2022
DOI: 10.1002/vms3.897
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Culex pipiens distribution in Tunisia: Identification of suitable areas through Random Forest and MaxEnt approaches

Abstract: Background Tunisia has experienced several West Nile virus (WNV) outbreaks since 1997. Yet, there is limited information on the spatial distribution of the main WNV mosquito vector Culex pipiens suitability at the national level. Objectives In the present study, our aim was to predict and evaluate the potential and current distribution of Cx. pipiens in Tunisia. Methods To this end, two species distribution models were used, i.e. MaxEnt and Random Forest. Occurrence records for Cx. pipiens were obtained from a… Show more

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Cited by 10 publications
(13 citation statements)
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“…The estimated WNV ecological suitability per freguesia of each ML model was combined to inform a metalearner model (Generalized Linear Model with negative weights) for a final estimation of local WNV ecological suitability per freguesia . For ML modelling classification of WNV present and pseudo-absent, we considered a conservative threshold of 0.5 (similar to previous studies 44,45 ). When performing machine learning with BRT and RF approaches, a balanced training dataset is recommended in terms of all possible classes for classification (in this case, present and pseudo-absent) 46 .…”
Section: Methodsmentioning
confidence: 99%
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“…The estimated WNV ecological suitability per freguesia of each ML model was combined to inform a metalearner model (Generalized Linear Model with negative weights) for a final estimation of local WNV ecological suitability per freguesia . For ML modelling classification of WNV present and pseudo-absent, we considered a conservative threshold of 0.5 (similar to previous studies 44,45 ). When performing machine learning with BRT and RF approaches, a balanced training dataset is recommended in terms of all possible classes for classification (in this case, present and pseudo-absent) 46 .…”
Section: Methodsmentioning
confidence: 99%
“…We considered a conservative threshold of 0.5 (like in previous similar studies 20,21 ) for classification (i.e. pseudo-absent classification was considered below 0.5 and present classification above 0.5).…”
Section: Supplementary Materials Textmentioning
confidence: 99%
“…As far as we know, this is what occurs with a large amount of the studies dealing with VBDs. As these kinds of studies are usually performed with public health purposes at regional or local scales, they often rely on regional/national datasets collected by administrations or NGOs whose range of action is defined by restricted geographical or political borders (i.e., country or even provinces' administrations) (e.g., [67][68][69]80,[83][84][85][86][87][88][89][90][91][92][93][94][95][96]98,99,101,[104][105][106][107][108][112][113][114][115][116][117]). The concern resides in the fact that ENM built with occurrence data restricted to artificial boundaries might consider only a subset of the environmental conditions experienced by a species across its entire range (i.e., "spatial niche truncation" [118]); therefore, providing an incomplete description of the environmental limits [109] and underestimating the environmental conditions that the species can withstand [111] (see an example in Figure 2).…”
Section: Global Versus Local Occurrence Datamentioning
confidence: 99%
“…Despite the sampling bias and the consequent non-independence of occurrences needing to be accounted for, a good number of the VBDs studies published in the last three years omitted declaring any procedure for dealing with the sampling bias [67,68,[80][81][82][83][84][85][86]88,89,91,[94][95][96]98,101,104,108,113,124,142].…”
Section: Sampling Bias and How To Deal Withmentioning
confidence: 99%
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