Nursing students' diagnostic accuracy using a computer-based clinical scenario simulation

Being able to make accurate clinical decisions about actual or potential health problems is crucial to provide a safe and effective care. However, nursing students generally have difficulties identifying nursing diagnoses accurately. To compare the diagnostic accuracy within and across the NANDA-I d...

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Veröffentlicht in:Nurse education today 2018-12, Vol.71, p.240-246
Hauptverfasser: Sousa Freire, Vanessa E.C., Lopes, Marcos V.O., Keenan, Gail M., Dunn Lopez, Karen
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container_start_page 240
container_title Nurse education today
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creator Sousa Freire, Vanessa E.C.
Lopes, Marcos V.O.
Keenan, Gail M.
Dunn Lopez, Karen
description Being able to make accurate clinical decisions about actual or potential health problems is crucial to provide a safe and effective care. However, nursing students generally have difficulties identifying nursing diagnoses accurately. To compare the diagnostic accuracy within and across the NANDA-I diagnoses domains of junior, senior, and graduate-entry students. Descriptive study The sample comprised one hundred thirty nursing students from a Midwestern American university. The participants were divided in three groups (juniors, seniors and graduate-entry) and invited to engage in a series of diagnostic exercises presented in a software. Students were presented with 13 scenarios and asked to identify the applicable defining characteristics, related factors, and nursing diagnoses from the NANDA-I taxonomy. The number of correct answers per scenario was used to compute diagnostic accuracy. Age, gender, previous exposure to the NANDA-I taxonomy, and student level were covariates in the analysis. The average percent correct answers across all groups was 64.4% and no statistical differences between the groups were found. The scenarios belonging to the Health Promotion, Self-Perception, and Growth/Development Domains were those in which students had a higher number of incorrect answers. Students also had more difficulty recognizing the correct nursing diagnoses compared with related factors and defining characteristics. This study found no associations between demographic variables, exposure to the NANDA-I taxonomy, or academic program level and diagnostic accuracy. Some areas in which students had a poor performance indicate need for improvement in diagnostic reasoning skills.
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source MEDLINE; Applied Social Sciences Index & Abstracts (ASSIA); ScienceDirect Journals (5 years ago - present)
subjects Accuracy
Classification
Clinical competence
Clinical Competence - standards
Clinical nursing
College students
Computer Simulation - trends
Cross-Sectional Studies
Demography
Diagnostic tests
Education, Nursing, Baccalaureate - methods
Educational Measurement - methods
Educational Measurement - statistics & numerical data
Female
Health promotion
Humans
Male
Medical diagnosis
Nursing
Nursing diagnosis
Nursing education
Nursing education research
Nursing Students
Patient care planning
Perceptions
Problem based learning
Simulation
Standardized patients
Students
Students, Nursing - statistics & numerical data
Taxonomy
Thinking Skills
Young Adult
title Nursing students' diagnostic accuracy using a computer-based clinical scenario simulation
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