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Imputation of missing values for electronic health record laboratory data

Jiang Li, Xiaowei Yan, Durgesh Chaudhary, Venkatesh Avula, Satish Mudiganti, Hannah Husby, Shima Shahjouei, Ardavan Afshar, Walter F. Stewart, Mohammed Yeasin, Ramin Zand, Vida Abedi

2021npj Digital Medicine131 citationsDOIOpen Access PDF

Abstract

Laboratory data from Electronic Health Records (EHR) are often used in prediction models where estimation bias and model performance from missingness can be mitigated using imputation methods. We demonstrate the utility of imputation in two real-world EHR-derived cohorts of ischemic stroke from Geisinger and of heart failure from Sutter Health to: (1) characterize the patterns of missingness in laboratory variables; (2) simulate two missing mechanisms, arbitrary and monotone; (3) compare cross-sectional and multi-level multivariate missing imputation algorithms applied to laboratory data; (4) assess whether incorporation of latent information, derived from comorbidity data, can improve the performance of the algorithms. The latter was based on a case study of hemoglobin A1c under a univariate missing imputation framework. Overall, the pattern of missingness in EHR laboratory variables was not at random and was highly associated with patients' comorbidity data; and the multi-level imputation algorithm showed smaller imputation error than the cross-sectional method.

Topics & Concepts

Missing dataImputation (statistics)Health recordsStatisticsElectronic health recordData scienceComputer scienceData miningMathematicsPolitical scienceHealth careLawStatistical Methods and Bayesian InferenceMachine Learning in HealthcareStatistical Methods and Inference
Imputation of missing values for electronic health record laboratory data | Litcius