Uncertainty in Geospatial Health: Challenges and Opportunities Ahead
Topics: Geographic Information Science and Systems
, Medical and Health Geography
, Spatial Analysis & Modeling
Keywords: Uncertainty, Geocoding, Geoimputation, GIS, Residential Mobility, Census Data, Medical Geography
Session Type: Virtual Paper Abstract
Day: Monday
Session Start / End Time: 2/28/2022 08:00 AM (Eastern Time (US & Canada)) - 2/28/2022 09:20 AM (Eastern Time (US & Canada))
Room: Virtual 56
Authors:
Eric M Delmelle, University of North Carolina at Charlotte; University of Eastern Finland
Michael Richard Desjardins, Johns Hopkins Bloomberg School of Public Health
Paul Jung, University of North Carolina at Charlotte
Claudio Owusu, Centers for Disease Control and Prevention
Yu Lan, University of North Carolina at Charlotte
Alexander Hohl, The University of Utah
Coline Dony, American Association of Geographers
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Abstract
Uncertainty is not always well captured, understood, or modeled properly, and can bias the robustness of complex relationships, such as the association between the environment and public health through exposure, estimates of geographic accessibility and cluster detection, to name a few. We review current challenges and future opportunities as geospatial data and analyses are applied to the field of public health. We are particularly interested in the sources of uncertainty in geospatial data and how this uncertainty may propagate in spatial analysis. We present opportunities to reduce the magnitude and impact of uncertainty. Specifically, we focus on (1) the use of multiple reference data sources to reduce geocoding errors, (2) the validity of online geocoders and how confidentiality (e.g. HIPAA) may be breached, (3) use of multiple reference data sources to reduce geocoding errors, (4) the impact of geoimputation techniques on travel estimates, (5) residential mobility and how it affects accessibility metrics and clustering, and (6) modeling errors in the American Community Survey. Our paper discusses how to communicate spatial and spatiotemporal uncertainty, and high performance computing to conduct large amounts of simulations to ultimately increase statistical robustness for studies in public health. Our paper contributes to recent efforts to fill in knowledge gaps at the intersection of spatial uncertainty and public health
Uncertainty in Geospatial Health: Challenges and Opportunities Ahead
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Virtual Paper Abstract
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