Risk Management and Healthcare Policy (Sep 2022)

Assessing the Added Value of Vital Signs Extracted from Electronic Health Records in Healthcare Risk Adjustment Models

  • Kitchen C,
  • Chang HY,
  • Weiner JP,
  • Kharrazi H

Journal volume & issue
Vol. Volume 15
pp. 1671 – 1682

Abstract

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Christopher Kitchen,1 Hsien-Yen Chang,1 Jonathan P Weiner,1 Hadi Kharrazi1,2 1Center for Population Health IT, Department of Health Policy and Management, Johns Hopkins Bloomberg School of Public Health, Baltimore, MD, USA; 2Division of Health Sciences Informatics, Johns Hopkins School of Medicine, Baltimore, MD, USACorrespondence: Christopher Kitchen, Center for Population Health IT, Department of Health Policy and Management, Johns Hopkins University, Bloomberg School of Public Health, 624 N Broadway, Room 500, Baltimore, MD, 21205, USA, Tel +1 410 614-7409, Email [email protected]: Patient vital signs are related to specific health risks and outcomes but are underutilized in the prediction of health-care utilization and cost. To measure the added value of electronic health record (EHR) extracted Body Mass Index (BMI) and blood pressure (BP) values in improving healthcare risk and utilization predictions.Patients and Methods: A sample of 12,820 adult outpatients from the Johns Hopkins Health System (JHHS) were identified between 2016 and 2017, having high data quality and recorded values for BMI and BP. We evaluated the added value of BMI and BP in predicting health-care utilization and cost through a retrospective cohort design. BMI, mean arterial pressure (MAP), systolic and diastolic BPs were summarized as annual aggregated values. Concurrent annual BMI and MAP changes were quantified as the difference between maximum and minimum recorded values. Model performance estimates consisted of repeated 10-fold cross validation, compared to base model point estimates for demographic and diagnostic, coded events: (1) patient age and sex, (2) age, sex, and the Charlson weighted index, (3) age, sex and the Johns Hopkins ACG system’s DxPM risk score.Results: Both categorical BMI and BP were progressively indicative of disease comorbidity, but not uniformly related to health-care utilization or cost. Annual change in BMI and MAP improved predictions for most concurrent year outcomes when compared to base models.Conclusion: When a healthcare system lacks relevant diagnostic or risk assessment information for a patient, vital signs may be useful for a simple estimation of disease risk, cost and utilization.Keywords: health care costs, health care organizations and systems, information technology in health, technology assessment

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