Visualizing protein data sets in R through a student peer-review rubric

Research output: Contribution to journalArticlepeer-review

Abstract

The R programming language and computing environment is a powerful and common platform used by life science researchers and educators for the analysis of big data. One of the benefits of using R in this context is its ability to visualize the results. Using R to generate visualizations has gained in popularity due to the increased number of R packages available to convert data to graphic display. In this paper, I ask the following question: how can student engagement with protein analysis be promoted using R-based visualizations in the classroom? During the 2021 IUBMB/ASBMD workshop “Teaching Science with Big Data”, I presented a teaching strategy that used R for the visualization of protein data. In this report, I provide a teaching procedure and a summary of how students engaged with these data in our Introduction to R for Professional Data Science class. This report is based on a case study methodology by reviewing student peer comments for protein analyses conducted in R. The results indicated that students were active participants in the peer-review process and that they learned to take a critical view of data visualization.
Original languageAmerican English
JournalBiochemistry and Molecular Biology Education
DOIs
StatePublished - Jul 15 2022

Keywords

  • big data
  • open source R
  • rubric
  • student peer review

Disciplines

  • Higher Education
  • Science and Mathematics Education
  • Educational Technology

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