Publication | Open Access
An introduction to inverse probability of treatment weighting in observational research
781
Citations
36
References
2021
Year
Treatment EffectQuasi-experimentCausal InferenceProspective Cohort StudyPreventive MedicineBiasRandomized Controlled TrialObservational ResearchPublic HealthRetrospective Cohort StudyStatisticsMedical StatisticMeasured ConfoundingTreatment WeightingMeta-analysisHealth PolicyOutcomes ResearchInverse ProbabilityEpidemiologyTime-varying ConfoundingStatistical InferenceMedicineTreatment Plan Evaluation
In this article we introduce the concept of inverse probability of treatment weighting (IPTW) and describe how this method can be applied to adjust for measured confounding in observational research, illustrated by a clinical example from nephrology. IPTW involves two main steps. First, the probability-or propensity-of being exposed to the risk factor or intervention of interest is calculated, given an individual's characteristics (i.e. propensity score). Second, weights are calculated as the inverse of the propensity score. The application of these weights to the study population creates a pseudopopulation in which confounders are equally distributed across exposed and unexposed groups. We also elaborate on how weighting can be applied in longitudinal studies to deal with informative censoring and time-dependent confounding in the setting of treatment-confounder feedback.
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