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Evaluation of a Decision Support System for Obstructive Sleep Apnea with Nonlinear Analysis of Respiratory Signals.

TitleEvaluation of a Decision Support System for Obstructive Sleep Apnea with Nonlinear Analysis of Respiratory Signals.
Publication TypeJournal Article
Year of Publication2016
AuthorsKaimakamis, E., Tsara V., Bratsas C., Sichletidis L., Karvounis C., & Maglaveras N.
JournalPLoS One
Volume11
Issue3
Paginatione0150163
Date Published2016
ISSN1932-6203
KeywordsAdolescent, Adult, Aged, Aged, 80 and over, Decision Support Systems, Clinical, Female, Humans, Male, Middle Aged, Nonlinear Dynamics, Polysomnography, Respiratory Rate, ROC Curve, Sensitivity and Specificity, Severity of Illness Index, Sleep Apnea, Obstructive, Statistics, Nonparametric, Young Adult
Abstract

INTRODUCTION: Obstructive Sleep Apnea (OSA) is a common sleep disorder requiring the time/money consuming polysomnography for diagnosis. Alternative methods for initial evaluation are sought. Our aim was the prediction of Apnea-Hypopnea Index (AHI) in patients potentially suffering from OSA based on nonlinear analysis of respiratory biosignals during sleep, a method that is related to the pathophysiology of the disorder.MATERIALS AND METHODS: Patients referred to a Sleep Unit (135) underwent full polysomnography. Three nonlinear indices (Largest Lyapunov Exponent, Detrended Fluctuation Analysis and Approximate Entropy) extracted from two biosignals (airflow from a nasal cannula, thoracic movement) and one linear derived from Oxygen saturation provided input to a data mining application with contemporary classification algorithms for the creation of predictive models for AHI.RESULTS: A linear regression model presented a correlation coefficient of 0.77 in predicting AHI. With a cutoff value of AHI = 8, the sensitivity and specificity were 93% and 71.4% in discrimination between patients and normal subjects. The decision tree for the discrimination between patients and normal had sensitivity and specificity of 91% and 60%, respectively. Certain obtained nonlinear values correlated significantly with commonly accepted physiological parameters of people suffering from OSA.DISCUSSION: We developed a predictive model for the presence/severity of OSA using a simple linear equation and additional decision trees with nonlinear features extracted from 3 respiratory recordings. The accuracy of the methodology is high and the findings provide insight to the underlying pathophysiology of the syndrome.CONCLUSIONS: Reliable predictions of OSA are possible using linear and nonlinear indices from only 3 respiratory signals during sleep. The proposed models could lead to a better study of the pathophysiology of OSA and facilitate initial evaluation/follow up of suspected patients OSA utilizing a practical low cost methodology.TRIAL REGISTRATION: ClinicalTrials.gov NCT01161381.

DOI10.1371/journal.pone.0150163
Alternate JournalPLoS ONE
PubMed ID26937681
PubMed Central IDPMC4777493

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