Latent class instrumental variables: a clinical and biostatistical perspective
- PMID: 26239275
- PMCID: PMC4715605
- DOI: 10.1002/sim.6612
Latent class instrumental variables: a clinical and biostatistical perspective
Erratum in
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Correction to "Latent class instrumental variables: A clinical and biostatistical perspective".Stat Med. 2019 Feb 28;38(5):901. doi: 10.1002/sim.8035. Epub 2018 Oct 30. Stat Med. 2019. PMID: 30761594 No abstract available.
Abstract
In some two-arm randomized trials, some participants receive the treatment assigned to the other arm as a result of technical problems, refusal of a treatment invitation, or a choice of treatment in an encouragement design. In some before-and-after studies, the availability of a new treatment changes from one time period to this next. Under assumptions that are often reasonable, the latent class instrumental variable (IV) method estimates the effect of treatment received in the aforementioned scenarios involving all-or-none compliance and all-or-none availability. Key aspects are four initial latent classes (sometimes called principal strata) based on treatment received if in each randomization group or time period, the exclusion restriction assumption (in which randomization group or time period is an instrumental variable), the monotonicity assumption (which drops an implausible latent class from the analysis), and the estimated effect of receiving treatment in one latent class (sometimes called efficacy, the local average treatment effect, or the complier average causal effect). Since its independent formulations in the biostatistics and econometrics literatures, the latent class IV method (which has no well-established name) has gained increasing popularity. We review the latent class IV method from a clinical and biostatistical perspective, focusing on underlying assumptions, methodological extensions, and applications in our fields of obstetrics and cancer research.
Keywords: all-or-none compliance; causal inference; encouragement design, observational; paired availability design; principal stratification, randomized trial.
Copyright © 2015 John Wiley & Sons, Ltd.
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References
-
- Baker SG. Compliance, all-or-none. In: Kotz S, Read CR, Banks DL, editors. The Encyclopedia of Statistical Science, Update Volume 1. New York: John Wiley and Sons, Inc; 1997. pp. 134–138.
-
- Newcombe RG. Explanatory and pragmatic estimates of the treatment effect when deviations from allocated treatment occur. Statistics in Medicine. 1988;7:1179–1186. - PubMed
-
- Shapiro S. Periodic screening for breast cancer: the HIP Randomized Controlled Trial. Health Insurance Plan. Journal of the National Cancer Institute Monographs. 1997;22:27–30. - PubMed
-
- Sexton M, Hebel JR. A clinical trial of change in maternal smoking and its effect on birth weight. Journal of the American Medical Association. 1984;251:911–915. - PubMed
-
- McDonald CJ, Hui SL, Tierney WM. Effects of computer reminders for influenza vaccination on morbidity during influenza epidemics. MD Computing. 1992;9:304–312. - PubMed
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