Department of Cardiovascular Medicine, Mayo Clinic, 200 First St SW, Rochester, MN 55905, USA.
Health Sciences Research, Mayo Clinic, 4500 San Pablo Rd S, Jacksonville, FL 32224, USA.
Eur Heart J. 2021 Aug 7;42(30):2885-2896. doi: 10.1093/eurheartj/ehab153.
Early detection of aortic stenosis (AS) is becoming increasingly important with a better outcome after aortic valve replacement in asymptomatic severe AS patients and a poor outcome in moderate AS. We aimed to develop artificial intelligence-enabled electrocardiogram (AI-ECG) using a convolutional neural network to identify patients with moderate to severe AS.
Between 1989 and 2019, 258 607 adults [mean age 63 ± 16.3 years; women 122 790 (48%)] with an echocardiography and an ECG performed within 180 days were identified from the Mayo Clinic database. Moderate to severe AS by echocardiography was present in 9723 (3.7%) patients. Artificial intelligence training was performed in 129 788 (50%), validation in 25 893 (10%), and testing in 102 926 (40%) randomly selected subjects. In the test group, the AI-ECG labelled 3833 (3.7%) patients as positive with the area under the curve (AUC) of 0.85. The sensitivity, specificity, and accuracy were 78%, 74%, and 74%, respectively. The sensitivity increased and the specificity decreased as age increased. Women had lower sensitivity but higher specificity compared with men at any age groups. The model performance increased when age and sex were added to the model (AUC 0.87), which further increased to 0.90 in patients without hypertension. Patients with false-positive AI-ECGs had twice the risk for developing moderate or severe AS in 15 years compared with true negative AI-ECGs (hazard ratio 2.18, 95% confidence interval 1.90-2.50).
An AI-ECG can identify patients with moderate or severe AS and may serve as a powerful screening tool for AS in the community.
随着无症状重度主动脉瓣狭窄(AS)患者主动脉瓣置换后预后改善,以及中度 AS 患者预后不良,主动脉瓣狭窄的早期检测变得越来越重要。我们旨在开发一种基于卷积神经网络的人工智能心电图(AI-ECG),以识别中重度 AS 患者。
在 1989 年至 2019 年间,从梅奥诊所数据库中确定了 258607 名年龄在 63±16.3 岁之间的成年人(女性 122790 人,占 48%),他们均进行了超声心动图和心电图检查,且在 180 天内完成。根据超声心动图,中度至重度 AS 患者有 9723 例(3.7%)。在 129788 名(50%)患者中进行了人工智能训练,在 25893 名(10%)患者中进行了验证,在 102926 名(40%)随机选择的患者中进行了测试。在测试组中,AI-ECG 将 3833 例(3.7%)患者标记为阳性,曲线下面积(AUC)为 0.85。其敏感性、特异性和准确性分别为 78%、74%和 74%。随着年龄的增加,敏感性增加,特异性降低。与任何年龄组的男性相比,女性的敏感性较低,但特异性较高。当将年龄和性别添加到模型中时,模型性能提高(AUC 为 0.87),在没有高血压的患者中进一步提高到 0.90。与 AI-ECG 真阴性患者相比,AI-ECG 假阳性患者在 15 年内发展为中度或重度 AS 的风险增加了一倍(风险比 2.18,95%置信区间 1.90-2.50)。
人工智能心电图可以识别出患有中度或重度 AS 的患者,可能成为社区中 AS 的有力筛查工具。