2016
DOI: 10.1186/s12936-015-1044-1
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Spatially variable risk factors for malaria in a geographically heterogeneous landscape, western Kenya: an explorative study

Abstract: BackgroundLarge reductions in malaria transmission and mortality have been achieved over the last decade, and this has mainly been attributed to the scale-up of long-lasting insecticidal bed nets and indoor residual spraying with insecticides. Despite these gains considerable residual, spatially heterogeneous, transmission remains. To reduce transmission in these foci, researchers need to consider the local demographical, environmental and social context, and design an appropriate set of interventions. Explori… Show more

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Cited by 199 publications
(321 citation statements)
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“…Two regression models were developed for comparison; one using adaptive method of kernel where the computer was allowed to choose the optimal bandwidth for the distance or number of neighbors. An adaptive kernel function looks at an adaptive number neighbours and the influence of these neighbours decays a Gaussian distribution so that closer observations have more weight (Homan et al, 2016). The other model employed a fixed kernel distance of 5km to determine the neighbors to be used in the regression computation.…”
Section: Spatial Regression: Geographically Weighted Regressionmentioning
confidence: 99%
“…Two regression models were developed for comparison; one using adaptive method of kernel where the computer was allowed to choose the optimal bandwidth for the distance or number of neighbors. An adaptive kernel function looks at an adaptive number neighbours and the influence of these neighbours decays a Gaussian distribution so that closer observations have more weight (Homan et al, 2016). The other model employed a fixed kernel distance of 5km to determine the neighbors to be used in the regression computation.…”
Section: Spatial Regression: Geographically Weighted Regressionmentioning
confidence: 99%
“…The island is located between 0°20′51.53″-0°26′33.73″ South, and 34°13′43.19″-34°07′23.78″ East) (Homan, Maire et al 2016). Administratively, Rusinga Island is part of Homabay County in western Kenya (Figure 4: courtesy of Homan et.…”
Section: The Solarmal Projectmentioning
confidence: 99%
“…Due to the island's close proximity to the mainland, the waterway separating Rusinga Island from the mainland was filled in 1985 and a road to Rusinga Island was constructed to facilitate the transportation of people, goods and services Nagi, Chadeka et al 2014). A project-initiated census carried out in 2012 revealed the community consisted roughly of 4,063 homesteads and 23,337 inhabitants (Homan, Maire et al 2016). Most of the residential areas were situated between 1100 and 1200 metres above sea level around the lakeshore of the island (Homan, Maire et al 2016).…”
Section: Study Site and Populationmentioning
confidence: 99%
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