Analysis of Observational Studies in the Presence of Treatment Selection Bias
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Open Access
- 17 January 2007
- journal article
- research article
- Published by American Medical Association (AMA) in JAMA
- Vol. 297 (3), 278-285
- https://doi.org/10.1001/jama.297.3.278
Abstract
In the face of the financial, practical, and ethical challenges inherent in undertaking randomized clinical trials (RCTs), investigators often use observational data to compare the outcomes of different therapies. These comparisons may be biased due to prognostically important baseline differences among patients, often as a result of unobserved treatment selection biases. Unmeasurable clinical and social interactions in the diagnostic-treatment pathway, and physicians' knowledge of unmeasured prognostic variables, may affect treatment decisions and outcomes. Physicians are frequently risk averse in case selection, performing interventions on lower-risk patients despite greater clinical benefit to higher-risk patients.1-3Keywords
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