Christopoulos Georgios, Attia Zachi I, Van Houten Holly K, Yao Xiaoxi, Carter Rickey E, Lopez-Jimenez Francisco, Kapa Suraj, Noseworthy Peter A, Friedman Paul A
Department of Cardiovascular Medicine, Mayo Clinic, Rochester, MN 55905, USA.
Robert D. and Patricia E. Kern Center for the Science of Health Care Delivery, Rochester, MN, USA.
Eur Heart J Digit Health. 2022 May 9;3(2):228-235. doi: 10.1093/ehjdh/ztac023. eCollection 2022 Jun.
Artificial intelligence (AI) enabled electrocardiography (ECG) can detect latent atrial fibrillation (AF) in patients with sinus rhythm (SR). However, the change of AI-ECG probability before and after the first AF episode is not well characterized. We sought to characterize the temporal trend of AI-ECG AF probability around the first episode of AF.
We retrospectively studied adults who had at least one ECG in SR prior to an ECG that documented AF. An AI network calculated the AF probability from ECGs during SR (positive defined >8.7%, based on optimal sensitivity and specificity). The AI-ECG probability was reported prior to and after the first episode of AF and stratified by age and CHADS-VASc score. Mixed effect models were used to assess the rate of change between time points. A total of 59 212 patients with 544 330 ECGs prior to AF and 413 486 ECGs after AF were included. The mean time between the first positive AI-ECG and first AF was 5.4 ± 5.7 years. The mean AI-ECG probability was 19.8% 2-5 years prior to AF, 23.6% 1-2 years prior to AF, 34.0% 0-3 months prior to AF, 40.9% 0-3 months after AF, 35.2% 1-2 years after AF, and 42.2% 2-5 years after AF ( < 0.001). The rate of increase prior to AF was higher for age >50 years CHADS-VASc score ≥4.
The AI-ECG probability progressively increases with time prior to the first AF episode, transiently decreases 1-2 years following AF and continues to increase thereafter.
人工智能(AI)辅助心电图(ECG)能够检测窦性心律(SR)患者中的隐匿性心房颤动(AF)。然而,首次发生AF前后AI-ECG概率的变化情况尚未得到充分描述。我们旨在描述首次发生AF前后AI-ECG AF概率的时间趋势。
我们回顾性研究了在记录到AF的心电图之前至少有一次SR心电图的成年人。一个AI网络根据SR期间的心电图计算AF概率(基于最佳敏感性和特异性,阳性定义为>8.7%)。在首次发生AF之前和之后报告AI-ECG概率,并按年龄和CHADS-VASc评分进行分层。使用混合效应模型评估时间点之间的变化率。共纳入59212例患者,AF前有544330份心电图,AF后有413486份心电图。首次AI-ECG阳性与首次AF之间的平均时间为5.4±5.7年。AF前2 - 5年的平均AI-ECG概率为19.8%,AF前1 - 2年为23.6%,AF前0 - 3个月为34.0%,AF后0 - 3个月为40.9% ,AF后1 - 2年为35.2%,AF后2 - 5年为42.2%(<0.001)。年龄>50岁且CHADS-VASc评分≥4的患者在AF前的增加率更高。
在首次发生AF之前,AI-ECG概率随时间逐渐增加,AF后1 - 2年短暂下降,此后继续增加。