Akbilgic Oguz, Butler Liam, Karabayir Ibrahim, Chang Patricia P, Kitzman Dalane W, Alonso Alvaro, Chen Lin Y, Soliman Elsayed Z
Department of Health Informatics and Data Science, Parkinson School of Health Sciences and Public Health, Loyola University Chicago, 2160 S 1st Street, Maywood, IL 60153, USA.
Sections on Cardiovascular Medicine and Geriatrics, Department of Internal Medicine, Wake Forest School of Medicine, 475 Vine Street, Winston-Salem, NC 27101, USA.
Eur Heart J Digit Health. 2021 Oct 9;2(4):626-634. doi: 10.1093/ehjdh/ztab080. eCollection 2021 Dec.
Heart failure (HF) is a leading cause of death. Early intervention is the key to reduce HF-related morbidity and mortality. This study assesses the utility of electrocardiograms (ECGs) in HF risk prediction.
Data from the baseline visits (1987-89) of the Atherosclerosis Risk in Communities (ARIC) study was used. Incident hospitalized HF events were ascertained by ICD codes. Participants with good quality baseline ECGs were included. Participants with prevalent HF were excluded. ECG-artificial intelligence (AI) model to predict HF was created as a deep residual convolutional neural network (CNN) utilizing standard 12-lead ECG. The area under the receiver operating characteristic curve (AUC) was used to evaluate prediction models including (CNN), light gradient boosting machines (LGBM), and Cox proportional hazards regression. A total of 14 613 (45% male, 73% of white, mean age ± standard deviation of 54 ± 5) participants were eligible. A total of 803 (5.5%) participants developed HF within 10 years from baseline. Convolutional neural network utilizing solely ECG achieved an AUC of 0.756 (0.717-0.795) on the hold-out test data. ARIC and Framingham Heart Study (FHS) HF risk calculators yielded AUC of 0.802 (0.750-0.850) and 0.780 (0.740-0.830). The highest AUC of 0.818 (0.778-0.859) was obtained when ECG-AI model output, age, gender, race, body mass index, smoking status, prevalent coronary heart disease, diabetes mellitus, systolic blood pressure, and heart rate were used as predictors of HF within LGBM. The ECG-AI model output was the most important predictor of HF.
ECG-AI model based solely on information extracted from ECG independently predicts HF with accuracy comparable to existing FHS and ARIC risk calculators.
心力衰竭(HF)是主要的死亡原因。早期干预是降低HF相关发病率和死亡率的关键。本研究评估心电图(ECG)在HF风险预测中的效用。
使用社区动脉粥样硬化风险(ARIC)研究基线访视(1987 - 1989年)的数据。通过国际疾病分类代码确定首次住院的HF事件。纳入具有高质量基线ECG的参与者。排除患有HF的参与者。利用标准12导联ECG创建了预测HF的ECG人工智能(AI)模型,作为深度残差卷积神经网络(CNN)。受试者工作特征曲线下面积(AUC)用于评估包括(CNN)、轻梯度提升机(LGBM)和Cox比例风险回归在内的预测模型。共有14613名(45%为男性,73%为白人,平均年龄±标准差为54±5岁)参与者符合条件。共有803名(5.5%)参与者在基线后的10年内发生了HF。仅利用ECG的卷积神经网络在保留测试数据上的AUC为0.756(0.717 - 0.795)。ARIC和弗雷明汉心脏研究(FHS)的HF风险计算器得出的AUC分别为0.802(0.750 - 0.850)和0.780(0.740 - 0.830)。当将ECG - AI模型输出、年龄、性别、种族、体重指数、吸烟状况、冠心病、糖尿病、收缩压和心率用作LGBM中HF的预测因子时,获得了最高的AUC,为0.818(0.778 - 0.859)。ECG - AI模型输出是HF最重要的预测因子。
仅基于从ECG提取的信息的ECG - AI模型独立预测HF的准确性与现有的FHS和ARIC风险计算器相当。