Sleep disparities in the United States: Comparison of logistic and linear regression with stratification by race

Irene A Doherty , Mary Ellen Wells
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Abstract

Background

Analyses of risk factors associated with poor sleep/deprivation often use nationally representative surveys of the United States such as the National Household and Nutrition Examination Survey (NHANES). Outcomes are dichotomized as <6, <7, or <8 h of sleep and modeled with logistic regression where race or ethnicity is treated as an independent variable. Converting a continuous variable (sleep hours) to a categorical compromises statistical power. Treating race as a confounder fails to uncover how sleep disparities affect minorities.

Methods

This analysis of NHANES from 2005 to 2008 of White and Black participants compares interpretations from logistic regression models using ≤6 h of self-reported sleep to linear regression models using number of sleep minutes as the outcome. The analysis includes bivariate and multivariable models of risk factors associated with poor sleep including race, markers of low socioeconomic status (SES), sleep difficulty measures, self-reported health, and clinical comorbidities (obesity, hypertension, diabetes). All models were generated for the complete sample and stratified by race.

Results

Linear regression models produced quantifiable, clinically meaningful results such as women slept ∼20 additional minutes than men for both Black and White strata or were OR=0.63 times as likely to sleep ≤6 h. Markers of low SES (education, poverty) and self-reported health were associated with sleep deprivation for Whites, but not for Blacks in both linear and logistic regression.

Conclusions

Stratified analyses by race using the amount of sleep as a continuous outcome in linear regression is more rigorous and informative than logistic regression for sleep research using US representative surveys.
美国的睡眠差异:按种族分层的逻辑回归和线性回归的比较
背景:与睡眠不足/剥夺相关的风险因素分析通常使用具有全国代表性的美国调查,如国家家庭和营养检查调查(NHANES)。结果被分为6小时、7小时或8小时的睡眠时间,并采用逻辑回归建模,其中种族或民族被视为自变量。将连续变量(睡眠时间)转换为分类变量会损害统计能力。将种族视为混杂因素并不能揭示睡眠差异是如何影响少数族裔的。方法本研究对白人和黑人受试者2005 - 2008年的NHANES进行分析,比较了采用≤6小时自我报告睡眠时间的逻辑回归模型和采用睡眠分钟数作为结果的线性回归模型的解释。该分析包括与睡眠不良相关的风险因素的双变量和多变量模型,包括种族、低社会经济地位(SES)标志、睡眠困难测量、自我报告的健康状况和临床合并症(肥胖、高血压、糖尿病)。所有模型都是为完整样本生成的,并按种族分层。线性回归模型产生了可量化的、有临床意义的结果,例如黑人和白人阶层的女性比男性多睡20分钟,或者睡眠≤6小时的可能性or =0.63倍。在线性和逻辑回归中,低社会经济地位(教育、贫困)和自我报告的健康状况与白人的睡眠剥夺有关,但与黑人无关。结论:在线性回归中,使用睡眠时间作为连续结果的种族分层分析比使用美国代表性调查的睡眠研究的逻辑回归更严格,信息更丰富。
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来源期刊
Sleep epidemiology
Sleep epidemiology Dentistry, Oral Surgery and Medicine, Clinical Neurology, Pulmonary and Respiratory Medicine
CiteScore
1.80
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0.00%
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