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Age and Sex Estimation Using Artificial Intelligence From Standard 12-Lead ECGs

机译:使用标准12引导ECG的人工智能年龄和性别估计

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Background: Sex and age have long been known to affect the ECG. Several biologic variables and anatomic factors may contribute to sex and age-related differences on the ECG. We hypothesized that a convolutional neural network (CNN) could be trained through a process called deep learning to predict a person's age and self-reported sex using only 12-lead ECG signals. We further hypothesized that discrepancies between CNN-predicted age and chronological age may serve as a physiological measure of health. Methods: We trained CNNs using 10-second samples of 12-lead ECG signals from 499 727 patients to predict sex and age. The networks were tested on a separate cohort of 275 056 patients. Subsequently, 100 randomly selected patients with multiple ECGs over the course of decades were identified to assess within-individual accuracy of CNN age estimation. Results: Of 275 056 patients tested, 52% were males and mean age was 58.6 +/- 16.2 years. For sex classification, the model obtained 90.4% classification accuracy with an area under the curve of 0.97 in the independent test data. Age was estimated as a continuous variable with an average error of 6.9 +/- 5.6 years (R-squared =0.7). Among 100 patients with multiple ECGs over the course of at least 2 decades of life, most patients (51%) had an average error between real age and CNN-predicted age of 7 years included: low ejection fraction, hypertension, and coronary disease (P 0.8 between CNN-predicted and chronologic age, no incident events occurred over follow-up (33 +/- 12 years). Conclusions: Applying artificial intelligence to the ECG allows prediction of patient sex and estimation of age. The ability of an artificial intelligence algorithm to determine physiological age, with further validation, may serve as a measure of overall health.
机译:背景:长期以来众所周知,性别和年龄会影响心电图。几种生物变量和解剖因子可能导致心电图的性和年龄相关的差异。我们假设卷积神经网络(CNN)可以通过一个被称为深度学习的过程训练,以预测仅使用12引导ECG信号的人的年龄和自我报告的性。我们进一步假设CNN预测年龄和年龄年龄之间的差异可以作为健康的生理措施。方法:从499 727名患者中使用10秒的12-rig ECG信号的10秒样本培训了CNN,以预测性和年龄。在单独的275 056名患者的队列上测试网络。随后,鉴定了100个具有多个ECG的随机选择的患者,以评估CNN年龄估计的个体准确性。结果:275岁的患者检测,52%是男性,平均年龄为58.6 +/- 16.2岁。对于性分类,该模型获得了90.4%的分类准确度,在独立测试数据中的曲线下的区域为0.97。年龄估计为连续变量,平均误差为6.9 +/- 5.6岁(R角= 0.7)。在患有至少2年的患者的100名患者中,大多数患者(51%)在真实年龄和CNN预测年龄在7岁以下的平均误差包括:低射血分数,高血压和冠状病(在CNN预测和年代年龄之间的P 0.8,在后续行动(33 +/- 12岁之间没有发生事件发生的事件。结论:将人工智能应用于ECG允许预测患者性和年龄的估算。人工的能力智能算法确定生理年龄,进一步验证,可以作为整体健康的衡量标准。

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