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Article Dans Une Revue Chest Année : 2023

Remote monitoring of positive airway pressure data: Challenges, Pitfalls and Strategies to consider for optimal data science applications

Résumé

Over recent years positive airway pressure (PAP) remote monitoring has transformed the management of obstructive sleep apnea and produced a large amount of data. Accumulated PAP data provide valuable and objective information regarding patient treatment adherence and efficiency. However, the majority of studies analyzing longitudinal PAP remote monitoring summarize data trajectories in static and simplistic metrics for PAP adherence and the residual apnea-hypopnea index (AHI) by using mean or median values. The aims of this article are to suggest directions for improving data cleaning and processing and to address major concerns for data science applications including: 1) conditions for rAHI reliability, 2) lack of standardization of indicators provided by different PAP models, 3) missing values and 4) consideration of treatment interruptions. To allow fair comparison between studies and to avoid biases in computation, PAP data processing and management should be conducted rigorously with these points in mind. PAP remote monitoring data contain a wealth of information that is currently underused in the field of sleep research. Improving the quality and standardizing data handling could facilitate data sharing among specialists worldwide and enable artificial intelligence strategies to be applied in the field of sleep apnea.
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Dates et versions

inserm-03941644 , version 1 (16-01-2023)

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Guillaume Bottaz-Bosson, Alphanie Midelet, Monique Mendelson, Jean-Christian Borel, Jean-Benoît Martinot, et al.. Remote monitoring of positive airway pressure data: Challenges, Pitfalls and Strategies to consider for optimal data science applications. Chest, 2023, 163 (5), pp.P1279-1291. ⟨10.1016/j.chest.2022.11.034⟩. ⟨inserm-03941644⟩
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