Respiratory effort during sleep and the rate of prevalent type 2 diabetes in obstructive sleep apnoea

Author:

Martinot Jean‐Benoit12ORCID,Le‐Dong Nhat‐Nam3,Borel Anne‐Laure4ORCID,Tamisier Renaud4,Malhotra Atul5,Pépin Jean‐Louis4

Affiliation:

1. Sleep Laboratory CHU Université catholique de Louvain (UCL) Namur Site Sainte‐Elisabeth Namur Belgium

2. Institute of Experimental and Clinical Research UCL Bruxelles Woluwe Brussels Belgium

3. Sunrise Namur Belgium

4. University of Grenoble Alpes HP2 Laboratory, Inserm U1300 Grenoble France

5. University of California San Diego La Jolla California USA

Abstract

AbstractAimTo determine the association between total sleep time (TST) spent in increased respiratory effort (RE) and the prevalence of type 2 diabetes in a large cohort of individuals with suspected obstructive sleep apnoea (OSA) referred for in‐laboratory polysomnography (PSG).Materials and MethodsWe conducted a retrospective cross‐sectional study using the clinical data of 1128 patients. Non‐invasive measurements of RE were derived from the sleep mandibular jaw movements (MJM) bio‐signal. An explainable machine‐learning model was built to predict prevalent type 2 diabetes from clinical data, standard PSG indices, and MJM‐derived parameters (including the proportion of TST spent with increased respiratory effort [REMOV [%TST]).ResultsOriginal data were randomly assigned to training (n = 853) and validation (n = 275) subsets. The classification model based on 18 input features including REMOV showed good performance for predicting prevalent type 2 diabetes (sensitivity = 0.81, specificity = 0.89). Post hoc interpretation using the Shapley additive explanation method found that a high value of REMOV was the most important risk factor associated with type 2 diabetes after traditional clinical variables (age, sex, body mass index), and ahead of standard PSG metrics including the apnoea‐hypopnea and oxygen desaturation indices.ConclusionsThese findings show for the first time that the proportion of sleep time spent in increased RE (assessed through MJM measurements) is an important predictor of the association with type 2 diabetes in individuals with OSA.

Funder

Agence Nationale de la Recherche

National Institutes of Health

Fondation Université Grenoble Alpes

Publisher

Wiley

Subject

Endocrinology,Endocrinology, Diabetes and Metabolism,Internal Medicine

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