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Published in: International Journal of Public Health 4/2018

01-05-2018 | Hints & Kinks

Segmented generalized mixed effect models to evaluate health outcomes

Authors: Sahar Saeed, Erica E. M. Moodie, Erin C. Strumpf, Marina B. Klein

Published in: International Journal of Public Health | Issue 4/2018

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Excerpt

Randomized placebo-controlled trials (RCTs) are considered the gold standard for assessing the effect of exposures (e.g., treatments) or interventions (e.g., policies) on a variety of outcomes. By design, randomization “controls” for confounders to yield internally valid inference. However due to high costs, feasibility issues and/or ethical considerations, the RCT study design may be unable to answer pertinent public health-related research questions (West et al. 2008). Such questions include real-world effectiveness of newly marketed medications or the evaluation of health policies. Observational studies can bridge knowledge gaps left by RCTs. The following article will explain how to extend a pre–post study design using a segmented generalized mixed model to evaluate the impact of acute individual-level exposures on health outcomes. We describe the advantages of using repeated measures over traditional pre–post designs, what exposures are appropriate to analyze, and how different impact models can be parameterized. Like all methods, this approach comes with strengths, assumptions and limitations, which we discuss. …
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Metadata
Title
Segmented generalized mixed effect models to evaluate health outcomes
Authors
Sahar Saeed
Erica E. M. Moodie
Erin C. Strumpf
Marina B. Klein
Publication date
01-05-2018
Publisher
Springer International Publishing
Published in
International Journal of Public Health / Issue 4/2018
Print ISSN: 1661-8556
Electronic ISSN: 1661-8564
DOI
https://doi.org/10.1007/s00038-018-1091-9

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