The cumulation of ill health and low agency in socially excluded city dwellers in the Netherlands: how to better identify high-risk/high-need population segments with public health survey data
Abstract Background Population segmentation and risk stratification are important strategies for allocating resources in public health, health care and social care. Social exclusion, which is defined as the cumulation of disadvantages in social, economic, cultural and political domains, is associate...
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doaj-93abd702cb8a43c4ba80c5da9f84c7122021-07-25T11:14:28ZengBMCInternational Journal for Equity in Health1475-92762021-07-0120111410.1186/s12939-021-01471-wThe cumulation of ill health and low agency in socially excluded city dwellers in the Netherlands: how to better identify high-risk/high-need population segments with public health survey dataAddi P. L. van Bergen0Annelies van Loon1Stella J. M. Hoff2Judith R. L. M. Wolf3Albert M. van Hemert4GGD Hollands MiddenGGD AmsterdamThe Netherlands Institute of Social Research|SCPImpuls, The Netherlands Center for Social Care Research, Radboud University Medical CenterDepartment of Psychiatry, Leiden University Medical CentreAbstract Background Population segmentation and risk stratification are important strategies for allocating resources in public health, health care and social care. Social exclusion, which is defined as the cumulation of disadvantages in social, economic, cultural and political domains, is associated with an increased risk of health problems, low agency, and as a consequence, a higher need for health and social care. The aim of this study is to test social exclusion against traditional social stratifiers to identify high-risk/high-need population segments. Methods We used data from 33,285 adults from the 2016 Public Health Monitor of four major cities in the Netherlands. To identify at-risk populations for cardiovascular risk, cancer, low self-rated health, anxiety and depression symptoms, and low personal control, we compared relative risks (RR) and population attributable fractions (PAF) for social exclusion, which was measured with the Social Exclusion Index for Health Surveys (SEI-HS), and four traditional social stratifiers, namely, education, income, labour market position and migration background. Results The analyses showed significant associations of social exclusion with all the health indicators and personal control. Particular strong RRs were found for anxiety and depression symptoms (7.95) and low personal control (6.36), with corresponding PAFs of 42 and 35%, respectively. Social exclusion was significantly better at identifying population segments with high anxiety and depression symptoms and low personal control than were the four traditional stratifiers, while the two approaches were similar at identifying other health problems. The combination of social exclusion with a low labour market position (19.5% of the adult population) captured 67% of the prevalence of anxiety and depression symptoms and 60% of the prevalence of low personal control, as well as substantial proportions of the other health indicators. Conclusions This study shows that the SEI-HS is a powerful tool for identifying high-risk/high-need population segments in which not only ill health is concentrated, as is the case with traditional social stratifiers, but also a high prevalence of anxiety and depression symptoms and low personal control are present, in addition to an accumulation of social problems. These findings have implications for health care practice, public health and social interventions in large cities.https://doi.org/10.1186/s12939-021-01471-wSocial exclusionSocial determinants of healthAnxiety and depressionPersonal controlKessler-10Pearlin mastery scale |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Addi P. L. van Bergen Annelies van Loon Stella J. M. Hoff Judith R. L. M. Wolf Albert M. van Hemert |
spellingShingle |
Addi P. L. van Bergen Annelies van Loon Stella J. M. Hoff Judith R. L. M. Wolf Albert M. van Hemert The cumulation of ill health and low agency in socially excluded city dwellers in the Netherlands: how to better identify high-risk/high-need population segments with public health survey data International Journal for Equity in Health Social exclusion Social determinants of health Anxiety and depression Personal control Kessler-10 Pearlin mastery scale |
author_facet |
Addi P. L. van Bergen Annelies van Loon Stella J. M. Hoff Judith R. L. M. Wolf Albert M. van Hemert |
author_sort |
Addi P. L. van Bergen |
title |
The cumulation of ill health and low agency in socially excluded city dwellers in the Netherlands: how to better identify high-risk/high-need population segments with public health survey data |
title_short |
The cumulation of ill health and low agency in socially excluded city dwellers in the Netherlands: how to better identify high-risk/high-need population segments with public health survey data |
title_full |
The cumulation of ill health and low agency in socially excluded city dwellers in the Netherlands: how to better identify high-risk/high-need population segments with public health survey data |
title_fullStr |
The cumulation of ill health and low agency in socially excluded city dwellers in the Netherlands: how to better identify high-risk/high-need population segments with public health survey data |
title_full_unstemmed |
The cumulation of ill health and low agency in socially excluded city dwellers in the Netherlands: how to better identify high-risk/high-need population segments with public health survey data |
title_sort |
cumulation of ill health and low agency in socially excluded city dwellers in the netherlands: how to better identify high-risk/high-need population segments with public health survey data |
publisher |
BMC |
series |
International Journal for Equity in Health |
issn |
1475-9276 |
publishDate |
2021-07-01 |
description |
Abstract Background Population segmentation and risk stratification are important strategies for allocating resources in public health, health care and social care. Social exclusion, which is defined as the cumulation of disadvantages in social, economic, cultural and political domains, is associated with an increased risk of health problems, low agency, and as a consequence, a higher need for health and social care. The aim of this study is to test social exclusion against traditional social stratifiers to identify high-risk/high-need population segments. Methods We used data from 33,285 adults from the 2016 Public Health Monitor of four major cities in the Netherlands. To identify at-risk populations for cardiovascular risk, cancer, low self-rated health, anxiety and depression symptoms, and low personal control, we compared relative risks (RR) and population attributable fractions (PAF) for social exclusion, which was measured with the Social Exclusion Index for Health Surveys (SEI-HS), and four traditional social stratifiers, namely, education, income, labour market position and migration background. Results The analyses showed significant associations of social exclusion with all the health indicators and personal control. Particular strong RRs were found for anxiety and depression symptoms (7.95) and low personal control (6.36), with corresponding PAFs of 42 and 35%, respectively. Social exclusion was significantly better at identifying population segments with high anxiety and depression symptoms and low personal control than were the four traditional stratifiers, while the two approaches were similar at identifying other health problems. The combination of social exclusion with a low labour market position (19.5% of the adult population) captured 67% of the prevalence of anxiety and depression symptoms and 60% of the prevalence of low personal control, as well as substantial proportions of the other health indicators. Conclusions This study shows that the SEI-HS is a powerful tool for identifying high-risk/high-need population segments in which not only ill health is concentrated, as is the case with traditional social stratifiers, but also a high prevalence of anxiety and depression symptoms and low personal control are present, in addition to an accumulation of social problems. These findings have implications for health care practice, public health and social interventions in large cities. |
topic |
Social exclusion Social determinants of health Anxiety and depression Personal control Kessler-10 Pearlin mastery scale |
url |
https://doi.org/10.1186/s12939-021-01471-w |
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