Downloads provided by UsageCounts
pmid: 30006563
pmc: PMC6045630
handle: 20.500.13003/9214 , 20.500.12105/22595 , 20.500.12530/36081 , 1887/77681 , 11562/1031824 , 11380/1205810 , 11585/660234
pmid: 30006563
pmc: PMC6045630
handle: 20.500.13003/9214 , 20.500.12105/22595 , 20.500.12530/36081 , 1887/77681 , 11562/1031824 , 11380/1205810 , 11585/660234
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 rapid-eye-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.
Adult, Male, Aprendizaje Automático Supervisado, Enfermedades Raras, Databases, Factual, Bases de Datos Factuales, Polysomnography, Datasets as Topic, Sleep, REM, 610 Medicine & health, Models, Biological, Article, Young Adult, Rare Diseases, Interpretación Estadística de Datos, Humans, Supervised machine learning, Masculino, narcolepsy, machine learning, Conjuntos de Datos como Asunto, Narcolepsy, Stochastic Processes, Polisomnografía, Adulto, Procesos Estocásticos, Curva ROC, Aprendizaje Automótico Supervisado, Femenino, Adulto Joven, Sleep disorders, Sleep Latency, Humanos, Modelos Biológicos, [SDV] Life Sciences [q-bio], narcolepsy; machine learning, ROC Curve, Data Interpretation, Statistical, Latencia del Sueño, Female, Supervised Machine Learning, Sueño REM, Narcolepsia
Adult, Male, Aprendizaje Automático Supervisado, Enfermedades Raras, Databases, Factual, Bases de Datos Factuales, Polysomnography, Datasets as Topic, Sleep, REM, 610 Medicine & health, Models, Biological, Article, Young Adult, Rare Diseases, Interpretación Estadística de Datos, Humans, Supervised machine learning, Masculino, narcolepsy, machine learning, Conjuntos de Datos como Asunto, Narcolepsy, Stochastic Processes, Polisomnografía, Adulto, Procesos Estocásticos, Curva ROC, Aprendizaje Automótico Supervisado, Femenino, Adulto Joven, Sleep disorders, Sleep Latency, Humanos, Modelos Biológicos, [SDV] Life Sciences [q-bio], narcolepsy; machine learning, ROC Curve, Data Interpretation, Statistical, Latencia del Sueño, Female, Supervised Machine Learning, Sueño REM, Narcolepsia
| selected citations These citations are derived from selected sources. This is an alternative to the "Influence" indicator, which also reflects the overall/total impact of an article in the research community at large, based on the underlying citation network (diachronically). | 44 | |
| popularity This indicator reflects the "current" impact/attention (the "hype") of an article in the research community at large, based on the underlying citation network. | Top 10% | |
| influence This indicator reflects the overall/total impact of an article in the research community at large, based on the underlying citation network (diachronically). | Top 10% | |
| impulse This indicator reflects the initial momentum of an article directly after its publication, based on the underlying citation network. | Top 10% |
| views | 127 | |
| downloads | 74 |

Views provided by UsageCounts
Downloads provided by UsageCounts