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Tracking the Sleep Onset Process: An Empirical Model of Behavioral and Physiological Dynamics
Authors:Michael J Prerau  Katie E Hartnack  Gabriel Obregon-Henao  Aaron Sampson  Margaret Merlino  Karen Gannon  Matt T Bianchi  Jeffrey M Ellenbogen  Patrick L Purdon
Institution:1. Massachusetts General Hospital, Department of Anesthesia, Critical Care, and Pain Medicine, Charlestown, Massachusetts, United States of America.; 2. Massachusetts General Hospital, Department of Neurology, Massachusetts, United States of America.; 3. Johns Hopkins University, Department of Neurology, Baltimore, Maryland, United States of America.; University College London, United Kingdom,
Abstract:The sleep onset process (SOP) is a dynamic process correlated with a multitude of behavioral and physiological markers. A principled analysis of the SOP can serve as a foundation for answering questions of fundamental importance in basic neuroscience and sleep medicine. Unfortunately, current methods for analyzing the SOP fail to account for the overwhelming evidence that the wake/sleep transition is governed by continuous, dynamic physiological processes. Instead, current practices coarsely discretize sleep both in terms of state, where it is viewed as a binary (wake or sleep) process, and in time, where it is viewed as a single time point derived from subjectively scored stages in 30-second epochs, effectively eliminating SOP dynamics from the analysis. These methods also fail to integrate information from both behavioral and physiological data. It is thus imperative to resolve the mismatch between the physiological evidence and analysis methodologies. In this paper, we develop a statistically and physiologically principled dynamic framework and empirical SOP model, combining simultaneously-recorded physiological measurements with behavioral data from a novel breathing task requiring no arousing external sensory stimuli. We fit the model using data from healthy subjects, and estimate the instantaneous probability that a subject is awake during the SOP. The model successfully tracked physiological and behavioral dynamics for individual nights, and significantly outperformed the instantaneous transition models implicit in clinical definitions of sleep onset. Our framework also provides a principled means for cross-subject data alignment as a function of wake probability, allowing us to characterize and compare SOP dynamics across different populations. This analysis enabled us to quantitatively compare the EEG of subjects showing reduced alpha power with the remaining subjects at identical response probabilities. Thus, by incorporating both physiological and behavioral dynamics into our model framework, the dynamics of our analyses can finally match those observed during the SOP.
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