Department of Biology, Doane University, Crete, Nebraska, United States of America.
Department of Chemistry, American University, Washington, DC, United States of America.
PLoS One. 2021 May 5;16(5):e0241946. doi: 10.1371/journal.pone.0241946. eCollection 2021.
In many areas of science, the ability to use computers to process, analyze, and visualize large data sets has become essential. The mismatch between the ability to generate large data sets and the computing skill to analyze them is arguably the most striking within the life sciences. The Digital Image and Vision Applications in Science (DIVAS) project describes a scaffolded series of interventions implemented over the span of a year to build the coding and computing skill of undergraduate students majoring primarily in the natural sciences. The program is designed as a community of practice, providing support within a network of learners. The program focus, images as data, provides a compelling 'hook' for participating scholars. Scholars begin the program with a one-credit spring semester seminar where they are exposed to image analysis. The program continues in the summer with a one-week, intensive Python and image processing workshop. From there, scholars tackle image analysis problems using a pair programming approach and can finish the summer with independent research. Finally, scholars participate in a follow-up seminar the subsequent spring and help onramp the next cohort of incoming scholars. We observed promising growth in participant self-efficacy in computing that was maintained throughout the project as well as significant growth in key computational skills. DIVAS program funding was able to support seventeen DIVAS over three years, with 76% of DIVAS scholars identifying as women and 14% of scholars identifying as members of an underrepresented minority group. Most scholars (82%) entered the program as first year students, with 94% of DIVAS scholars retained for the duration of the program and 100% of scholars remaining a STEM major one year after completing the program. The outcomes of the DIVAS project support the efficacy of building computational skill through repeated exposure of scholars to relevant applications over an extended period within a community of practice.
在许多科学领域,使用计算机处理、分析和可视化大型数据集的能力已经变得至关重要。在生命科学领域,生成大型数据集的能力与分析它们的计算技能之间的不匹配尤为明显。数字图像和视觉科学应用(DIVAS)项目描述了一系列在一年跨度内实施的分层干预措施,旨在培养主要主修自然科学的本科生的编码和计算技能。该计划被设计为一个实践社区,在学习者网络中提供支持。该计划的重点是将图像作为数据,为参与的学者提供一个引人入胜的“钩子”。学者们从春季学期的一门一学分的研讨会开始,在那里他们接触到图像分析。该计划在夏季继续进行为期一周的 Python 和图像处理强化工作坊。从那里,学者们使用结对编程的方法解决图像分析问题,并可以在独立研究中完成夏季的学习。最后,学者们参加后续的春季研讨会,并帮助下一阶段的新生学者入门。我们观察到参与者在计算自我效能方面的增长很有希望,并且在整个项目过程中保持不变,同时关键计算技能也有显著增长。DIVAS 项目资金在三年内支持了十七名 DIVAS,其中 76%的 DIVAS 学者为女性,14%的学者为少数族裔群体成员。大多数学者(82%)作为一年级学生进入该计划,94%的 DIVAS 学者在整个计划期间保留,100%的学者在完成该计划后的一年内仍然是 STEM 专业。DIVAS 项目的结果支持了通过在实践社区中反复暴露学者来建立计算技能的有效性,这种暴露是在较长时间内进行的。