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Detection of Atrial Fibrillation Episodes using Multiple Heart Rate Variability Features in Different Time Periods

机译:不同时间段中使用多重心率变异特征的心房颤动事件的检测

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Circadian variations of cardiac diseases have been well known. For example, atrial fibrillation (AF) episodes show nocturnal predominance. In this study, we have developed multiple formulas that detect AF episodes in different times of the day. Heart rate variability features were calculated from randomly sampled three min ECG data. Logistic regression analyses were performed to generate three formulas for the entire day, daytime, and evening time. Compared to the first formula that disregarded the time of the day, the second formula for the daytime detection detected AF episodes more accurately (95.2% vs. 99.3%), whereas third formula for the evening time detection did less accurately (93.8%). These results suggest the detection of AF episodes might become more accurate by considering the time-dependent changes of HRV features. In addition, the detection method for the evening time requires further investigation.
机译:昼夜心脏疾病的昼夜变异是众所周知的。例如,心房颤动(AF)剧集显示夜间优势。在这项研究中,我们开发了多种惯例,可以在一天中不同时间检测AF发作。心率可变性特征是根据随机采样的三分之一ECG数据计算的。进行逻辑回归分析,为整天,白天和晚上时间生成三种公式。与忽视当天的时间的第一个公式相比,日间检测的第二公式更准确地检测到AF发作(95.2%与99.3%),而晚上时间检测的第三个公式较低(93.8%)。这些结果表明AF剧集的检测通过考虑HRV特征的时间依赖性变化,可以更准确。此外,晚上时间的检测方法需要进一步调查。

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