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Analysis of Alternative Strategies for the Teaching of Difficult Threshold Concepts in Large Undergraduate Medicine and Science Classes

Abstract

Introduction

Threshold concepts have a transformative effect on student understanding and are often difficult or ‘troublesome’. Students in undergraduate Medicine and Science must understand many threshold concepts, but are often presented with these ideas in large introductory classes with limited individual assistance. Effective approaches for the teaching of threshold concepts have not been evaluated in this context.

Methods

Students in two large introductory Medicine and Science classes at the University of New South Wales (UNSW) were taught a genetics threshold concept (the Hardy-Weinberg law) using a lecture-based simulation, small group tutorials, computer simulation and a variety of learning resources. Student knowledge of the concept was then assessed using a test and an examination. A survey and exploratory factor analysis were used to assess student responses to the different teaching methods.

Results

Factor and survey response analysis showed that students in both Medicine and Science were divided in their preference for either small group tutorials or lecture-based simulations when learning difficult concepts. Medicine students showed a stronger preference for tutorials than Science students, and a proportion of Medicine students were anti-simulation. In contrast, Science students were more likely to report that the simulation improved their understanding. Students used all of the learning resources provided, but few students preferred computer simulation.

Conclusion

Students in large Science and Medicine classes are polarised in their preferences for the teaching of difficult threshold concepts. This suggests that introductory courses will only effectively teach difficult concepts if they use a variety of teaching approaches. This has important implications for course design and resourcing and provides a foundation for the improved teaching of threshold concepts in undergraduate Medicine and Science.

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Acknowledgements

The authors would like to thank the many UNSW students and members of staff who assisted with this study. In particular, we would like to acknowledge the contribution of the following people to the organisation of the tutorial classes and the conduct and filming of the live simulation: Marie Kidd, Vanessa Huron, Pejhman Keshvardoust, Katie Taylor, Abigail Greenfield, Jessica Groen, Brett Hoppenbrouwer and Michael Rampe. We are also grateful to Professor Lambert Schuwirth (School of Medicine, Flinders University) for advice on data analysis.

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Correspondence to Sven K. Delaney.

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The study received ethics approval from UNSW (reference number HC12217) and Flinders University of South Australia (project OH-00041).

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The authors declare that there is no conflict of interest.

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Delaney, S.K., Mills, J., Galea, A. et al. Analysis of Alternative Strategies for the Teaching of Difficult Threshold Concepts in Large Undergraduate Medicine and Science Classes. Med.Sci.Educ. 27, 673–684 (2017). https://doi.org/10.1007/s40670-017-0453-x

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Keywords

  • Threshold concept
  • Genetics
  • Medical education
  • Science education
  • Undergraduate
  • Hardy-Weinberg