Expert-Level Automated Diagnosis of the Pediatric ECG Using a Deep Neural Network.

IF 8 1区 医学 Q1 CARDIAC & CARDIOVASCULAR SYSTEMS
Joshua Mayourian, William G La Cava, Sarah D de Ferranti, Douglas Mah, Mark Alexander, Edward Walsh, John K Triedman
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引用次数: 0

Abstract

Background: Disparate access to expert pediatric cardiologist care and interpretation of electrocardiograms (ECGs) persists worldwide. Artificial intelligence-enhanced ECG (AI-ECG) has shown promise for automated diagnosis of ECGs in adults but has yet to be explored in the pediatric setting.

Objectives: This study sought to determine whether an AI-ECG model can accurately perform automated diagnosis of pediatric ECGs.

Methods: This retrospective single-center cohort study included all patients with an ECG at Boston Children's Hospital read by an experienced pediatric cardiologist (≥5,000 reads) between 2000 and 2022. A convolutional neural network was trained (75% of patients) and internally tested (25% of patients) on ECGs to predict ECG diagnoses. The primary outcome was a composite of any ECG abnormality (ie, detecting normal vs abnormal ECG). Secondary outcomes include Wolff-Parkinson-White syndrome (WPW) and prolonged QTc. Model performance was assessed with area under the receiver-operating (AUROC) and precision recall (AUPRC) curves.

Results: The main cohort consisted of 201,620 patients (49% male; 11% with known congenital heart disease) and 583,134 ECGs (median age 11.7 years [Q1-Q3: 3.1-16.9 years]; 56% any ECG abnormality, 1.0% WPW, and 5.3% with prolonged QTc). The AI-ECG model outperformed the commercial software interpretations for detecting any abnormality (AUROC 0.94; AUPRC 0.96), WPW (AUROC 0.99; AUPRC 0.88), and prolonged QTc (AUROC 0.96; AUPRC 0.63). During readjudication of ECGs with AI-ECG/original cardiologist read discordance, blinded expert readers were more likely to agree with AI-ECG classification than the original reader to detect any abnormality (P = 0.001), WPW (P = 0.01), and prolonged QTc (P = 0.07).

Conclusions: Our model provides expert-level automated diagnosis of the pediatric 12-lead ECG, which may improve access to care.

使用深度神经网络的儿科心电图专家级自动诊断。
背景:在世界范围内,儿科心脏病专家的护理和心电图(ECGs)的解释仍然存在差异。人工智能增强心电图(AI-ECG)已显示出对成人心电图自动诊断的希望,但尚未在儿科环境中进行探索。目的:本研究旨在确定AI-ECG模型是否可以准确地对儿童心电图进行自动诊断。方法:这项回顾性单中心队列研究纳入了2000年至2022年间在波士顿儿童医院由经验丰富的儿科心脏病专家阅读的所有ECG患者(≥5000 reads)。在心电图上训练卷积神经网络(75%的患者)并进行内部测试(25%的患者),以预测心电图诊断。主要转归是任何心电图异常的综合结果(即检测正常与异常心电图)。次要结局包括Wolff-Parkinson-White综合征(WPW)和QTc延长。用接收者操作曲线下面积(AUROC)和精确召回率(AUPRC)曲线来评估模型的性能。结果:主要队列包括201620例患者(49%为男性;11%已知有先天性心脏病)和583,134次心电图(中位年龄11.7岁[Q1-Q3: 3.1-16.9岁];56% ECG异常,1.0% WPW, 5.3% QTc延长)。AI-ECG模型在检测任何异常方面优于商业软件解释(AUROC 0.94;auroc 0.96), WPW (auroc 0.99;AUROC 0.88),延长QTc (AUROC 0.96;AUPRC 0.63)。在对AI-ECG/原心脏科医师读数不一致的心电图进行再判断时,盲法专家阅读者在发现异常(P = 0.001)、WPW (P = 0.01)和QTc延长(P = 0.07)方面比原阅读者更倾向于AI-ECG分类。结论:我们的模型提供了儿科12导联心电图的专家级自动诊断,这可能会改善护理的可及性。
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
JACC. Clinical electrophysiology
JACC. Clinical electrophysiology CARDIAC & CARDIOVASCULAR SYSTEMS-
CiteScore
10.30
自引率
5.70%
发文量
250
期刊介绍: JACC: Clinical Electrophysiology is one of a family of specialist journals launched by the renowned Journal of the American College of Cardiology (JACC). It encompasses all aspects of the epidemiology, pathogenesis, diagnosis and treatment of cardiac arrhythmias. Submissions of original research and state-of-the-art reviews from cardiology, cardiovascular surgery, neurology, outcomes research, and related fields are encouraged. Experimental and preclinical work that directly relates to diagnostic or therapeutic interventions are also encouraged. In general, case reports will not be considered for publication.
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