| Literature DB >> 28367364 |
Abhishek K Kala1, Chetan Tiwari2, Armin R Mikler3, Samuel F Atkinson1.
Abstract
BACKGROUND: The primary aim of the study reported here was to determine the effectiveness of utilizing local spatial variations in environmental data to uncover the statistical relationships between West Nile Virus (WNV) risk and environmental factors. Because least squares regression methods do not account for spatial autocorrelation and non-stationarity of the type of spatial data analyzed for studies that explore the relationship between WNV and environmental determinants, we hypothesized that a geographically weighted regression model would help us better understand how environmental factors are related to WNV risk patterns without the confounding effects of spatial non-stationarity.Entities:
Keywords: Avian impacts; Emerging infectious diseases; Geographic information systems (GIS); Model comparison; Spatial modeling; West Nile virus
Year: 2017 PMID: 28367364 PMCID: PMC5372833 DOI: 10.7717/peerj.3070
Source DB: PubMed Journal: PeerJ ISSN: 2167-8359 Impact factor: 2.984
Environmental conditions related to WNV transmission risk.
| Factors studied | Relation to WNV | References |
|---|---|---|
| Streams | Sites for breeding and resting | |
| Temperature | Increases growth rate of vector, decreases egg development cycle and shortens extrinsic incubation period of vector | |
| Surface slope | Water stagnation creating mosquito breeding ground | |
| Cultivated land | Linkage between habitat used and human-commensal nature of WNV mosquito vectors | |
| Developed land | Linkage between habitat used and human-commensal nature of WNV mosquito vectors; warmer microclimates | |
| Roads | Sites for breeding and resting along roadsides | |
| Vegetation | Sites for breeding and resting. | |
| Evapotranspiration | Related to the amount of moisture that is related to mosquito abundance |
Data sources.
| Data | Spatial resolution | Source |
|---|---|---|
| Elevation | 10 m | National Elevation Dataset (NED) |
| LST | 1 km | MODIS aboard the Terra and Aqua satellites |
| NDVI | 250 m | MODIS aboard the Terra and Aqua satellites |
| Evapotranspiration (ET) | 1 km | MODIS aboard the Terra and Aqua satellites |
| Streams | Available in vector format | US bureau of reclamation |
| Roads | Available in vector format | US Census bureau |
| Cultivated land | 30 m | National Land Cover Database |
| Developed land | 30 m | National Land Cover Database |
| WNV infected dead birds count | County scale | USGS National wildlife health center |
| WNV human incidence cases | County scale | USGS National wildlife health center |
| Human population | County scale | US Census bureau |
Figure 1Trendline plot for global LSR model (model: y = 0.6591x + 10.563; r2 = 0.66), dashed line ideal 1:1 relationship.
Figure 2Trendline plot for local GWR model (model: y = 0.6911x + 10.259; r2 = 0.75), dashed line ideal 1:1 relationship.
Figure 3Spatial distribution of (A) standardized residuals; (B) land surface temperature coefficients; (C) road density coefficients; and (D) stream coefficients.