About this Research Topic
Complexity is generally assessed on short-term physiological signals with approaches that emerge from information theory based on the Shannon entropy, as approximate or sample entropy, among others. However, the former metrics may lead to erroneous interpretations as entropy increases as the signal randomness increases. An example is atrial fibrillation, which increases the sample entropy of beat-by-beat heart rate variability, in stark contrast with the paradigm of the loss complexity in disease and aging. To circumvent the problem, it has been proposed to measure the “structural richness” of a signal calculating the entropy at several time scales separately, giving rise to the method of multiscale entropy.
Although complexity indices based on univariate multiscale entropy provided interesting and helpful biomarkers in health and disease, it has been recognized recently the relevance to include multivariate signals to gain a deeper understanding of physiological phenomena and estimate the complexity of physiological networks. Systems adaptability also depends upon physiological inter-dependent dynamic interactions among subsystems, leading to highly complex variations. In this sense, the meaning of complexity has been extended, and new developments have emerged as the multiscale transfer entropy, the analysis of information flow between temporal-scales, and multiscale fractality. Furthermore, complexity has been evaluated from interacting physiological processes that may have different temporal dynamics. Considering all the potential exciting advances in the analysis of systems complexity and adaptability, the goal of this research topic is to focus on emerging approaches for estimating complexity using multivariate signals, transfer entropy and information flow, particularly based on multiscale assessments, and hopefully, to clarify causes of complexity loss in physiological networks. Also, applications are welcome in diverse physiological systems under different pathological conditions, as well as tutorials and reviews in the field.
We welcome original articles, opinion and review papers, and multidisciplinary contributions in the field of complexity and complexity loss analysis in network physiology, with topics focused on, but not limited to:
• Emerging theoretical approaches to analyze complexity and complexity loss in a multiscale information theory framework.
• Complexity estimation based on multiscale analysis of multivariate time series.
• Complexity estimation based on multivariate schemes for interscale analysis.
• Application of complexity methods and analysis of complexity loss in diseases and diverse clinical states such as sleep disorders, neurological diseases (e.g., depression), orthostatic intolerance, heart failure, cognitive dysfunctions, pulmonary diseases, and respiratory failure, among others.
Keywords: Complexity, time scales, spatial scales, information transfer, cardiovascular variability, respiratory variability, EEG, EMG, physiological oscillations, brain networks, network physiology
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