Optimizing the Automated Detection of Atrial Fibrillation Episodes in Long-term Recording Instrumentation

J. Wrobel, K. Horoba, A. Matonia, T. Kupka, N. Henzel, E. Sobotnicka
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引用次数: 7

Abstract

The aim of this paper was to optimize and evaluate the performance of our method for automated recognition of AF episodes that has been based on classification of the selected features derived from the heart rate signal. The aggregation of the classified heart beats has been added to minimize the false positive cases being noted by the clinicians when the wristband AF recorder was applied for long-term monitoring. Proposed improvement of the automated method led to considerable increase of sensitivity and improvement of the positive predictive value. At the same time the detection algorithm remains easy to be implemented in the mobile instrumentation for long-term monitoring.
优化长期记录仪器对房颤发作的自动检测
本文的目的是优化和评估我们的自动识别AF发作的方法的性能,该方法基于从心率信号中提取的选定特征的分类。增加了分类心跳的汇总,以减少临床医生在应用腕带AF记录仪进行长期监测时注意到的假阳性病例。对自动化方法进行改进后,灵敏度显著提高,阳性预测值显著提高。同时,该检测算法易于在移动仪器中实现,便于长期监测。
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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