Electrocardiographic Predictors of Atrial Fibrillation.

Panagiota Anna Chousou, Rahul Chattopadhyay, Vasiliki Tsampasian, Vassilios S Vassiliou, Peter John Pugh
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Abstract

Background: Atrial fibrillation (AF) is the most common pathological arrhythmia, and its complications lead to significant morbidity and mortality. However, patients with AF can often go undetected, especially if they are asymptomatic or have a low burden of paroxysms. Identification of those at high risk of AF development may help refine screening and management strategies.

Methods: PubMed and Embase databases were systematically searched for studies looking at electrocardiographic predictors of AF from inception to August 2021.

Results: A total of 115 studies were reported which examined a combination of atrial and ventricular parameters that could be electrocardiographic predictors of AF. Atrial predictors include conduction parameters, such as the PR interval, p-wave index and dispersion, and partial interatrial or advanced interatrial block, or morphological parameters, such as p-wave axis, amplitude and terminal force. Ventricular predictors include abnormalities in QRS amplitude, morphology or duration, QT interval duration, r-wave progression and ST segment, i.e., t-wave abnormalities.

Conclusions: There has been significant interest in electrocardiographic prediction of AF, especially in populations at high risk of atrial AF, such as those with an embolic stroke of undetermined source. This review highlights the breadth of possible predictive parameters, and possible pathological bases for the predictive role of each parameter are proposed.

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房颤的心电图预测指标。
背景:心房颤动(AF)是最常见的病理性心律失常,其并发症导致显著的发病率和死亡率。然而,房颤患者往往不被发现,特别是如果他们无症状或发作负担低。识别房颤发展的高危人群可能有助于完善筛查和管理策略。方法:系统检索PubMed和Embase数据库,从建立到2021年8月,寻找房颤的心电图预测因子。结果:共有115项研究报告了心房和心室参数的组合,这些参数可以作为房颤的心电图预测指标。心房预测指标包括传导参数,如PR间隔、p波指数和离散度,部分房间或晚期房间传导阻滞,或形态参数,如p波轴、振幅和终末力。心室预测指标包括QRS振幅、形态或持续时间、QT间期持续时间、r波进展和ST段异常,即t波异常。结论:人们对房颤的心电图预测非常感兴趣,特别是在房颤高危人群中,如来源不明的栓塞性卒中患者。这篇综述强调了可能的预测参数的广度,并提出了每个参数预测作用的可能病理基础。
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CiteScore
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0.00%
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审稿时长
6 weeks
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