Relapses in canine leishmaniosis: risk factors identified through mixed-effects logistic regression

Canine leishmaniosis (CanL), caused by Leishmania infantum, is an important vector-borne parasitic disease in dogs with implications for human health. Despite advancements, managing CanL remains challenging due to its complexity, especially in chronic, relapsing cases. Mathematical modeling has emer...

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Veröffentlicht in:Parasites & vectors 2024-08, Vol.17 (1), p.357-9, Article 357
Hauptverfasser: Sarquis, Juliana, Raposo, Letícia Martins, Sanz, Carolina R, Montoya, Ana, Barrera, Juan Pedro, Checa, Rocío, Perez-Montero, Blanca, Rodríguez, María Luisa Fermín, Miró, Guadalupe
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Sprache:eng
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Zusammenfassung:Canine leishmaniosis (CanL), caused by Leishmania infantum, is an important vector-borne parasitic disease in dogs with implications for human health. Despite advancements, managing CanL remains challenging due to its complexity, especially in chronic, relapsing cases. Mathematical modeling has emerged as a powerful tool in various medical fields, but its application in understanding CanL relapses remains unexplored. This retrospective study aimed to investigate risk factors associated with disease relapse in a cohort of dogs naturally infected with L. infantum. Data from 291 repeated measures of 54 dogs meeting the inclusion criteria were included. Two logistic mixed-effects models were created to identify clinicopathological variables associated with an increased risk of clinical relapses requiring a leishmanicidal treatment in CanL. A backward elimination approach was employed, starting with a full model comprising all potential predictors. Variables were iteratively eliminated on the basis of their impact on the model, considering both statistical significance and model complexity. All analyses were conducted using R software, primarily employing the lme4 package, and applying a significance level of 5% (P 
ISSN:1756-3305
1756-3305
DOI:10.1186/s13071-024-06423-1