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    Missing Data in Marginal Structural Models: A Plasmode Simulation Study Comparing Multiple Imputation and Inverse Probability Weighting

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    Authors
    Liu, Shao-Hsien
    Chrysanthopoulou, Stavroula A.
    Chang, Qiuzhi
    Hunnicutt, Jacob N.
    Lapane, Kate L.
    UMass Chan Affiliations
    Department of Quantitative Health Sciences, Division of Epidemiology of Chronic Diseases and Vulnerable Populations
    Document Type
    Journal Article
    Publication Date
    2019-03-01
    Keywords
    missing data
    marginal structural models
    plasmode simulation
    multiple imputation
    inverse probability weighting
    Biostatistics
    Epidemiology
    Health Services Research
    Quantitative, Qualitative, Comparative, and Historical Methodologies
    Statistics and Probability
    
    Metadata
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    Link to Full Text
    https://doi.org/10.1097/MLR.0000000000001063
    Abstract
    BACKGROUND: The use of marginal structural models (MSMs) to adjust for time-varying confounding has increased in epidemiologic studies. However, in the setting of MSMs, recommendations for how best to handle missing data are contradictory. We present a plasmode simulation study to compare the validity and precision of MSMs estimates using complete case analysis (CC), multiple imputation (MI), and inverse probability weighting (IPW) in the presence of missing data on time-independent and time-varying confounders. MATERIALS AND METHODS: Simulations were based on a cohort substudy using data from the Osteoarthritis Initiative which estimated the marginal causal effect of intra-articular injection use on yearly changes in knee pain. We simulated 81 scenarios with parameter values varied on missing mechanisms (MCAR, MAR, and MNAR), percentages of missing (10%, 20%, and 30%), type of confounders (time-independent, time-varying, either or both), and analytical approaches (CC, IPW, and MI). The performance of CC, IPW, and MI methods was compared using relative bias, mean squared error of the estimates of interest, and empirical power. RESULTS: Across scenarios defined by missing data mechanism, extent of missing data, and confounder type, MI generally produced less biased estimates (range: 1.2%-6.7%) with better precision (range: 0.17-0.18) compared with IPW (relative bias: -5.3% to 8.0%; precision: 0.19-0.53). Empirical power was constant across the scenarios using MI. CONCLUSIONS: Under simple yet realistically constructed scenarios, MI seems to confer an advantage over IPW in MSMs applications.
    Source

    Med Care. 2019 Mar;57(3):237-243. doi: 10.1097/MLR.0000000000001063. Link to article on publisher's site

    DOI
    10.1097/MLR.0000000000001063
    Permanent Link to this Item
    http://hdl.handle.net/20.500.14038/46808
    PubMed ID
    30664611
    Related Resources

    Link to Article in PubMed

    ae974a485f413a2113503eed53cd6c53
    10.1097/MLR.0000000000001063
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    Population and Quantitative Health Sciences Publications

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