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基于心电图的深度学习与临床危险因素预测心房颤动

ECG-Based Deep Learning and Clinical Risk Factors to Predict Atrial Fibrillation.

机构信息

Division of Cardiology (S.K., M.A.A., J.E.H.), Massachusetts General Hospital, Boston.

Cardiovascular Research Center (S.K., L.X.H., X.W., M.A.A., P.T.E., J.E.H., S.A.L.), Massachusetts General Hospital, Boston.

出版信息

Circulation. 2022 Jan 11;145(2):122-133. doi: 10.1161/CIRCULATIONAHA.121.057480. Epub 2021 Nov 8.

Abstract

BACKGROUND

Artificial intelligence (AI)-enabled analysis of 12-lead ECGs may facilitate efficient estimation of incident atrial fibrillation (AF) risk. However, it remains unclear whether AI provides meaningful and generalizable improvement in predictive accuracy beyond clinical risk factors for AF.

METHODS

We trained a convolutional neural network (ECG-AI) to infer 5-year incident AF risk using 12-lead ECGs in patients receiving longitudinal primary care at Massachusetts General Hospital (MGH). We then fit 3 Cox proportional hazards models, composed of ECG-AI 5-year AF probability, CHARGE-AF clinical risk score (Cohorts for Heart and Aging in Genomic Epidemiology-Atrial Fibrillation), and terms for both ECG-AI and CHARGE-AF (CH-AI), respectively. We assessed model performance by calculating discrimination (area under the receiver operating characteristic curve) and calibration in an internal test set and 2 external test sets (Brigham and Women's Hospital [BWH] and UK Biobank). Models were recalibrated to estimate 2-year AF risk in the UK Biobank given limited available follow-up. We used saliency mapping to identify ECG features most influential on ECG-AI risk predictions and assessed correlation between ECG-AI and CHARGE-AF linear predictors.

RESULTS

The training set comprised 45 770 individuals (age 55±17 years, 53% women, 2171 AF events) and the test sets comprised 83 162 individuals (age 59±13 years, 56% women, 2424 AF events). Area under the receiver operating characteristic curve was comparable using CHARGE-AF (MGH, 0.802 [95% CI, 0.767-0.836]; BWH, 0.752 [95% CI, 0.741-0.763]; UK Biobank, 0.732 [95% CI, 0.704-0.759]) and ECG-AI (MGH, 0.823 [95% CI, 0.790-0.856]; BWH, 0.747 [95% CI, 0.736-0.759]; UK Biobank, 0.705 [95% CI, 0.673-0.737]). Area under the receiver operating characteristic curve was highest using CH-AI (MGH, 0.838 [95% CI, 0.807 to 0.869]; BWH, 0.777 [95% CI, 0.766 to 0.788]; UK Biobank, 0.746 [95% CI, 0.716 to 0.776]). Calibration error was low using ECG-AI (MGH, 0.0212; BWH, 0.0129; UK Biobank, 0.0035) and CH-AI (MGH, 0.012; BWH, 0.0108; UK Biobank, 0.0001). In saliency analyses, the ECG P-wave had the greatest influence on AI model predictions. ECG-AI and CHARGE-AF linear predictors were correlated (Pearson : MGH, 0.61; BWH, 0.66; UK Biobank, 0.41).

CONCLUSIONS

AI-based analysis of 12-lead ECGs has similar predictive usefulness to a clinical risk factor model for incident AF and the approaches are complementary. ECG-AI may enable efficient quantification of future AF risk.

摘要

背景

人工智能(AI)分析 12 导联心电图可能有助于高效估计新发心房颤动(AF)风险。然而,目前尚不清楚 AI 是否能在 AF 的临床危险因素之外提供有意义和可推广的预测准确性的改善。

方法

我们使用马萨诸塞州综合医院(MGH)接受纵向初级保健的患者的 12 导联心电图训练了一个卷积神经网络(ECG-AI),以推断出 5 年的新发 AF 风险。然后,我们分别拟合了 3 个 Cox 比例风险模型,由 ECG-AI 5 年 AF 概率、CHARGE-AF 临床风险评分(基因组流行病学中心和老龄化心房颤动)和 ECG-AI 和 CHARGE-AF 的术语(CH-AI)组成。我们通过计算内部测试集和 2 个外部测试集(布莱根妇女医院[BWH]和英国生物银行)的区分度(接收者操作特征曲线下的面积)和校准来评估模型性能。我们使用显著映射来识别对 ECG-AI 风险预测影响最大的心电图特征,并评估 ECG-AI 和 CHARGE-AF 线性预测器之间的相关性。

结果

训练集包括 45770 名个体(年龄 55±17 岁,53%为女性,2171 例 AF 事件),测试集包括 83162 名个体(年龄 59±13 岁,56%为女性,2424 例 AF 事件)。使用 CHARGE-AF(MGH,0.802[95%CI,0.767-0.836];BWH,0.752[95%CI,0.741-0.763];英国生物银行,0.732[95%CI,0.704-0.759])和 ECG-AI(MGH,0.823[95%CI,0.790-0.856];BWH,0.747[95%CI,0.736-0.759];英国生物银行,0.705[95%CI,0.673-0.737])的 AUC 相似。使用 CH-AI(MGH,0.838[95%CI,0.807 至 0.869];BWH,0.777[95%CI,0.766 至 0.788];英国生物银行,0.746[95%CI,0.716 至 0.776])的 AUC 最高。ECG-AI(MGH,0.0212;BWH,0.0129;英国生物银行,0.0035)和 CH-AI(MGH,0.012;BWH,0.0108;英国生物银行,0.0001)的校准误差较低。在显著映射分析中,心电图 P 波对 AI 模型预测的影响最大。ECG-AI 和 CHARGE-AF 线性预测器相关(Pearson:MGH,0.61;BWH,0.66;英国生物银行,0.41)。

结论

基于 AI 的 12 导联心电图分析对新发 AF 的预测作用与临床危险因素模型相似,两种方法具有互补性。ECG-AI 可能使未来 AF 风险的量化变得高效。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9771/8748400/d430950208b7/nihms-1759616-f0001.jpg

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