生物学家学习R语言:讲师迷你课程包

CourseSource Pub Date : 2023-01-01 DOI:10.24918/cs.2023.12
Amanda D. Clark, L. Stevison
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引用次数: 0

摘要

随着生物学越来越受数据驱动,教授学生数据素养技能已成为生物学课程的核心。尽管有丰富的在线资源教研究人员如何使用R,但很少有提供实用的实验室练习,以及教学资源,如关键字,学习目标和评估材料。在这里,我们提供了一套模块化的课程和实验活动,以帮助通过RStudio平台教授R。这两个软件应用程序都是免费和开源的,这使得这个课程在不同的机构中都很容易获得。这个课程是在几年教授研究生水平的计算生物学课程的基础上发展起来的。为应对新冠肺炎疫情,该课程完全改为在线授课。这些资源随后被迁移到GitHub上,使任何想要学习R来分析生物数据集的人都可以广泛地访问它们。在接下来的一年里,这些资源被用于以翻转的形式教授课程,这就是这里展示的课程计划。总的来说,学生们对翻转教学模式反应良好,这种模式利用课堂时间进行现场编码演示,并与讲师和助教一起解决挑战。总的来说,学生们能够使用这些技能来练习分析和解释数据,以及制作出版质量的图形。虽然所提供的模块范围从非常基本的(做简单的汇总统计和绘图)到相当高级的(将R集成到命令行中),但教师应该自由选择将哪些元素纳入自己的课程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning R for Biologists: A Mini Course Grab-Bag for Instructors
As biology becomes more data driven, teaching students data literacy skills has become central to biology curriculum. Despite a wealth of online resources that teach researchers how to use R, there are few that offer practical laboratory-based exercises, with teaching resources such as keys, learning objectives, and assessment materials. Here, we present a modular set of lessons and lab activities to help teach R through the platform of RStudio. Both software applications are free and open source making this curriculum highly accessible across various institutions. This curriculum was developed over several years of teaching a graduate level computational biology course. In response to the pandemic, the class was shifted to be completely online. These resources were then migrated to GitHub to make them broadly accessible to anyone wanting to learn R for the analysis of biological datasets. In the following year, these resources were used to teach the course in a flipped format, which is the lesson plan presented here. In general, students responded well to the flipped format, which used class time to conduct live coding demos and work through challenges with the instructor and teaching assistant. Overall, students were able to use these skills to practice analyzing and interpreting data, as well as producing publication quality graphics. While the modules presented range from very basic, doing simple summary statistics and plotting, to quite advanced, where R is integrated onto the command line, teachers should feel free to pick and choose which elements to incorporate into their own curriculum.
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