作者
Zachi I Attia, Paul A Friedman, Peter A Noseworthy, Francisco Lopez-Jimenez, Dorothy J Ladewig, Gaurav Satam, Patricia A Pellikka, Thomas M Munger, Samuel J Asirvatham, Christopher G Scott, Rickey E Carter, Suraj Kapa
发表日期
2019/9
期刊
Circulation: Arrhythmia and Electrophysiology
卷号
12
期号
9
页码范围
e007284
出版商
Lippincott Williams & Wilkins
简介
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 …
引用总数
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ZI Attia, PA Friedman, PA Noseworthy… - Circulation: Arrhythmia and Electrophysiology, 2019