Optimal Electroencephalogram and Electrooculogram Signal Combination for Deep Learning-Based Sleep Staging

Objective: The traditional sleep staging involves manual scoring of electroencephalogram (EEG), electrooculogram (EOG), and electromyogram signals during polysomnography (PSG), which is laborious and susceptible to human errors. Previous studies have explored several automated sleep staging methods...

Full description

Saved in:
Bibliographic Details
Published inIEEE journal of biomedical and health informatics Vol. 29; no. 7; pp. 4741 - 4747
Main Authors Tashakori, Masoumeh, Rusanen, Matias, Karhu, Tuomas, Huttunen, Riku, Leppanen, Timo, Nikkonen, Sami
Format Journal Article
LanguageEnglish
Published United States IEEE 01.07.2025
Subjects
Online AccessGet full text
ISSN2168-2194
2168-2208
2168-2208
DOI10.1109/JBHI.2025.3541453

Cover

Abstract Objective: The traditional sleep staging involves manual scoring of electroencephalogram (EEG), electrooculogram (EOG), and electromyogram signals during polysomnography (PSG), which is laborious and susceptible to human errors. Previous studies have explored several automated sleep staging methods utilizing fewer EEG signals, for which deep-learning methods have shown promising results. Despite the availability of various signals and signal combinations in PSGs, the performance of different signal combinations for accurate sleep staging is not fully explored. We hypothesize that various EEG signal combinations will yield comparable performances, thus accurate automatic sleep staging could be achieved with a simplified measurement setup. We aim to identify the optimal EEG and EOG signal combinations for deep learning-based automatic sleep staging. Methods: Four EEG signals (F4-M1, C4-M1, O2-M1, and C3-M2) and one EOG signal (E1-M2) from 876 suspected obstructive sleep apnea subjects were studied. A total of 31 deep-learning models were trained utilizing different EEG and EOG signal combinations as input. The classification performance of automatic sleep staging against manual sleep staging was evaluated across five sleep stages. Results: The differences in classification performance among various EEG signal combinations were negligible, with accuracies ranging from 81% to 85% (Cohen's kappa, κ = 0.73-0.78). Incorporating the EOG signal into single EEG configurations improved accuracies by 1-2 percentage points, while the improvements were smaller when combining EOG with multiple EEG signals. Conclusions: The comparable classification performances among various signal combinations suggest that automatic sleep staging can be achieved with a simplified EEG and EOG measurement setup without compromising performance.
AbstractList Objective: The traditional sleep staging involves manual scoring of electroencephalogram (EEG), electrooculogram (EOG), and electromyogram signals during polysomnography (PSG), which is laborious and susceptible to human errors. Previous studies have explored several automated sleep staging methods utilizing fewer EEG signals, for which deep-learning methods have shown promising results. Despite the availability of various signals and signal combinations in PSGs, the performance of different signal combinations for accurate sleep staging is not fully explored. We hypothesize that various EEG signal combinations will yield comparable performances, thus accurate automatic sleep staging could be achieved with a simplified measurement setup. We aim to identify the optimal EEG and EOG signal combinations for deep learning-based automatic sleep staging. Methods: Four EEG signals (F4-M1, C4-M1, O2-M1, and C3-M2) and one EOG signal (E1-M2) from 876 suspected obstructive sleep apnea subjects were studied. A total of 31 deep-learning models were trained utilizing different EEG and EOG signal combinations as input. The classification performance of automatic sleep staging against manual sleep staging was evaluated across five sleep stages. Results: The differences in classification performance among various EEG signal combinations were negligible, with accuracies ranging from 81% to 85% (Cohen's kappa, κ = 0.73-0.78). Incorporating the EOG signal into single EEG configurations improved accuracies by 1-2 percentage points, while the improvements were smaller when combining EOG with multiple EEG signals. Conclusions: The comparable classification performances among various signal combinations suggest that automatic sleep staging can be achieved with a simplified EEG and EOG measurement setup without compromising performance.
The traditional sleep staging involves manual scoring of electroencephalogram (EEG), electrooculogram (EOG), and electromyogram signals during polysomnography (PSG), which is laborious and susceptible to human errors. Previous studies have explored several automated sleep staging methods utilizing fewer EEG signals, for which deep-learning methods have shown promising results. Despite the availability of various signals and signal combinations in PSGs, the performance of different signal combinations for accurate sleep staging is not fully explored. We hypothesize that various EEG signal combinations will yield comparable performances, thus accurate automatic sleep staging could be achieved with a simplified measurement setup. We aim to identify the optimal EEG and EOG signal combinations for deep learning-based automatic sleep staging. Four EEG signals (F4-M1, C4-M1, O2-M1, and C3-M2) and one EOG signal (E1-M2) from 876 suspected obstructive sleep apnea subjects were studied. A total of 31 deep-learning models were trained utilizing different EEG and EOG signal combinations as input. The classification performance of automatic sleep staging against manual sleep staging was evaluated across five sleep stages. The differences in classification performance among various EEG signal combinations were negligible, with accuracies ranging from 81% to 85% (Cohen's kappa, κ = 0.73-0.78). Incorporating the EOG signal into single EEG configurations improved accuracies by 1-2 percentage points, while the improvements were smaller when combining EOG with multiple EEG signals. The comparable classification performances among various signal combinations suggest that automatic sleep staging can be achieved with a simplified EEG and EOG measurement setup without compromising performance.
The traditional sleep staging involves manual scoring of electroencephalogram (EEG), electrooculogram (EOG), and electromyogram signals during polysomnography (PSG), which is laborious and susceptible to human errors. Previous studies have explored several automated sleep staging methods utilizing fewer EEG signals, for which deep-learning methods have shown promising results. Despite the availability of various signals and signal combinations in PSGs, the performance of different signal combinations for accurate sleep staging is not fully explored. We hypothesize that various EEG signal combinations will yield comparable performances, thus accurate automatic sleep staging could be achieved with a simplified measurement setup. We aim to identify the optimal EEG and EOG signal combinations for deep learning-based automatic sleep staging.OBJECTIVEThe traditional sleep staging involves manual scoring of electroencephalogram (EEG), electrooculogram (EOG), and electromyogram signals during polysomnography (PSG), which is laborious and susceptible to human errors. Previous studies have explored several automated sleep staging methods utilizing fewer EEG signals, for which deep-learning methods have shown promising results. Despite the availability of various signals and signal combinations in PSGs, the performance of different signal combinations for accurate sleep staging is not fully explored. We hypothesize that various EEG signal combinations will yield comparable performances, thus accurate automatic sleep staging could be achieved with a simplified measurement setup. We aim to identify the optimal EEG and EOG signal combinations for deep learning-based automatic sleep staging.Four EEG signals (F4-M1, C4-M1, O2-M1, and C3-M2) and one EOG signal (E1-M2) from 876 suspected obstructive sleep apnea subjects were studied. A total of 31 deep-learning models were trained utilizing different EEG and EOG signal combinations as input. The classification performance of automatic sleep staging against manual sleep staging was evaluated across five sleep stages.METHODSFour EEG signals (F4-M1, C4-M1, O2-M1, and C3-M2) and one EOG signal (E1-M2) from 876 suspected obstructive sleep apnea subjects were studied. A total of 31 deep-learning models were trained utilizing different EEG and EOG signal combinations as input. The classification performance of automatic sleep staging against manual sleep staging was evaluated across five sleep stages.The differences in classification performance among various EEG signal combinations were negligible, with accuracies ranging from 81% to 85% (Cohen's kappa, κ = 0.73-0.78). Incorporating the EOG signal into single EEG configurations improved accuracies by 1-2 percentage points, while the improvements were smaller when combining EOG with multiple EEG signals.RESULTSThe differences in classification performance among various EEG signal combinations were negligible, with accuracies ranging from 81% to 85% (Cohen's kappa, κ = 0.73-0.78). Incorporating the EOG signal into single EEG configurations improved accuracies by 1-2 percentage points, while the improvements were smaller when combining EOG with multiple EEG signals.The comparable classification performances among various signal combinations suggest that automatic sleep staging can be achieved with a simplified EEG and EOG measurement setup without compromising performance.CONCLUSIONSThe comparable classification performances among various signal combinations suggest that automatic sleep staging can be achieved with a simplified EEG and EOG measurement setup without compromising performance.
Author Rusanen, Matias
Tashakori, Masoumeh
Huttunen, Riku
Nikkonen, Sami
Karhu, Tuomas
Leppanen, Timo
Author_xml – sequence: 1
  givenname: Masoumeh
  orcidid: 0000-0001-5117-3065
  surname: Tashakori
  fullname: Tashakori, Masoumeh
  email: masoumeh.tashakori@uef.fi
  organization: Department of Technical Physics, University of Eastern Finland, Kuopio, Finland
– sequence: 2
  givenname: Matias
  orcidid: 0000-0001-9633-6016
  surname: Rusanen
  fullname: Rusanen, Matias
  email: matias.rusanen@uef.fi
  organization: HP2 Laboratory, INSERM U1300, Grenoble Alpes University, Grenoble Alpes University Hospital, Grenoble, France
– sequence: 3
  givenname: Tuomas
  orcidid: 0000-0001-9464-447X
  surname: Karhu
  fullname: Karhu, Tuomas
  email: tuomas.karhu@uef.fi
  organization: Department of Technical Physics, University of Eastern Finland, Kuopio, Finland
– sequence: 4
  givenname: Riku
  orcidid: 0000-0001-8290-4764
  surname: Huttunen
  fullname: Huttunen, Riku
  email: riku.huttunen@uef.fi
  organization: Department of Technical Physics, University of Eastern Finland, Kuopio, Finland
– sequence: 5
  givenname: Timo
  orcidid: 0000-0003-4017-821X
  surname: Leppanen
  fullname: Leppanen, Timo
  email: timo.leppanen@uef.fi
  organization: Department of Technical Physics, University of Eastern Finland, Kuopio, Finland
– sequence: 6
  givenname: Sami
  orcidid: 0000-0003-0615-4118
  surname: Nikkonen
  fullname: Nikkonen, Sami
  email: sami.nikkonen@uef.fi
  organization: Department of Technical Physics, University of Eastern Finland, Kuopio, Finland
BackLink https://www.ncbi.nlm.nih.gov/pubmed/40031834$$D View this record in MEDLINE/PubMed
BookMark eNplUctOwzAQtBCIZz8ACaEcuaT4lcQ5QnmrEofCOXLcdZvKsYOdCPH3uGqLEPhia3ZmZ3d8gvats4DQOcFjQnB5_XL79DymmGZjlnHCM7aHjinJRUopFvu7Nyn5ERqFsMLxiAiV-SE64hgzIhg_RqvXrm9aaZJ7A6r3DqyCbimNW3jZJtLOdwWnhi04axY2CiaurRsr-8bZRDuf3AF0yRSkt41dpLcywDyZmTU46-UiYmfoQEsTYLS9T9H7w_3b5Cmdvj4-T26mqWKk6FMiQVGlCGQFLUrN65ppnStgNKMAOs8LWs-5gFhhlDFNakFJkcu6FJQpTdkpopu-g-3k16c0pup83NF_VQRX6-yqVb1sqnV21Ta7KLraiDrvPgYIfdU2QYEx0oIbQhVHYxzzIuORermlDnUL85_mu1AjgWwIyrsQPOh__uu_--t_sdE0APCLLwQro-c3KViT0A
CODEN IJBHA9
Cites_doi 10.1016/j.sleep.2024.03.024
10.5664/jcsm.9538
10.1109/jbhi.2019.2951346
10.3390/app10248963
10.1111/jsr.12536
10.3390/s131114839
10.1093/sleep/zsy061.314
10.1093/sleep/zsaa112
10.1016/j.procs.2023.01.067
10.1016/j.bspc.2007.05.005
10.23919/ascc56756.2022.9828168
10.3389/fpubh.2022.946833
10.1016/j.eswa.2013.06.023
10.1109/access.2022.3178189
10.1109/tbme.2022.3225268
10.3389/fphys.2021.628502
10.3390/ijerph16040599
10.5505/pajes.2022.88122
10.1038/nature14539
10.1109/icawst.2019.8923359
10.1371/journal.pone.0297582
10.1109/tbme.2021.3116274
10.1093/sleep/zsz306
10.3390/brainsci9120355
10.1111/jsr.13956
10.1007/s11325-019-01801-x
10.3390/bioengineering10050573
ContentType Journal Article
DBID 97E
ESBDL
RIA
RIE
AAYXX
CITATION
CGR
CUY
CVF
ECM
EIF
NPM
7X8
ADTOC
UNPAY
DOI 10.1109/JBHI.2025.3541453
DatabaseName IEEE All-Society Periodicals Package (ASPP) 2005–Present
IEEE Xplore Open Access Journals
IEEE All-Society Periodicals Package (ASPP) 1998–Present
IEEE Electronic Library (IEL)
CrossRef
Medline
MEDLINE
MEDLINE (Ovid)
MEDLINE
MEDLINE
PubMed
MEDLINE - Academic
Unpaywall for CDI: Periodical Content
Unpaywall
DatabaseTitle CrossRef
MEDLINE
Medline Complete
MEDLINE with Full Text
PubMed
MEDLINE (Ovid)
MEDLINE - Academic
DatabaseTitleList
MEDLINE
MEDLINE - Academic
Database_xml – sequence: 1
  dbid: NPM
  name: PubMed
  url: https://proxy.k.utb.cz/login?url=http://www.ncbi.nlm.nih.gov/entrez/query.fcgi?db=PubMed
  sourceTypes: Index Database
– sequence: 2
  dbid: EIF
  name: MEDLINE
  url: https://proxy.k.utb.cz/login?url=https://www.webofscience.com/wos/medline/basic-search
  sourceTypes: Index Database
– sequence: 3
  dbid: RIE
  name: IEEE Electronic Library (IEL)
  url: https://proxy.k.utb.cz/login?url=https://ieeexplore.ieee.org/
  sourceTypes: Publisher
DeliveryMethod fulltext_linktorsrc
Discipline Medicine
EISSN 2168-2208
EndPage 4747
ExternalDocumentID 10.1109/jbhi.2025.3541453
40031834
10_1109_JBHI_2025_3541453
10883954
Genre orig-research
Journal Article
GrantInformation_xml – fundername: Emil Aaltonen Foundation
– fundername: French National Research Agency
– fundername: Research Foundation of the Pulmonary Diseases
– fundername: European Union's Horizon 2020 Research
– fundername: State Research Funding for University-Level Health Research
– fundername: Artificial Intelligence chairs of excellence from the Grenoble Alpes
  grantid: ANR-15-IDEX-02; ANR-19-P3IA-0003
– fundername: Wellbeing Services County of North Savo
  grantid: 5041794; 5041797; 5041798; 5041809; 5041820; 5041789; 5041824; 5041826
GroupedDBID 0R~
4.4
6IF
6IH
6IK
97E
AAJGR
AARMG
AASAJ
AAWTH
ABAZT
ABQJQ
ABVLG
ACIWK
ACPRK
AENEX
AFRAH
AGQYO
AGSQL
AHBIQ
AKJIK
AKQYR
ALMA_UNASSIGNED_HOLDINGS
BEFXN
BFFAM
BGNUA
BKEBE
BPEOZ
EBS
EJD
ESBDL
HZ~
IFIPE
IPLJI
JAVBF
M43
O9-
OCL
PQQKQ
RIA
RIE
RNS
AAYXX
CITATION
CGR
CUY
CVF
ECM
EIF
NPM
RIG
7X8
ADTOC
UNPAY
ID FETCH-LOGICAL-c317t-1aec2cc1e57279f4bb3ff6ce3252eef6672bd48ef4b3233f1b82176ab9823cf23
IEDL.DBID RIE
ISSN 2168-2194
2168-2208
IngestDate Sun Sep 07 11:28:37 EDT 2025
Sun Sep 28 11:06:36 EDT 2025
Sat Jul 05 01:32:01 EDT 2025
Wed Oct 01 05:46:27 EDT 2025
Wed Aug 27 02:13:04 EDT 2025
IsDoiOpenAccess true
IsOpenAccess true
IsPeerReviewed true
IsScholarly true
Issue 7
Language English
License https://creativecommons.org/licenses/by/4.0/legalcode
cc-by
LinkModel DirectLink
MergedId FETCHMERGED-LOGICAL-c317t-1aec2cc1e57279f4bb3ff6ce3252eef6672bd48ef4b3233f1b82176ab9823cf23
Notes ObjectType-Article-1
SourceType-Scholarly Journals-1
ObjectType-Feature-2
content type line 23
ORCID 0000-0001-5117-3065
0000-0001-9464-447X
0000-0003-4017-821X
0000-0003-0615-4118
0000-0001-8290-4764
0000-0001-9633-6016
OpenAccessLink https://proxy.k.utb.cz/login?url=https://ieeexplore.ieee.org/document/10883954
PMID 40031834
PQID 3173404754
PQPubID 23479
PageCount 7
ParticipantIDs crossref_primary_10_1109_JBHI_2025_3541453
pubmed_primary_40031834
unpaywall_primary_10_1109_jbhi_2025_3541453
ieee_primary_10883954
proquest_miscellaneous_3173404754
ProviderPackageCode CITATION
AAYXX
PublicationCentury 2000
PublicationDate 2025-07-01
PublicationDateYYYYMMDD 2025-07-01
PublicationDate_xml – month: 07
  year: 2025
  text: 2025-07-01
  day: 01
PublicationDecade 2020
PublicationPlace United States
PublicationPlace_xml – name: United States
PublicationTitle IEEE journal of biomedical and health informatics
PublicationTitleAbbrev JBHI
PublicationTitleAlternate IEEE J Biomed Health Inform
PublicationYear 2025
Publisher IEEE
Publisher_xml – name: IEEE
References ref13
ref12
ref15
ref14
ref31
Perslev (ref19) 2019
ref30
ref11
ref10
ref32
ref2
ref17
Huttunen (ref18) 2024
Troester (ref1) 2023
ref24
ref23
ref26
ref25
ref22
ref21
Berry (ref16) 2012; 176
Smith (ref20) 2018
ref28
ref27
ref29
ref8
ref7
ref9
ref4
ref3
ref6
ref5
Por (ref33) 2019; 1
References_xml – ident: ref15
  doi: 10.1016/j.sleep.2024.03.024
– ident: ref29
  doi: 10.5664/jcsm.9538
– ident: ref11
  doi: 10.1109/jbhi.2019.2951346
– ident: ref5
  doi: 10.3390/app10248963
– ident: ref10
  doi: 10.1111/jsr.12536
– ident: ref24
  doi: 10.3390/s131114839
– volume-title: PSG simultaneous scoring models
  year: 2024
  ident: ref18
– volume-title: American Academy of Sleep Medicine
  year: 2023
  ident: ref1
  article-title: The AASM manual for the scoring of sleep and associated events: Rules, terminology and technical specifications
– ident: ref3
  doi: 10.1093/sleep/zsy061.314
– ident: ref12
  doi: 10.1093/sleep/zsaa112
– ident: ref31
  doi: 10.1016/j.procs.2023.01.067
– year: 2018
  ident: ref20
  article-title: A disciplined approach to neural network hyper-parameters: Part 1learning rate, batch size, momentum, and weight decay
– ident: ref26
  doi: 10.1016/j.bspc.2007.05.005
– volume-title: Proc. Adv. Neural Inf. Process. Syst.
  year: 2019
  ident: ref19
  article-title: U-time: A fully convolutional network for time series segmentation applied to sleep staging
– ident: ref21
  doi: 10.23919/ascc56756.2022.9828168
– ident: ref32
  doi: 10.3389/fpubh.2022.946833
– volume: 1
  start-page: 1
  issue: 1
  year: 2019
  ident: ref33
  article-title: NyquistShannon sampling theorem
  publication-title: Leiden Univ.
– ident: ref25
  doi: 10.1016/j.eswa.2013.06.023
– ident: ref9
  doi: 10.1109/access.2022.3178189
– ident: ref17
  doi: 10.1109/tbme.2022.3225268
– ident: ref13
  doi: 10.3389/fphys.2021.628502
– ident: ref7
  doi: 10.3390/ijerph16040599
– ident: ref27
  doi: 10.5505/pajes.2022.88122
– ident: ref4
  doi: 10.1038/nature14539
– ident: ref8
  doi: 10.1109/icawst.2019.8923359
– ident: ref22
  doi: 10.1371/journal.pone.0297582
– ident: ref14
  doi: 10.1109/tbme.2021.3116274
– ident: ref6
  doi: 10.1093/sleep/zsz306
– ident: ref23
  doi: 10.3390/brainsci9120355
– volume: 176
  volume-title: Rules, Terminology and Technical Specifications
  year: 2012
  ident: ref16
  article-title: The AASM manual for the scoring of sleep and associated events
– ident: ref2
  doi: 10.1111/jsr.13956
– ident: ref30
  doi: 10.1007/s11325-019-01801-x
– ident: ref28
  doi: 10.3390/bioengineering10050573
SSID ssj0000816896
Score 2.4426842
Snippet Objective: The traditional sleep staging involves manual scoring of electroencephalogram (EEG), electrooculogram (EOG), and electromyogram signals during...
The traditional sleep staging involves manual scoring of electroencephalogram (EEG), electrooculogram (EOG), and electromyogram signals during polysomnography...
SourceID unpaywall
proquest
pubmed
crossref
ieee
SourceType Open Access Repository
Aggregation Database
Index Database
Publisher
StartPage 4741
SubjectTerms Accuracy
Adult
Aged
Analytical models
Brain modeling
Convolution
Deep Learning
deep-learning models
Electroencephalogram
Electroencephalography
Electroencephalography - methods
electrooculogram
Electrooculography
Electrooculography - methods
Female
Hospitals
Humans
Male
Manuals
Middle Aged
optimal signal combination
Polysomnography - methods
Signal Processing, Computer-Assisted
Sleep
Sleep Apnea, Obstructive - physiopathology
Sleep Stages - physiology
sleep staging
Training
Young Adult
Title Optimal Electroencephalogram and Electrooculogram Signal Combination for Deep Learning-Based Sleep Staging
URI https://ieeexplore.ieee.org/document/10883954
https://www.ncbi.nlm.nih.gov/pubmed/40031834
https://www.proquest.com/docview/3173404754
https://doi.org/10.1109/jbhi.2025.3541453
UnpaywallVersion publishedVersion
Volume 29
hasFullText 1
inHoldings 1
isFullTextHit
isPrint
journalDatabaseRights – providerCode: PRVIEE
  databaseName: IEEE Electronic Library (IEL)
  customDbUrl:
  eissn: 2168-2208
  dateEnd: 99991231
  omitProxy: false
  ssIdentifier: ssj0000816896
  issn: 2168-2208
  databaseCode: RIE
  dateStart: 20130101
  isFulltext: true
  titleUrlDefault: https://ieeexplore.ieee.org/
  providerName: IEEE
link http://utb.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMwjV1Lb9QwELZoDzwO5VVgKaAgcQJ52fgZH1totVRqOZRKvUW2M-6DbXYFG1Xw6xnbyarlIXGznIlle8aeGY89HyFvBEerXHpNoQRNhVGGmqAa6k2wjdbeygQ2cXCopsdi_0Se9I_V01sYAEiXz2AciymW38x9F4_KcIVXqM-lWCNrWpv8WGt1oJIQJBIeF8MCxZUo-ihmOTHv93emn9AbZHLMI_C1jPg5Iku0uKGSEsbK38zNe-RO1y7sjys7m11TQXv3yeHQ-Xzz5Ou4W7qx__lbXsf_Ht0DstEbo8V2lp6H5Ba0j8jtgz7c_phcfMYN5RIpdjNYTtwFFmc2pbm-LGzbDB-w8b7y6Pw0NonbDLrciesFmsXFR4BF0edyPaU7qDqb4mgWK9HajThJm-R4b_fLhyntwRmoR5NjSUsLnnlfgkQLyAThHA9BeeBMMoCglGauERXgF844D6Wr0PtR1pmKcR8Yf0LW23kLz0ihpW4gWIiItOiARRRSME5ZZT3ntoIReTvwp17kHBx18l0mpo58rSNf656vI7IZp_YaYZ7VEXk9sLTGFRTDIraFefe9xuFwMRE60jzNvF79PYjIiLxbMf-PPly4s_MbfXj-jz5skbuRLN_2fUHWl986eIk2zdK9SrL8C9ji77w
linkProvider IEEE
linkToHtml http://utb.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMwjV1Zb9QwEB5BkSg8cBZYziDxBPJ2Ex-JHym02pbu8tBW6ltkO5MebLMr2AjBr2dsJ6uWQ-LN8qWxZ-yZ8TEfwBvBySqXLmeYYs6EVprpWlXM6dpUee6MDGATk6kaH4m9Y3ncfVYPf2EQMTw-w6FPhrv8au5af1RGK7wgfS7Fdbghya3I43et1ZFKwJAIiFwZJRitRdHdY6Yjvbm3Nd4lfzCTQ-6hr6VH0BFRpsUVpRRQVv5mcN6G9bZZmB_fzWx2SQnt3IVpT358e_Jl2C7t0P38LbLjf4_vHtzpzNHkfZSf-3ANmwdwc9JduD-E88-0pVxQje0Il-P3gcWpCYGuLxLTVH0Bdd5lHpyd-C5poyGnO_A9IcM4-Yi4SLporidsi5RnlRzMfCbZux4paQOOdrYPP4xZB8_AHBkdS5YadJlzKUqygXQtrOV1rRzyTGaItVJ5ZitRIJXwjPM6tQX5P8pYXWTc1Rl_BGvNvMEnkOQyr7A26DFpyQXzOKSorTLKOM5NgQN42_OnXMQoHGXwXka69HwtPV_Ljq8D2PBTe6linNUBvO5ZWtIa8hcjpsF5-62k4XAxErmv8zjyetW6F5EBvFsx_w8azu3p2RUanv6DhlewPj6c7Jf7u9NPz-CWbxLf_j6HteXXFl-QhbO0L4Nc_wKYn_MN
openUrl ctx_ver=Z39.88-2004&ctx_enc=info%3Aofi%2Fenc%3AUTF-8&rfr_id=info%3Asid%2Fsummon.serialssolutions.com&rft_val_fmt=info%3Aofi%2Ffmt%3Akev%3Amtx%3Ajournal&rft.genre=article&rft.atitle=Optimal+Electroencephalogram+and+Electrooculogram+Signal+Combination+for+Deep+Learning-Based+Sleep+Staging&rft.jtitle=IEEE+journal+of+biomedical+and+health+informatics&rft.au=Tashakori%2C+Masoumeh&rft.au=Rusanen%2C+Matias&rft.au=Karhu%2C+Tuomas&rft.au=Huttunen%2C+Riku&rft.date=2025-07-01&rft.pub=IEEE&rft.issn=2168-2194&rft.volume=29&rft.issue=7&rft.spage=4741&rft.epage=4747&rft_id=info:doi/10.1109%2FJBHI.2025.3541453&rft_id=info%3Apmid%2F40031834&rft.externalDocID=10883954
thumbnail_l http://covers-cdn.summon.serialssolutions.com/index.aspx?isbn=/lc.gif&issn=2168-2194&client=summon
thumbnail_m http://covers-cdn.summon.serialssolutions.com/index.aspx?isbn=/mc.gif&issn=2168-2194&client=summon
thumbnail_s http://covers-cdn.summon.serialssolutions.com/index.aspx?isbn=/sc.gif&issn=2168-2194&client=summon