Literature DB >> 28886481

Identifying sleep spindles with multichannel EEG and classification optimization.

Ning Mei1, Michael D Grossberg2, Kenneth Ng1, Karen T Navarro1, Timothy M Ellmore3.   

Abstract

Researchers classify critical neural events during sleep called spindles that are related to memory consolidation using the method of scalp electroencephalography (EEG). Manual classification is time consuming and is susceptible to low inter-rater agreement. This could be improved using an automated approach. This study presents an optimized filter based and thresholding (FBT) model to set up a baseline for comparison to evaluate machine learning models using naïve features, such as raw signals, peak frequency, and dominant power. The FBT model allows us to formally define sleep spindles using signal processing but may miss examples most human scorers would agree are spindles. Machine learning methods in theory should be able to approach performance of human raters but they require a large quantity of scored data, proper feature representation, intensive feature engineering, and model selection. We evaluate both the FBT model and machine learning models with naïve features. We show that the machine learning models derived from the FBT model improve classification performance. An automated approach designed for the current data was applied to the DREAMS dataset [1]. With one of the expert's annotation as a gold standard, our pipeline yields an excellent sensitivity that is close to a second expert's scores and with the advantage that it can classify spindles based on multiple channels if more channels are available. More importantly, our pipeline could be modified as a guide to aid manual annotation of sleep spindles based on multiple channels quickly (6-10 s for processing a 40-min EEG recording), making spindle detection faster and more objective.
Copyright © 2017 Elsevier Ltd. All rights reserved.

Entities:  

Keywords:  Machine learning; Memory consolidation; Optimization; Sleep spindle; Thresholding

Mesh:

Year:  2017        PMID: 28886481      PMCID: PMC5650544          DOI: 10.1016/j.compbiomed.2017.08.030

Source DB:  PubMed          Journal:  Comput Biol Med        ISSN: 0010-4825            Impact factor:   4.589


  37 in total

1.  Automatic sleep spindles detection--overview and development of a standard proposal assessment method.

Authors:  S Devuyst; T Dutoit; P Stenuit; M Kerkhofs
Journal:  Conf Proc IEEE Eng Med Biol Soc       Date:  2011

2.  Study of cortical spindles during sleep in the rat.

Authors:  G Terrier; C L Gottesmann
Journal:  Brain Res Bull       Date:  1978 Nov-Dec       Impact factor: 4.077

3.  Sleep spindle-related reactivation of category-specific cortical regions after learning face-scene associations.

Authors:  Til O Bergmann; Matthias Mölle; Jens Diedrichs; Jan Born; Hartwig R Siebner
Journal:  Neuroimage       Date:  2011-10-20       Impact factor: 6.556

4.  Fast and slow spindles during the sleep slow oscillation: disparate coalescence and engagement in memory processing.

Authors:  Matthias Mölle; Til O Bergmann; Lisa Marshall; Jan Born
Journal:  Sleep       Date:  2011-10-01       Impact factor: 5.849

5.  Sleep spindles in humans: insights from intracranial EEG and unit recordings.

Authors:  Thomas Andrillon; Yuval Nir; Richard J Staba; Fabio Ferrarelli; Chiara Cirelli; Giulio Tononi; Itzhak Fried
Journal:  J Neurosci       Date:  2011-12-07       Impact factor: 6.167

Review 6.  Sleep-dependent memory triage: evolving generalization through selective processing.

Authors:  Robert Stickgold; Matthew P Walker
Journal:  Nat Neurosci       Date:  2013-01-28       Impact factor: 24.884

7.  MNE software for processing MEG and EEG data.

Authors:  Alexandre Gramfort; Martin Luessi; Eric Larson; Denis A Engemann; Daniel Strohmeier; Christian Brodbeck; Lauri Parkkonen; Matti S Hämäläinen
Journal:  Neuroimage       Date:  2013-10-24       Impact factor: 6.556

8.  Using a quadratic parameter sinusoid model to characterize the structure of EEG sleep spindles.

Authors:  Abdul J Palliyali; Mohammad N Ahmed; Beena Ahmed
Journal:  Front Hum Neurosci       Date:  2015-05-05       Impact factor: 3.169

9.  Machine learning for neuroimaging with scikit-learn.

Authors:  Alexandre Abraham; Fabian Pedregosa; Michael Eickenberg; Philippe Gervais; Andreas Mueller; Jean Kossaifi; Alexandre Gramfort; Bertrand Thirion; Gaël Varoquaux
Journal:  Front Neuroinform       Date:  2014-02-21       Impact factor: 4.081

10.  The stimulus-evoked population response in visual cortex of awake monkey is a propagating wave.

Authors:  Lyle Muller; Alexandre Reynaud; Frédéric Chavane; Alain Destexhe
Journal:  Nat Commun       Date:  2014-04-28       Impact factor: 14.919

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  2 in total

1.  Automatic detection of abnormal EEG signals using multiscale features with ensemble learning.

Authors:  Tao Wu; Xiangzeng Kong; Yunning Zhong; Lifei Chen
Journal:  Front Hum Neurosci       Date:  2022-09-20       Impact factor: 3.473

2.  A high-density scalp EEG dataset acquired during brief naps after a visual working memory task.

Authors:  Ning Mei; Michael D Grossberg; Kenneth Ng; Karen T Navarro; Timothy M Ellmore
Journal:  Data Brief       Date:  2018-04-25
  2 in total

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