Measuring the surgical ‘learning curve’: methods, variables and competency

Objectives To describe how learning curves are measured and what procedural variables are used to establish a ‘learning curve’ (LC). To assess whether LCs are a valuable measure of competency. Patients and Methods A review of the surgical literature pertaining to LCs was conducted using the Medline...

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Veröffentlicht in:BJU international 2014-03, Vol.113 (3), p.504-508
Hauptverfasser: Khan, Nuzhath, Abboudi, Hamid, Khan, Mohammed Shamim, Dasgupta, Prokar, Ahmed, Kamran
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container_end_page 508
container_issue 3
container_start_page 504
container_title BJU international
container_volume 113
creator Khan, Nuzhath
Abboudi, Hamid
Khan, Mohammed Shamim
Dasgupta, Prokar
Ahmed, Kamran
description Objectives To describe how learning curves are measured and what procedural variables are used to establish a ‘learning curve’ (LC). To assess whether LCs are a valuable measure of competency. Patients and Methods A review of the surgical literature pertaining to LCs was conducted using the Medline and OVID databases. Results Variables should be fully defined and when possible, patient‐specific variables should be used. Trainee's prior experience and level of supervision should be quantified; the case mix and complexity should ideally be constant. Logistic regression may be used to control for confounding variables. Ideally, a learning plateau should reach a predefined/expert‐derived competency level, which should be fully defined. When the group splitting method is used, smaller cohorts should be used in order to narrow the range of the LC. Simulation technology and competence‐based objective assessments may be used in training and assessment in LC studies. Conclusions Measuring the surgical LC has potential benefits for patient safety and surgical education. However, standardisation in the methods and variables used to measure LCs is required. Confounding variables, such as participant's prior experience, case mix, difficulty of procedures and level of supervision, should be controlled. Competency and expert performance should be fully defined.
doi_str_mv 10.1111/bju.12197
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To assess whether LCs are a valuable measure of competency. Patients and Methods A review of the surgical literature pertaining to LCs was conducted using the Medline and OVID databases. Results Variables should be fully defined and when possible, patient‐specific variables should be used. Trainee's prior experience and level of supervision should be quantified; the case mix and complexity should ideally be constant. Logistic regression may be used to control for confounding variables. Ideally, a learning plateau should reach a predefined/expert‐derived competency level, which should be fully defined. When the group splitting method is used, smaller cohorts should be used in order to narrow the range of the LC. Simulation technology and competence‐based objective assessments may be used in training and assessment in LC studies. Conclusions Measuring the surgical LC has potential benefits for patient safety and surgical education. 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source MEDLINE; Wiley Online Library Journals Frontfile Complete
subjects Biological and medical sciences
Clinical Competence - standards
education
Education, Medical
Learning Curve
Medical sciences
Methods
Nephrology. Urinary tract diseases
urology
Urology - education
title Measuring the surgical ‘learning curve’: methods, variables and competency
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