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How Confident Are We About Observational Findings in Health Care: A Benchmark Study

Martijn J. Schuemie, M. Soledad Cepede, Marc A. Suchard, Jianxiao Yang, Yuxi Tian Alejandro Schuler, Patrick Ryan, David Madigan, George Hripcsak

2020Harvard Data Science Review60 citationsDOIOpen Access PDF

Abstract

Healthcare professionals increasingly rely on observational healthcare data, such as administrative claims and electronic health records, to estimate the causal effects of interventions. However, limited prior studies raise concerns about the real-world performance of the statistical and epidemiological methods that are used. We present the "OHDSI Methods Benchmark" that aims to evaluate the performance of effect estimation methods on real data. The benchmark comprises a gold standard, a set of metrics, and a set of open source software tools. The gold standard is a collection of real negative controls (drug-outcome pairs where no causal effect appears to exist) and synthetic positive controls (drug-outcome pairs that augment negative controls with simulated causal effects). We apply the benchmark using four large healthcare databases to evaluate methods commonly used in practice: the new-user cohort, self-controlled cohort, case-control, case-crossover, and self-controlled case series designs. The results confirm the concerns about these methods, showing that for most methods the operating characteristics deviate considerably from nominal levels. For example, in most contexts, only half of the 95% confidence intervals we calculated contain the corresponding true effect size. We previously developed an "empirical calibration" procedure to restore these characteristics and we also evaluate this procedure. While no one method dominates, self-controlled methods such as the empirically calibrated self-controlled case series perform well across a wide range of scenarios.

Topics & Concepts

Benchmark (surveying)Observational studyGold standard (test)Computer scienceHealth careHealth informaticsData miningSet (abstract data type)Clinical study designEconometricsPsychological interventionData setConfidence intervalStatisticsMedicineClinical trialArtificial intelligenceNursingPublic healthMathematicsProgramming languageGeographyEconomicsEconomic growthPathologyGeodesyAdvanced Causal Inference TechniquesStatistical Methods in Clinical TrialsHealth Systems, Economic Evaluations, Quality of Life
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