Building a sanitary vulnerability map from open source data in Argentina (2010-2018)
Abstract Background Designing public health policies to target the needs of specific places requires highly granular data. When geographic health statistics from official sources are absent or lacking in spatial detail, Sanitary Vulnerability metrics derived from Census and other georeferenced publi...
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doaj-1b29686b18fe4f139e8c8b6048c2c95b2020-11-25T04:07:48ZengBMCInternational Journal for Equity in Health1475-92762020-09-0119111610.1186/s12939-020-01292-3Building a sanitary vulnerability map from open source data in Argentina (2010-2018)Germán Federico Rosati0Tomás Alberto Olego1H. Antonio Vazquez Brust2National Council of Scientific and Technical Research, CONICETBunge & Born FoundationBunge & Born FoundationAbstract Background Designing public health policies to target the needs of specific places requires highly granular data. When geographic health statistics from official sources are absent or lacking in spatial detail, Sanitary Vulnerability metrics derived from Census and other georeferenced public data can be used to identify areas in particular need of attention. With that aim, a Vulnerability Map was developed, identifying areas with a substantial deficit in its population health coverage. As a result a novel methodology for measuring Sanitary Vulnerability is presented, that can potentially be applied to different time periods or geographies. Methods Census, official listings of public health facilities and crowdsourced georeferenced data are used. The Vulnerability Index is built using dimensionality reduction techniques such as Autoencoders and Non-parametric PCA. Main results The high resolution map shows the geographical distribution of a Sanitary Vulnerability Index, produced using official and crowdsourced open data sources, overcoming the lack of official sources on health indicators at the local level. Conclusions The Sanitary Vulnerability Map’s value as a tool for place specific policymaking was validated by using it to predict local health related metrics such as health coverage. Further lines of work contemplate using the Map to study the interaction between Sanitary Vulnerability and the prevalence of different diseases, and also applying its methodology in the context of other public services such as education, security, housing, etc.http://link.springer.com/article/10.1186/s12939-020-01292-3SampleArticleHealthVulnerabilityCensusPublic policy |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Germán Federico Rosati Tomás Alberto Olego H. Antonio Vazquez Brust |
spellingShingle |
Germán Federico Rosati Tomás Alberto Olego H. Antonio Vazquez Brust Building a sanitary vulnerability map from open source data in Argentina (2010-2018) International Journal for Equity in Health Sample Article Health Vulnerability Census Public policy |
author_facet |
Germán Federico Rosati Tomás Alberto Olego H. Antonio Vazquez Brust |
author_sort |
Germán Federico Rosati |
title |
Building a sanitary vulnerability map from open source data in Argentina (2010-2018) |
title_short |
Building a sanitary vulnerability map from open source data in Argentina (2010-2018) |
title_full |
Building a sanitary vulnerability map from open source data in Argentina (2010-2018) |
title_fullStr |
Building a sanitary vulnerability map from open source data in Argentina (2010-2018) |
title_full_unstemmed |
Building a sanitary vulnerability map from open source data in Argentina (2010-2018) |
title_sort |
building a sanitary vulnerability map from open source data in argentina (2010-2018) |
publisher |
BMC |
series |
International Journal for Equity in Health |
issn |
1475-9276 |
publishDate |
2020-09-01 |
description |
Abstract Background Designing public health policies to target the needs of specific places requires highly granular data. When geographic health statistics from official sources are absent or lacking in spatial detail, Sanitary Vulnerability metrics derived from Census and other georeferenced public data can be used to identify areas in particular need of attention. With that aim, a Vulnerability Map was developed, identifying areas with a substantial deficit in its population health coverage. As a result a novel methodology for measuring Sanitary Vulnerability is presented, that can potentially be applied to different time periods or geographies. Methods Census, official listings of public health facilities and crowdsourced georeferenced data are used. The Vulnerability Index is built using dimensionality reduction techniques such as Autoencoders and Non-parametric PCA. Main results The high resolution map shows the geographical distribution of a Sanitary Vulnerability Index, produced using official and crowdsourced open data sources, overcoming the lack of official sources on health indicators at the local level. Conclusions The Sanitary Vulnerability Map’s value as a tool for place specific policymaking was validated by using it to predict local health related metrics such as health coverage. Further lines of work contemplate using the Map to study the interaction between Sanitary Vulnerability and the prevalence of different diseases, and also applying its methodology in the context of other public services such as education, security, housing, etc. |
topic |
Sample Article Health Vulnerability Census Public policy |
url |
http://link.springer.com/article/10.1186/s12939-020-01292-3 |
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