Abstract

BackgroundMany patients with atrial fibrillation (AF) remain undiagnosed despite availability of interventions to reduce stroke risk. Predictive models to date are limited by data requirements and theoretical usage. We aimed to develop a model for predicting the 2-year probability of AF diagnosis and implement it as proof-of-concept (POC) in a production electronic health record (EHR).MethodsWe used a nested case–control design using data from the Indiana Network for Patient Care. The development cohort came from 2016 to 2017 (outcome period) and 2014 to 2015 (baseline). A separate validation cohort used outcome and baseline periods shifted 2 years before respective development cohort times. Machine learning approaches were used to build predictive model. Patients ≥ 18 years, later restricted to age ≥ 40 years, with at least two encounters and no AF during baseline, were included. In the 6-week EHR prospective pilot, the model was silently implemented in the production system at a large safety-net urban hospital. Three new and two previous logistic regression models were evaluated using receiver-operating characteristics. Number, characteristics, and CHA2DS2-VASc scores of patients identified by the model in the pilot are presented.ResultsAfter restricting age to ≥ 40 years, 31,474 AF cases (mean age, 71.5 years; female 49%) and 22,078 controls (mean age, 59.5 years; female 61%) comprised the development cohort. A 10-variable model using age, acute heart disease, albumin, body mass index, chronic obstructive pulmonary disease, gender, heart failure, insurance, kidney disease, and shock yielded the best performance (C-statistic, 0.80 [95% CI 0.79–0.80]). The model performed well in the validation cohort (C-statistic, 0.81 [95% CI 0.8–0.81]). In the EHR pilot, 7916/22,272 (35.5%; mean age, 66 years; female 50%) were identified as higher risk for AF; 5582 (70%) had CHA2DS2-VASc score ≥ 2.ConclusionsUsing variables commonly available in the EHR, we created a predictive model to identify 2-year risk of developing AF in those previously without diagnosed AF. Successful POC implementation of the model in an EHR provided a practical strategy to identify patients who may benefit from interventions to reduce their stroke risk.

Highlights

  • Many patients with atrial fibrillation (AF) remain undiagnosed despite availability of interventions to reduce stroke risk

  • We aimed to develop and validate a model using electronic health record (EHR) data from multiple health systems in a regional health information exchange (HIE) to estimate 2-year risk of AF

  • During the model development period, 31,474 patients within the retrospective cohort had a first AF diagnosis recorded within the two subsequent years of data while 1,295,281 patients did not

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Summary

Introduction

Many patients with atrial fibrillation (AF) remain undiagnosed despite availability of interventions to reduce stroke risk. A recent study estimated the undiagnosed AF prevalence in the United States at 1.3% (95% CI 0.9–1.9%) in those over age 65 [4]. Multiple studies sought to develop predictive risk models for AF in an undiagnosed population. The Framingham Heart Study (FHS) AF Risk Score predicted 10-year AF [5]. The Atherosclerosis Risk in Communities (ARIC) study provided an alternative AF risk score in a different patient population [6]. Both FHS and ARIC models were derived from single-community cohorts. Other efforts to identify machine learning models have looked at hundreds of variables [8]

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