Screening for undiagnosed atrial fibrillation using an electronic health record‒based clinical prediction model: clinical pilot implementation initiative.

IF 3.3 3区 医学 Q2 MEDICAL INFORMATICS
Randall W Grout, Mohammad Ateya, Baely DiRenzo, Sara Hart, Chase King, Joshua Rajkumar, Susan Sporrer, Asad Torabi, Todd A Walroth, Richard J Kovacs
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Abstract

Background: Atrial fibrillation (AF) is a major risk factor for ischemic stroke, and early AF diagnosis may reduce associated morbidity and mortality. A 10-variable predictive model (UNAFIED) was previously developed to estimate patients' 2-year AF risk. This study evaluated a clinical workflow incorporating UNAFIED for screening, education, and follow-up evaluation of patients visiting a cardiology clinic who may be at an elevated risk of developing AF within 2 years.

Methods: Patients were included if they were aged ≥ 40 years with a scheduled in-person visit at the Eskenazi Health Cardiology Clinic between October 25, 2021, and August 10, 2022. Clinical decision support identified patients with an elevated AF risk. Initial screening with 1-lead electrocardiogram devices was offered, and routine clinical practice for diagnosis and management was followed. Physicians were surveyed on their use of the workflow, attitudes toward implementation, and perceived impact on patient care.

Results: A total of 2827 patients had a clinic visit during the study period, of whom 1395 were eligible to be screened because they were classified as "elevated risk" by the UNAFIED predictive model. AF or atrial flutter diagnosis was newly documented for 29 patients during the study period. Of the newly diagnosed patients, 13 began anticoagulant therapy to mitigate stroke risk. Physicians (n = 13) who used the workflow most clinic days were more likely to indicate that it was easy to use, was not time-consuming, and improved patient care compared with physicians who only used the workflow occasionally.

Conclusions: To our knowledge, this study is the first of its kind to demonstrate clinical application of an electronic health record-based AF predictive model. The newly documented diagnoses, however, did not solely result from implementation of UNAFIED. This non-invasive, inexpensive approach could be adopted by other sites wishing to proactively screen patients at elevated risk for AF. Other sites should verify the model's performance in their own settings and ensure compliance with evolving regulatory requirements where applicable.

使用基于电子健康记录的临床预测模型筛查未确诊的房颤:临床试点实施倡议。
背景:房颤(AF)是缺血性卒中的主要危险因素,早期诊断房颤可以降低相关的发病率和死亡率。先前开发了一个10变量预测模型(UNAFIED)来估计患者2年房颤风险。本研究评估了结合UNAFIED的临床工作流程,用于筛查,教育和随访评估就诊于心脏病学诊所的患者,这些患者在2年内可能有较高的发生房颤的风险。方法:纳入年龄≥40岁的患者,并计划于2021年10月25日至2022年8月10日期间在Eskenazi健康心脏病学诊所亲自就诊。临床决策支持识别出房颤风险升高的患者。采用1导联心电图仪进行初步筛查,并遵循常规临床实践进行诊断和治疗。调查了医生对工作流程的使用、对实施的态度以及对患者护理的感知影响。结果:研究期间共有2827例患者就诊,其中1395例患者被UNAFIED预测模型归类为“高风险”,符合筛查条件。在研究期间,29名患者被新诊断为房颤或心房扑动。在新诊断的患者中,13人开始抗凝治疗以降低中风风险。与偶尔使用该工作流程的医生相比,大多数临床日使用该工作流程的医生(n = 13)更有可能指出该工作流程易于使用,不耗时,并改善了患者护理。结论:据我们所知,这项研究首次展示了基于电子健康记录的房颤预测模型的临床应用。然而,新记录的诊断并不仅仅是UNAFIED实施的结果。这种非侵入性、廉价的方法可以被其他希望主动筛查房颤高风险患者的地方采用。其他地方应该在自己的环境中验证该模型的性能,并确保在适用的情况下符合不断变化的监管要求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
7.20
自引率
5.70%
发文量
297
审稿时长
1 months
期刊介绍: BMC Medical Informatics and Decision Making is an open access journal publishing original peer-reviewed research articles in relation to the design, development, implementation, use, and evaluation of health information technologies and decision-making for human health.
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