Maximizing Equity in Acute Coronary Syndrome Screening across Sociodemographic Characteristics of Patients

Author:

Bunney Gabrielle1,Bloos Sean M.12,Graber-Naidich Anna3,Pasao Melissa A.1,Kabeer Rana1,Kim David1ORCID,Miller Kate3,Yiadom Maame Yaa A. B.1

Affiliation:

1. Department of Emergency Medicine, Stanford University, Palo Alto, CA 94304, USA

2. Tulane University School of Medicine, New Orleans, LA 70112, USA

3. Quantitative Sciences Unit, Stanford University, Palo Alto, CA 94304, USA

Abstract

We compared four methods to screen emergency department (ED) patients for an early electrocardiogram (ECG) to diagnose ST-elevation myocardial infarction (STEMI) in a 5-year retrospective cohort through observed practice, objective application of screening protocol criteria, a predictive model, and a model augmenting human practice. We measured screening performance by sensitivity, missed acute coronary syndrome (ACS) and STEMI, and the number of ECGs required. Our cohort of 279,132 ED visits included 1397 patients who had a diagnosis of ACS. We found that screening by observed practice augmented with the model delivered the highest sensitivity for detecting ACS (92.9%, 95%CI: 91.4–94.2%) and showed little variation across sex, race, ethnicity, language, and age, demonstrating equity. Although it missed a few cases of ACS (7.6%) and STEMI (4.4%), it did require ECGs on an additional 11.1% of patients compared to current practice. Screening by protocol performed the worst, underdiagnosing young, Black, Native American, Alaskan or Hawaiian/Pacific Islander, and Hispanic patients. Thus, adding a predictive model to augment human practice improved the detection of ACS and STEMI and did so most equitably across the groups. Hence, combining human and model screening––rather than relying on either alone––may maximize ACS screening performance and equity.

Funder

Stanford University Vice Provost and Dean of Research Office’s (VPDoR) Research on Racial Equity and Justice

Publisher

MDPI AG

Subject

Clinical Biochemistry

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