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Latent Profile Analysis of Sleep Quality in Pregnant Women With Gestational Diabetes Mellitus and Its Influencing Factors.

Authors :
Chen, Yanxia
Wang, Hui
Yang, Yiling
Li, Jiale
Luo, Tingyu
Wei, Huixin
Wei, Fengxiang
Chen, Weiqiang
Source :
Western Journal of Nursing Research. Dec2024, Vol. 46 Issue 12, p970-979. 10p.
Publication Year :
2024

Abstract

Background: Sleep problems are prevalent among individuals diagnosed with gestational diabetes mellitus (GDM), significantly impacting their overall quality of life. Objective: This study sought to adopt a person-centered methodology to unveil the latent profiles of sleep quality and identify factors influencing sleep patterns in patients with GDM. Methods: The cross-sectional study gathered sociodemographic features, clinical information, sleep problems (Pittsburgh Sleep Quality Index), personality traits (Type D Personality Scale), social support (Perceived Social Support Scale), and self-efficacy (General Self-efficacy Scale). Latent profile analysis was conducted to identify profiles of sleep quality, while multinomial logistic regression was employed to ascertain the factors influencing these identified profiles. Results: Among the 431 participants, 423 (98.1%) completed the questionnaire, with 53.0% reporting moderate-to-poor sleep quality. This study identified 4 distinct profiles of sleep quality among patients with GDM: the "good sleep quality" group (47.0%), the "poor sleep quality—long sleep duration" group (10.0%), the "moderate sleep quality" group (25.3%), and the "poor sleep quality—short sleep duration" group (17.7%). Individuals with type D personality were associated with the "poor sleep quality—long sleep duration" [odds ratio (OR) = 3.21, P =.005], "moderate sleep quality" (OR = 2.65, P =.003), and "poor sleep quality—short sleep duration" group (OR = 2.31, P =.018). Individuals with a history of GDM were associated with "poor sleep quality—long sleep duration" group (OR = 3.46, P =.005). Conclusions: The research revealed significant classification characteristics of sleep quality in patients with GDM, offering valuable insights for tailoring interventions to address distinct subcategories of sleep-related issues. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
01939459
Volume :
46
Issue :
12
Database :
Academic Search Index
Journal :
Western Journal of Nursing Research
Publication Type :
Academic Journal
Accession number :
181053043
Full Text :
https://doi.org/10.1177/01939459241296728