基于心电图的机器学习模型,用于识别首次缺血性中风患者的房颤。

IF 6.3 2区 医学 Q1 CLINICAL NEUROLOGY
Chih-Chieh Yu, Yu-Qi Peng, Chen Lin, Chia-Hsin Chiang, Chih-Min Liu, Yenn-Jiang Lin, Lian-Yu Lin, Men-Tzung Lo
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引用次数: 0

摘要

背景:通过服用口服抗凝药可大大降低心房颤动(房颤)相关脑卒中的复发率。然而,以往的研究并未显示在来源不明的栓塞性中风患者中普遍应用口服抗凝剂有明显的益处。目的:本研究旨在开发一种卷积神经网络(CNN)模型,利用首次缺血性中风前后记录的 12 导联窦性心律心电图(ECG)准确识别房颤患者。此外,本研究还评估了该模型预测未来房颤发生的能力:方法:使用台北荣民总医院患者的心电图数据训练 CNN 模型。方法:使用台北荣民总医院患者的心电图数据训练 CNN 模型,并对台大医院的缺血性中风患者进行外部验证。方法:利用台北荣民总医院患者的心电图数据训练了一个 CNN 模型,并对国立台湾大学医院的缺血性中风患者进行了外部验证,评估了该模型在中风事件发生时检测房颤和预测未来房颤发生的性能:结果:该模型在识别中风时房颤方面的内部验证曲线下面积(AUC)为 0.91,外部验证为 0.69,灵敏度和阴性预测值均达到 97%。对既往未确诊房颤的患者进行的卡普兰-梅耶生存分析显示,该模型识别出的高危人群未来房颤发病率显著增加(调整后危险比:4.06;95% 置信区间:2.74-6.00):CNN 模型能通过 12 导联心电图有效识别卒中患者的房颤,并预测未来的房颤事件,从而促进早期抗凝治疗并降低复发性卒中风险。有必要开展进一步的前瞻性研究来证实这些发现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ECG-based machine learning model for AF identification in patients with first ischemic stroke.

Background: The recurrence rate of strokes associated with atrial fibrillation (AF) can be substantially reduced through the administration of oral anticoagulants. However, previous studies have not demonstrated a clear benefit from the universal application of oral anticoagulants in patients with embolic stroke of undetermined source. Timely detection of AF remains a challenge in patients with stroke.

Aim: This study aims to develop a convolutional neural network (CNN) model to accurately identify patients with AF using a 12-lead sinus-rhythm electrocardiogram (ECG) recorded around the time of the first ischemic stroke. Additionally, this study also evaluates the model's ability to predict future occurrence of AF.

Methods: A CNN model was trained with ECG data from patients at Taipei Veterans General Hospital. External validation was performed on ischemic stroke patients from National Taiwan University Hospital. The model's performance was assessed for detecting AF at the stroke event and predicting future AF occurrences.

Results: The model demonstrated an area under curve (AUC) of 0.91 for internal validation and 0.69 for external validation in identifying AF at the stroke event, with sensitivity and negative predictive value both achieving 97%. Kaplan-Meier survival analysis of patients without a prior diagnosis of AF revealed a significant increase in future AF incidence among the high-risk group identified by the model (adjusted hazard ratio: 4.06; 95% confidence interval: 2.74-6.00).

Conclusions: The CNN model effectively identifies AF in stroke patients using 12-lead ECGs and predicts future AF events, facilitating early anticoagulation therapy and potentially reducing recurrent stroke risk. Further prospective studies are warranted to confirm these findings.

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来源期刊
International Journal of Stroke
International Journal of Stroke 医学-外周血管病
CiteScore
13.90
自引率
6.00%
发文量
132
审稿时长
6-12 weeks
期刊介绍: The International Journal of Stroke is a welcome addition to the international stroke journal landscape in that it concentrates on the clinical aspects of stroke with basic science contributions in areas of clinical interest. Reviews of current topics are broadly based to encompass not only recent advances of global interest but also those which may be more important in certain regions and the journal regularly features items of news interest from all parts of the world. To facilitate the international nature of the journal, our Associate Editors from Europe, Asia, North America and South America coordinate segments of the journal.
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