Multidimensionality of Health Inequalities: A Cross-Country Identification of Health Clusters through Multivariate Classification Techniques
Despite major efforts in scientific literature to explain and understand the social determinants of health inequalities, the complex association between social causes and health outcomes remains empirically questionable and theoretically puzzling. To date, the studies on social determinants of healt...
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doaj-cb980fe30171422c836e56f50b037a3a2020-11-24T21:23:03ZengMDPI AGInternational Journal of Environmental Research and Public Health1660-46012018-09-01159190010.3390/ijerph15091900ijerph15091900Multidimensionality of Health Inequalities: A Cross-Country Identification of Health Clusters through Multivariate Classification TechniquesJavier Alvarez-Galvez0Department of Biomedicine, Biotechnology and Public Health, University of Cadiz, Avda. Ana de Viya, 52, 11009 Cádiz, SpainDespite major efforts in scientific literature to explain and understand the social determinants of health inequalities, the complex association between social causes and health outcomes remains empirically questionable and theoretically puzzling. To date, the studies on social determinants of health has mainly been generated by research techniques and methods that were developed to answer specific questions about the causes and effects of particular indicators on specific health outcomes. The present exploratory study follows a complex system approach to capture the interdependence between socioeconomic status, lifestyles, and health in a single measure that enables international comparisons of population health. Specifically, this study is aimed to: (a) classify individuals’ state of health according the usage of multidimensional data on physical and mental health, SES, lifestyles and risk behaviors, in order to (b) compare the relative strength of the different predictors of health groups (or clusters) at the individual-level and, finally, (c) to measure the level of health inequalities between different countries. From a complex system approach, this study uses multivariate classification methods to compare health groups in a sample of 29 countries and shows that interdependence models may be useful to describe and compare between-country health inequalities that are not visible through techniques for the analysis of dependence. The present work offers two fundamental contributions. On the one hand, this study compares the relative relevance of different indicators that are susceptible to affect individual health outcomes; on the other hand, the resulting multidimensional classification of countries according health clusters provides an alternative for inter-country health comparisons.http://www.mdpi.com/1660-4601/15/9/1900health inequalitiessocial determinants of healthquantitative methodscluster analysisdiscriminant analysis |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Javier Alvarez-Galvez |
spellingShingle |
Javier Alvarez-Galvez Multidimensionality of Health Inequalities: A Cross-Country Identification of Health Clusters through Multivariate Classification Techniques International Journal of Environmental Research and Public Health health inequalities social determinants of health quantitative methods cluster analysis discriminant analysis |
author_facet |
Javier Alvarez-Galvez |
author_sort |
Javier Alvarez-Galvez |
title |
Multidimensionality of Health Inequalities: A Cross-Country Identification of Health Clusters through Multivariate Classification Techniques |
title_short |
Multidimensionality of Health Inequalities: A Cross-Country Identification of Health Clusters through Multivariate Classification Techniques |
title_full |
Multidimensionality of Health Inequalities: A Cross-Country Identification of Health Clusters through Multivariate Classification Techniques |
title_fullStr |
Multidimensionality of Health Inequalities: A Cross-Country Identification of Health Clusters through Multivariate Classification Techniques |
title_full_unstemmed |
Multidimensionality of Health Inequalities: A Cross-Country Identification of Health Clusters through Multivariate Classification Techniques |
title_sort |
multidimensionality of health inequalities: a cross-country identification of health clusters through multivariate classification techniques |
publisher |
MDPI AG |
series |
International Journal of Environmental Research and Public Health |
issn |
1660-4601 |
publishDate |
2018-09-01 |
description |
Despite major efforts in scientific literature to explain and understand the social determinants of health inequalities, the complex association between social causes and health outcomes remains empirically questionable and theoretically puzzling. To date, the studies on social determinants of health has mainly been generated by research techniques and methods that were developed to answer specific questions about the causes and effects of particular indicators on specific health outcomes. The present exploratory study follows a complex system approach to capture the interdependence between socioeconomic status, lifestyles, and health in a single measure that enables international comparisons of population health. Specifically, this study is aimed to: (a) classify individuals’ state of health according the usage of multidimensional data on physical and mental health, SES, lifestyles and risk behaviors, in order to (b) compare the relative strength of the different predictors of health groups (or clusters) at the individual-level and, finally, (c) to measure the level of health inequalities between different countries. From a complex system approach, this study uses multivariate classification methods to compare health groups in a sample of 29 countries and shows that interdependence models may be useful to describe and compare between-country health inequalities that are not visible through techniques for the analysis of dependence. The present work offers two fundamental contributions. On the one hand, this study compares the relative relevance of different indicators that are susceptible to affect individual health outcomes; on the other hand, the resulting multidimensional classification of countries according health clusters provides an alternative for inter-country health comparisons. |
topic |
health inequalities social determinants of health quantitative methods cluster analysis discriminant analysis |
url |
http://www.mdpi.com/1660-4601/15/9/1900 |
work_keys_str_mv |
AT javieralvarezgalvez multidimensionalityofhealthinequalitiesacrosscountryidentificationofhealthclustersthroughmultivariateclassificationtechniques |
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1725993568996163584 |