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dc.contributor.authorShepherd, Daisy A.
dc.contributor.authorBaer, Benjamin R.
dc.contributor.authorMoreno-Betancur , Margarita
dc.date.accessioned2024-02-15T12:30:08Z
dc.date.available2024-02-15T12:30:08Z
dc.date.issued2023-12-07
dc.identifier299279127
dc.identifierd7b98010-09be-42cd-8e00-c2dbe7013351
dc.identifier85178962880
dc.identifier.citationShepherd , D A , Baer , B R & Moreno-Betancur , M 2023 , ' Confounding-adjustment methods for the causal difference in medians ' , BMC Medical Research Methodology , vol. 23 , 288 . https://doi.org/10.1186/s12874-023-02100-6en
dc.identifier.issn1471-2288
dc.identifier.urihttps://hdl.handle.net/10023/29258
dc.description.abstractBackground With continuous outcomes, the average causal effect is typically defined using a contrast of expected potential outcomes. However, in the presence of skewed outcome data, the expectation (population mean) may no longer be meaningful. In practice the typical approach is to continue defining the estimand this way or transform the outcome to obtain a more symmetric distribution, although neither approach may be entirely satisfactory. Alternatively the causal effect can be redefined as a contrast of median potential outcomes, yet discussion of confounding-adjustment methods to estimate the causal difference in medians is limited. In this study we described and compared confounding-adjustment methods to address this gap. Methods The methods considered were multivariable quantile regression, an inverse probability weighted (IPW) estimator, weighted quantile regression (another form of IPW) and two little-known implementations of g-computation for this problem. Methods were evaluated within a simulation study under varying degrees of skewness in the outcome and applied to an empirical study using data from the Longitudinal Study of Australian Children. Results Simulation results indicated the IPW estimator, weighted quantile regression and g-computation implementations minimised bias across all settings when the relevant models were correctly specified, with g-computation additionally minimising the variance. Multivariable quantile regression, which relies on a constant-effect assumption, consistently yielded biased results. Application to the empirical study illustrated the practical value of these methods. Conclusion The presented methods provide appealing avenues for estimating the causal difference in medians.
dc.format.extent11
dc.format.extent2059866
dc.language.isoeng
dc.relation.ispartofBMC Medical Research Methodologyen
dc.subjectCausal inferenceen
dc.subjectSkewed outcomesen
dc.subjectPotential outcomesen
dc.subjectDifference in mediansen
dc.subjectConfoundingen
dc.subjectQuantile regressionen
dc.subjectInverse probability weighteden
dc.subjectPropensity scoresen
dc.subjectG-computationen
dc.subjectQA Mathematicsen
dc.subject3rd-DASen
dc.subject.lccQAen
dc.titleConfounding-adjustment methods for the causal difference in mediansen
dc.typeJournal articleen
dc.contributor.institutionUniversity of St Andrews. Statisticsen
dc.identifier.doi10.1186/s12874-023-02100-6
dc.description.statusPeer revieweden


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