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Investigating Health Context Using a Spatial Data Analytical Tool: Development of a Geospatial Big Data Ecosystem

BACKGROUND: Enabling the use of spatial context is vital to understanding today’s digital health problems. Any given location is associated with many different contexts. The strategic transformation of population health, epidemiology, and eHealth studies requires vast amounts of integrated digital d...

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Autores principales: Haithcoat, Timothy, Liu, Danlu, Young, Tiffany, Shyu, Chi-Ren
Formato: Online Artículo Texto
Lenguaje:English
Publicado: JMIR Publications 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9021952/
https://www.ncbi.nlm.nih.gov/pubmed/35311683
http://dx.doi.org/10.2196/35073
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author Haithcoat, Timothy
Liu, Danlu
Young, Tiffany
Shyu, Chi-Ren
author_facet Haithcoat, Timothy
Liu, Danlu
Young, Tiffany
Shyu, Chi-Ren
author_sort Haithcoat, Timothy
collection PubMed
description BACKGROUND: Enabling the use of spatial context is vital to understanding today’s digital health problems. Any given location is associated with many different contexts. The strategic transformation of population health, epidemiology, and eHealth studies requires vast amounts of integrated digital data. Needed is a novel analytical framework designed to leverage location to create new contextual knowledge. The Geospatial Analytical Research Knowledgebase (GeoARK), a web-based research resource has robust, locationally integrated, social, environmental, and infrastructural information to address today’s complex questions, investigate context, and spatially enable health investigations. GeoARK is different from other Geographic Information System (GIS) resources in that it has taken the layered world of the GIS and flattened it into a big data table that ties all the data and information together using location and developing its context. OBJECTIVE: It is paramount to build a robust spatial data analytics framework that integrates social, environmental, and infrastructural knowledge to empower health researchers’ use of geospatial context to timely answer population health issues. The goal is twofold in that it embodies an innovative technological approach and serves to ease the educational burden for health researchers to think spatially about their problems. METHODS: A unique analytical tool using location as the key was developed. It allows integration across source, geography, and time to create a geospatial big table with over 162 million individual locations (X-Y points that serve as rows) and 5549 attributes (represented as columns). The concept of context (adjacency, proximity, distance, etc) is quantified through geoanalytics and captured as new distance, density, or neighbor attributes within the system. Development of geospatial analytics permits contextual extraction and investigator-initiated eHealth and mobile health (mHealth) analysis across multiple attributes. RESULTS: We built a unique geospatial big data ecosystem called GeoARK. Analytics on this big table occur across resolution groups, sources, and geographies for extraction and analysis of information to gain new insights. Case studies, including telehealth assessment in North Carolina, national income inequality and health outcome disparity, and a Missouri COVID-19 risk assessment, demonstrate the capability to support robust and efficient geospatial understanding of a wide spectrum of population health questions. CONCLUSIONS: This research identified, compiled, transformed, standardized, and integrated multifaceted data required to better understand the context of health events within a large location-enabled database. The GeoARK system empowers health professionals to engage more complex research where the synergisms of health and geospatial information will be robustly studied beyond what could be accomplished today. No longer is the need to know how to perform geospatial processing an impediment to the health researcher, but rather the development of how to think spatially becomes the greater challenge.
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spelling pubmed-90219522022-04-22 Investigating Health Context Using a Spatial Data Analytical Tool: Development of a Geospatial Big Data Ecosystem Haithcoat, Timothy Liu, Danlu Young, Tiffany Shyu, Chi-Ren JMIR Med Inform Original Paper BACKGROUND: Enabling the use of spatial context is vital to understanding today’s digital health problems. Any given location is associated with many different contexts. The strategic transformation of population health, epidemiology, and eHealth studies requires vast amounts of integrated digital data. Needed is a novel analytical framework designed to leverage location to create new contextual knowledge. The Geospatial Analytical Research Knowledgebase (GeoARK), a web-based research resource has robust, locationally integrated, social, environmental, and infrastructural information to address today’s complex questions, investigate context, and spatially enable health investigations. GeoARK is different from other Geographic Information System (GIS) resources in that it has taken the layered world of the GIS and flattened it into a big data table that ties all the data and information together using location and developing its context. OBJECTIVE: It is paramount to build a robust spatial data analytics framework that integrates social, environmental, and infrastructural knowledge to empower health researchers’ use of geospatial context to timely answer population health issues. The goal is twofold in that it embodies an innovative technological approach and serves to ease the educational burden for health researchers to think spatially about their problems. METHODS: A unique analytical tool using location as the key was developed. It allows integration across source, geography, and time to create a geospatial big table with over 162 million individual locations (X-Y points that serve as rows) and 5549 attributes (represented as columns). The concept of context (adjacency, proximity, distance, etc) is quantified through geoanalytics and captured as new distance, density, or neighbor attributes within the system. Development of geospatial analytics permits contextual extraction and investigator-initiated eHealth and mobile health (mHealth) analysis across multiple attributes. RESULTS: We built a unique geospatial big data ecosystem called GeoARK. Analytics on this big table occur across resolution groups, sources, and geographies for extraction and analysis of information to gain new insights. Case studies, including telehealth assessment in North Carolina, national income inequality and health outcome disparity, and a Missouri COVID-19 risk assessment, demonstrate the capability to support robust and efficient geospatial understanding of a wide spectrum of population health questions. CONCLUSIONS: This research identified, compiled, transformed, standardized, and integrated multifaceted data required to better understand the context of health events within a large location-enabled database. The GeoARK system empowers health professionals to engage more complex research where the synergisms of health and geospatial information will be robustly studied beyond what could be accomplished today. No longer is the need to know how to perform geospatial processing an impediment to the health researcher, but rather the development of how to think spatially becomes the greater challenge. JMIR Publications 2022-04-06 /pmc/articles/PMC9021952/ /pubmed/35311683 http://dx.doi.org/10.2196/35073 Text en ©Timothy Haithcoat, Danlu Liu, Tiffany Young, Chi-Ren Shyu. Originally published in JMIR Medical Informatics (https://medinform.jmir.org), 06.04.2022. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work, first published in JMIR Medical Informatics, is properly cited. The complete bibliographic information, a link to the original publication on https://medinform.jmir.org/, as well as this copyright and license information must be included.
spellingShingle Original Paper
Haithcoat, Timothy
Liu, Danlu
Young, Tiffany
Shyu, Chi-Ren
Investigating Health Context Using a Spatial Data Analytical Tool: Development of a Geospatial Big Data Ecosystem
title Investigating Health Context Using a Spatial Data Analytical Tool: Development of a Geospatial Big Data Ecosystem
title_full Investigating Health Context Using a Spatial Data Analytical Tool: Development of a Geospatial Big Data Ecosystem
title_fullStr Investigating Health Context Using a Spatial Data Analytical Tool: Development of a Geospatial Big Data Ecosystem
title_full_unstemmed Investigating Health Context Using a Spatial Data Analytical Tool: Development of a Geospatial Big Data Ecosystem
title_short Investigating Health Context Using a Spatial Data Analytical Tool: Development of a Geospatial Big Data Ecosystem
title_sort investigating health context using a spatial data analytical tool: development of a geospatial big data ecosystem
topic Original Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9021952/
https://www.ncbi.nlm.nih.gov/pubmed/35311683
http://dx.doi.org/10.2196/35073
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