| Literature DB >> 35225955 |
Faustin Armel Etindele Sosso1.
Abstract
Socioeconomic status (SES) has an unrecognized influence on behavioral risk factors as well as public health strategies related to sleep health disparities. In addition to that, objectively measuring SES' influence on sleep health is challenging. A systematic review of polysomnography (PSG) studies investigating the relation between SES and sleep health disparities is worthy of interest and holds potential for future studies and recommendations. A literature search in databases was conducted following Prisma guidelines. Search strategy identified seven studies fitting within the inclusion criteria. They were all cross-sectional studies with only adults. Except for one study conducted in India, all of these studies took place in western countries. Overall emerging trends are: (1) low SES with its indicators (income, education, occupation and employment) are negatively associated with PSG parameters and (2) environmental factors (outside noise, room temperature and health worries); sex/gender and BMI were the main moderators of the relation between socioeconomic indicators and the variation of sleep recording with PSG. Socioeconomic inequalities in sleep health can be measured objectively. It will be worthy to examine the SES of participants and patients before they undergo PSG investigation. PSG studies should always collect socioeconomic data to discover important connections between SES and PSG. It will be interesting to compare PSG data of people from different SES in longitudinal studies and analyze the intensity of variations through time.Entities:
Keywords: health disparities; polysomnography; sleep; socioeconomic status; systematic review
Year: 2022 PMID: 35225955 PMCID: PMC8883971 DOI: 10.3390/clockssleep4010009
Source DB: PubMed Journal: Clocks Sleep ISSN: 2624-5175
Characteristics of included studies investigating the association between socioeconomic disparities in sleep health and polysomnography.
| Study | Study | Population | Age | Sample | Socioeconomic | Sleep Health Measurement | Interactions and Moderators | Conclusions |
|---|---|---|---|---|---|---|---|---|
| [ | Cross-sectional | Adult members of a larger cohort in Pittsburgh metropolitan area | 45–75 | 187 | Composite SES score (education and annual income) | Two-night home PSG (sleep duration, sleep latency, sleep efficiency, WASO, sleep architecture, apnea–hypopnea index (AHI)) | Environmental factors (outside noise, room temperature and health worries) and negative effects were statistical mediators of the relationship between SES and PSQI scores | Lower SES was associated with longer sleep latency and more WASO |
| [ | Cross-sectional | Midlife women from the general population of 4 US cities | 50.72 ± 2.02 | 368 | Educational attainment (college or advanced degree vs without). | Three-night home PSG assessing sleep duration, sleep continuity, sleep latency, WASO, sleep efficiency, sleep architecture and power spectral analysis of NREM EEG | N/A | Financial strain was a significant correlate of poorer subjective sleep quality and PSG-assessed sleep continuity |
| [ | Cross-sectional | Adults from the general population in South Delhi, India | 30–65 | 360 | Kuppuswami socioeconomic status score | OSA (AHI ≥ 5 in PSG) | N/A | Prevalence of OSA was not significantly different across the socio-economic strata |
| [ | Cross-sectional | Adults recruited through advertisements in San Diego, California | 18–52 | 128 | Childhood SES: highest level of education attained by each parent (low if neither parent achieved education beyond high school, and high if either parent achieved some education beyond high school) | PSG (sleep duration, latency, efficiency, architecture, WASO) | Women from low childhood SES backgrounds had longer sleep latency than women from the high childhood SES background group | Individuals with lower childhood SES spent more time in Stage 2 sleep and less time in SWS than participants from higher childhood SES backgrounds independently of current SES |
| [ | Cross-sectional | Adults from the general population in Sao Paulo, Brazil | 20–80 | 1042 | Annual household income (high, middle or low) according to the Brazilian Economic Classification Criteria | OSA ICSD-2 criteria (AHI from PSG) | Income affects OSA risk differentially for males and females | Global SES was not associated with OSA |
| [ | Cross-sectional | Adults from the general population in Lausanne, Switzerland | 40–81 | 3391 | Educational level (high, middle, low). | Total sleep time, sleep latency, slow wave sleep, sleep efficiency, stage shifts (in-home 1-night PSG) | N/A | Men with a low educational level or occupational position were more likely to suffer from poor sleep quality, short sleep duration and insomnia. Men with a low occupational position were also more likely to have long sleep latency. Women with a low educational level were more likely to have long sleep latency and short sleep duration. Women with a low occupational position were more likely to have long sleep latency, excessive daytime sleepiness and short sleep duration. |
| [ | Cross-sectional | Adults of a general population cohort in Lausanne, Switzerland | 40–81 | 2162 | Occupation (managers, lower-level executives, low qualified non-manuals and manuals). | Home PSG (apnea–hypopnea index (AHI) and ≥ 3% oxygen desaturation index (ODI)) | These associations were mediated by BMI | Lower occupational position was associated with an increased risk of AHI ≥ 30 and ODI ≥ 30. Lower education was associated with an increased risk of ODI ≥15. |
SES, socio-economic status; PSQI, Pittsburgh Sleep Quality Index; BMI, body mass index; WASO, wake after sleep onset; OSA, obstructive sleep apnea; PSG, polysomnography; AHI, apnea–hypopnea index; NREM, non-rapid eye movement; EEG, electroencephalogram; SWS, slow-wave sleep; REM, rapid eye movement; RBD, REM sleep behavior disorder; ISI, Insomnia Severity Index; ODI, oxygen desaturation index.
Figure 1Prisma flowchart of study selection process: the relationship between SES and sleep health disparities measured by PSG.