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Generalizability of Subgroup Effects
Author(s) -
Marissa J. Seamans,
Hwanhee Hong,
Benjamin Ackerman,
Ian Schmid,
Elizabeth A. Stuart
Publication year - 2021
Publication title -
epidemiology
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.901
H-Index - 173
eISSN - 1531-5487
pISSN - 1044-3983
DOI - 10.1097/ede.0000000000001329
Subject(s) - generalizability theory , sample (material) , estimator , sample size determination , subgroup analysis , econometrics , population , statistics , mathematics , medicine , confidence interval , chemistry , environmental health , chromatography
Generalizability methods are increasingly used to make inferences about the effect of interventions in target populations using a study sample. Most existing methods to generalize effects from sample to population rely on the assumption that subgroup-specific effects generalize directly. However, researchers may be concerned that in fact subgroup-specific effects differ between sample and population. In this brief report, we explore the generalizability of subgroup effects. First, we derive the bias in the sample average treatment effect estimator as an estimate of the population average treatment effect when subgroup effects in the sample do not directly generalize. Next, we present a Monte Carlo simulation to explore bias due to unmeasured heterogeneity of subgroup effects across sample and population. Finally, we examine the potential for bias in an illustrative data example. Understanding the generalizability of subgroup effects may lead to increased use of these methods for making externally valid inferences of treatment effects using a study sample.

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