Comparing spatial statistical methods to detect amphibian road mortality hotspots.

Animal mortality on roads is one of the main concerns on wildlife conservation. Due to their habitat requirements, amphibians became one of the most commonly road-killed group and this may affect their population viability. Implementation of mitigation measures may overcome the problem. However, due to the extensive road network, their application is very expensive and required a better understanding in where they should be implemented. Mortality hotspots can be identified as clusters of road-killed records) using GIS (Geographic Information Systems). Although there are several statistical methods available, it is lacking a comparison analysis of them in order to understand their pros and contras. The aim of this study was to analyse possible differences between global, multi-scale and local spatial analysis methods in defining hotspots using amphibian road fatality data collected in northern Portugal country roads. We calculated the Nearest neighbor index, Morans I and Getis-ord General in order to compare the global clustering of points in seven sampled roads, and three were identified as clustered. We used Ripley K-function, Ripley L-function and F function to calculate the best scale for Malo's equation and Kernel density analysis in detecting hotspots and we compared their detection performance with Local Indicators of Association (LISA) (i.e Local Moran's I and Getis-ord Gi). Three different GIS software applications were used: ArcGis, Quantum GIS with R (opensource) and GeoDa (opensource). Results showed the importance of using multidistance spatial cluster analysis to define the best scale for hotspot detection with Malo´s equation and Kernel density analysis. Here we also suggest the advantages of Local Indicators of Association (LISA) for detecting clusters with the contribution of each individual observation (Local Morans I and Getis-ord Gi).

Data and Resources

Cite as

Matos C. Sillero N. y Argaña E. Comparing spatial statistical methods to detect amphibian road mortality hotspots. Infrastructure & Ecology Network Europe, 2012.

Clipboard Icon
Retrieved: 22 Jan 2025 02:26:16

Metadata

Basic information
Resource type Text
Date of creation 2024-12-02
Date of last revision 2025-01-21
Show changelog
Metadata identifier cb339be7-0b44-5af9-8966-b76e1f01bd40
Metadata language Spanish
Themes (NTI-RISP)
High-value dataset category
ISO 19115 topic category
Keyword URIs
Bibliographic information
Name of the dataset creator Matos, C., Sillero, N. y Argaña, E.
Name of the dataset editor Infrastructure & Ecology Network Europe
Other identifier ISBN: 978-91-89232-80-8
Identifier of the dataset creator
Email of the dataset creator
Website of the dataset creator
Provenance
Lineage statement
Metadata Standard
Version notes
Version