A Tale of Three Cases: Examining Accuracy, Efficiency, and Process Differences in Diagnosing Virtual Patient Cases
Author(s) -
Tenzin Doleck,
Amanda Jarrell,
Eric Poitras,
Maher Chaouachi,
Susanne P. Lajoie
Publication year - 2016
Publication title -
australasian journal of educational technology
Language(s) - English
Resource type - Journals
eISSN - 1449-5554
pISSN - 1449-3098
DOI - 10.14742/ajet.2759
Subject(s) - perspective (graphical) , computer science , process (computing) , virtual patient , measure (data warehouse) , clinical practice , artificial intelligence , machine learning , human–computer interaction , cognitive psychology , data science , psychology , medicine , data mining , family medicine , psychiatry , operating system
Clinical reasoning is a central skill in diagnosing cases. However, diagnosing a clinical case poses several challenges that are inherent to solving multifaceted ill-structured problems. In particular, when solving such problems, the complexity stems from the existence of multiple paths to arriving at the correct solution (Anonymous, 2003). Moreover, the approach one employs in diagnosing a clinical case is in some measure dependent upon the complexity of the case. This leads us to the question: Are there differences in the manner in which novices solve cases with varying levels of complexity in a computer based learning environment? More specifically, we are interested in understanding and elucidating if there are clinical reasoning differences in regards to accuracy, efficiency, and process across three virtual patient cases of varying difficulty levels. Examining such differences may have implications from both a learner modeling and system enhancement perspective. We close by discussing the implications for practice, limitations of the study, and future research directions.
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