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Monitoring wolves (<Emphasis Type="BoldItalic">Canis lupus</Emphasis>) by non-invasive genetics and camera trapping: a small-scale pilot study
Authors:Marco Galaverni  Davide Palumbo  Elena Fabbri  Romolo Caniglia  Claudia Greco  Ettore Randi
Institution:1.Istituto Superiore per la Protezione e la Ricerca Ambientale (ISPRA),Laboratorio di genetica,Ozzano dell’Emilia,Italy;2.Parco Regionale del Corno alle Scale,Lizzano in Belvedere,Italy
Abstract:Monitoring populations of elusive large carnivores like wolves (Canis lupus), which are often distributed at low density in widespread forested areas, is difficult or exceedingly expensive. Aiming to assess the power of two indirect monitoring methods, non-invasive genetic sampling and camera trapping, we designed a small-scale pilot study that was carried out from 2006 to 2008 in and around the Corno alle Scale Regional Park, Bologna, northern Italian Apennine. We collected 103 non-invasive samples (mainly scats) that were genotyped at 12 microsatellite loci and sexed using the ZFX gene. We identified 11 distinct wolf genotypes within the park and four wolf genotypes outside. Spatial locations and kinship analyses showed that the wolves belong to three different packs. The breeding pair of the ‘Park’ pack showed a complete turnover in the two sampling seasons. Two dogs, but no hybrids, were identified in the area. Up to five unbaited camera traps were activated (for 1,250 trapping-nights) close to recent wolf presence marks. We obtained 103 photos of wolves, documenting the reproduction events, the minimum number of adult and young wolves, and phenotype information each year. We obtained information on health conditions detecting probable sarcoptic mange in three individuals. Camera trapping also showed that the presence of wolves in a chase area during wild boar (Sus scrofa) hunting sessions was significantly higher in the nights just after a chase (P?χ 2 test; P?
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