Modelling zoonotic diseases in humans: comparison of methods for hantavirus in Sweden

Publication type: 

EDENext Number (or EDEN No): 

EDENext054

Authors: 

Caroline B Zeimes, Gert E Olsson, Clas Ahlm and Sophie O Vanwambeke

Bibliography Partner: 

Journal: 

Status: 

Year: 

2012

Reference: 

International Journal of Health Geographics 2012, 11:39 doi:10.1186/1476-072X-11-39 Published: 17 September 2012

Host: 

Pathogen: 

Data description: 

NE Occurrence modelling, Northern Sweden, Maxent, Logistic and Boosted Regression

Keywords: 

Spatial Models, Maxent, Logistic, Boosted Regression, Sweded, Neuopathica endemica, Myodes glareolus, hantavirus

Abstract: 

Because their distribution usually depends on the presence of more than one species, modelling zoonotic diseases in humans differs from modelling individual species distribution even though the data are similar in nature. Three approaches can be used to model spatial distributions recorded by points: based on presence/absence, presence/available or presence data. Here, we compared one or two of several existing methods for each of these approaches. Human cases of hantavirus infection reported by place of infection between 1991 and 1998 in Sweden were used as a case study. Puumala virus (PUUV), the most common hantavirus in Europe, circulates among bank voles (Myodes glareolus). In northern Sweden, it causes nephropathia epidemica (NE) in humans, a mild form of hemorrhagic fever with renal syndrome. Logistic binomial regression and boosted regression trees were used to model presence and absence data. Presence and available sites (where the disease may occur) were modelled using cross-validated logistic regression. Finally, the ecological niche model MaxEnt, based on presence-only data, was used. In our study, logistic regression had the best predictive power, followed by boosted regression trees, MaxEnt and cross-validated logistic regression. It is also the most statistically reliable but requires absence data. The cross-validated method partly avoids the issue of absence data but requires fastidious calculations. MaxEnt accounts for non-linear responses but the estimators can be complex. The advantages and disadvantages of each method are reviewed.