Abstract

EEG sleep spindles are short (0.5–2.0 s) bursts of activity in the 11–16 Hz band occurring during non-rapid eye movement (NREM) sleep. This sporadic activity is thought to play a role in memory consolidation, brain plasticity, and protection of sleep integrity. Many automatic detectors have been proposed to assist or replace experts for sleep spindle scoring. However, these algorithms usually detect too many events making it difficult to achieve a good tradeoff between sensitivity (Se) and false detection rate (FDr). In this work, we propose a semi-automatic detector comprising a sensitivity phase based on well-established criteria followed by a specificity phase using spatial and spectral criteria. In the sensitivity phase, selected events are those which amplitude in the 10–16 Hz band and spectral ratio characteristics both reject a null hypothesis (p < 0.1) stating that the considered event is not a spindle. This null hypothesis is constructed from events occurring during rapid eye movement (REM) sleep epochs. In the specificity phase, a hierarchical clustering of the selected candidates is done based on events' frequency and spatial position along the anterior-posterior axis. Only events from the classes grouping most (at least 80%) spindles scored by an expert are kept. We obtain Se = 93.2% and FDr = 93.0% in the first phase and Se = 85.4% and FDr = 86.2% in the second phase. For these two phases, Matthew's correlation coefficients are respectively 0.228 and 0.324. Results suggest that spindles are defined by specific spatio-spectral properties and that automatic detection methods can be improved by considering these features.

Highlights

  • EEG sleep spindles are short bursts of oscillatory activity in the 11–16 Hz frequency band during non-rapid eye movement (NREM) sleep, especially in stage 2 sleep

  • SENSITIVE DETECTION Montage selection We tested six different montages to study their effect on the sensitive detection: m1 corresponds to frontal channels Fp1, Fp2, F7, and F8; m2 to occipital channels O1, O2, and Oz; m3 to channels F3, F4, C3, C4, P3, P4, Fz, Cz, and Pz; m4, m5, and m6 to only Fz, Cz, and Pz, respectively

  • Performance of the sensitive detection depends on the capacity of the chosen montage to discriminate between the sleep spindles and the non-spindle events

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Summary

Introduction

EEG sleep spindles are short bursts of oscillatory activity in the 11–16 Hz frequency band during NREM sleep, especially in stage 2 sleep. A simple threshold (or a set of thresholds) is applied to this function to decide on the presence or absence of spindle activity This operation is typically followed by some additional criteria such as rejection of small duration events, generally

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