Literature DB >> 31693157

Supervised and unsupervised machine learning for automated scoring of sleep-wake and cataplexy in a mouse model of narcolepsy.

Ioannis Exarchos1, Anna A Rogers2, Lauren M Aiani2,3, Robert E Gross2,3,4,5, Gari D Clifford1,5, Nigel P Pedersen3,4, Jon T Willie2,3,4.   

Abstract

Despite commercial availability of software to facilitate sleep-wake scoring of electroencephalography (EEG) and electromyography (EMG) in animals, automated scoring of rodent models of abnormal sleep, such as narcolepsy with cataplexy, has remained elusive. We optimize two machine-learning approaches, supervised and unsupervised, for automated scoring of behavioral states in orexin/ataxin-3 transgenic mice, a validated model of narcolepsy type 1, and additionally test them on wild-type mice. The supervised learning approach uses previously labeled data to facilitate training of a classifier for sleep states, whereas the unsupervised approach aims to discover latent structure and similarities in unlabeled data from which sleep stages are inferred. For the supervised approach, we employ a deep convolutional neural network architecture that is trained on expert-labeled segments of wake, non-REM sleep, and REM sleep in EEG/EMG time series data. The resulting trained classifier is then used to infer on the labels of previously unseen data. For the unsupervised approach, we leverage data dimensionality reduction and clustering techniques. Both approaches successfully score EEG/EMG data, achieving mean accuracies of 95% and 91%, respectively, in narcoleptic mice, and accuracies of 93% and 89%, respectively, in wild-type mice. Notably, the supervised approach generalized well on previously unseen data from the same animals on which it was trained but exhibited lower performance on animals not present in the training data due to inter-subject variability. Cataplexy is scored with a sensitivity of 85% and 57% using the supervised and unsupervised approaches, respectively, when compared to manual scoring, and the specificity exceeds 99% in both cases. © Sleep Research Society 2019. Published by Oxford University Press on behalf of the Sleep Research Society. All rights reserved. For permissions, please e-mail journals.permissions@oup.com.

Entities:  

Keywords:  EEG spectral analysis; animal models; machine learning; narcolepsy; scoring; sleep in animals

Mesh:

Year:  2020        PMID: 31693157      PMCID: PMC7215268          DOI: 10.1093/sleep/zsz272

Source DB:  PubMed          Journal:  Sleep        ISSN: 0161-8105            Impact factor:   5.849


  14 in total

1.  Abnormal sleep/wake dynamics in orexin knockout mice.

Authors:  Cecilia G Diniz Behn; Elizabeth B Klerman; Takatoshi Mochizuki; Shih-Chieh Lin; Thomas E Scammell
Journal:  Sleep       Date:  2010-03       Impact factor: 5.849

2.  Automated sleep scoring in rats and mice using the naive Bayes classifier.

Authors:  Kirsi-Marja Rytkönen; Jukka Zitting; Tarja Porkka-Heiskanen
Journal:  J Neurosci Methods       Date:  2011-08-22       Impact factor: 2.390

3.  Multiple classifier systems for automatic sleep scoring in mice.

Authors:  Vance Gao; Fred Turek; Martha Vitaterna
Journal:  J Neurosci Methods       Date:  2016-02-27       Impact factor: 2.390

4.  Unsupervised online classifier in sleep scoring for sleep deprivation studies.

Authors:  Paul-Antoine Libourel; Alexandra Corneyllie; Pierre-Hervé Luppi; Guy Chouvet; Damien Gervasoni
Journal:  Sleep       Date:  2015-05-01       Impact factor: 5.849

5.  SCOPRISM: a new algorithm for automatic sleep scoring in mice.

Authors:  Stefano Bastianini; Chiara Berteotti; Alessandro Gabrielli; Flavia Del Vecchio; Roberto Amici; Chloe Alexandre; Thomas E Scammell; Mary Gazea; Mayumi Kimura; Viviana Lo Martire; Alessandro Silvani; Giovanna Zoccoli
Journal:  J Neurosci Methods       Date:  2014-08-01       Impact factor: 2.390

6.  A consensus definition of cataplexy in mouse models of narcolepsy.

Authors:  Thomas E Scammell; Jon T Willie; Christian Guilleminault; Jerome M Siegel
Journal:  Sleep       Date:  2009-01       Impact factor: 5.849

7.  Orexin/hypocretin and histamine: distinct roles in the control of wakefulness demonstrated using knock-out mouse models.

Authors:  Christelle Anaclet; Régis Parmentier; Koliane Ouk; Gérard Guidon; Colette Buda; Jean-Pierre Sastre; Hidéo Akaoka; Olga A Sergeeva; Masashi Yanagisawa; Hiroshi Ohtsu; Patricia Franco; Helmut L Haas; Jian-Sheng Lin
Journal:  J Neurosci       Date:  2009-11-18       Impact factor: 6.167

8.  Distinct narcolepsy syndromes in Orexin receptor-2 and Orexin null mice: molecular genetic dissection of Non-REM and REM sleep regulatory processes.

Authors:  Jon T Willie; Richard M Chemelli; Christopher M Sinton; Shigeru Tokita; S Clay Williams; Yaz Y Kisanuki; Jacob N Marcus; Charlotte Lee; Joel K Elmquist; Kristi A Kohlmeier; Christopher S Leonard; James A Richardson; Robert E Hammer; Masashi Yanagisawa
Journal:  Neuron       Date:  2003-06-05       Impact factor: 17.173

9.  Specificity of direct transition from wake to REM sleep in orexin/ataxin-3 transgenic narcoleptic mice.

Authors:  Nobuhiro Fujiki; Timothy Cheng; Fuyumi Yoshino; Seiji Nishino
Journal:  Exp Neurol       Date:  2009-02-03       Impact factor: 5.330

10.  Neural network analysis of sleep stages enables efficient diagnosis of narcolepsy.

Authors:  Jens B Stephansen; Alexander N Olesen; Mads Olsen; Aditya Ambati; Eileen B Leary; Hyatt E Moore; Oscar Carrillo; Ling Lin; Fang Han; Han Yan; Yun L Sun; Yves Dauvilliers; Sabine Scholz; Lucie Barateau; Birgit Hogl; Ambra Stefani; Seung Chul Hong; Tae Won Kim; Fabio Pizza; Giuseppe Plazzi; Stefano Vandi; Elena Antelmi; Dimitri Perrin; Samuel T Kuna; Paula K Schweitzer; Clete Kushida; Paul E Peppard; Helge B D Sorensen; Poul Jennum; Emmanuel Mignot
Journal:  Nat Commun       Date:  2018-12-06       Impact factor: 14.919

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  3 in total

1.  Evaluation of feature projection techniques in object grasp classification using electromyogram signals from different limb positions.

Authors:  Nantarika Thiamchoo; Pornchai Phukpattaranont
Journal:  PeerJ Comput Sci       Date:  2022-05-06

2.  WaveSleepNet: An interpretable deep convolutional neural network for the continuous classification of mouse sleep and wake.

Authors:  Korey Kam; David M Rapoport; Ankit Parekh; Indu Ayappa; Andrew W Varga
Journal:  J Neurosci Methods       Date:  2021-05-28       Impact factor: 2.987

3.  Automated scoring of pre-REM sleep in mice with deep learning.

Authors:  Niklas Grieger; Justus T C Schwabedal; Stefanie Wendel; Yvonne Ritze; Stephan Bialonski
Journal:  Sci Rep       Date:  2021-06-10       Impact factor: 4.379

  3 in total

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