Deep Neural Network Analysis of the 12-Lead Electrocardiogram Distinguishes Patients With Congenital Long QT Syndrome From Patients With Acquired QT Prolongation.

IF 6.9 2区 医学 Q1 MEDICINE, GENERAL & INTERNAL
J Martijn Bos, Kan Liu, Zachi I Attia, Peter A Noseworthy, Paul A Friedman, Michael J Ackerman
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引用次数: 0

Abstract

Objective: To test whether an artificial intelligence (AI) deep neural network (DNN)-derived analysis of the 12-lead electrocardiogram (ECG) can distinguish patients with long QT syndrome (LQTS) from those with acquired QT prolongation.

Methods: The study cohort included all patients with genetically confirmed LQTS evaluated in the Windland Smith Rice Genetic Heart Rhythm Clinic and controls from Mayo Clinic's ECG data vault comprising more than 2.5 million patients. For the AI-DNN model, every patient and control with 1 or more ECGs above age- and sex-specific 99th percentile values for QTc (>460 ms for all patients [male/female] <13 years of age or >470 ms for men and >480 ms for women above this age) were included. LQTS patients were age and sex matched to controls at a 1:5 ratio. An AI-DNN involving a multilayer convolutional neural network was developed to classify patients.

Results: Of the 1,599 patients with genetically confirmed LQTS, 808 had 1 or more ECGs with QTc above the defined thresholds (2987 ECGs) compared with 361,069 of 2.5 million controls (14% of Mayo Clinic patients having an ECG, "presumed negative"; 989,313 ECGs). Following age and sex matching and splitting, 3,309 (training), 411 (validation), and 887 (testing) ECGs were used. This model distinguished patients with LQTS from those with acquired QT prolongation with an area under the curve of 0.896 (accuracy 85%, sensitivity 77%, specificity 87%). The model remained robust with areas under the curve close to or above 0.9, independent of matching ratio (range, 1:5 to 1:2000) or type of ECG data used (rhythm strip of median beat) and after excluding patients with wide QRS or ventricular pacemaker.

Conclusion: For patients with a QTc exceeding its 99th percentile values, this novel AI-DNN functions as an LQTS mutation detector, being able to identify patients with abnormal QT prolongation secondary to an LQTS-causative mutation rather than with acquired QT prolongation. This algorithm may facilitate screening for this potentially lethal yet highly treatable genetic heart disease.

12导联心电图深度神经网络分析区分先天性QT间期延长与后天性QT间期延长。
目的:探讨人工智能(AI)深度神经网络(DNN)衍生的12导联心电图(ECG)分析能否区分长QT综合征(LQTS)患者与获得性QT间期延长患者。方法:研究队列包括在Windland Smith Rice遗传心律诊所评估的所有遗传证实的LQTS患者和来自梅奥诊所ECG数据库的对照组,包括250多万患者。对于AI-DNN模型,每一个或更多的心电图高于年龄和性别特异性的第99百分位QTc值的患者和对照组(所有患者[男性/女性]>460 ms,男性470 ms,女性>480 ms,高于这个年龄)都被纳入。LQTS患者的年龄和性别与对照组按1:5的比例匹配。开发了一个涉及多层卷积神经网络的AI-DNN来对患者进行分类。结果:在1599例遗传确诊的LQTS患者中,808例有1个或更多QTc高于定义阈值的心电图(2987例),而250万对照中有361069例(14%的梅奥诊所患者有心电图,“推定阴性”;989313 ecg)。在年龄和性别匹配和分割之后,使用了3309张(训练)、411张(验证)和887张(测试)心电图。该模型区分LQTS患者与获得性QT间期延长患者的曲线下面积为0.896(准确率85%,灵敏度77%,特异性87%)。在排除宽QRS或心室起搏器患者后,曲线下面积接近或高于0.9,与匹配比例(范围1:5至1:2000)或使用的ECG数据类型(中位心跳节律条)无关。结论:对于QTc超过99个百分位值的患者,这种新型AI-DNN可作为LQTS突变检测器,能够识别继发于LQTS致病突变而非获得性QT延长的异常QT延长患者。这种算法可能有助于筛选这种潜在致命但高度可治疗的遗传性心脏病。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Mayo Clinic proceedings
Mayo Clinic proceedings 医学-医学:内科
CiteScore
16.80
自引率
1.10%
发文量
383
审稿时长
37 days
期刊介绍: Mayo Clinic Proceedings is a premier peer-reviewed clinical journal in general medicine. Sponsored by Mayo Clinic, it is one of the most widely read and highly cited scientific publications for physicians. Since 1926, Mayo Clinic Proceedings has continuously published articles that focus on clinical medicine and support the professional and educational needs of its readers. The journal welcomes submissions from authors worldwide and includes Nobel-prize-winning research in its content. With an Impact Factor of 8.9, Mayo Clinic Proceedings is ranked #20 out of 167 journals in the Medicine, General and Internal category, placing it in the top 12% of these journals. It invites manuscripts on clinical and laboratory medicine, health care policy and economics, medical education and ethics, and related topics.
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