Journal of the American Heart Association: Cardiovascular and Cerebrovascular Disease (Dec 2023)

Real‐World Evaluation of an Automated Algorithm to Detect Patients With Potentially Undiagnosed Hypertension Among Patients With Routine Care in Hawaiʻi

  • Mika D. Thompson,
  • Yan Yan Wu,
  • Blythe Nett,
  • Lance K. Ching,
  • Hermina Taylor,
  • Tiffany Lemmen,
  • Tetine L. Sentell,
  • Meghan D. McGurk,
  • Catherine M. Pirkle

DOI
https://doi.org/10.1161/JAHA.123.031249
Journal volume & issue
Vol. 12, no. 24

Abstract

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Background This real‐world evaluation considers an algorithm designed to detect patients with potentially undiagnosed hypertension, receiving routine care, in a large health system in Hawaiʻi. It quantifies patients identified as potentially undiagnosed with hypertension; summarizes the individual, clinical, and health system factors associated with undiagnosed hypertension; and examines if the COVID‐19 pandemic affected detection. Methods and Results We analyzed the electronic health records of patients treated across 6 clinics from 2018 to 2021. We calculated total patients with potentially undiagnosed hypertension and compared patients flagged for undiagnosed hypertension to those with diagnosed hypertension and to the full patient panel across individual characteristics, clinical and health system factors (eg, clinic of care), and timing. Modified Poisson regression was used to calculate crude and adjusted risk ratios. Among the eligible patients (N=13 364), 52.6% had been diagnosed with hypertension, 2.7% were flagged as potentially undiagnosed, and 44.6% had no evidence of hypertension. Factors associated with a higher risk of potentially undiagnosed hypertension included individual characteristics (ages 40–84 compared with 18–39 years), clinical (lack of diabetes diagnosis) and health system factors (clinic site and being a Medicaid versus a Medicare beneficiary), and timing (readings obtained after the COVID‐19 Stay‐At‐Home Order in Hawaiʻi). Conclusions This evaluation provided evidence that a clinical algorithm implemented within a large health system's electronic health records could detect patients in need of follow‐up to determine hypertension status, and it identified key individual characteristics, clinical and health system factors, and timing considerations that may contribute to undiagnosed hypertension among patients receiving routine care.

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