| Literature DB >> 29197372 |
Michael Fliesser1, Jessie De Witt Huberts2, Pia-Maria Wippert2.
Abstract
BACKGROUND: In health research, indicators of socioeconomic status (SES) are often used interchangeably and often lack theoretical foundation. This makes it difficult to compare results from different studies and to explore the relationship between SES and health outcomes. To aid researchers in choosing appropriate indicators of SES, this article proposes and tests a theory-based selection of SES indicators using chronic back pain as a health outcome.Entities:
Keywords: Chronic back pain; Education; Income; Indicators of socioeconomic status, Health inequality; Job position; Socioeconomic status
Mesh:
Year: 2017 PMID: 29197372 PMCID: PMC5712136 DOI: 10.1186/s12913-017-2735-9
Source DB: PubMed Journal: BMC Health Serv Res ISSN: 1472-6963 Impact factor: 2.655
Fig. 1Pathways connecting SES indicators with health outputs (based on Social Determinants of Health by Brunner & Marmot, [4])
Fig. 2Pathways connecting SES indicators with Pain Intensity (based on Social Determinants of Health by Brunner & Marmot, [4])
Fig. 3Pathways connecting SES indicators with Pain Disability (based on Social Determinants of Health by Brunner & Marmot, [4])
Characteristics of study sample, categorical variables: (N = 92)
| Educational degree | Percentage | Job position | Percentage |
|---|---|---|---|
| No educational degree | 4.3 | Managers | 22.8 |
| Primary education | 5.4 | Professionals | 2.2 |
| General secondary education | 16.3 | Technicians | 21.7 |
| Professional secondary education | 56.5 | Clerical Support Workers | 7.6 |
| Technical secondary education | 4.3 | Services and Sales Workers | 13.2 |
| Technical college degree | 4.4 | Skilled Agricultural Workers | 1.1 |
| University degree | 8.7 | Craft Workers | 21.6 |
| Machine Operators | 7.6 | ||
| Elementary Occupations | 2.2 |
Characteristics of study sample, constant variables
| Variable | N | M | SD | Min. | Max. |
|---|---|---|---|---|---|
| Age | 92 | 48.3 | 6.0 | 36 | 60 |
| Income | 92 | 1477 | 860 | 476 | 4666 |
| WS-index | 92 | 10.9 | 3.3 | 5.3 | 18.7 |
| CPG pain intensity baseline | 91 | 58.7 | 15.5 | 10 | 90 |
| CPG pain intensity follow up | 66 | 43.9 | 25.0 | 0.0 | 93.3 |
| CPG disability follow up | 66 | 33.7 | 27.7 | 0 | 96.7 |
Hierarchical regression models predicting influence of different operationalisations of SES on CPG pain intensity score (higher values more pain), controlled for age, sex and baseline pain (N = 66)
| Model | SES indicator | R2 | ΔR2 | Beta | T-value | p |
|---|---|---|---|---|---|---|
| 1 | Education | .277 | .078* | −.292 | −2.56 | .013* |
| 2 | Job | .262 | .062* | .293 | 2.27 | .027* |
| 3 | Income | .218 | .019 | −.140 | −1.20 | .234 |
| 4 | WS-index | .290 | .090* | −.310 | −2.78 | .007* |
* = p < 0.05
Hierarchical regression models predicting influence of different operationalisations of SES on CPG disability (higher values, more disability), controlled for age, sex and baseline pain (N = 66)
| Model | SES-indicator | R2 | ΔR2 | Beta | T-value |
|
|---|---|---|---|---|---|---|
| 1 | Education | .264 | .079* | −.295 | −2.56 | .013* |
| 2 | Job | .243 | .059* | .285 | 2.17 | .033* |
| 3 | Income | .186 | .002 | −.047 | −0.40 | .692 |
| 4 | WS-index | .232 | .048 | −.226 | −1.95 | .056 |
* = p < 0.05