Litcius/Paper detail

Covert sleep-related biological processes are revealed by probabilistic analysis in <i>Drosophila</i>

Timothy D. Wiggin, Patricia R. Goodwin, Nathan C. Donelson, Chang Liu, Kien Trinh, Subhabrata Sanyal, Leslie C. Griffith

2020Proceedings of the National Academy of Sciences121 citationsDOIOpen Access PDF

Abstract

have low temporal resolution and/or require disrupting sleep. Here we report analysis tools for high-resolution, noninvasive measurement of sleep pressure and depth from movement data. Probability of initiating activity, P(Wake), measures sleep depth while probability of ceasing activity, P(Doze), measures sleep pressure. In vivo and computational analyses show that P(Wake) and P(Doze) are largely independent and control the amount of total sleep. We also develop a Hidden Markov Model that allows visualization of distinct sleep/wake substates. These hidden states have a predictable relationship with P(Doze) and P(Wake), suggesting that the methods capture the same behaviors. Importantly, we demonstrate that both the Doze/Wake probabilities and the sleep/wake substates are tied to specific biological processes. These metrics provide greater mechanistic insight into behavior than measuring the amount of sleep alone.

Topics & Concepts

Sleep (system call)WakeCovertComputer sciencePsychologyNeurosciencePhysicsThermodynamicsLinguisticsOperating systemPhilosophyNeurobiology and Insect Physiology ResearchInsect and Arachnid Ecology and BehaviorCircadian rhythm and melatonin