Phase space reconstruction from a biological time series. A PhotoPlethysmoGraphic signal a case study
J. de Pedro-Carracedo, A.M. Ugena, and A.P. Gonzalez-Marcos

TL;DR
This paper explores phase space reconstruction from PPG signals using delay methods, emphasizing the importance of parameter selection for accurately capturing the system's dynamics and applying classical models for illustration.
Contribution
It demonstrates the application of delay-based phase space reconstruction to biological signals, specifically PPG, and determines optimal parameters for meaningful dynamic analysis.
Findings
m is five for all subjects analyzed
t depends on the specific time interval evaluated
Reconstruction reveals the dynamic complexity of physiological systems
Abstract
In the analysis of biological time series, the state space comprises a framework for the study of systems with presumably deterministic properties. However, a physiological experiment typically captures an observable, or, in other words, a series of scalar measurements that characterize the temporal response of the physiological system under study; the dynamic variables that make up the state of the system at any time are not available. Therefore, only from the acquired observations should state vectors reconstructed to emulate the different states of the underlying system. It is what is known as the reconstruction of the state space, called phase space in real-world signals, for now only satisfactorily resolved using the method of delays. Each state vector consists of m components, extracted from successive observations delayed a time t. The morphology of the geometric structure…
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