Literature DB >> 22711757

Do observational studies using propensity score methods agree with randomized trials? A systematic comparison of studies on acute coronary syndromes.

Issa J Dahabreh1, Radley C Sheldrick, Jessica K Paulus, Mei Chung, Vasileia Varvarigou, Haseeb Jafri, Jeremy A Rassen, Thomas A Trikalinos, Georgios D Kitsios.   

Abstract

AIMS: Randomized controlled trials (RCTs) are the gold standard for assessing the efficacy of therapeutic interventions because randomization protects from biases inherent in observational studies. Propensity score (PS) methods, proposed as a potential solution to confounding of the treatment-outcome association, are widely used in observational studies of therapeutic interventions for acute coronary syndromes (ACS). We aimed to systematically assess agreement between observational studies using PS methods and RCTs on therapeutic interventions for ACS. METHODS AND
RESULTS: We searched for observational studies of interventions for ACS that used PS methods to estimate treatment effects on short- or long-term mortality. Using a standardized algorithm, we matched observational studies to RCTs based on patients' characteristics, interventions, and outcomes ('topics'), and we compared estimates of treatment effect between the two designs. When multiple observational studies or RCTs were identified for the same topic, we performed a meta-analysis and used the summary relative risk for comparisons. We matched 21 observational studies investigating 17 distinct clinical topics to 63 RCTs (median = 3 RCTs per observational study) for short-term (7 topics) and long-term (10 topics) mortality. Estimates from PS analyses differed statistically significantly from randomized evidence in two instances; however, observational studies reported more extreme beneficial treatment effects compared with RCTs in 13 of 17 instances (P = 0.049). Sensitivity analyses limited to large RCTs, and using alternative meta-analysis models yielded similar results.
CONCLUSION: For the treatment of ACS, observational studies using PS methods produce treatment effect estimates that are of more extreme magnitude compared with those from RCTs, although the differences are rarely statistically significant.

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Year:  2012        PMID: 22711757      PMCID: PMC3409422          DOI: 10.1093/eurheartj/ehs114

Source DB:  PubMed          Journal:  Eur Heart J        ISSN: 0195-668X            Impact factor:   29.983


  29 in total

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Review 6.  Comparison of evidence of treatment effects in randomized and nonrandomized studies.

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  55 in total

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Review 6.  Benchmarking Observational Analyses Against Randomized Trials: a Review of Studies Assessing Propensity Score Methods.

Authors:  Shaun P Forbes; Issa J Dahabreh
Journal:  J Gen Intern Med       Date:  2020-03-19       Impact factor: 5.128

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8.  Comparing Propensity Score Methods Versus Traditional Regression Analysis for the Evaluation of Observational Data: A Case Study Evaluating the Treatment of Gram-Negative Bloodstream Infections.

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10.  Ethical considerations for conducting a randomized controlled trial in transport.

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