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Evaluating time-varying heart-rate variability power spectral density

机译:评估随时间变化的心率变异性功率谱密度

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摘要

A multiple weighted-least-square (WLS) identification process is presented for recognizing changes in ICU patient status. An adaptive scheme for the WLS is proposed in which the forgetting factor is automatically driven by the signal characteristics. Generally, adaptive algorithms are more complex and time-consuming than standard WLS, but they show a high tracking performance combined with the benefit of parameter smoothing. Nevertheless, the use of parameter-explicit filtering significantly reduces the computation time. This is a relevant advantage for real-time implementation. This adaptive approach also provides additional information to identify the signal variation speed, which can be used to localize transient phenomena. This article presents the algorithm performance in individuating and tracking the modifications of the cardiac autonomic control. To make data interpretation easier, the time-frequency distributions obtained are displayed as spectrograms. In addition, the signal speed variation is used to draw the attention of the physician to transient episodes.
机译:提出了多重加权最小二乘(WLS)识别过程,以识别ICU患者状态的变化。提出了一种针对WLS的自适应方案,其中遗忘因子由信号特性自动驱动。通常,自适应算法比标准WLS更复杂,更耗时,但是它们具有较高的跟踪性能以及参数平滑的优势。尽管如此,使用参数显式过滤显着减少了计算时间。这是实时实施的相关优势。这种自适应方法还提供了附加信息来识别信号变化速度,该信息可用于定位瞬态现象。本文介绍了算法在区分和跟踪心脏自主控制修改方面的性能。为了使数据解释更容易,将获得的时频分布显示为频谱图。另外,信号速度变化用于引起医师对瞬时发作的注意。

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