1
Application of random forest classifier for automatic sleep spindle detection
2
REM sleep behaviour disorder is associated with lower fast and higher slow sleep spindle densities
3
Expert and crowd-sourced validation of an individualized sleep spindle detection method employing complex demodulation and individualized normalization
4
Detection of K-complexes and sleep spindles (DETOKS) using sparse optimization
5
Learning machines and sleeping brains: Automatic sleep stage classification using decision-tree multi-class support vector machines
6
Sleep spindle and K-complex detection using tunable Q-factor wavelet transform and morphological component analysis
7
Automatic sleep spindle detection: benchmarking with fine temporal resolution using open science tools
8
Spindles in Svarog: framework and software for parametrization of EEG transients
9
Sleep spindle alterations in patients with Parkinson's disease
10
Stage-independent, single lead EEG sleep spindle detection using the continuous wavelet transform and local weighted smoothing
11
Sleep spindles in Parkinson's disease may predict the development of dementia
12
Automated detection of sleep spindles in the scalp EEG and estimation of their intracranial current sources: comments on techniques and on related experimental and clinical studies
13
Montreal Archive of Sleep Studies: an open‐access resource for instrument benchmarking and exploratory research
14
Ongoing Network State Controls the Length of Sleep Spindles via Inhibitory Activity
15
Sleep spindles and rapid eye movement sleep as predictors of next morning cognitive performance in healthy middle‐aged and older participants
16
Automatic detection of spindles and K-complexes in sleep EEG using switching multiple models
17
Sleep spindle detection: crowdsourcing and evaluating performance of experts, non-experts, and automated methods
18
Topography of age-related changes in sleep spindles
19
NREM Sleep Oscillations and Brain Plasticity in Aging
20
Detection of characteristic waves of sleep EEG by continuous wavelet transform
21
Declarative memory performance is associated with the number of sleep spindles in elderly women.
22
To wake or not to wake? The two-sided nature of the human K-complex
23
Automatic sleep spindles detection — Overview and development of a standard proposal assessment method
24
Sparse signal representations using the tunable Q-factor wavelet transform
25
Wavelet Transform With Tunable Q-Factor
26
The thalamic reticular nucleus and schizophrenia.
27
Sleep spindles recognition system based on time and frequency domain features
28
Fast and slow spindle involvement in the consolidation of a new motor sequence
29
Automatic K-complexes detection in sleep EEG recordings using likelihood thresholds
30
Thalamic dysfunction in schizophrenia suggested by whole-night deficits in slow and fast spindles.
31
Validating an automated sleep spindle detection algorithm using an individualized approach
32
The memory function of sleep
33
An automatic sleep spindle detector based on wavelets and the teager energy operator
34
The whats and whens of sleep-dependent memory consolidation.
35
Efficient sleep spindle detection algorithm with decision tree
36
The Human K-Complex Represents an Isolated Cortical Down-State
37
Motor sequence learning increases sleep spindles and fast frequencies in post-training sleep.
38
Development and comparison of four sleep spindle detection methods
39
Benchmarking matching pursuit to find sleep spindles
40
K-complex, a reactive EEG graphoelement of NREM sleep: an old chap in a new garment.
41
Sleep, epilepsy and thalamic reticular inhibitory neurons
42
The reticular nucleus revisited: Intrinsic and network properties of a thalamic pacemaker
43
Open Source Biotechnology
44
Sleep spindles and their significance for declarative memory consolidation.
45
Automatic spike detection in EEG by a two-stage procedure based on support vector machines
46
Normal human sleep: an overview.
47
Sleep spindles: an overview.
48
Grouping of Spindle Activity during Slow Oscillations in Human Non-Rapid Eye Movement Sleep
49
Sleep and depression — results from psychobiological studies: an overview
50
Optimization of sigma amplitude threshold in sleep spindle detection
51
High resolution study of sleep spindles
52
Detection of characteristic waves of sleep EEG by neural network analysis
53
PRINCIPLES AND PRACTICE OF SLEEP MEDICINE
54
Conflict of Interest Statement
55
Sleep spindles where they come from , what they do
56
Communication Systems (NCCCS
57
Pilot Validation of a Mimicking Algorithm For Detection of Sleep Spindles and K-complexes
58
A wavelet and teager energy operator based method for automatic detection of K-Complex in sleep EEG
59
This is an open access article distributed under the terms of the Creative Commons Attribution License
60
Oscillatory and transient signal decomposition using over complete rational-dilation wavelet transforms, SPIE (society),’
61
The AASM Manual for the Scoring of Sleep and Associated Events: Rules, Terminology, and Techinical Specifications
62
The cortico-thalamic system in sleep
64
Pattern recognition by matched filtering: an analysis of sleep spindle and K-complex density under the influence of lormetazepam and zopiclone.
65
A manual of standardized terminology, technique and scoring system for sleep stages of human subjects
66
Conf Proc Ieee Eng Med Biol Soc . Author Manuscript Analysis of the Qrs Complex for Apnea-bradycardia Characterization in Preterm Infants