The prevalence of poor sleep quality and its associated factors in patients with interstitial lung disease: a cross-sectional analysis

间质性肺病患者睡眠质量差及其相关因素的患病率:一项横断面分析

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Abstract

BACKGROUND: Many patients with interstitial lung disease (ILD) experience poor sleep quality, which may contribute to decreased quality of life. Sleep disordered breathing is commonly associated with ILD but there is less information on other factors that may contribute to poor sleep quality. METHODS: We conducted a cross-sectional analysis of 101 patients with a diagnosis of ILD at a pulmonary rehabilitation assessment clinic. We assessed the prevalence of poor sleep quality using the Pittsburgh Sleep Quality Index (PSQI) and performed multivariable logistic regression analysis to determine factors independently associated with poor sleep quality. RESULTS: Median forced expiratory volume in 1 s was 64% predicted (interquartile range (IQR) 50-77%) and vital capacity was 62% predicted (IQR 48-78%). 67 (66%) out of 101 patients reported poor sleep quality. The median PSQI was 8 units (IQR 4-11 units). There were no significant differences in physical or physiological parameters including age, sex distribution, body mass index or spirometry values between subjects with good sleep quality and those with poor sleep quality (all p>0.1). Multivariable logistic regression showed that depression (p=0.003) and Epworth Sleepiness Scale (p=0.03) were independently associated with poor sleep quality. CONCLUSION: Poor sleep quality is common in patients with ILD and is independently associated with increasing symptoms of depression and sleepiness. Routine assessment of sleep quality should be undertaken and interventions targeting depression and coexisting sleep disorders may be required in symptomatic patients to determine if sleep quality and ultimately, health-related quality of life improves as a result.

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