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Performance of the High‐dimensional Propensity Score in a Nordic Healthcare Model

The high‐dimensional propensity score (hdPS) is increasingly used as a tool to adjust for confounding in observational studies of drug effects. It was developed within very rich data sources, for example the American claims databases. Thus, it is unknown whether it can be applied in settings that pr...

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Published in:Basic & clinical pharmacology & toxicology 2017-03, Vol.120 (3), p.312-317
Main Authors: Hallas, Jesper, Pottegård, Anton
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description The high‐dimensional propensity score (hdPS) is increasingly used as a tool to adjust for confounding in observational studies of drug effects. It was developed within very rich data sources, for example the American claims databases. Thus, it is unknown whether it can be applied in settings that provide little more than primary care prescriptions and diagnoses from hospital contacts, as in the Nordic data sources. Our objective was to evaluate the performance of hdPS under such circumstances. As our case, we chose the association between use of selective cyclooxygenase‐2 inhibitors (coxibs) and traditional NSAIDs (tNSAIDs) and the risk of upper GI bleeding. Using Danish health registries, we identified 110,285 incident users of coxibs and 575,980 incident users of tNSAIDs and followed them for 90 days with respect to the occurrence of serious upper GI bleeding. Data were analysed using Cox regression, estimating the coxib/tNSAID hazard ratio (HR). Values below 1.00 indicate a lower estimated hazard with coxibs. We build hdPS models with inclusion of up to 500 diagnosis and 500 prescription drug covariates. The crude HR was 1.76 (95% confidence interval: 1.57–1.97), decreasing to 1.12 (1.00–1.26) and 0.99 (0.88–1.12) after adjustment for age and sex and 11 pre‐selected confounders, respectively. A hdPS with inclusion of 500 most prevalent diagnoses and 500 most prevalent prescription drugs resulted in a HR of 0.89 (0.77–1.02). These estimates were consistently lower when the analysis was restricted to non‐users of low‐dose aspirin. The estimate based on 500 diagnoses alone was higher than an estimate based on 500 prescription drugs alone (0.99 versus 0.91). We conclude that hdPS does work within a Nordic setting that prescription data are more effective than diagnosis data in achieving confounder adjustment and that hdPS seems more effective than simple confounder adjustment by variables selected on the basis of clinical reasoning.
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The crude HR was 1.76 (95% confidence interval: 1.57–1.97), decreasing to 1.12 (1.00–1.26) and 0.99 (0.88–1.12) after adjustment for age and sex and 11 pre‐selected confounders, respectively. A hdPS with inclusion of 500 most prevalent diagnoses and 500 most prevalent prescription drugs resulted in a HR of 0.89 (0.77–1.02). These estimates were consistently lower when the analysis was restricted to non‐users of low‐dose aspirin. The estimate based on 500 diagnoses alone was higher than an estimate based on 500 prescription drugs alone (0.99 versus 0.91). 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The crude HR was 1.76 (95% confidence interval: 1.57–1.97), decreasing to 1.12 (1.00–1.26) and 0.99 (0.88–1.12) after adjustment for age and sex and 11 pre‐selected confounders, respectively. A hdPS with inclusion of 500 most prevalent diagnoses and 500 most prevalent prescription drugs resulted in a HR of 0.89 (0.77–1.02). These estimates were consistently lower when the analysis was restricted to non‐users of low‐dose aspirin. The estimate based on 500 diagnoses alone was higher than an estimate based on 500 prescription drugs alone (0.99 versus 0.91). 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The crude HR was 1.76 (95% confidence interval: 1.57–1.97), decreasing to 1.12 (1.00–1.26) and 0.99 (0.88–1.12) after adjustment for age and sex and 11 pre‐selected confounders, respectively. A hdPS with inclusion of 500 most prevalent diagnoses and 500 most prevalent prescription drugs resulted in a HR of 0.89 (0.77–1.02). These estimates were consistently lower when the analysis was restricted to non‐users of low‐dose aspirin. The estimate based on 500 diagnoses alone was higher than an estimate based on 500 prescription drugs alone (0.99 versus 0.91). 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subjects Aged
Ambulatory Care - statistics & numerical data
Anti-Inflammatory Agents, Non-Steroidal - adverse effects
Antidepressants
Aspirin
Bleeding
Cohort Studies
Confidence intervals
COX-2 inhibitors
Cyclooxygenase 2 Inhibitors - adverse effects
Data sources
Databases, Factual
Delivery of Health Care - methods
Delivery of Health Care - statistics & numerical data
Denmark - epidemiology
Diagnosis
Drug Prescriptions - statistics & numerical data
Drugs
Female
Gastrointestinal Hemorrhage - chemically induced
Health care
Hemorrhage
Humans
Male
Nonsteroidal anti-inflammatory drugs
Performance evaluation
Propensity Score
Proportional Hazards Models
Prostaglandin endoperoxide synthase
Regression analysis
Risk Assessment - methods
Side effects
Statistical analysis
title Performance of the High‐dimensional Propensity Score in a Nordic Healthcare Model
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