Literature DB >> 18816273

An assessment of the effect of data partitioning on the performance of modelling algorithms for habitat suitability for ticks.

A Estrada-Peña1, W Thuiller.   

Abstract

A comparison of the performance of five modelling methods using presence/absence (generalized additive models, discriminant analysis) or presence-only (genetic algorithm for rule-set prediction, ecological niche factor analysis, Gower distance) data for modelling the distribution of the tick species Boophilus decoloratus (Koch, 1844) (Acarina: Ixodidae) at a continental scale (Africa) using climate data was conducted. This work explicitly addressed the usefulness of clustering using the normalized difference vegetation index (NDVI) to split original records and build partial models for each region (cluster) as a method of improving model performance. Models without clustering have a consistently lower performance (as measured by sensitivity and area under the curve [AUC]), although presence/absence models perform better than presence-only models. Two cluster-related variables, namely, prevalence (commonness of tick records in the cluster) and marginality (the relative position of the climate niche occupied by the tick in relation to that available in the cluster) greatly affect the performance of each model (P < 0.05). Both sensitivity and AUC are better for NDVI-derived clusters where the tick is more prevalent or its marginality is low. However, the total size of the cluster or its fragmentation (measured by Shannon's evenness index) did not affect the performance of models. Models derived separately for each cluster produced the best output but resulted in a patchy distribution of predicted occurrence. The use of such a method together with weighting procedures based on prevalence and marginality as derived from populations at each cluster produced a slightly lower predictive performance but a better estimation of the continental distribution of the tick. Therefore, cluster-derived models are able to effectively capture restricting conditions for different tick populations at a regional level. It is concluded that data partitioning is a powerful method with which to describe the climate niche of populations of a tick species, as adapted to local conditions. The use of this methodology greatly improves the performance of climate suitability models.

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Year:  2008        PMID: 18816273     DOI: 10.1111/j.1365-2915.2008.00745.x

Source DB:  PubMed          Journal:  Med Vet Entomol        ISSN: 0269-283X            Impact factor:   2.739


  5 in total

1.  Occurrence patterns of Afrotropical ticks (Acari: Ixodidae) in the climate space are not correlated with their taxonomic relationships.

Authors:  Agustín Estrada-Peña; Adrián Estrada-Sánchez; David Estrada-Sánchez
Journal:  PLoS One       Date:  2012-05-22       Impact factor: 3.240

2.  Shrubby cinquefoil (Dasiphora fruticosa (L.) Rydb.) mapping in Northwestern Estonia based upon site similarities.

Authors:  Kalle Remm; Liina Remm
Journal:  BMC Ecol       Date:  2017-02-21       Impact factor: 2.964

3.  The significance of region-specific habitat models as revealed by habitat shifts of grey-faced buzzard in response to different agricultural schedules.

Authors:  Kensuke Kito; Go Fujita; Fumitaka Iseki; Tadashi Miyashita
Journal:  Sci Rep       Date:  2021-11-24       Impact factor: 4.379

4.  Phylogeographic analysis reveals association of tick-borne pathogen, Anaplasma marginale, MSP1a sequences with ecological traits affecting tick vector performance.

Authors:  Agustín Estrada-Peña; Victoria Naranjo; Karina Acevedo-Whitehouse; Atilio J Mangold; Katherine M Kocan; José de la Fuente
Journal:  BMC Biol       Date:  2009-09-01       Impact factor: 7.431

5.  Assessing the effects of variables and background selection on the capture of the tick climate niche.

Authors:  Agustín Estrada-Peña; Adrián Estrada-Sánchez; David Estrada-Sánchez; José de la Fuente
Journal:  Int J Health Geogr       Date:  2013-09-26       Impact factor: 3.918

  5 in total

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