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    Validation of Spindle Detection Algorithms to Find Association Between Sleep Spindles and Chronic Pain in Mice

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    Author
    Rajashree, Ramamoorthy
    Issue Date
    2023
    Advisor
    Cowen, Stephen L.
    
    Metadata
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    Publisher
    The University of Arizona.
    Rights
    Copyright © is held by the author. Digital access to this material is made possible by the University Libraries, University of Arizona. Further transmission, reproduction, presentation (such as public display or performance) of protected items is prohibited except with permission of the author.
    Abstract
    Sleep and pain are known to be intrinsically linked, and evidence suggests that non-rapid eye movement (NREM) sleep plays an important role in pain modulation. Sleep spindles, which are burst-like oscillations in the NREM sleep stage, are related to chronic pain regulation. Accurate sleep spindle detection is required to identify an association between chronic pain and the incidence of sleep spindles and contribute to a valid assessment of NREM sleep. In this study, we compare and identify spindles using four different sleep spindle detection algorithms, each known to find the spindles on par with the gold standard of spindle detection, manual spindle scoring, or visual identification. The primary aim of this work is to validate the automatic algorithms that are based on the sigma power parameters of humans for the detection of spindles in rodent EEG. Based on the F1 scores with the expert-scored spindles, we found that the automatic spindle detection by Algorithm 3 (Kaulen et al., 2022) had the greatest alignment with manual spindle detection in comparison to the others. The algorithms, however, were unable to distinguish between the Wild-type (WT) and Gi-DREADD KORcre type (Het) mice models with sufficient precision. This study highlights the need to validate spindle detection algorithms for rodent neural data to better understand the potential associations between sleep spindles and chronic pain.
    Type
    Electronic Thesis
    text
    Degree Name
    M.S.
    Degree Level
    masters
    Degree Program
    Graduate College
    Biomedical Engineering
    Degree Grantor
    University of Arizona
    Collections
    Master's Theses

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