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Exploring the clinical features of narcolepsy type 1 versus narcolepsy type 2 from European Narcolepsy Network database with machine learning

dc.contributor.authorZhang, Zhongxing
dc.contributor.authorMayer, Geert
dc.contributor.authorDauvilliers, Yves
dc.contributor.authorPlazzi, Giuseppe
dc.contributor.authorPizza, Fabio
dc.contributor.authorFronczek, Rolf
dc.contributor.authorSantamaria Semis, Joan
dc.contributor.authorPartinen, Markku
dc.contributor.authorOvereem, Sebastiaan
dc.contributor.authorPeraita-Adrados, Rosa
dc.contributor.authorda Silva, Antonio Martins
dc.contributor.authorSonka, Karel
dc.contributor.authordel Rio-Villegas, Rafael
dc.contributor.authorHeinzer, Raphael
dc.contributor.authorWierzbicka, Aleksandra
dc.contributor.authorYoung, Peter
dc.contributor.authorHoegl, Birgit
dc.contributor.authorBassetti, Claudio L
dc.contributor.authorManconi, Mauro
dc.contributor.authorFeketeova, Eva
dc.contributor.authorMathis, Johannes
dc.contributor.authorPaiva, Teresa
dc.contributor.authorCañellas, Francesca
dc.contributor.authorLecendreux, Michel
dc.contributor.authorBaumann, Christian R
dc.contributor.authorBarateau, Lucie
dc.contributor.authorPesenti, Carole
dc.contributor.authorAntelmi, Elena
dc.contributor.authorGaig, Carles
dc.contributor.authorIranzo, Alex
dc.contributor.authorLillo-Triguero, Laura
dc.contributor.authorMedrano-Martinez, Pablo
dc.contributor.authorHaba-Rubio, Jose
dc.contributor.authorGorban, Corina
dc.contributor.authorLuca, Gianina
dc.contributor.authorLammers, Gert Jan
dc.contributor.authorKhatami, Ramin
dc.date.accessioned2024-09-06T09:56:02Z
dc.date.available2024-09-06T09:56:02Z
dc.date.issued2018-07-13
dc.description.abstractNarcolepsy is a rare life-long disease that exists in two forms, narcolepsy type-1 (NT1) or type-2 (NT2), but only NT1 is accepted as clearly defined entity. Both types of narcolepsies belong to the group of central hypersomnias (CH), a spectrum of poorly defined diseases with excessive daytime sleepiness as a core feature. Due to the considerable overlap of symptoms and the rarity of the diseases, it is difficult to identify distinct phenotypes of CH. Machine learning (ML) can help to identify phenotypes as it learns to recognize clinical features invisible for humans. Here we apply ML to data from the huge European Narcolepsy Network (EU-NN) that contains hundreds of mixed features of narcolepsy making it difficult to analyze with classical statistics. Stochastic gradient boosting, a supervised learning model with built-in feature selection, results in high performances in testing set. While cataplexy features are recognized as the most influential predictors, machine find additional features, e.g. mean rapideye-movement sleep latency of multiple sleep latency test contributes to classify NT1 and NT2 as confirmed by classical statistical analysis. Our results suggest ML can identify features of CH on machine scale from complex databases, thus providing 'ideas' and promising candidates for future diagnostic classifications.en
dc.description.sponsorshipThe EU-NN database is financed by the EU-NN. The EU-NN has received financial support from UCB Pharma Brussels for developing the EU-NN database.es_ES
dc.format.page10628es_ES
dc.format.volume8es_ES
dc.identifier.citationZhang Z, Mayer G, Dauvilliers Y, Plazzi G, Pizza F, Fronczek R, et al. Exploring the clinical features of narcolepsy type 1 versus narcolepsy type 2 from European Narcolepsy Network database with machine learning. Sci Rep. 2018 Jul 13;8:10628.en
dc.identifier.doi10.1038/s41598-018-28840-w
dc.identifier.issn2045-2322
dc.identifier.journalScientific Reportses_ES
dc.identifier.otherhttp://hdl.handle.net/20.500.13003/9214
dc.identifier.pubmedID30006563es_ES
dc.identifier.puiL629416793
dc.identifier.scopus2-s2.0-85049967571
dc.identifier.urihttps://hdl.handle.net/20.500.12105/22595
dc.identifier.wos438489600004
dc.language.isoengen
dc.publisherNature Publishing Group
dc.relation.publisherversionhttps://dx.doi.org/10.1038/s41598-018-28840-wen
dc.rights.accessRightsopen accessen
dc.rights.licenseAttribution 4.0 International*
dc.rights.urihttp://creativecommons.org/licenses/by/4.0/*
dc.subject.decsNarcolepsia*
dc.subject.decsSueño REM*
dc.subject.decsProcesos Estocásticos*
dc.subject.decsAprendizaje Automótico Supervisado*
dc.subject.decsBases de Datos Factuales*
dc.subject.decsFemenino*
dc.subject.decsConjuntos de Datos como Asunto*
dc.subject.decsMasculino*
dc.subject.decsHumanos*
dc.subject.decsAdulto Joven*
dc.subject.decsModelos Biológicos*
dc.subject.decsInterpretación Estadística de Datos*
dc.subject.decsAdulto*
dc.subject.decsEnfermedades Raras*
dc.subject.decsPolisomnografía*
dc.subject.decsCurva ROC*
dc.subject.decsLatencia del Sueño*
dc.subject.meshData Interpretation, Statistical*
dc.subject.meshPolysomnography*
dc.subject.meshYoung Adult*
dc.subject.meshAdult*
dc.subject.meshDatasets as Topic*
dc.subject.meshHumans*
dc.subject.meshModels, Biological*
dc.subject.meshSleep Latency*
dc.subject.meshMale*
dc.subject.meshDatabases, Factual*
dc.subject.meshRare Diseases*
dc.subject.meshFemale*
dc.subject.meshSupervised Machine Learning*
dc.subject.meshNarcolepsy*
dc.subject.meshROC Curve*
dc.subject.meshSleep, REM*
dc.subject.meshStochastic Processes*
dc.titleExploring the clinical features of narcolepsy type 1 versus narcolepsy type 2 from European Narcolepsy Network database with machine learningen
dc.typeresearch articleen
dspace.entity.typePublication
relation.isPublisherOfPublication301fb00e-338e-4f8c-beaa-f9d8f4fefcc0
relation.isPublisherOfPublication.latestForDiscovery301fb00e-338e-4f8c-beaa-f9d8f4fefcc0

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