Abstract

Studying sleep behavior in animal models demands clear separation of vigilance states. Pure manual scoring is time-consuming and commercial scoring software is costly. We present a LabVIEW-based, semi-automated scoring routine using recorded EEG and EMG signals. This scoring routine is•designed to reliably assign the vigilance/sleep states wakefulness (WAKE), non-rapid eye movement sleep (NREMS) and rapid eye movement sleep (REMS) to defined EEG/EMG episodes.•straightforward to use even for beginners in the field of sleep research.•freely available upon request.Chronic recordings from mice were used to design and evaluate the scoring routine consisting of an artifact-removal, a scoring- and a rescoring routine. The scoring routine processes EMG and different EEG frequency bands. Amplitude-based thresholds for EEG and EMG parameters trigger a decision tree assigning each EEG episode to a defined vigilance/sleep state automatically. Using the rescoring routine individual episodes or particular state transitions can be re-evaluated manually. High agreements between auto-scored and manual sleep scoring could be shown for experienced scorers and for beginners quickly and reliably. With small modifications to the software, it can be easily adapted for sleep analysis in other animal models.

Highlights

  • Studying sleep behavior in animal models demands clear separation of vigilance states

  • Starting the sleep scoring software a graphical user interface GUI will be opened and the user can choose between three executable programs: A manual ARTIFACT DETECTION routine, the SLEEP SCORING routine for semiautomated sleep scoring and a RESCORING routine to enable manual re-evaluation of distinct automatically scored EEG/EMG sequences

  • The scoring routine itself consists of three individual, complementary parts, the ARTIFACT DETECTION, the semi-automated SLEEP SCORING and the manual RESCORING that can be selected via the graphical user interface (GUI)

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Summary

Contents lists available at ScienceDirect

Fenzl c a Department of Anesthesiology, Klinikum rechts der Isar, Technische Universität München, Munich, Germany b Max Planck Institute of Psychiatry, Munich, Germany c Institute of Pharmacy, Department of Pharmacology and Toxicology, University of Innsbruck, Innsbruck, Austria

GRAPHICAL ABSTRACT
Method details
Signal processing and data analysis
Scoring process
ARTIFACT DETECTION
Additional information
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