Litcius/Paper detail

Data integration in causal inference

Xu Shi, Ziyang Pan, Wang Miao

2022Wiley Interdisciplinary Reviews Computational Statistics37 citationsDOIOpen Access PDF

Abstract

Abstract Integrating data from multiple heterogeneous sources has become increasingly popular to achieve a large sample size and diverse study population. This article reviews development in causal inference methods that combines multiple datasets collected by potentially different designs from potentially heterogeneous populations. We summarize recent advances on combining randomized clinical trials with external information from observational studies or historical controls, combining samples when no single sample has all relevant variables with application to two‐sample Mendelian randomization, distributed data setting under privacy concerns for comparative effectiveness and safety research using real‐world data, Bayesian causal inference, and causal discovery methods. This article is categorized under: Statistical Models > Semiparametric Models Applications of Computational Statistics > Clinical Trials

Topics & Concepts

Causal inferenceMendelian randomizationObservational studyInferenceComputer scienceSample size determinationSample (material)Data scienceData miningRandomized experimentMachine learningArtificial intelligenceEconometricsStatisticsMathematicsGeneBiochemistryChemistryGenotypeChromatographyGenetic variantsAdvanced Causal Inference TechniquesGenetic Associations and EpidemiologyStatistical Methods in Clinical Trials