自适应序列奇异谱分析:有效信号提取与电子烟使用相关的心率信号的应用。

Data science in science Pub Date : 2024-01-01 Epub Date: 2024-08-02 DOI:10.1080/26941899.2024.2383770
James J Yang, Anne Buu
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引用次数: 0

摘要

奇异谱分析(SSA)是从含噪时间序列中提取信号的有效工具。然而,窗长的选择对SSA提供的结构洞见有显著影响。传统方法推荐较大的窗口长度,适用于较短或中等大小的时间序列,但对于较长的时间序列,它的计算负担很大,可能会放大均方重构误差。本研究通过引入自适应序列SSA方法解决了这一方法上的差距,该方法迭代选择最佳窗口长度,以最小的重构误差有效提取基本特征序列(信号)。该方法具有通用性,适合于短、中、长的时间序列。仿真研究表明,在观测数据来自两个正弦函数和噪声之和的情况下,该方法是有效的。对一名年轻成年电子烟使用者6天的心率数据进行的真实数据分析显示,在第一和第三特征序列的散点图中,电子烟事件明显聚类,这表明在未来的研究中,基于提取的特征序列开发电子烟行为的“数字生物标志物”的潜力。总之,自适应序列SSA方法为各种时间序列应用中的信号提取提供了一种鲁棒性和灵活性的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive Sequential Singular Spectrum Analysis: Effective Signal Extraction with Application to Heart Rate Signals Related to E-cigarette Use.

The Singular Spectrum Analysis (SSA) is a useful tool for extracting signals from noisy time series. However, the structural insights provided by SSA are significantly influenced by the choice of window length. While the conventional approach, recommending a larger window length, excels with short to moderately-sized time series, it becomes computationally burdensome for longer time series, potentially amplifying mean squared reconstruction errors. This study addresses this methodological gap by introducing an adaptive sequential SSA method that iteratively selects an optimal window length for efficient extraction of essential eigen-sequences (signals) with minimal reconstruction error. This proposed method is versatile, catering to both short-moderate and lengthy time series. Simulation studies demonstrate its efficacy in scenarios where observed data stem from the sum of two sinusoidal functions and noise. Real data analysis on 6-day heart rate data from a young adult e-cigarette user reveals a distinct clustering of vaping events in the scatter plot of the first and third eigen-sequences, indicating the potential of developing "digital biomarkers" for vaping behavior based on extracted eigen-sequences in future studies. In conclusion, the adaptive sequential SSA method offers a robust and flexible approach for signal extraction in diverse time series applications.

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CiteScore
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