Correlation between normalized difference vegetation index and malaria in a subtropical rain forest undergoing rapid anthropogenic alteration

Time-series of coarse-resolution greenness values derived through remote sensing have been used as a surrogate environmental variable to help monitor and predict occurrences of a number of vector-borne and zoonotic diseases, including malaria. Often, relationships between a remotely-sensed index of...

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Main Authors: Nicole M. Wayant, Diego Maldonado, Antonieta Rojas de Arias, Blanca Cousiño, Douglas G. Goodin
Format: Article
Language:English
Published: PAGEPress Publications 2010-05-01
Series:Geospatial Health
Subjects:
Online Access:http://www.geospatialhealth.net/index.php/gh/article/view/199
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spelling doaj-e5e2e994b8e440daab285a695bab77ef2020-11-25T02:49:48ZengPAGEPress PublicationsGeospatial Health1827-19871970-70962010-05-014217919010.4081/gh.2010.199199Correlation between normalized difference vegetation index and malaria in a subtropical rain forest undergoing rapid anthropogenic alterationNicole M. Wayant0Diego Maldonado1Antonieta Rojas de Arias2Blanca Cousiño3Douglas G. Goodin4Center For Advanced Land Management Information Technologies University of Nebraska – Lincoln Lincoln, NEDepartment of Mathematics Kansas State University Manhattan, KSCentro para el Desarollo de la Investigación Científica CEDIC/R&D Díaz Gill/Fundación Moisés Bertoni, Paí Pérez 265 es. Mcal EstigarribiaServicio Nacional de Erradicación y Control de Vectores (SENEPA) Manuel Domínguez c/ Brasil AsuncionDepartment of Geography Kansas State University Manhattan, KSTime-series of coarse-resolution greenness values derived through remote sensing have been used as a surrogate environmental variable to help monitor and predict occurrences of a number of vector-borne and zoonotic diseases, including malaria. Often, relationships between a remotely-sensed index of greenness, e.g. the normalized difference vegetation index (NDVI), and disease occurrence are established using temporal correlation analysis. However, the strength of these correlations can vary depending on type and change of land cover during the period of record as well as inter-annual variations in the climate drivers (precipitation, temperature) that control the NDVI values. In this paper, the correlation between a long (260 months) time-series of monthly disease case rates and NDVI values derived from the Global Inventory Modeling and Mapping Studies (GIMMS) data set were analysed for two departments (administrative units) located in the Atlantic Forest biome of eastern Paraguay. Each of these departments has undergone extensive deforestation during the period of record and our analysis considers the effect on correlation of active versus quiescent periods of case occurrence against a background of changing land cover. Our results show that time-series data, smoothed using the Fourier Transform tool, showed the best correlation. A moving window analysis suggests that four years is the optimum time frame for correlating these values, and the strength of correlation depends on whether it is an active or a quiescent period. Finally, a spatial analysis of our data shows that areas where land cover has changed, particularly from forest to non-forest, are well correlated with malaria case rates.http://www.geospatialhealth.net/index.php/gh/article/view/199malaria, normalized difference vegetation index, time-series, land cover, Paraguay.
collection DOAJ
language English
format Article
sources DOAJ
author Nicole M. Wayant
Diego Maldonado
Antonieta Rojas de Arias
Blanca Cousiño
Douglas G. Goodin
spellingShingle Nicole M. Wayant
Diego Maldonado
Antonieta Rojas de Arias
Blanca Cousiño
Douglas G. Goodin
Correlation between normalized difference vegetation index and malaria in a subtropical rain forest undergoing rapid anthropogenic alteration
Geospatial Health
malaria, normalized difference vegetation index, time-series, land cover, Paraguay.
author_facet Nicole M. Wayant
Diego Maldonado
Antonieta Rojas de Arias
Blanca Cousiño
Douglas G. Goodin
author_sort Nicole M. Wayant
title Correlation between normalized difference vegetation index and malaria in a subtropical rain forest undergoing rapid anthropogenic alteration
title_short Correlation between normalized difference vegetation index and malaria in a subtropical rain forest undergoing rapid anthropogenic alteration
title_full Correlation between normalized difference vegetation index and malaria in a subtropical rain forest undergoing rapid anthropogenic alteration
title_fullStr Correlation between normalized difference vegetation index and malaria in a subtropical rain forest undergoing rapid anthropogenic alteration
title_full_unstemmed Correlation between normalized difference vegetation index and malaria in a subtropical rain forest undergoing rapid anthropogenic alteration
title_sort correlation between normalized difference vegetation index and malaria in a subtropical rain forest undergoing rapid anthropogenic alteration
publisher PAGEPress Publications
series Geospatial Health
issn 1827-1987
1970-7096
publishDate 2010-05-01
description Time-series of coarse-resolution greenness values derived through remote sensing have been used as a surrogate environmental variable to help monitor and predict occurrences of a number of vector-borne and zoonotic diseases, including malaria. Often, relationships between a remotely-sensed index of greenness, e.g. the normalized difference vegetation index (NDVI), and disease occurrence are established using temporal correlation analysis. However, the strength of these correlations can vary depending on type and change of land cover during the period of record as well as inter-annual variations in the climate drivers (precipitation, temperature) that control the NDVI values. In this paper, the correlation between a long (260 months) time-series of monthly disease case rates and NDVI values derived from the Global Inventory Modeling and Mapping Studies (GIMMS) data set were analysed for two departments (administrative units) located in the Atlantic Forest biome of eastern Paraguay. Each of these departments has undergone extensive deforestation during the period of record and our analysis considers the effect on correlation of active versus quiescent periods of case occurrence against a background of changing land cover. Our results show that time-series data, smoothed using the Fourier Transform tool, showed the best correlation. A moving window analysis suggests that four years is the optimum time frame for correlating these values, and the strength of correlation depends on whether it is an active or a quiescent period. Finally, a spatial analysis of our data shows that areas where land cover has changed, particularly from forest to non-forest, are well correlated with malaria case rates.
topic malaria, normalized difference vegetation index, time-series, land cover, Paraguay.
url http://www.geospatialhealth.net/index.php/gh/article/view/199
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