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Abstract:

A first step in understanding the ecology of rodents as reservoirs and their relation with the disease they transmit is to determine their geographical distribution. This distribution can be modeled as a function of environmental variables. We georeferenced an extensive database of hantavirus reservoir Oligoryzomys nigripes (Muridae: Sigmodontinae) records in Argentina and used generalized linear models (GLMs) and genetic algorithm for rule-set prediction (GARP) to model the presence probability of this rodent as a function of multiple environmental variables. The GLMs correctly classified 86% of the sites and gave a good prediction area. The GLMs with a spatial term resulted in a probable presence area that matched the rodent occurrences too tightly, and thus was not useful to speculate on potential distribution. The GARP model resulted in a broader probable presence area for the black-footed colilargo than regression models. We suggest that the GLMs without spatial term reflect the actual distribution and should be considered for hantavirus most urgent control plans, whereas the GARP model could be regarded as the most widespread potential distribution and thus considered in long-term plans. © 2009 by Walter de Gruyter.

Registro:

Documento: Artículo
Título:Distribution of the hantavirus reservoir Oligoryzomys nigripes in Argentina: Choosing spatial models for the actual and potential distribution of the black-footed colilargo
Autor:Carbajo, A.E.; Teta, P.
Filiación:Unidad de Ecología de Reservorios y Vectores de Parásitos, Depto. Ecología, Genética y Evolución, Universidad de Buenos Aires, Buenos Aires, Argentina
Museo Argentino de Ciencias Naturales Bernardino Rivadavia, Avenida Ángel Gallardo 470, C1405DJR Buenos Aires, Argentina
Palabras clave:Argentina; Black-footed colilargo; Hantavirus reservoir; Oligoryzomys nigripes; Spatial distribution; database; disease transmission; genetic algorithm; geographical distribution; linearity; reservoir; rodent; spatial distribution; virus; Argentina; Hantavirus; Muridae; Oligoryzomys nigripes; Oryzomys; Rodentia; Sigmodontinae
Año:2009
Volumen:73
Número:4
Página de inicio:313
Página de fin:321
DOI: http://dx.doi.org/10.1515/MAMM.2009.057
Título revista:Mammalia
Título revista abreviado:Mammalia
ISSN:00251461
CODEN:MAMLA
Registro:https://bibliotecadigital.exactas.uba.ar/collection/paper/document/paper_00251461_v73_n4_p313_Carbajo

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Citas:

---------- APA ----------
Carbajo, A.E. & Teta, P. (2009) . Distribution of the hantavirus reservoir Oligoryzomys nigripes in Argentina: Choosing spatial models for the actual and potential distribution of the black-footed colilargo. Mammalia, 73(4), 313-321.
http://dx.doi.org/10.1515/MAMM.2009.057
---------- CHICAGO ----------
Carbajo, A.E., Teta, P. "Distribution of the hantavirus reservoir Oligoryzomys nigripes in Argentina: Choosing spatial models for the actual and potential distribution of the black-footed colilargo" . Mammalia 73, no. 4 (2009) : 313-321.
http://dx.doi.org/10.1515/MAMM.2009.057
---------- MLA ----------
Carbajo, A.E., Teta, P. "Distribution of the hantavirus reservoir Oligoryzomys nigripes in Argentina: Choosing spatial models for the actual and potential distribution of the black-footed colilargo" . Mammalia, vol. 73, no. 4, 2009, pp. 313-321.
http://dx.doi.org/10.1515/MAMM.2009.057
---------- VANCOUVER ----------
Carbajo, A.E., Teta, P. Distribution of the hantavirus reservoir Oligoryzomys nigripes in Argentina: Choosing spatial models for the actual and potential distribution of the black-footed colilargo. Mammalia. 2009;73(4):313-321.
http://dx.doi.org/10.1515/MAMM.2009.057