Literature DB >> 34366704

Characterizing Bias Due to Differential Exposure Ascertainment in Electronic Health Record Data.

Rebecca A Hubbard1, Elle Lett1,2, Gloria Y F Ho3, Jessica Chubak4.   

Abstract

Data derived from electronic health records (EHR) are heterogeneous with availability of specific measures dependent on the type and timing of patients' healthcare interactions. This creates a challenge for research using EHR-derived exposures because gold-standard exposure data, determined by a definitive assessment, may only be available for a subset of the population. Alternative approaches to exposure ascertainment in this case include restricting the analytic sample to only those patients with gold-standard exposure data available (exclusion); using gold-standard data, when available, and using a proxy exposure measure when the gold standard is unavailable (best available); or using a proxy exposure measure for everyone (common data). Exclusion may induce selection bias in outcome/exposure association estimates, while incorporating information from a proxy exposure via either the best available or common data approaches may result in information bias due to measurement error. The objective of this paper was to explore the bias and efficiency of these three analytic approaches across a broad range of scenarios motivated by a study of the association between chronic hyperglycemia and five-year mortality in an EHR-derived cohort of colon cancer survivors. We found that the best available approach tended to mitigate inefficiency and selection bias resulting from exclusion while suffering from less information bias than the common data approach. However, bias in all three approaches can be severe, particularly when both selection bias and information bias are present. When risk of either of these biases is judged to be more than moderate, EHR-based analyses may lead to erroneous conclusions.

Entities:  

Keywords:  electronic health records; information bias; measurement error; selection bias

Year:  2021        PMID: 34366704      PMCID: PMC8336686          DOI: 10.1007/s10742-020-00235-3

Source DB:  PubMed          Journal:  Health Serv Outcomes Res Methodol        ISSN: 1387-3741


  13 in total

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Review 4.  6. Glycemic Targets: Standards of Medical Care in Diabetes-2018.

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Journal:  Diabetes Care       Date:  2018-01       Impact factor: 19.112

5.  Out-of-system Care and Recording of Patient Characteristics Critical for Comparative Effectiveness Research.

Authors:  Kueiyu Joshua Lin; Robert J Glynn; Daniel E Singer; Shawn N Murphy; Joyce Lii; Sebastian Schneeweiss
Journal:  Epidemiology       Date:  2018-05       Impact factor: 4.822

6.  Misclassification of Myocardial Injury as Myocardial Infarction: Implications for Assessing Outcomes in Value-Based Programs.

Authors:  Cian McCarthy; Sean Murphy; Joshua A Cohen; Saad Rehman; Maeve Jones-O'Connor; David S Olshan; Avinainder Singh; Muthiah Vaduganathan; James L Januzzi; Jason H Wasfy
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Authors:  Kueiyu Joshua Lin; Daniel E Singer; Robert J Glynn; Shawn N Murphy; Joyce Lii; Sebastian Schneeweiss
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8.  Estimation using all available covariate information versus a fixed look-back window for dichotomous covariates.

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9.  Risk of colon cancer recurrence in relation to diabetes.

Authors:  Jessica Chubak; Onchee Yu; Rebecca A Ziebell; Erin J Aiello Bowles; Andrew T Sterrett; Monica M Fujii; Jennifer M Boggs; Andrea N Burnett-Hartman; Denise M Boudreau; Lu Chen; James S Floyd; Debra P Ritzwoller; Rebecca A Hubbard
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10.  Validation study in four health-care databases: upper gastrointestinal bleeding misclassification affects precision but not magnitude of drug-related upper gastrointestinal bleeding risk.

Authors:  Vera E Valkhoff; Preciosa M Coloma; Gwen M C Masclee; Rosa Gini; Francesco Innocenti; Francesco Lapi; Mariam Molokhia; Mees Mosseveld; Malene Schou Nielsson; Martijn Schuemie; Frantz Thiessard; Johan van der Lei; Miriam C J M Sturkenboom; Gianluca Trifirò
Journal:  J Clin Epidemiol       Date:  2014-05-01       Impact factor: 6.437

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