Identification of sleep phenotypes in COPD using machine learning-based cluster analysis.

Respir Med

Section of Pulmonary and Critical Care Medicine, Department of Medicine, Baylor College of Medicine, Houston, TX, 77030, USA; Pulmonary, Critical Care and Sleep Medicine Section, Michael E. DeBakey VA Medical Center, Houston, TX, 77030, USA. Electronic address:

Published: June 2024

AI Article Synopsis

  • - The study focused on understanding how sleep disturbances in COPD patients affect quality of life and predict mortality risk using data from the Veterans Health Administration.
  • - Researchers identified five unique clusters of COPD patients based on factors like age, comorbidity, and specific sleep metrics, revealing that mortality risk varied significantly among these groups.
  • - Results showed a clear link between total sleep time and sleep efficiency with overall mortality, emphasizing the importance of objective sleep data for identifying mortality risk in COPD patients.

Article Abstract

Background: Disturbed sleep in patients with COPD impact quality of life and predict adverse outcomes.

Research Question: To identify distinct phenotypic clusters of patients with COPD using objective sleep parameters and evaluate the associations between clusters and all-cause mortality to inform risk stratification.

Study Design And Methods: A longitudinal observational cohort study using nationwide Veterans Health Administration data of patients with COPD investigated for sleep disorders. Sleep parameters were extracted from polysomnography physician interpretation using a validated natural language processing algorithm. We performed cluster analysis using an unsupervised machine learning algorithm (K-means) and examined the association between clusters and mortality using Cox regression analysis, adjusted for potential confounders, and visualized with Kaplan-Meier estimates.

Results: Among 9992 patients with COPD and a clinically indicated baseline polysomnogram, we identified five distinct clusters based on age, comorbidity burden and sleep parameters. Overall mortality increased from 9.4 % to 42 % and short-term mortality (<5.3 years) ranged from 3.4 % to 24.3 % in Cluster 1 to 5. In Cluster 1 younger age, in 5 high comorbidity burden and in the other three clusters, total sleep time and sleep efficiency had significant associations with mortality.

Interpretation: We identified five distinct clinical clusters and highlighted the significant association between total sleep time and sleep efficiency on mortality. The identified clusters highlight the importance of objective sleep parameters in determining mortality risk and phenotypic characterization in this population.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11218872PMC
http://dx.doi.org/10.1016/j.rmed.2024.107641DOI Listing

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