Early prediction of Paroxysmal Atrial Fibrillation using frequency domain measures of heart rate variability

A. Narin, Y. Isler, M. Özer
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引用次数: 10

Abstract

Paroxysmal Atrial Fibrillation (PAF) is a very common heart disease caused by irregular impulses of atrial tissue in adult. Diagnosing in the early stages of this disorder is very important for the patients to stop the progression of the disease and to improve the life quality. In this study, it is aimed to predict the PAF event before the realization of the PAF which in 5 minutes for the PAF patients. 30-minute data used in the study were divided into 5-minute parts. Fast Fourier Transform of frequency domain measures of heart rate variability obtained easily and practically is used for each part. The statistical significances among segments and discriminating performances of k-Nearest Neighbors classifier were obtained for each segment using these measurements. Consequently, As a result of statistical analysis, it is shown that patients may be warned 12.5 minutes earlier than a PAF attack.
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利用心率变异性的频域测量对阵发性心房颤动进行早期预测
阵发性心房颤动(PAF)是由心房组织不规则搏动引起的一种非常常见的心脏病。早期诊断对患者停止病情发展和提高生活质量非常重要。本研究旨在预测PAF患者在实现PAF前5分钟内发生的PAF事件。研究中使用的30分钟数据被分成5分钟的部分。对各部分心率变异性的频域测量结果进行快速傅立叶变换,简便实用。通过这些测量,获得了每个段之间的统计显著性和k-最近邻分类器的判别性能。因此,统计分析表明,患者可以在PAF发作前12.5分钟得到警告。
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