DocumentCode :
1791743
Title :
Spatial big data analytics of influenza epidemic in Vellore, India
Author :
Lopez, D. ; Gunasekaran, M. ; Murugan, B. Senthil ; Kaur, Harleen ; Abbas, Kaja M.
Author_Institution :
Sch. of Inf. Technol. & Eng., VIT Univ., Vellore, India
fYear :
2014
fDate :
27-30 Oct. 2014
Firstpage :
19
Lastpage :
24
Abstract :
The study objective is to develop a big spatial data model to predict the epidemiological impact of influenza in Vellore, India. Large repositories of geospatial and health data provide vital statistics on surveillance and epidemiological metrics, and valuable insight into the spatiotemporal determinants of disease and health. The integration of these big data sources and analytics to assess risk factors and geospatial vulnerability can assist to develop effective prevention and control strategies for influenza epidemics and optimize allocation of limited public health resources. We used the spatial epidemiology data of the HIN1 epidemic collected at the National Informatics Center during 2009-2010 in Vellore. We developed an ecological niche model based on geographically weighted regression for predicting influenza epidemics in Vellore, India during 2013-2014. Data on rainfall, temperature, wind speed, humidity and population are included in the geographically weighted regression analysis. We inferred positive correlations for H1N1 influenza prevalence with rainfall and wind speed, and negative correlations for H1N1 influenza prevalence with temperature and humidity. We evaluated the results of the geographically weighted regression model in predicting the spatial distribution of the influenza epidemic during 2013-2014.
Keywords :
Big Data; diseases; humidity; medical computing; regression analysis; wind; Big Data sources; H1N1 influenza prevalence; HIN1 epidemic; India; National Informatics Center; Vellore; ecological niche model; epidemiological metrics; geographically weighted regression analysis; geospatial vulnerability; humidity data; influenza epidemic; influenza epidemic control strategies; influenza epidemic prevention strategies; influenza epidemiological impact prediction; large-geospatial data repositories; large-health data repositories; negative correlations; optimal public health resource allocation; population data; positive correlations; rainfall data; risk factor assessment; spatial Big Data analytics; spatial distribution prediction; spatial epidemiology data; spatiotemporal determinants; surveillance metrics; temperature data; wind speed data; Biological system modeling; Correlation; Diseases; Humidity; Influenza; Predictive models; Wind speed; H1N1 influenza; disease forecasting; ecological niche model; epidemiology; geographically weighted regression;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Big Data (Big Data), 2014 IEEE International Conference on
Conference_Location :
Washington, DC
Type :
conf
DOI :
10.1109/BigData.2014.7004422
Filename :
7004422
Link To Document :
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