Title of article :
Implementing tutoring strategies into a patient simulator for clinical reasoning learning
Author/Authors :
Kabanza، نويسنده , , Froduald and Bisson، نويسنده , , Guy and Charneau، نويسنده , , Annabelle and Jang، نويسنده , , Taek-Sueng، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2006
Abstract :
SummaryObjective
aper describes an approach for developing intelligent tutoring systems (ITS) for teaching clinical reasoning.
als and methods
proach to ITS for clinical reasoning uses a novel hybrid knowledge representation for the pedagogic model, combining finite state machines to model different phases in the diagnostic process, production rules to model triggering conditions for feedback in different phases, temporal logic to express triggering conditions based upon past states of the studentʹs problem solving trace, and finite state machines to model feedback dialogues between the student and TeachMed. The expert model is represented by an influence diagram capturing the relationship between evidence and hypotheses related to a clinical case.
s
pproach is implemented into TeachMed, a patient simulator we are developing to support clinical reasoning learning for a problem-based learning medical curriculum at our institution; we demonstrate some scenarios of tutoring feedback generated using this approach.
sion
f the knowledge representation formalisms that we use has already been proven successful in different applications of artificial intelligence and software engineering, but their integration into a coherent pedagogic model as we propose is unique. The examples we discuss illustrate the effectiveness of this approach, making it promising for the development of complex ITS, not only for clinical reasoning learning, but potentially for other domains as well.
Keywords :
intelligent tutoring systems , Patient simulation , Clinical reasoning learning
Journal title :
Artificial Intelligence In Medicine
Journal title :
Artificial Intelligence In Medicine