Publication | Open Access
Time-varying information measures: an adaptive estimation of information storage with application to brain-heart interactions
28
Citations
49
References
2023
Year
Time-varying Information MeasuresEngineeringSocial SciencesData ScienceInformation StorageBiostatisticsNetwork PhysiologyCognitive ElectrophysiologyCognitive NeuroscienceStatisticsNonlinear Time SeriesCognitive ScienceStationarity AssumptionInformation TheoryInformation Theory FrameworkTemporal Pattern RecognitionNeuroimagingFunctional Data AnalysisSignal ProcessingComputational NeuroscienceEeg Signal ProcessingTemporal ComplexityNeuroscienceBrain-heart Interactions
Network Physiology is a rapidly growing field of study that aims to understand how physiological systems interact to maintain health. Within the information theory framework the information storage (IS) allows to measure the regularity and predictability of a dynamic process under stationarity assumption. However, this assumption does not allow to track over time the transient pathways occurring in the dynamical activity of a physiological system. To address this limitation, we propose a time-varying approach based on the recursive least squares algorithm (RLS) for estimating IS at each time instant, in non-stationary conditions. We tested this approach in simulated time-varying dynamics and in the analysis of electroencephalographic (EEG) signals recorded from healthy volunteers and timed with the heartbeat to investigate brain-heart interactions. In simulations, we show that the proposed approach allows to track both abrupt and slow changes in the information stored in a physiological system. These changes are reflected in its evolution and variability over time. The analysis of brain-heart interactions reveals marked differences across the cardiac cycle phases of the variability of the time-varying IS. On the other hand, the average IS values exhibit a weak modulation over parieto-occiptal areas of the scalp. Our study highlights the importance of developing more advanced methods for measuring IS that account for non-stationarity in physiological systems. The proposed time-varying approach based on RLS represents a useful tool for identifying spatio-temporal dynamics within the neurocardiac system and can contribute to the understanding of brain-heart interactions.
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