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Mind the gap: observation windows to define periods of event ascertainment as a quality control method for longitudinal electronic health record data
- Althoff, Keri N;
- Wong, Cherise;
- Hogan, Brenna;
- Desir, Fidel;
- You, Bin;
- Humes, Elizabeth;
- Zhang, Jinbing;
- Jing, Yuezhou;
- Modur, Sharada;
- Lee, Jennifer S;
- Freeman, Aimee;
- Kitahata, Mari;
- Van Rompaey, Stephen;
- Mathews, W Christopher;
- Horberg, Michael A;
- Silverberg, Michael J;
- Mayor, Angel M;
- Salters, Kate;
- Moore, Richard D;
- Gange, Stephen J;
- Research and Design, North American AIDS Cohort Collaboration on
- et al.
Published Web Location
https://doi.org/10.1016/j.annepidem.2019.01.015Abstract
Purpose
Use of electronic health records (EHRs) in health research may lead to the false assumption of complete event ascertainment. We estimated "observation windows" (OWs), defined as periods within which the assumption of complete ascertainment of events is more likely to hold, as a quality control approach to reducing the likelihood of this false assumption. We demonstrated the impact of OWs on estimating the rates of type II diabetes mellitus (diabetes) from HIV clinical cohorts.Methods
Data contributed by 16 HIV clinical cohorts to the NA-ACCORD were used to identify and evaluate OWs for an operationalized definition of diabetes occurrence as a case study. Procedures included (1) gathering cohort-level data; (2) visualizing and summarizing gaps in observations; (3) systematically establishing start and stop dates during which the assumption of complete ascertainment of diabetes events was reasonable; and (4) visualizing the diabetes OWs relative to the cohort open and close dates to identify immortal person-time. We estimated diabetes occurrence event rates and 95% confidence intervals in the most recent decade that data were available (January 1, 2007, to December 31, 2016).Results
The number of diabetes events decreased by 17% with the use of the diabetes OWs; immortal person-time was removed decreasing total person-years by 23%. Consequently, the diabetes rate increased from 1.23 (95% confidence interval [1.20, 1.25]) per 100 person-years to 1.32 [1.29, 1.35] per 100 person-years with the use of diabetes OWs.Conclusions
As the use of EHR-curated data for event-driven health research continues to expand, OWs have utility as a quality control approach to complete event ascertainment, helping to improve accuracy of estimates by removing immortal person-time when ascertainment is incomplete.Many UC-authored scholarly publications are freely available on this site because of the UC's open access policies. Let us know how this access is important for you.
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