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Use of SSA and MCSSA in the Analysis of Cardiac RR Time Series

机译:SSA和MCSSA在心脏RR时间序列分析中的使用

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A new preprocessing procedure in the analysis of cardiac RR interval time series is described. It uses the singular spectrum analysis (SSA) and the Monte Carlo SSA (MCSSA) test. A novel feature of this preprocessing procedure is the ability to identify the noise component present in the series with a given probability and to separate the time series into a trend, signal, and noise. The MCSSA test involves testing whether the modes obtained from SSA can be generated by a noise process leading to separation of the noise modes from the signal. The procedure described here does not discard or modify any sample in the record but merely separates the time series into a trend, signal, and noise, allowing for further analysis of these components. The procedure is not limited to the length of the record and could be applied to nonstationary data. The basis functions used in SSA are data adaptive in that they are not chosen a priori but instead are dependent on the data set used, increasing flexibility to the analysis. The procedure is illustrated using the RR interval time series of a healthy, congestive heart failure, and atrial fibrillation subject.
机译:描述了一种新的预处理程序,用于分析心脏RR间隔时间序列。它使用奇异频谱分析(SSA)和蒙特卡洛SSA(MCSSA)测试。该预处理过程的一个新颖功能是能够以给定的概率识别序列中存在的噪声分量,并将时间序列分离为趋势,信号和噪声。 MCSSA测试包括测试从SSA获得的模式是否可以通过噪声过程生成,从而导致噪声模式与信号分离。此处描述的过程不会丢弃或修改记录中的任何样本,而只是将时间序列分为趋势,信号和噪声,从而可以进一步分析这些成分。该过程不限于记录的长度,并且可以应用于非平稳数据。 SSA中使用的基本函数是数据自适应的,因为它们不是先验选择的,而是取决于所使用的数据集,从而增加了分析的灵活性。使用健康,充血性心力衰竭和房颤患者的RR间隔时间序列说明了该过程。

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