Use of Learning Management System Data to Predict Student Success in a Pharmacy Capstone Course

Objective. Learning management system (LMS) data from online classes may provide opportunities to identify students at risk of failure. Previous LMS studies have not addressed the possibility of change in student engagement over time. The purpose of this study was to apply a novel statistical technique, group-based trajectory modeling (GBTM), to LMS data for an online course to identify predictors of successful course completion.Methods. Exploratory GBTM assessed the association of LMS activity (total activity time, dates of activity, and pages viewed) and attendance at virtual synchronous learning sessions with examination performance in a capstone disease-management course delivered in the final didactic quarter of a three-year Doctor of Pharmacy program. Groups were assigned based on trajectories of weekly page-view counts using structural-equation modeling.Results. GBTM identified three page-view engagement groups (median total page views, n): Group 1, high (1,818, n=24): Group 2, moderate (1,029, n=74), and Group 3, low (441 views, n=35). Group assignment alone was somewhat associated with final grade. Stratification based on consistent virtual synchronous learning session attendance improved predictive accuracy; for example, a top (A or A-) grade was earned by 49.0% and 24.0%, respectively, of Group 2 students with and without consistent synchronous engagement.Conclusion. Application of GBTM to LMS data, including information about synchronous engagement, could provide early warning signs of potential for course failure, helping instructors to target interventions to at-risk students. The technique should be further tested with alternative LMS data and early in didactics, before patterns of engagement are established.

[1]  M. Choinière,et al.  Trajectory Modelling Techniques Useful to Epidemiological Research: A Comparative Narrative Review of Approaches , 2020, Clinical epidemiology.

[2]  D. Holdford,et al.  Medication Adherence Trajectories: A Systematic Literature Review , 2020, Journal of managed care & specialty pharmacy.

[3]  M. Kawaguchi‐Suzuki,et al.  COVID-19 Pandemic Challenges and Lessons Learned by Pharmacy Educators Around the Globe , 2020, American Journal of Pharmaceutical Education.

[4]  F. Romanelli,et al.  Pharmacy Education Crosses the Rubicon , 2020, American Journal of Pharmaceutical Education.

[5]  A. Christopoulos,et al.  Sustainable Pharmacy Education in the Time of COVID-19 , 2020, American Journal of Pharmaceutical Education.

[6]  Lauren S. Schlesselman Perspective from a Teaching and Learning Center During Emergency Remote Teaching , 2020, American Journal of Pharmaceutical Education.

[7]  G. Fang,et al.  Opening the black box of the group‐based trajectory modeling process to analyze medication adherence patterns: An example using real‐world statin adherence data , 2019, Pharmacoepidemiology and drug safety.

[8]  Michael Felderer,et al.  Impact of Students' Presence and Course Participation on Learning Outcome in Co-Operative Online-based Courses , 2019, ICIMTH.

[9]  Ryan L. Boyd,et al.  How do online learners study? The psychometrics of students’ clicking patterns in online courses , 2019, PloS one.

[10]  A. McDonald,et al.  The Effect of Content Delivery Style on Student Performance in Anatomy , 2019, Anatomical sciences education.

[11]  Graeme J. Byrne,et al.  The relationship between student engagement with online content and achievement in a blended learning anatomy course , 2018, Anatomical sciences education.

[12]  M. Tedre,et al.  How the study of online collaborative learning can guide teachers and predict students’ performance in a medical course , 2018, BMC Medical Education.

[13]  Jun-Sing Wang,et al.  Trajectories of fasting plasma glucose variability and mortality in type 2 diabetes. , 2017, Diabetes & metabolism.

[14]  Matti Tedre,et al.  How learning analytics can early predict under-achieving students in a blended medical education course , 2017, Medical teacher.

[15]  Jun Jin,et al.  Educational Technologies in Problem-Based Learning in Health Sciences Education: A Systematic Review , 2014, Journal of medical Internet research.

[16]  R. Clifford,et al.  Effectiveness of E-learning in Pharmacy Education , 2014, American Journal of Pharmaceutical Education.

[17]  Launa Gauthier,et al.  How Learning Works: 7 Research-Based Principles for Smart Teaching , 2013 .

[18]  T. Brennan,et al.  Group-based Trajectory Models: A New Approach to Classifying and Predicting Long-Term Medication Adherence , 2013, Medical care.

[19]  Tina Stavredes,et al.  Effective Online Teaching: Foundations and Strategies for Student Success , 2011 .

[20]  David C. Thompson,et al.  Educational Technology Use Among US Colleges and Schools of Pharmacy , 2011, American Journal of Pharmaceutical Education.

[21]  Daniel S. Nagin,et al.  Group-Based Trajectory Modeling (Nearly) Two Decades Later , 2010, Journal of quantitative criminology.

[22]  Daniel S Nagin,et al.  Group-based trajectory modeling in clinical research. , 2010, Annual review of clinical psychology.

[23]  Adam M Persky,et al.  Roles of innovation in education delivery. , 2009, American journal of pharmaceutical education.

[24]  Stefan Hrastinski,et al.  Asynchronous & Synchronous E-Learning , 2008 .