
pmid: 18558047
pmc: PMC2483570
Having information about preexisting chronic diseases and available public health assets is critical to ensuring an adequate public health response to natural disasters and acts of terrorism. We describe a method to derive this information using a combination of data from the Behavioral Risk Factor Surveillance System and geographic information systems (GIS) technology. Our demonstration focuses on counties in states that are within 100 miles of the Gulf of Mexico and the Atlantic Ocean coastlines. To illustrate the flexible nature of planning made possible through the interactive use of a GIS, we use a hypothetical scenario of a hurricane making landfall in Myrtle Beach, South Carolina.
South Carolina, public health, Disaster Planning, GIS technology, Disasters, Behavioral Risk Factor Surveillance System, natural disaster response, Chronic Disease, Geographic Information Systems, Humans, BRFSS, Public aspects of medicine, RA1-1270, rapid public health response, Needs Assessment
South Carolina, public health, Disaster Planning, GIS technology, Disasters, Behavioral Risk Factor Surveillance System, natural disaster response, Chronic Disease, Geographic Information Systems, Humans, BRFSS, Public aspects of medicine, RA1-1270, rapid public health response, Needs Assessment
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