Using web data to improve surveillance for heat sensitive health outcomes

Abstract Background Elevated and prolonged exposure to extreme heat is an important cause of excess summertime mortality and morbidity. To protect people from health threats, some governments are currently operating syndromic surveillance systems. However, A lack of resources to support time- and la...

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Main Authors: Jihoon Jung, Christopher K. Uejio, Chris Duclos, Melissa Jordan
Format: Article
Language:English
Published: BMC 2019-07-01
Series:Environmental Health
Subjects:
Online Access:http://link.springer.com/article/10.1186/s12940-019-0499-x
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spelling doaj-c6be74f12ec84670a6fb21a442f402862020-11-25T03:12:32ZengBMCEnvironmental Health1476-069X2019-07-0118111310.1186/s12940-019-0499-xUsing web data to improve surveillance for heat sensitive health outcomesJihoon Jung0Christopher K. Uejio1Chris Duclos2Melissa Jordan3Department of Geography, Florida State UniversityDepartment of Geography, Florida State UniversityFlorida Department of HealthFlorida Department of HealthAbstract Background Elevated and prolonged exposure to extreme heat is an important cause of excess summertime mortality and morbidity. To protect people from health threats, some governments are currently operating syndromic surveillance systems. However, A lack of resources to support time- and labor- intensive diagnostic and reporting processes make it difficult establishing region-specific surveillance systems. Big data created by social media and web search may improve upon the current syndromic surveillance systems by directly capturing people’s individual and subjective thoughts and feelings during heat waves. This study aims to investigate the relationship between heat-related web searches, social media messages, and heat-related health outcomes. Methods We collected Twitter messages that mentioned “air conditioning (AC)” and “heat” and Google search data that included weather, medical, recreational, and adaptation information from May 7 to November 3, 2014, focusing on the state of Florida, U.S. We separately associated web data against two different sources of health outcomes (emergency department (ED) and hospital admissions) and five disease categories (cardiovascular disease, dehydration, heat-related illness, renal disease, and respiratory disease). Seasonal and subseasonal temporal cycles were controlled using autoregressive moving average-generalized autoregressive conditional heteroscedasticity (ARMA-GARCH) and generalized linear model (GLM). Results The results show that the number of heat-related illness and dehydration cases exhibited a significant positive relationship with web data. Specifically, heat-related illness cases showed positive associations with messages (heat, AC) and web searches (drink, heat stroke, park, swim, and tired). In addition, terms such as park, pool, swim, and water tended to show a consistent positive relationship with dehydration cases. However, we found inconsistent relationships between renal illness and web data. Web data also did not improve the models for cardiovascular and respiratory illness cases. Conclusions Our findings suggest web data created by social medias and search engines could improve the current syndromic surveillance systems. In particular, heat-related illness and dehydration cases were positively related with web data. This paper also shows that activity patterns for reducing heat stress are associated with several health outcomes. Based on the results, we believe web data could benefit both regions without the systems and persistently hot and humid climates where excess heat early warning systems may be less effective.http://link.springer.com/article/10.1186/s12940-019-0499-xHeat waveExtreme heatPublic healthSurveillance systemTwitterGoogle search
collection DOAJ
language English
format Article
sources DOAJ
author Jihoon Jung
Christopher K. Uejio
Chris Duclos
Melissa Jordan
spellingShingle Jihoon Jung
Christopher K. Uejio
Chris Duclos
Melissa Jordan
Using web data to improve surveillance for heat sensitive health outcomes
Environmental Health
Heat wave
Extreme heat
Public health
Surveillance system
Twitter
Google search
author_facet Jihoon Jung
Christopher K. Uejio
Chris Duclos
Melissa Jordan
author_sort Jihoon Jung
title Using web data to improve surveillance for heat sensitive health outcomes
title_short Using web data to improve surveillance for heat sensitive health outcomes
title_full Using web data to improve surveillance for heat sensitive health outcomes
title_fullStr Using web data to improve surveillance for heat sensitive health outcomes
title_full_unstemmed Using web data to improve surveillance for heat sensitive health outcomes
title_sort using web data to improve surveillance for heat sensitive health outcomes
publisher BMC
series Environmental Health
issn 1476-069X
publishDate 2019-07-01
description Abstract Background Elevated and prolonged exposure to extreme heat is an important cause of excess summertime mortality and morbidity. To protect people from health threats, some governments are currently operating syndromic surveillance systems. However, A lack of resources to support time- and labor- intensive diagnostic and reporting processes make it difficult establishing region-specific surveillance systems. Big data created by social media and web search may improve upon the current syndromic surveillance systems by directly capturing people’s individual and subjective thoughts and feelings during heat waves. This study aims to investigate the relationship between heat-related web searches, social media messages, and heat-related health outcomes. Methods We collected Twitter messages that mentioned “air conditioning (AC)” and “heat” and Google search data that included weather, medical, recreational, and adaptation information from May 7 to November 3, 2014, focusing on the state of Florida, U.S. We separately associated web data against two different sources of health outcomes (emergency department (ED) and hospital admissions) and five disease categories (cardiovascular disease, dehydration, heat-related illness, renal disease, and respiratory disease). Seasonal and subseasonal temporal cycles were controlled using autoregressive moving average-generalized autoregressive conditional heteroscedasticity (ARMA-GARCH) and generalized linear model (GLM). Results The results show that the number of heat-related illness and dehydration cases exhibited a significant positive relationship with web data. Specifically, heat-related illness cases showed positive associations with messages (heat, AC) and web searches (drink, heat stroke, park, swim, and tired). In addition, terms such as park, pool, swim, and water tended to show a consistent positive relationship with dehydration cases. However, we found inconsistent relationships between renal illness and web data. Web data also did not improve the models for cardiovascular and respiratory illness cases. Conclusions Our findings suggest web data created by social medias and search engines could improve the current syndromic surveillance systems. In particular, heat-related illness and dehydration cases were positively related with web data. This paper also shows that activity patterns for reducing heat stress are associated with several health outcomes. Based on the results, we believe web data could benefit both regions without the systems and persistently hot and humid climates where excess heat early warning systems may be less effective.
topic Heat wave
Extreme heat
Public health
Surveillance system
Twitter
Google search
url http://link.springer.com/article/10.1186/s12940-019-0499-x
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