Xiangya School of Nursing, Central South University, Changsha, 410013, China.
School of Nursing, Hunan University of Chinese Medicine, Changsha, 410208, China.
Support Care Cancer. 2024 Feb 13;32(3):155. doi: 10.1007/s00520-024-08337-1.
Sleep problems are a significant issue in patients with lung cancer, and resilience is a closely related factor. However, few studies have identified subgroups of resilience and their relationship with sleep quality. This study aimed to investigate whether there are different profiles of resilience in patients with lung cancer, to determine the sociodemographic characteristics of each subgroup, and to determine the relationship between resilience and sleep quality in different subgroups.
A total of 303 patients with lung cancer from four tertiary hospitals in China completed the General Sociodemographic sheet, the Connor-Davidson Resilience Scale, and the Pittsburgh Sleep Quality Index. Latent profile analysis was applied to explore the latent profiles of resilience. Multivariate logistic regression was used to analyze the sociodemographic variables in each profile, and ANOVA was used to explore the relationships between resilience profiles and sleep quality.
The following three latent profiles were identified: the "high-resilience group" (30.2%), the "moderate-resilience group" (46.0%), and the "low-resilience group" (23.8%). Gender, place of residence, and average monthly household income significantly influenced the distribution of resilience in patients with lung cancer.
The resilience patterns of patients with lung cancer varied. It is suggested that health care providers screen out various types of patients with multiple levels of resilience and pay more attention to female, rural, and poor patients. Additionally, individual differences in resilience may provide an actionable means for addressing sleep problems.
睡眠问题是肺癌患者的一个重大问题,而韧性是一个密切相关的因素。然而,很少有研究确定了韧性的亚组及其与睡眠质量的关系。本研究旨在调查肺癌患者中是否存在不同的韧性亚组,确定每个亚组的社会人口学特征,并确定不同亚组中韧性与睡眠质量之间的关系。
来自中国四家三级医院的 303 名肺癌患者完成了一般社会人口学表格、Connor-Davidson 韧性量表和匹兹堡睡眠质量指数。应用潜在剖面分析来探索韧性的潜在模式。采用多变量逻辑回归分析每个模式的社会人口学变量,采用方差分析探讨韧性模式与睡眠质量之间的关系。
确定了以下三个潜在的韧性亚组:“高韧性组”(30.2%)、“中韧性组”(46.0%)和“低韧性组”(23.8%)。性别、居住地和平均月家庭收入显著影响肺癌患者韧性的分布。
肺癌患者的韧性模式存在差异。建议医疗保健提供者筛选出具有多种韧性水平的不同类型的患者,并更加关注女性、农村和贫困患者。此外,韧性的个体差异可能为解决睡眠问题提供可行的方法。