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Using emotion recognition to assess simulation-based learning

Simulation-based assessment relies on instruments that measure knowledge acquisition, satisfaction, confidence, and the motivation of students. However, the emotional aspects of assessment have not yet been fully explored in the literature. This dimension can provide a deeper understanding of the ex...

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Published in:Nurse education in practice 2019-03, Vol.36, p.13-19
Main Authors: Mano, Leandro Y., Mazzo, Alessandra, Neto, José R.T., Meska, Mateus H.G., Giancristofaro, Gabriel T., Ueyama, Jó, Júnior, Gerson A.P.
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creator Mano, Leandro Y.
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description Simulation-based assessment relies on instruments that measure knowledge acquisition, satisfaction, confidence, and the motivation of students. However, the emotional aspects of assessment have not yet been fully explored in the literature. This dimension can provide a deeper understanding of the experience of learning in clinical simulations. In this study, a computer (software) model was employed to identify and classify emotions with the aim of assessing them, while creating a simulation scenario. A group of (twenty-four) students took part in a simulated nursing care scenario that included a patient suffering from ascites and respiratory distress syndrome followed by vomiting. The patient's facial expressions were recorded and then individually analyzed on the basis of six critical factors that were determined by the researchers in the simulation scenario: 1) student-patient communication, 2) dealing with the patient's complaint, 3) making a clinical assessment of the patient, 4) the vomiting episode, 5) nursing interventions, and 6) making a reassessment of the patient. The results showed that emotion recognition can be assessed by means of both dimensional (continuous models) and cognitive (discrete or categorical models) theories of emotion. With the aid of emotion recognition and classification through facial expressions, the researchers succeeded in analyzing the emotions of students during a simulated clinical learning activity. In the study, the participants mainly displayed a restricted affect during the simulation scenario, which involved negative feelings such as anger, fear, tension, and impatience, resulting from the difficulty of creating the scenario. This can help determine which areas the students were able to master and which caused them greater difficulty. The model employed for the recognition and analysis of facial expressions in this study is very comprehensive and paves the way for further use and a more detailed interpretation of its components. •Explore emotional aspects of assessment on a simulation scenario.•Used a computer model to identify and classify emotions in the simulation scenario.•The results show a predominance of restricted affect during the simulation scenario.•The model of recognition of facial expressions is very comprehensive and paves the way for other uses and interpretation.
doi_str_mv 10.1016/j.nepr.2019.02.017
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source Applied Social Sciences Index & Abstracts (ASSIA); Education Collection (Proquest) (PQ_SDU_P3); ScienceDirect Freedom Collection 2022-2024; Social Science Premium Collection; Sociology Collection
subjects Assessment
Behavioral Objectives
Clinical assessment
Clinical nursing
Clinical training
Education
Educational Environment
Emotion classification
Emotion recognition
Emotions
Facial expressions
Fear & phobias
Knowledge
Learning
Learning Processes
Learning Strategies
Motivation
Nursing
Nursing education
Patient communication
Psychological distress
Respiratory distress syndrome
Simulation
Skills
Standardized patients
Students
Suffering
Teaching
title Using emotion recognition to assess simulation-based learning
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