Whilst systems biologists focus on understanding natural systems, synthetic biologists wish to modify, adapt and re-purpose biological systems towards certain desired goals, for example enhancing efficiency and robustness of desired biological traits. In both fields, data analysis, predictive mathematical modelling, experimental design, and controlled experimentation are crucial to obtain reproducible results and understand how applications can be scaled to larger systems and processes. As such, students from Life Sciences, Engineering, and Mathematics backgrounds must be taught fundamentals in biological systems, experimental techniques, mathematics, and data analysis/statistics. In addition, students must be trained for future multidisciplinary careers, where the interaction and communication between experimental and modelling researchers is fundamental. With the acceleration of technological developments (both computational and experimental) continuing unabated, educators need to bridge the increasing gap between fundamentally-required knowledge and skills that students need to pursue future academic or industrial research projects. In this paper, we will discuss how we have re-designed an introductory course in Systems and Synthetic Biology at Wageningen University and Research (Netherlands) that is targeted simultaneously to mathematical/computational students with an interest in biology and experimental methods, and to Life Science students interested in learning how biological systems can be mathematically analysed and modelled. The course highlights the links between fundamental methodologies and recently developed technologies within the Systems and Synthetic Biology fields. The course was re-designed for the 2021/22 academic year, we report that students from biology and biotechnology programmes graded their satisfaction of the course as 4.4 out of 5. We discuss how the course can act as a gateway to advanced courses in Systems Biology-oriented curricula (comprising: data infrastructure, modelling, and experimental synthetic biology), and towards future research projects.
研究驱动型教育:系统和合成生物学的入门课程
系统和合成生物学是互补的领域,并排出现在主流科学研究中。当系统生物学家专注于理解自然系统时,合成生物学家希望修改、适应和重新利用生物系统来实现某些预期目标,例如提高所需生物特性的效率和稳健性。在这两个领域,数据分析、预测数学建模、实验设计和控制实验对于获得可重复的结果和理解如何将应用扩展到更大的系统和过程至关重要。因此,来自生命科学、工程和数学背景的学生必须学习生物系统、实验技术、数学和数据分析/统计的基础知识。此外,学生必须为未来的多学科职业进行培训,其中实验和建模研究人员之间的互动和交流是基础。随着技术的加速发展(包括计算和实验)持续不减,教育工作者需要弥合学生追求未来学术或工业研究项目所需的基本知识和技能之间日益扩大的差距。在本文中,我们将讨论我们如何重新设计瓦赫宁根大学和研究中心(荷兰)的系统和合成生物学入门课程,该课程同时针对对生物学和实验方法感兴趣的数学/计算学生,以及对学习如何对生物系统进行数学分析和建模感兴趣的生命科学学生。本课程强调了系统和合成生物学领域的基本方法和最新开发的技术之间的联系。该课程为2021/22学年重新设计,我们报告说,生物学和生物技术专业的学生对课程的满意度为4.4分(满分5分)。我们讨论了课程如何作为系统生物学导向课程(包括:数据基础设施,建模和实验合成生物学)的高级课程的门户,以及未来的研究项目。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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