Abstract

A spindle detection method was developed that: (1) extracts the signal of interest (i.e., spindle-related phasic changes in sigma) relative to ongoing “background” sigma activity using complex demodulation, (2) accounts for variations of spindle characteristics across the night, scalp derivations and between individuals, and (3) employs a minimum number of sometimes arbitrary, user-defined parameters. Complex demodulation was used to extract instantaneous power in the spindle band. To account for intra- and inter-individual differences, the signal was z-score transformed using a 60 s sliding window, per channel, over the course of the recording. Spindle events were detected with a z-score threshold corresponding to a low probability (e.g., 99th percentile). Spindle characteristics, such as amplitude, duration and oscillatory frequency, were derived for each individual spindle following detection, which permits spindles to be subsequently and flexibly categorized as slow or fast spindles from a single detection pass. Spindles were automatically detected in 15 young healthy subjects. Two experts manually identified spindles from C3 during Stage 2 sleep, from each recording; one employing conventional guidelines, and the other, identifying spindles with the aid of a sigma (11–16 Hz) filtered channel. These spindles were then compared between raters and to the automated detection to identify the presence of true positives, true negatives, false positives and false negatives. This method of automated spindle detection resolves or avoids many of the limitations that complicate automated spindle detection, and performs well compared to a group of non-experts, and importantly, has good external validity with respect to the extant literature in terms of the characteristics of automatically detected spindles.

Highlights

  • Sleep spindles are brief discrete phasic bursts of sigma (∼11–16 Hz) activity, with a waxing and waning amplitude envelope, which characterize non-rapid eye movement (NREM) sleep

  • There was a very high proportion of periods without spindles that were correctly identified by Expert 2 as compared to Expert 1 and a high proportion of 3 s periods of EEG without spindles identified by Expert 2 (NPV = 0.80, ±0.07), with a false positive rate of only 0.03, ±0.04

  • One expert (Expert 2) used conventional guidelines (e.g., AASM), while the other expert (Expert 1) utilized the aid of a sigma filtered channel to help identify spindles that are either difficult to discriminate from the ongoing EEG

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Summary

Introduction

Sleep spindles are brief (typically

Methods
Results
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