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Data-Driven Phenotyping of Central Disorders of Hypersomnolence With Unsupervised Clustering

BACKGROUND AND OBJECTIVES: Recent studies fueled doubts as to whether all currently defined central disorders of hypersomnolence are stable entities, especially narcolepsy type 2 and idiopathic hypersomnia. New reliable biomarkers are needed, and the question arises of whether current diagnostic cri...

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Autores principales: Gool, Jari K., Zhang, Zhongxing, Oei, Martijn S.S.L., Mathias, Stephanie, Dauvilliers, Yves, Mayer, Geert, Plazzi, Giuseppe, del Rio-Villegas, Rafael, Cano, Joan Santamaria, Šonka, Karel, Partinen, Markku, Overeem, Sebastiaan, Peraita-Adrados, Rosa, Heinzer, Raphael, Martins da Silva, Antonio, Högl, Birgit, Wierzbicka, Aleksandra, Heidbreder, Anna, Feketeova, Eva, Manconi, Mauro, Bušková, Jitka, Canellas, Francesca, Bassetti, Claudio L., Barateau, Lucie, Pizza, Fabio, Schmidt, Markus H., Fronczek, Rolf, Khatami, Ramin, Lammers, Gert Jan
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Lippincott Williams & Wilkins 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9202524/
https://www.ncbi.nlm.nih.gov/pubmed/35437263
http://dx.doi.org/10.1212/WNL.0000000000200519
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author Gool, Jari K.
Zhang, Zhongxing
Oei, Martijn S.S.L.
Mathias, Stephanie
Dauvilliers, Yves
Mayer, Geert
Plazzi, Giuseppe
del Rio-Villegas, Rafael
Cano, Joan Santamaria
Šonka, Karel
Partinen, Markku
Overeem, Sebastiaan
Peraita-Adrados, Rosa
Heinzer, Raphael
Martins da Silva, Antonio
Högl, Birgit
Wierzbicka, Aleksandra
Heidbreder, Anna
Feketeova, Eva
Manconi, Mauro
Bušková, Jitka
Canellas, Francesca
Bassetti, Claudio L.
Barateau, Lucie
Pizza, Fabio
Schmidt, Markus H.
Fronczek, Rolf
Khatami, Ramin
Lammers, Gert Jan
author_facet Gool, Jari K.
Zhang, Zhongxing
Oei, Martijn S.S.L.
Mathias, Stephanie
Dauvilliers, Yves
Mayer, Geert
Plazzi, Giuseppe
del Rio-Villegas, Rafael
Cano, Joan Santamaria
Šonka, Karel
Partinen, Markku
Overeem, Sebastiaan
Peraita-Adrados, Rosa
Heinzer, Raphael
Martins da Silva, Antonio
Högl, Birgit
Wierzbicka, Aleksandra
Heidbreder, Anna
Feketeova, Eva
Manconi, Mauro
Bušková, Jitka
Canellas, Francesca
Bassetti, Claudio L.
Barateau, Lucie
Pizza, Fabio
Schmidt, Markus H.
Fronczek, Rolf
Khatami, Ramin
Lammers, Gert Jan
author_sort Gool, Jari K.
collection PubMed
description BACKGROUND AND OBJECTIVES: Recent studies fueled doubts as to whether all currently defined central disorders of hypersomnolence are stable entities, especially narcolepsy type 2 and idiopathic hypersomnia. New reliable biomarkers are needed, and the question arises of whether current diagnostic criteria of hypersomnolence disorders should be reassessed. The main aim of this data-driven observational study was to see whether data-driven algorithms would segregate narcolepsy type 1 and identify more reliable subgrouping of individuals without cataplexy with new clinical biomarkers. METHODS: We used agglomerative hierarchical clustering, an unsupervised machine learning algorithm, to identify distinct hypersomnolence clusters in the large-scale European Narcolepsy Network database. We included 97 variables, covering all aspects of central hypersomnolence disorders such as symptoms, demographics, objective and subjective sleep measures, and laboratory biomarkers. We specifically focused on subgrouping of patients without cataplexy. The number of clusters was chosen to be the minimal number for which patients without cataplexy were put in distinct groups. RESULTS: We included 1,078 unmedicated adolescents and adults. Seven clusters were identified, of which 4 clusters included predominantly individuals with cataplexy. The 2 most distinct clusters consisted of 158 and 157 patients, were dominated by those without cataplexy, and among other variables, significantly differed in presence of sleep drunkenness, subjective difficulty awakening, and weekend-week sleep length difference. Patients formally diagnosed as having narcolepsy type 2 and idiopathic hypersomnia were evenly mixed in these 2 clusters. DISCUSSION: Using a data-driven approach in the largest study on central disorders of hypersomnolence to date, our study identified distinct patient subgroups within the central disorders of hypersomnolence population. Our results contest inclusion of sleep-onset REM periods in diagnostic criteria for people without cataplexy and provide promising new variables for reliable diagnostic categories that better resemble different patient phenotypes. Cluster-guided classification will result in a more solid hypersomnolence classification system that is less vulnerable to instability of single features.
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spelling pubmed-92025242022-06-17 Data-Driven Phenotyping of Central Disorders of Hypersomnolence With Unsupervised Clustering Gool, Jari K. Zhang, Zhongxing Oei, Martijn S.S.L. Mathias, Stephanie Dauvilliers, Yves Mayer, Geert Plazzi, Giuseppe del Rio-Villegas, Rafael Cano, Joan Santamaria Šonka, Karel Partinen, Markku Overeem, Sebastiaan Peraita-Adrados, Rosa Heinzer, Raphael Martins da Silva, Antonio Högl, Birgit Wierzbicka, Aleksandra Heidbreder, Anna Feketeova, Eva Manconi, Mauro Bušková, Jitka Canellas, Francesca Bassetti, Claudio L. Barateau, Lucie Pizza, Fabio Schmidt, Markus H. Fronczek, Rolf Khatami, Ramin Lammers, Gert Jan Neurology Research Article BACKGROUND AND OBJECTIVES: Recent studies fueled doubts as to whether all currently defined central disorders of hypersomnolence are stable entities, especially narcolepsy type 2 and idiopathic hypersomnia. New reliable biomarkers are needed, and the question arises of whether current diagnostic criteria of hypersomnolence disorders should be reassessed. The main aim of this data-driven observational study was to see whether data-driven algorithms would segregate narcolepsy type 1 and identify more reliable subgrouping of individuals without cataplexy with new clinical biomarkers. METHODS: We used agglomerative hierarchical clustering, an unsupervised machine learning algorithm, to identify distinct hypersomnolence clusters in the large-scale European Narcolepsy Network database. We included 97 variables, covering all aspects of central hypersomnolence disorders such as symptoms, demographics, objective and subjective sleep measures, and laboratory biomarkers. We specifically focused on subgrouping of patients without cataplexy. The number of clusters was chosen to be the minimal number for which patients without cataplexy were put in distinct groups. RESULTS: We included 1,078 unmedicated adolescents and adults. Seven clusters were identified, of which 4 clusters included predominantly individuals with cataplexy. The 2 most distinct clusters consisted of 158 and 157 patients, were dominated by those without cataplexy, and among other variables, significantly differed in presence of sleep drunkenness, subjective difficulty awakening, and weekend-week sleep length difference. Patients formally diagnosed as having narcolepsy type 2 and idiopathic hypersomnia were evenly mixed in these 2 clusters. DISCUSSION: Using a data-driven approach in the largest study on central disorders of hypersomnolence to date, our study identified distinct patient subgroups within the central disorders of hypersomnolence population. Our results contest inclusion of sleep-onset REM periods in diagnostic criteria for people without cataplexy and provide promising new variables for reliable diagnostic categories that better resemble different patient phenotypes. Cluster-guided classification will result in a more solid hypersomnolence classification system that is less vulnerable to instability of single features. Lippincott Williams & Wilkins 2022-06-07 /pmc/articles/PMC9202524/ /pubmed/35437263 http://dx.doi.org/10.1212/WNL.0000000000200519 Text en Copyright © 2022 The Author(s). Published by Wolters Kluwer Health, Inc. on behalf of the American Academy of Neurology. https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License 4.0 (CC BY) (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research Article
Gool, Jari K.
Zhang, Zhongxing
Oei, Martijn S.S.L.
Mathias, Stephanie
Dauvilliers, Yves
Mayer, Geert
Plazzi, Giuseppe
del Rio-Villegas, Rafael
Cano, Joan Santamaria
Šonka, Karel
Partinen, Markku
Overeem, Sebastiaan
Peraita-Adrados, Rosa
Heinzer, Raphael
Martins da Silva, Antonio
Högl, Birgit
Wierzbicka, Aleksandra
Heidbreder, Anna
Feketeova, Eva
Manconi, Mauro
Bušková, Jitka
Canellas, Francesca
Bassetti, Claudio L.
Barateau, Lucie
Pizza, Fabio
Schmidt, Markus H.
Fronczek, Rolf
Khatami, Ramin
Lammers, Gert Jan
Data-Driven Phenotyping of Central Disorders of Hypersomnolence With Unsupervised Clustering
title Data-Driven Phenotyping of Central Disorders of Hypersomnolence With Unsupervised Clustering
title_full Data-Driven Phenotyping of Central Disorders of Hypersomnolence With Unsupervised Clustering
title_fullStr Data-Driven Phenotyping of Central Disorders of Hypersomnolence With Unsupervised Clustering
title_full_unstemmed Data-Driven Phenotyping of Central Disorders of Hypersomnolence With Unsupervised Clustering
title_short Data-Driven Phenotyping of Central Disorders of Hypersomnolence With Unsupervised Clustering
title_sort data-driven phenotyping of central disorders of hypersomnolence with unsupervised clustering
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9202524/
https://www.ncbi.nlm.nih.gov/pubmed/35437263
http://dx.doi.org/10.1212/WNL.0000000000200519
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