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ECG AI-Guided Screening for Low Ejection Fraction (EAGLE): Rationale and design of a pragmatic cluster randomized trial

October 25, 2019

Background

A deep learning algorithm to detect low ejection fraction (EF) using routine 12-lead electrocardiogram (ECG) has recently been developed and validated. The algorithm was incorporated into the electronic health record (EHR) to automatically screen for low EF, encouraging clinicians to obtain a confirmatory transthoracic echocardiogram (TTE) for previously undiagnosed patients, thereby facilitating early diagnosis and treatment.

Objectives

To prospectively evaluate a novel artificial intelligence (AI) screening tool for detecting low EF in primary care practices.

Design

The EAGLE trial is a pragmatic two-arm cluster randomized trial (NCT04000087) that will randomize >100 clinical teams (i.e., clusters) to either intervention (access to the new AI screening tool) or control (usual care) at 48 primary care practices across Minnesota and Wisconsin. The trial is expected to involve approximately 400 clinicians and 20,000 patients. The primary endpoint is newly discovered EF ≤50%. Eligible patients will include adults who undergo ECG for any reason and have not been previously diagnosed with low EF. Data will be pulled from the EHR, and no contact will be made with patients. A positive deviance qualitative study and a post-implementation survey will be conducted among select clinicians to identify facilitators and barriers to using the new screening report.

Published In:
American Heart Journal
Authors:
Xiaoxi Yao, PhD; Rozalina G. McCoy, MD, MS; Paul A. Friedman, MD; Nilay D. Shah, PhD; Barbara A. Barry, PhD; Emma M. Behnken; Jonathan W. Inselman, MS; Zachi I. Attia, MS; Peter A. Noseworthy, MD