2020
DOI: 10.21203/rs.3.rs-24268/v3
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Multiple Imputation with Missing Indicators as Proxies for Unmeasured Variables: Simulation Study

Abstract: Background : Within routinely collected health data, missing data for an individual might provide useful information in itself. This occurs, for example, in the case of electronic health records, where the presence or absence of data is informative. While the naive use of missing indicators to try to exploit such information can introduce bias, its use in conjunction with multiple imputation may unlock the potential value of missingness to reduce bias in causal effect estimation, particularly in missing not at… Show more

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