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Case-mix adjustment in non-randomised observational evaluations: the constant risk fallacy

Case-mix adjustment in non-randomised observational evaluations: the constant risk fallacy Observational studies comparing groups or populations to evaluate services or interventions usually require case-mix adjustment to account for imbalances between the groups being compared. Simulation studies have, however, shown that case-mix adjustment can make any bias worse.One reason this can happen is if the risk factors used in the adjustment are related to the risk in different ways in the groups or populations being compared, and ignoring this commits the “constant risk fallacy”.Case-mix adjustment is particularly prone to this problem when the adjustment uses factors that are proxies for the real risk factors.Interactions between risk factors and groups should always be examined before case-mix adjustment in observational studies. http://www.deepdyve.com/assets/images/DeepDyve-Logo-lg.png Journal of Epidemiology & Community Health British Medical Journal

Case-mix adjustment in non-randomised observational evaluations: the constant risk fallacy

Journal of Epidemiology & Community Health , Volume 61 (11) – Nov 12, 2007

Case-mix adjustment in non-randomised observational evaluations: the constant risk fallacy

Journal of Epidemiology & Community Health , Volume 61 (11) – Nov 12, 2007

Abstract

Observational studies comparing groups or populations to evaluate services or interventions usually require case-mix adjustment to account for imbalances between the groups being compared. Simulation studies have, however, shown that case-mix adjustment can make any bias worse.One reason this can happen is if the risk factors used in the adjustment are related to the risk in different ways in the groups or populations being compared, and ignoring this commits the “constant risk fallacy”.Case-mix adjustment is particularly prone to this problem when the adjustment uses factors that are proxies for the real risk factors.Interactions between risk factors and groups should always be examined before case-mix adjustment in observational studies.

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References (15)

Publisher
British Medical Journal
Copyright
2007 the BMJ Publishing Group
ISSN
0143-005X
eISSN
1470-2738
DOI
10.1136/jech.2007.061747
Publisher site
See Article on Publisher Site

Abstract

Observational studies comparing groups or populations to evaluate services or interventions usually require case-mix adjustment to account for imbalances between the groups being compared. Simulation studies have, however, shown that case-mix adjustment can make any bias worse.One reason this can happen is if the risk factors used in the adjustment are related to the risk in different ways in the groups or populations being compared, and ignoring this commits the “constant risk fallacy”.Case-mix adjustment is particularly prone to this problem when the adjustment uses factors that are proxies for the real risk factors.Interactions between risk factors and groups should always be examined before case-mix adjustment in observational studies.

Journal

Journal of Epidemiology & Community HealthBritish Medical Journal

Published: Nov 12, 2007

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