Literature DB >> 31920488

Application of Machine Learning Methods to Ambulatory Circadian Monitoring (ACM) for Discriminating Sleep and Circadian Disorders.

Beatriz Rodriguez-Morilla1, Eduard Estivill2, Carla Estivill-Domènech3, Javier Albares4, Francisco Segarra2, Angel Correa5, Manuel Campos1,6, Maria Angeles Rol1, Juan Antonio Madrid1.   

Abstract

The present study proposes a classification model for the differential diagnosis of primary insomnia (PI) and delayed sleep phase disorder (DSPD), applying machine learning methods to circadian parameters obtained from ambulatory circadian monitoring (ACM). Nineteen healthy controls and 242 patients (PI = 184; DSPD = 58) were selected for a retrospective and non-interventional study from an anonymized Circadian Health Database (https://kronowizard.um.es/). ACM records wrist temperature (T), motor activity (A), body position (P), and environmental light exposure (L) rhythms during a whole week. Sleep was inferred from the integrated variable TAP (from temperature, activity, and position). Non-parametric analyses of TAP and estimated sleep yielded indexes of interdaily stability (IS), intradaily variability (IV), relative amplitude (RA), and a global circadian function index (CFI). Mid-sleep and mid-wake times were estimated from the central time of TAP-L5 (five consecutive hours of lowest values) and TAP-M10 (10 consecutive hours of maximum values), respectively. The most discriminative parameters, determined by ANOVA, Chi-squared, and information gain criteria analysis, were employed to build a decision tree, using machine learning. This model differentiated between healthy controls, DSPD and three insomnia subgroups (compatible with onset, maintenance and mild insomnia), with accuracy, sensitivity, and AUC >85%. In conclusion, circadian parameters can be reliably and objectively used to discriminate and characterize different sleep and circadian disorders, such as DSPD and OI, which are commonly confounded, and between different subtypes of PI. Our findings highlight the importance of considering circadian rhythm assessment in sleep medicine.
Copyright © 2019 Rodriguez-Morilla, Estivill, Estivill-Domènech, Albares, Segarra, Correa, Campos, Rol and Madrid.

Entities:  

Keywords:  actigraphy; circadian rhythms; decision tree; delayed sleep phase; digital health; insomnia; light exposure; wrist temperature

Year:  2019        PMID: 31920488      PMCID: PMC6916421          DOI: 10.3389/fnins.2019.01318

Source DB:  PubMed          Journal:  Front Neurosci        ISSN: 1662-453X            Impact factor:   4.677


  42 in total

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4.  Ambulatory circadian monitoring (ACM) based on thermometry, motor activity and body position (TAP): a comparison with polysomnography.

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Journal:  Physiol Behav       Date:  2014-01-04

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Authors: 
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Journal:  PLoS Comput Biol       Date:  2010-11-11       Impact factor: 4.475

Review 7.  Delayed sleep phase disorder in youth.

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8.  A data mining approach using cortical thickness for diagnosis and characterization of essential tremor.

Authors:  J Ignacio Serrano; Juan P Romero; Ma Dolores Del Castillo; Eduardo Rocon; Elan D Louis; Julián Benito-León
Journal:  Sci Rep       Date:  2017-05-19       Impact factor: 4.379

9.  Classification of Paediatric Inflammatory Bowel Disease using Machine Learning.

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Journal:  Sci Rep       Date:  2017-05-25       Impact factor: 4.379

10.  Assessing Chronotypes by Ambulatory Circadian Monitoring.

Authors:  Antonio Martinez-Nicolas; Maria Jose Martinez-Madrid; Pedro Francisco Almaida-Pagan; Maria-Angeles Bonmati-Carrion; Juan Antonio Madrid; Maria Angeles Rol
Journal:  Front Physiol       Date:  2019-11-20       Impact factor: 4.566

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  2 in total

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2.  Sleep-wake circadian rhythm pattern in young adults by actigraphy during social isolation.

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