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High accuracy in automatic detection of atrial fibrillation for Holter monitoring

机译:自动检测房颤的高精度可用于动态心电图监测

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摘要

Atrial fibrillation (AF) has been considered as a growing epidemiological problem in the world, with a substantial impact on morbidity and mortality. Ambulatory electrocardiography (e.g., Holter) monitoring is commonly used for AF diagnosis and therapy and the automated detection of AF is of great significance due to the vast amount of information provided. This study presents a combined method to achieve high accuracy in AF detection. Firstly, we detected the suspected transitions between AF and sinus rhythm using the delta RR interval distribution difference curve, which were then classified by a combination analysis of P wave and RR interval. The MIT-BIH AF database was used for algorithm validation and a high sensitivity and a high specificity (98.2% and 97.5%, respectively) were achieved. Further, we developed a dataset of 24-h paroxysmal AF Holter recordings (n=45) to evaluate the performance in clinical practice, which yielded satisfactory accuracy (sensitivity=96.3%, specificity=96.8%).
机译:心房纤颤(AF)在世界范围内被视为一个日益严重的流行病学问题,对发病率和死亡率产生了重大影响。动态心电图(例如,动态心电图)监测通常用于房颤的诊断和治疗,由于所提供的大量信息,房颤的自动检测具有重要意义。这项研究提出了一种组合的方法来实现AF检测的高精度。首先,我们使用ΔR间隔分布差异曲线检测了AF和窦性心律之间的可疑转变,然后通过P波和RR间隔的组合分析对其进行分类。 MIT-BIH AF数据库用于算法验证,并获得了高灵敏度和高特异性(分别为98.2%和97.5%)。此外,我们开发了24小时阵发性AF动态心电图记录(n = 45)的数据集,以评估其在临床实践中的表现,得出了令人满意的准确性(敏感性= 96.3%,特异性= 96.8%)。

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