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Internal Medicine residents use heuristics to estimate disease probability

BACKGROUND: Training in Bayesian reasoning may have limited impact on accuracy of probability estimates. In this study, our goal was to explore whether residents previously exposed to Bayesian reasoning use heuristics rather than Bayesian reasoning to estimate disease probabilities. We predicted tha...

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Autores principales: Phang, Sen Han, Ravani, Pietro, Schaefer, Jeffrey, Wright, Bruce, McLaughlin, Kevin
Formato: Online Artículo Texto
Lenguaje:English
Publicado: University of Calgary, Health Sciences Centre 2015
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4795085/
https://www.ncbi.nlm.nih.gov/pubmed/27004080
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author Phang, Sen Han
Ravani, Pietro
Schaefer, Jeffrey
Wright, Bruce
McLaughlin, Kevin
author_facet Phang, Sen Han
Ravani, Pietro
Schaefer, Jeffrey
Wright, Bruce
McLaughlin, Kevin
author_sort Phang, Sen Han
collection PubMed
description BACKGROUND: Training in Bayesian reasoning may have limited impact on accuracy of probability estimates. In this study, our goal was to explore whether residents previously exposed to Bayesian reasoning use heuristics rather than Bayesian reasoning to estimate disease probabilities. We predicted that if residents use heuristics then post-test probability estimates would be increased by non-discriminating clinical features or a high anchor for a target condition. METHOD: We randomized 55 Internal Medicine residents to different versions of four clinical vignettes and asked them to estimate probabilities of target conditions. We manipulated the clinical data for each vignette to be consistent with either 1) using a representative heuristic, by adding non-discriminating prototypical clinical features of the target condition, or 2) using anchoring with adjustment heuristic, by providing a high or low anchor for the target condition. RESULTS: When presented with additional non-discriminating data the odds of diagnosing the target condition were increased (odds ratio (OR) 2.83, 95% confidence interval [1.30, 6.15], p = 0.009). Similarly, the odds of diagnosing the target condition were increased when a high anchor preceded the vignette (OR 2.04, [1.09, 3.81], p = 0.025). CONCLUSIONS: Our findings suggest that despite previous exposure to the use of Bayesian reasoning, residents use heuristics, such as the representative heuristic and anchoring with adjustment, to estimate probabilities. Potential reasons for attribute substitution include the relative cognitive ease of heuristics vs. Bayesian reasoning or perhaps residents in their clinical practice use gist traces rather than precise probability estimates when diagnosing.
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spelling pubmed-47950852016-03-21 Internal Medicine residents use heuristics to estimate disease probability Phang, Sen Han Ravani, Pietro Schaefer, Jeffrey Wright, Bruce McLaughlin, Kevin Can Med Educ J Major Contribution/Research Article BACKGROUND: Training in Bayesian reasoning may have limited impact on accuracy of probability estimates. In this study, our goal was to explore whether residents previously exposed to Bayesian reasoning use heuristics rather than Bayesian reasoning to estimate disease probabilities. We predicted that if residents use heuristics then post-test probability estimates would be increased by non-discriminating clinical features or a high anchor for a target condition. METHOD: We randomized 55 Internal Medicine residents to different versions of four clinical vignettes and asked them to estimate probabilities of target conditions. We manipulated the clinical data for each vignette to be consistent with either 1) using a representative heuristic, by adding non-discriminating prototypical clinical features of the target condition, or 2) using anchoring with adjustment heuristic, by providing a high or low anchor for the target condition. RESULTS: When presented with additional non-discriminating data the odds of diagnosing the target condition were increased (odds ratio (OR) 2.83, 95% confidence interval [1.30, 6.15], p = 0.009). Similarly, the odds of diagnosing the target condition were increased when a high anchor preceded the vignette (OR 2.04, [1.09, 3.81], p = 0.025). CONCLUSIONS: Our findings suggest that despite previous exposure to the use of Bayesian reasoning, residents use heuristics, such as the representative heuristic and anchoring with adjustment, to estimate probabilities. Potential reasons for attribute substitution include the relative cognitive ease of heuristics vs. Bayesian reasoning or perhaps residents in their clinical practice use gist traces rather than precise probability estimates when diagnosing. University of Calgary, Health Sciences Centre 2015-12-11 /pmc/articles/PMC4795085/ /pubmed/27004080 Text en © 2015 Phang, Ravani, Schaefer. Wright, McLaughlin; licensee Synergies Partners This is an Open Journal Systems article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/2.0) which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Major Contribution/Research Article
Phang, Sen Han
Ravani, Pietro
Schaefer, Jeffrey
Wright, Bruce
McLaughlin, Kevin
Internal Medicine residents use heuristics to estimate disease probability
title Internal Medicine residents use heuristics to estimate disease probability
title_full Internal Medicine residents use heuristics to estimate disease probability
title_fullStr Internal Medicine residents use heuristics to estimate disease probability
title_full_unstemmed Internal Medicine residents use heuristics to estimate disease probability
title_short Internal Medicine residents use heuristics to estimate disease probability
title_sort internal medicine residents use heuristics to estimate disease probability
topic Major Contribution/Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4795085/
https://www.ncbi.nlm.nih.gov/pubmed/27004080
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