Literature DB >> 17072897

The design versus the analysis of observational studies for causal effects: parallels with the design of randomized trials.

Donald B Rubin1.   

Abstract

For estimating causal effects of treatments, randomized experiments are generally considered the gold standard. Nevertheless, they are often infeasible to conduct for a variety of reasons, such as ethical concerns, excessive expense, or timeliness. Consequently, much of our knowledge of causal effects must come from non-randomized observational studies. This article will advocate the position that observational studies can and should be designed to approximate randomized experiments as closely as possible. In particular, observational studies should be designed using only background information to create subgroups of similar treated and control units, where 'similar' here refers to their distributions of background variables. Of great importance, this activity should be conducted without any access to any outcome data, thereby assuring the objectivity of the design. In many situations, this objective creation of subgroups of similar treated and control units, which are balanced with respect to covariates, can be accomplished using propensity score methods. The theoretical perspective underlying this position will be presented followed by a particular application in the context of the US tobacco litigation. This application uses propensity score methods to create subgroups of treated units (male current smokers) and control units (male never smokers) who are at least as similar with respect to their distributions of observed background characteristics as if they had been randomized. The collection of these subgroups then 'approximate' a randomized block experiment with respect to the observed covariates.

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Year:  2007        PMID: 17072897     DOI: 10.1002/sim.2739

Source DB:  PubMed          Journal:  Stat Med        ISSN: 0277-6715            Impact factor:   2.373


  224 in total

1.  Effects of adjusting for instrumental variables on bias and precision of effect estimates.

Authors:  Jessica A Myers; Jeremy A Rassen; Joshua J Gagne; Krista F Huybrechts; Sebastian Schneeweiss; Kenneth J Rothman; Marshall M Joffe; Robert J Glynn
Journal:  Am J Epidemiol       Date:  2011-10-24       Impact factor: 4.897

Review 2.  Do observational studies using propensity score methods agree with randomized trials? A systematic comparison of studies on acute coronary syndromes.

Authors:  Issa J Dahabreh; Radley C Sheldrick; Jessica K Paulus; Mei Chung; Vasileia Varvarigou; Haseeb Jafri; Jeremy A Rassen; Thomas A Trikalinos; Georgios D Kitsios
Journal:  Eur Heart J       Date:  2012-06-17       Impact factor: 29.983

Review 3.  An introduction to causal inference.

Authors:  Judea Pearl
Journal:  Int J Biostat       Date:  2010-02-26       Impact factor: 0.968

4.  Challenges in addressing depression in HIV research: assessment, cultural context, and methods.

Authors:  Jane M Simoni; Steven A Safren; Lisa E Manhart; Karen Lyda; Cynthia I Grossman; Deepa Rao; Matthew J Mimiaga; Frank Y Wong; Sheryl L Catz; Michael B Blank; Ralph DiClemente; Ira B Wilson
Journal:  AIDS Behav       Date:  2011-02

5.  Matching methods for causal inference: A review and a look forward.

Authors:  Elizabeth A Stuart
Journal:  Stat Sci       Date:  2010-02-01       Impact factor: 2.901

6.  Bounded, efficient and multiply robust estimation of average treatment effects using instrumental variables.

Authors:  Linbo Wang; Eric Tchetgen Tchetgen
Journal:  J R Stat Soc Series B Stat Methodol       Date:  2017-12-18       Impact factor: 4.488

7.  Template matching for auditing hospital cost and quality.

Authors:  Jeffrey H Silber; Paul R Rosenbaum; Richard N Ross; Justin M Ludwig; Wei Wang; Bijan A Niknam; Nabanita Mukherjee; Philip A Saynisch; Orit Even-Shoshan; Rachel R Kelz; Lee A Fleisher
Journal:  Health Serv Res       Date:  2014-03-03       Impact factor: 3.402

8.  Empirical Anti-MRSA vs Standard Antibiotic Therapy and Risk of 30-Day Mortality in Patients Hospitalized for Pneumonia.

Authors:  Barbara Ellen Jones; Jian Ying; Vanessa Stevens; Candace Haroldsen; Tao He; McKenna Nevers; Matthew A Christensen; Richard E Nelson; Gregory J Stoddard; Brian C Sauer; Peter M Yarbrough; Makoto M Jones; Matthew Bidwell Goetz; Tom Greene; Matthew H Samore
Journal:  JAMA Intern Med       Date:  2020-04-01       Impact factor: 21.873

9.  Propensity scores for confounder adjustment when assessing the effects of medical interventions using nonexperimental study designs.

Authors:  T Stürmer; R Wyss; R J Glynn; M A Brookhart
Journal:  J Intern Med       Date:  2014-02-13       Impact factor: 8.989

Review 10.  Propensity score methods to control for confounding in observational cohort studies: a statistical primer and application to endoscopy research.

Authors:  Jeff Y Yang; Michael Webster-Clark; Jennifer L Lund; Robert S Sandler; Evan S Dellon; Til Stürmer
Journal:  Gastrointest Endosc       Date:  2019-04-30       Impact factor: 9.427

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