4.7 Article

Management and Treatment of Patients With Obstructive Sleep Apnea Using an Intelligent Monitoring System Based on Machine Learning Aiming to Improve Continuous Positive Airway Pressure Treatment Compliance: Randomized Controlled Trial

期刊

出版社

JMIR PUBLICATIONS, INC
DOI: 10.2196/24072

关键词

obstructive sleep apnea; continuous positive airway pressure; patient compliance; remote monitoring; machine learning

资金

  1. Spanish Ministry of Economy, Industry and Competitiveness (Ministerio de Economia, Industria y Competitividad) [RTC-2014-3138-1]
  2. Agencia Estatal de Investigacion [RTC-2014-3138-1]
  3. European Regional Development Fund (ERDF), A way to make Europe
  4. Catalan Health Department (Pla Estrategic de Recerca i Innovacio en Salut [PERIS] 2016) [SLT002/16/00364]
  5. Instituto de Salud Carlos III (ISCIII) [CP19/00108]
  6. European Social Fund (ESF), Investing in your future

向作者/读者索取更多资源

The study demonstrates that the intelligent monitoring system MiSAOS can improve CPAP compliance and is cost-effective. Patient satisfaction is high, and there is no significant increase in costs.
Background: Continuous positive airway pressure (CPAP) is an effective treatment for obstructive sleep apnea (OSA), but treatment compliance is often unsatisfactory. Objective: The aim of this study was to assess the effectiveness and cost-effectiveness of an intelligent monitoring system for improving CPAP compliance. Methods: This is a prospective, open label, parallel, randomized controlled trial including 60 newly diagnosed patients with OSA requiring CPAP (Apnea-Hypopnea Index [AHI] >15) from Lleida, Spain. Participants were randomized (1:1) to standard management or the MiSAOS intelligent monitoring system, involving (1) early compliance detection, thus providing measures of patient's CPAP compliance from the very first days of usage; (2) machine learning-based prediction of midterm future CPAP compliance; and (3) rule-based recommendations for the patient (app) and care team. Clinical and anthropometric variables, daytime sleepiness, and quality of life were recorded at baseline and after 6 months, together with patient's compliance, satisfaction, and health care costs. Results: Randomized patients had a mean age of 57 (SD 11) years, mean AHI of 50 (SD 27), and 13% (8/60) were women. Patients in the intervention arm had a mean (95% CI) of 1.14 (0.04-2.23) hours/day higher adjusted CPAP compliance than controls (P=.047). Patients' satisfaction was excellent in both arms, and up to 88% (15/17) of intervention patients reported willingness to keep using the MiSAOS app in the future. No significant differences were found in costs (control: mean (sic)90.2 (SD 53.14) (US $105.76 [SD 62.31]); intervention: mean (sic)96.2 (SD 62.13) (US $112.70 [SD 72.85]); P=.70; (sic)1=US $1.17 was considered throughout). Overall costs combined with results on compliance demonstrated cost-effectiveness in a bootstrap-based simulation analysis. Conclusions: A machine learning-based intelligent monitoring system increased daily compliance, reported excellent patient satisfaction similar to that reported in usual care, and did not incur in a substantial increase in costs, thus proving cost-effectiveness. This study supports the implementation of intelligent eHealth frameworks for the management of patients with CPAP-treated OSA and confirms the value of patients' empowerment in the management of chronic diseases.

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