医学
射血分数
队列
随机对照试验
临床终点
优势比
干预(咨询)
心力衰竭
临床试验
队列研究
物理疗法
内科学
急诊医学
精神科
作者
Xiaoxi Yao,David R. Rushlow,Jonathan Inselman,Rozalina G. McCoy,Tom D. Thacher,Emma Behnken,Matthew Bernard,Steven Rosas,Abdulla Akfaly,Artika Misra,Paul Molling,Joseph Krien,Randy Foss,Barbara Barry,Konstantinos C. Siontis,Suraj Kapa,Patricia A. Pellikka,Francisco López-Jiménez,Zachi I. Attia,Nilay D. Shah
出处
期刊:Nature Medicine
[Nature Portfolio]
日期:2021-05-01
卷期号:27 (5): 815-819
被引量:257
标识
DOI:10.1038/s41591-021-01335-4
摘要
We have conducted a pragmatic clinical trial aimed to assess whether an electrocardiogram (ECG)-based, artificial intelligence (AI)-powered clinical decision support tool enables early diagnosis of low ejection fraction (EF), a condition that is underdiagnosed but treatable. In this trial (
NCT04000087
), 120 primary care teams from 45 clinics or hospitals were cluster-randomized to either the intervention arm (access to AI results; 181 clinicians) or the control arm (usual care; 177 clinicians). ECGs were obtained as part of routine care from a total of 22,641 adults (N = 11,573 intervention; N = 11,068 control) without prior heart failure. The primary outcome was a new diagnosis of low EF (≤50%) within 90 days of the ECG. The trial met the prespecified primary endpoint, demonstrating that the intervention increased the diagnosis of low EF in the overall cohort (1.6% in the control arm versus 2.1% in the intervention arm, odds ratio (OR) 1.32 (1.01–1.61), P = 0.007) and among those who were identified as having a high likelihood of low EF (that is, positive AI-ECG, 6% of the overall cohort) (14.5% in the control arm versus 19.5% in the intervention arm, OR 1.43 (1.08–1.91), P = 0.01). In the overall cohort, echocardiogram utilization was similar between the two arms (18.2% control versus 19.2% intervention, P = 0.17); for patients with positive AI-ECGs, more echocardiograms were obtained in the intervention compared to the control arm (38.1% control versus 49.6% intervention, P < 0.001). These results indicate that use of an AI algorithm based on ECGs can enable the early diagnosis of low EF in patients in the setting of routine primary care. In a pragmatic, cluster-randomized clinical trial, use of an AI algorithm for interpretation of electrocardiograms in primary care practices increased the frequency at which impaired heart function was diagnosed.
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