Introduction
Zoonoses are diseases transmitted between animals and humans and account for over 60% of emerging infections, most (72%) of them originating in wildlife (Jones et al., Reference Jones, Patel, Levy, Storeygard, Balk, Gittleman and Daszak2008). This highlights the importance of studying zoonotic pathogens and parasite communities in wild hosts (Smith et al., Reference Smith, Goldberg, Rosenthal, Carlson, Chen, Chen and Ramachandran2014; Destoumieux-Garzón et al., Reference Destoumieux-Garzón, Mavingui, Boetsch, Boissier, Darriet, Duboz, Fritsch, Giraudoux, Le Roux, Morand, Paillard, Pontier, Sueur and Voituron2018). We use “parasite” here in the ecological sense, encompassing viruses, bacteria, protozoa and macroparasites. Wildlife hosts are often exposed to multiple parasite species simultaneously (Gortázar et al., Reference Gortázar, Ruiz-Fons and Höfle2016; Moutailler et al., Reference Moutailler, Valiente Moro, Vaumourin, Michelet, Tran, Devillers, Cosson, Gasqui, Van, Mavingui, Vourc’h and Vayssier-Taussat2016; de Cock et al., Reference de Cock, de Vries, Fonville, Esser, Mehl, Ulrich, Joeres, Hoffmann, Eisenberg, Schmidt, Hulst, van der Poel, Sprong and Maas2023), leading to potential within-host parasite interactions (Cattadori et al., Reference Cattadori, Boag and Hudson2008; Ezenwa, Reference Ezenwa2016; Keegan et al., Reference Keegan, Pedersen and Fenton2024). Such interactions may complicate control strategies: for example, deworming treatments in African buffalo increased the spread of bovine tuberculosis (Ezenwa and Jolles, Reference Ezenwa and Jolles2015), while in wild mice, nematode removal led to increased protozoan infections due to disrupted parasite competition (Knowles et al., Reference Knowles, Fenton, Petchey, Jones, Barber and Pedersen2013; Pedersen and Antonovics, Reference Pedersen and Antonovics2013).
A key target of host-parasite ecological studies is thus to disentangle the effects of between-parasite interactions from other determinants of parasitism influencing the ‘twin pillars of infection’: exposure and susceptibility (Sweeny and Albery, Reference Sweeny and Albery2022). Exposure represents the likelihood of an individual encountering parasites in its environment, while susceptibility describes the probability of exposure leading to infection (Viney and Graham, Reference Viney and Graham2013; Civitello and Rohr, Reference Civitello and Rohr2014).
Individual exposure to parasites is influenced by the composition and density of the surrounding host community, which shape parasite and vector abundance, diversity, persistence and transmission dynamics (Arneberg et al., Reference Arneberg, Skorping, Grenfell and Read1998; Parker et al., Reference Parker, Saunders, Bontrager, Weitz, Hendricks, Magarey, Suiter and Gilbert2015; Horcajada-Sánchez et al., Reference Horcajada-Sánchez, Navarro-Castilla, Boadella and Barja2018). High host densities can promote transmission by increasing contact rates, enhancing faecal contamination of the environment, and providing resources for parasite and vector survival (Arneberg et al., Reference Arneberg, Skorping, Grenfell and Read1998). In this context, areas where livestock and wildlife co-occur may represent hotspots of parasite transmission. Having both wild and domestic hosts in shared environments (De Lucia et al., Reference De Lucia, Rabie, Smith, Davies, Ostanello, Ajayi, Petrovska and Martelli2018; Horcajada-Sánchez et al., Reference Horcajada-Sánchez, Navarro-Castilla, Boadella and Barja2018) can increase the likelihood of cross-species transmission and elevate individual exposure to generalist or environmentally persistent parasites (Pato et al., Reference Pato, Vázquez, Díez-Baños, López, Sánchez-Andrade, Díez-Baños, Panadero, Díaz and Morrondo2013; Sevila et al., Reference Sevila, Richomme, Hoste, Candela, Gilot-Fromont, Rodolakis, Cebe, Picot, Merlet and Verheyden2014; Parker et al., Reference Parker, Saunders, Bontrager, Weitz, Hendricks, Magarey, Suiter and Gilbert2015; Verheyden et al., Reference Verheyden, Richomme, Sevila, Merlet, Lourtet, Chaval and Hoste2020).
Individual behaviour also shapes parasite exposure (Barron et al., Reference Barron, Gervasi, Pruitt and Martin2015, Dougherty et al., Reference Dougherty, Seidel, Carlson, Spiegel and Getz2018). More active or exploratory individuals often show higher infection levels, likely due to increased exposure during movement and foraging (Dunn et al., Reference Dunn, Cole and Quinn2011; Patterson and Schulte-Hostedde, Reference Patterson and Schulte-Hostedde2011; Bohn et al., Reference Bohn, Webber, Florko, Paslawski, Peterson, Piche, Menzies and Willis2017; Santicchia et al., Reference Santicchia, Romeo, Ferrari, Matthysen, Vanlauwe, Wauters and Martinoli2019). These behaviours may vary with traits like sex, age, or personality, influencing home range size, habitat use and activity patterns (Sih et al., Reference Sih, Bell and Johnson2004; Bonnot et al., Reference Bonnot, Goulard, Hewison, Cargnelutti, Lourtet, Chaval and Morellet2018; Malagnino et al., Reference Malagnino, Marchand, Garel, Cargnelutti, Itty, Chaval, Hewison, Loison and Morellet2021). As a result, behavioural variation can affect (co-)exposure risk (Sih et al., Reference Sih, Spiegel, Godfrey, Leu and Bull2018; Brehm et al., Reference Brehm, Assis, Martin and Orrock2024) and contribute to individual differences in infection and co-infection patterns, shaping the parasite community within hosts (Fox et al., Reference Fox, Marion, Davidson, White and Hutchings2013; Dougherty et al., Reference Dougherty, Seidel, Carlson, Spiegel and Getz2018; Van den Broecke et al., Reference Van den Broecke, Bernaerts, Ribas, Sluydts, Mnyone, Matthysen and Leirs2021, Reference Van den Broecke, Tafompa, Mwamundela, Bernaerts, Ribas, Mnyone, Leirs and Mariën2023).
Among other factors, host susceptibility is related to the immune system’s ability to clear parasites, which itself is influenced by individual characteristics such as age, sex, or body condition, through differences in hormone production or resource allocation (Cross et al., Reference Cross, Drewe, Patrek, Pearce, Samuel, Delahay, Delahay, Smith and Hutchings2009). In the context of co-infection patterns, susceptibility to one parasite can also be linked to the presence of other parasites. Parasites differ in their nutritional and energetic needs and in their stimulation of host immunity (Ezenwa and Jolles, Reference Ezenwa and Jolles2015; Abbate et al., Reference Abbate, Galan, Razzauti, Sironen, Voutilainen, Henttonen, Gasqui, Cosson and Charbonnel2024). Their co-occurrence in a single host can lead to direct or indirect, negative or positive interactions through mechanisms such as immunomodulation or competition between parasites for the host resources (Telfer et al., Reference Telfer, Lambin, Birtles, Beldomenico, Burthe, Paterson and Begon2010; Dallas et al., Reference Dallas, Laine and Ovaskainen2019). For example, the presence of gastro-intestinal parasites may enhance the Th2 response and downregulate the Th1 response, thus increasing the susceptibility to some microparasites (Graham, Reference Graham2008). This situation has been observed in African buffalo, where nematode infection induced Th1 immunity suppression, increasing susceptibility to bovine tuberculosis (Ezenwa et al., Reference Ezenwa, Etienne, Luikart, Beja‐Pereira and Jolles2010). However, the relative impact of within-host parasite interactions and other determinants of immune response such as age, sex and body condition are not clearly established (Van den Broecke et al., Reference Van den Broecke, Bernaerts, Ribas, Sluydts, Mnyone, Matthysen and Leirs2021, Reference Van den Broecke, Tafompa, Mwamundela, Bernaerts, Ribas, Mnyone, Leirs and Mariën2023).
To investigate how exposure and susceptibility shape co-infection patterns in wildlife, we analysed individual variation in parasite communities in European roe deer (Capreolus capreolus), focusing on the influence of age, sex, behaviour and between-parasite interactions.
Roe deer populations are found throughout most of Europe, exploiting both forested and more open environments, including cultivated lands and livestock breeding areas (Linnell et al., Reference Linnell, Cretois, Nilsen, Rolandsen, Solberg, Veiberg, Kaczensky, Van Moorter, Panzacchi, Rauset and Kaltenborn2020). Such habitat use increases their likelihood for exposure to parasites, including those shared with humans and livestock (Sevila et al., Reference Sevila, Richomme, Hoste, Candela, Gilot-Fromont, Rodolakis, Cebe, Picot, Merlet and Verheyden2014; Beaumelle et al., Reference Beaumelle, Redman, Verheyden, Jacquiet, Bégoc, Veyssière, Benabed, Cargnelutti, Lourtet, Poirel, de Rijke, Yannic, Gilleard and Bourgoin2022). Additionally, there is high inter-individual variability in roe deer spatial behaviour, in terms of space use, home range structure and activity (Bonnot et al., Reference Bonnot, Verheyden, Blanchard, Cote, Debeffe, Cargnelutti, Klein, Hewison and Morellet2015, Reference Bonnot, Goulard, Hewison, Cargnelutti, Lourtet, Chaval and Morellet2018; Malagnino et al., Reference Malagnino, Marchand, Garel, Cargnelutti, Itty, Chaval, Hewison, Loison and Morellet2021) but strong repeatability for a given individual (Hewison et al., Reference Hewison, Vincent and Reby1998; Gervais et al., Reference Gervais, Hewison, Morellet, Bernard, Merlet, Cargnelutti, Chaval, Pujol and Quéméré2020; Khazar et al., Reference Khazar, Morellet, Hewison, Gervais, Verheyden, Loc’h G, Bonnet, Cèbe, Chaval, Geffré, Lourtet, Merlet and Bonnot2025). Moreover, immune parameters vary among classes of age and sex and with physiological profiles such as stress response in this species (Cheynel et al., Reference Cheynel, Lemaître, Gaillard, Rey, Bourgoin, Ferté, Jégo, Débias, Pellerin, Jacob and Gilot-Fromont2017; Carbillet et al., Reference Carbillet, Hollain, Rey, Palme, Pellerin, Regis, Geffré, Duhayer, Pardonnet, Debias, Merlet, Lemaître, Verheyden and Gilot-Fromont2023). These characteristics make roe deer a relevant biological model for investigating the link between exposure, susceptibility and the composition of parasite communities.
We used data from a roe deer population living in a rural area, where individuals were regularly captured and GPS tracked between 2016–2017 and 2019–2022, and where the presence of 11 parasites have been assessed. We expected several factors to influence the probability of parasite presence in roe deer.
(i) First, following the hypothesis that areas of contact between livestock and wild fauna favour interspecific transmission, we predicted that roe deer using areas where livestock and domestic animals are present should have an increased probability to carry parasites that are shared with domestic hosts (Pato et al., Reference Pato, Vázquez, Díez-Baños, López, Sánchez-Andrade, Díez-Baños, Panadero, Díaz and Morrondo2013; Sevila et al., Reference Sevila, Richomme, Hoste, Candela, Gilot-Fromont, Rodolakis, Cebe, Picot, Merlet and Verheyden2014). This may concern orofecally transmitted parasites such as Coccidia, Nematodirus spp. and Strongylidae (shared with livestock), Hepatitis E virus (excreted by pigs) and Toxoplasma gondii oocysts (excreted by cats that may live in proximity to livestock) as well as tick-borne parasites such as Anaplasma phagocytophilum (Chastagner et al., Reference Chastagner, Pion, Verheyden, Lourtet, Cargnelutti, Picot, Poux, Bard, Plantard, McCoy, Leblond, Vourc’h and Bailly2017).
(ii) Because immunity may differ between sexes and may be less efficient in naïve individuals, we expected that males and young roe deer should be more susceptible to infection and thus showed higher infection probability (Cross et al., Reference Cross, Drewe, Patrek, Pearce, Samuel, Delahay, Delahay, Smith and Hutchings2009; La Peña E et al., Reference De La Peña, Martín, Barja, Pérez‐Caballero, Acosta and Carranza2020).
(iii) Third, because exposure to parasites should increase with increasing levels of exploratory activity, we expected individual activity level to be positively correlated with parasite presence and species richness (Bohn et al., Reference Bohn, Webber, Florko, Paslawski, Peterson, Piche, Menzies and Willis2017; Santicchia et al., Reference Santicchia, Romeo, Ferrari, Matthysen, Vanlauwe, Wauters and Martinoli2019).
(iv) We also considered that the effects of exposure-related factors, such as host activity, may be modulated by individual characteristics like age or sex, which influence susceptibility and shape how exposure translates into infection risk (Sweeny and Albery, Reference Sweeny and Albery2022). In particular, individuals with high susceptibility, such as juveniles or males (Cross et al., Reference Cross, Drewe, Patrek, Pearce, Samuel, Delahay, Delahay, Smith and Hutchings2009), may experience a stronger effect of activity on their probability of infection.
(iv) Finally, within-host interactions among parasites may modulate infection risk (Dallas et al., Reference Dallas, Laine and Ovaskainen2019). Competition between parasites exploiting the same host resources should promote negative associations in hosts, for instance among tick-borne parasites parasitizing the blood compartment, such as A. phagocytophilum, Babesia spp., Bartonella spp. and Mycoplasma spp. (Telfer et al., Reference Telfer, Lambin, Birtles, Beldomenico, Burthe, Paterson and Begon2010). In contrast, positive associations were expected between gastrointestinal macroparasites and microparasites through immunomodulation (Graham, Reference Graham2008).
Materials and methods
Study site and animal monitoring
The study was conducted within the ‘Zone Atelier Pyrénées-Garonne,’ situated in the south-west of France, around the village of Saint-André (43°16 N, 0°51 E). This hilly terrain reaches a maximum altitude of approximately 380 m, and features a mean annual temperature of 12.3°C and an average annual rainfall of 800 mm. The 19 000-ha site encompasses a fragmented rural habitat comprising 2 forested areas and more open environments, including woodlands, hedges, human dwellings, cultivated crops and pasture areas. Landscape permanent structures of the study area have been mapped, and agricultural use is monitored each year at the parcel level as part of long-term ecological studies on this site.
Between January and March from 2016 to 2022, a total of 402 roe deer captures were performed at 6 distinct sites within the study area, representing 319 individuals for which 65 were recaptured at least once. Following capture, the sex was determined, and the age of each roe deer was estimated by assessing tooth condition, classifying individuals into 3 categories: juveniles (6–10 months), yearlings (18–22 months) and adults (older than 2 years). Samples of faeces and whole blood were taken from each captured individual for parasitological and physiological analyses, respectively. Serum was extracted after 10 min of centrifugation at 3000 g. Samples were refrigerated during transport to the INRAE-CEFS laboratory and stored at −20°C (blood and serum) or 4°C (faeces) until analysis.
Prior to release, roe deer were marked with ear-tags and sub-cutaneous microchips. Of the 402 captures, 307 included the fitting of a Global Positioning System (GPS) collar programmed to record at least one position every 6 hours for 48 weeks. The GPS collar was equipped with activity sensors recording acceleration on X (forward/backward) and Y axis (sideways) every 5 minutes (288 records per day) (Benoit et al., Reference Benoit, Hewison, Coulon, Debeffe, Grémillet, Ducros, Cargnelutti, Chaval and Morellet2020).
Roe deer spatial behaviour
Home range
Home range can be defined as the area used by an individual in its normal activities of food gathering, mating and caring for the young (Burt, Reference Burt1943). Roe deer home ranges were estimated using the Kernel method (Worton, Reference Worton1989) with the ‘adehabitatHR’ package in R version 4.2.3. We opted for the 95% full home range value to capture most of the area used by the individuals after capture. Because spatial behaviour may be temporarily disturbed after capture (Morellet et al., Reference Morellet, Verheyden, Angibault, Cargnelutti, Lourtet and Hewison2009), the GPS records started 15 days after the date of capture (between January and March) and ended in November (8–10 months later). As roe deer are sedentary and exhibit high spatial fidelity between years (Hewison et al., Reference Hewison, Vincent and Reby1998), the home range observed during the post-capture GPS survey was considered to reflect the usual spatial behaviour and reliably estimate the individual’s exposure to parasite during the period preceding the capture.
However, many juvenile individuals leave their natal area and disperse to another place during the spring following capture (Hewison et al., Reference Hewison, Vincent and Reby1998; Debeffe et al., Reference Debeffe, Morellet, Cargnelutti, Lourtet, Bon, Gaillard and Mark Hewison2012). In that case, their estimated home range after capture does not represent the spatial behaviour they exhibited before the capture in their natal environment. Thus, we removed from the dataset juvenile individuals that dispersed during the GPS survey (n = 63, i.e. 38% of captured juveniles between 2016 and 2022) to avoid misrepresenting true habitat use and exposure during the preceding year.
Local species community and livestock presence
The local wild ungulate community is dominated by roe deer and wild boar. Red deer (Cervus elaphus) are rare in the area and only occasionally observed. Therefore, their contribution to parasite transmission dynamics in roe deer was considered negligible. Wild boar (Sus scrofa) is widely present, but we lack precise data on their spatial distribution within the study area. Nevertheless, due to the high mobility of the species (Morelle et al., Reference Morelle, Podgórski, Prévot, Keuling, Lehaire and Lejeune2014) and the number of individuals hunted over all the study area, we assumed that all roe deer were comparably exposed to wild boar.
Land use (woodland, hedgerows, human dwellings, crops and meadows) was mapped every year using a Geographic Information System (GIS; ArcView® 10.0, ESRI Software, Redlands, CA, USA). Pets such as cats and dogs were commonly observed near human dwellings. Half of the meadows were grazed by livestock, mostly cattle (72%), sheep (8%), horses (9%) and rarely goats (<1%) (Chastagner et al., Reference Chastagner, Pion, Verheyden, Lourtet, Cargnelutti, Picot, Poux, Bard, Plantard, McCoy, Leblond, Vourc’h and Bailly2017). An indoor pig farm also regularly spreads manure on nearby fields for crop fertilization.
The presence of livestock was monitored weekly in each pasture of the study area throughout the grazing season in 2013 (Verheyden et al., Reference Verheyden, Richomme, Sevila, Merlet, Lourtet, Chaval and Hoste2020), and in part of the study area in 2021. The areas where pig manure was spread were georeferenced after having questioned the farmer about his agricultural practices. Because we did not have information on local livestock densities in the study area throughout the entire study period and for each species, we chose to index roe deer exposure to livestock using only their presence/absence in the roe deer home range, using the 2013 dataset which is the most comprehensive. We verified that pastoral practices remained stable throughout the study period: 83% of the pastures grazed in both 2013 and 2021 presented the same pastoral practices, suggesting consistency in terms of livestock presence across years. We focused on sheep, cattle and pig manure because previous studies have identified parasite sharing and potential transmission between these livestock species and roe deer, particularly for gastrointestinal parasites (Walker and Morgan, Reference Walker and Morgan2014; Verheyden et al., Reference Verheyden, Richomme, Sevila, Merlet, Lourtet, Chaval and Hoste2020; Beaumelle et al., Reference Beaumelle, Redman, Verheyden, Jacquiet, Bégoc, Veyssière, Benabed, Cargnelutti, Lourtet, Poirel, de Rijke, Yannic, Gilleard and Bourgoin2022). Horses and goats were not considered in this study due to their limited relevance, horses sharing few parasites with roe deer, and goats being too sparsely distributed in the study area (4 restricted areas) and typically kept as pets in private gardens. A livestock species was considered present in a roe deer’s home range when the 95% kernel roe deer home range overlapped with a pasture or the area of pig manure spreading. Livestock presence in the roe deer home ranges was then described as a categorical variable with 5 levels: no livestock, cattle, cattle and sheep, cattle and pig manure, and cattle, sheep and pig manure.
Mean daily activity
To estimate the level of roe deer activity, we used the mean daily Overall Dynamic Body Acceleration (ODBA, without unit) (Wilson et al., Reference Wilson, White, Quintana, Halsey, Liebsch, Martin and Butler2006). Dynamic body acceleration is deemed to be a good proxy of energy expenditure (Qasem et al., Reference Qasem, Cardew, Wilson, Griffiths, Halsey, Shepard, Gleiss and Wilson2012), notably reflecting movements such as foraging and travelling (Benoit et al., Reference Benoit, Hewison, Coulon, Debeffe, Grémillet, Ducros, Cargnelutti, Chaval and Morellet2020). For every individual, we summed the 288 activity measurements recorded every 5 minutes each day to calculate the total daily activity. We then averaged the daily activity over the entire monitoring period for each individual to obtain the mean daily ODBA value on the overall GPS record period (Khazar et al., Reference Khazar, Morellet, Hewison, Gervais, Verheyden, Loc’h G, Bonnet, Cèbe, Chaval, Geffré, Lourtet, Merlet and Bonnot2025). High year-to-year repeatability of individual roe deer activity levels has been highlighted in our population (Khazar et al., Reference Khazar, Morellet, Hewison, Gervais, Verheyden, Loc’h G, Bonnet, Cèbe, Chaval, Geffré, Lourtet, Merlet and Bonnot2025), suggesting that individual activity is consistent across the years. As such, we consider mean activity over the monitoring period (starting 15 days after capture and ending the following November) to be a reliable proxy of past activity levels (before capture events).
Parasite detection
Total genomic DNA was extracted from each whole blood sample using the NucleoSpin® Blood extraction kit (Macherey-Nagel, Düren, Germany). Negative extraction controls were performed by replacing the blood with 200 µL of sterile 1X PBS. Five parasites (A. phagocytophilum, Babesia capreoli, Babesia venatorum, Bartonella spp., Mycoplasma spp.) were directly detected by PCR of the genomic DNA. The presence and count of eggs were determined from the faeces for gastro-intestinal parasites (Coccidia, Nematodirus spp. and Strongylidae) with flotation in hypersaline solution method. For the 3 remaining parasites (Borrelia spp., T. gondii, hepatitis E virus), assessment of roe deer exposure was performed by antibodies detection in the sera. A recapitulation is available in Table S1 and detailed protocols for each parasite are available in the supplementary material. Due to practical limitations, not all samples could be screened for all the parasites. The detection of Bartonella spp. was notably missing for all the samples from 2018.
Dataset
As the HMSC framework (see below) cannot handle missing data, we worked from a complete dataset obtained from 130 roe deer captures (120 individuals, 10 of which were recaptured once) out of the 307 GPS-collared captures between 2016–2017 and 2019–2022. These captures all met the following criteria: (i) the individual was tested for all 11 parasites, (ii) at least 75% of its home range was covered by our land-use maps and (iii) the individual did not disperse after capture. While this reduced the sample size of our GPS-equipped capture sample, it ensured a comprehensive representation of the parasite community and enabled the analysis of broad patterns of infection across multiple taxa.
Statistical analysis
To investigate the influence of proximity to livestock, host activity levels, age, sex and parasite interactions on co-infection patterns, we used Hierarchical Modelling of Species Community (HMSC), a recently developed method of hierarchical modelling (Ovaskainen et al., Reference Ovaskainen, Tikhonov, Norberg, Guillaume Blanchet, Duan, Dunson, Roslin and Abrego2017). This method allows one to disentangle the different categories of factors impacting the structure of the studied parasite community (Van den Broecke et al., Reference Van den Broecke, Bernaerts, Ribas, Sluydts, Mnyone, Matthysen and Leirs2021, Reference Van den Broecke, Tafompa, Mwamundela, Bernaerts, Ribas, Mnyone, Leirs and Mariën2023).
The HMSC is a joint species distribution model with hierarchical layers, allowing analysis of parasite responses to environmental factors, with the possibility to account for parasite phenotypic traits or phylogenetic distances (Ovaskainen et al., Reference Ovaskainen, Tikhonov, Norberg, Guillaume Blanchet, Duan, Dunson, Roslin and Abrego2017). In our case, explanatory variables related to host exposure (presence of livestock species within the home range, individual activity level) and susceptibility (age and sex) were fixed effects expressed by the β parameter. Moreover, the contribution of the parasite mode of transmission (oro-faecal or vector-borne) to β effects was measured by the γ parameter. We also accounted for potential interactions between parasites by including latent variables that capture residual patterns of parasite co-occurrence not explained by the fixed and random effects. Specifically, we investigated whether parasites tended to co-occur within hosts and years via the Ω variance–covariance matrices. We did not include the phylogenetic distance between the parasites due to the extreme diversity of taxa (bacteria, virus, protozoa) and the different level of identification for each parasite (family, genus, species). The response variable was the binomial presence-absence of each of the 11 parasites (or antibodies for HEV, Borrelia spp. and T. gondii) in the roe deer. The capture event of individual roe deer was considered as the sampling unit.
To test the effects of the exposure and susceptibility variables, we compared the most complete model to simpler models. The fixed effects included in the most complete model comprised variables related to behaviour (livestock species in the home range, activity level, expected to determine exposure) and host characteristics, i.e. age class (juvenile, yearling or adult) and sex (male or female). As the correlation between activity and the probability of infection was expected to be shaped by host characteristics such as age and sex, we introduced the interactions between activity and both age and sex. To characterize the individual-level structure of parasite communities (within-host parasite co-occurrence) and to account for potential intra-individual similarities in infection profiles across repeated captures (for 10 recaptured individuals), we included individual identity as a random effect. Additionally, we included the year of capture as a random effect, considering that individuals captured in the same year might exhibit more similar infectious profiles, as well as to capture annual variation in the parasite community potentially driven by unmeasured environmental factors. This complete model was compared to 4 simpler models by removing either the interactions, exposure-related variables, susceptibility-related variables or both.
HMSC models were fitted using the R-package ‘Hmsc’ [version 3.0-14] (Tikhonov et al., Reference Tikhonov, Opedal, Abrego, Lehikoinen, de Jonge, Oksanen and Ovaskainen2020) with default prior distributions. Posterior distributions were sampled using 4 Markov Chain Monte Carlo (MCMC) chains, each comprising 1 600 000 iterations, with the first 200 000 iterations discarded as burn-in and a thinning of 100 iterations. Each chain yielded 4000 posterior samples, resulting in a total of 16 000 posterior samples. Convergence of the MCMC was assessed using the R-package ‘ggmcmc’ [version 1.5.1.1] (Fernández-i-Marín, Reference Fernández-i-Marín2016), which estimated potential scale reduction factors (Ovaskainen and Abrego, Reference Ovaskainen and Abrego2020) for model parameters and manual parameter inspection using graphical tools included in the package.
Explanatory and predictive powers were both assessed using the AUC (Pearce and Ferrier, Reference Pearce and Ferrier2000) and Tjur’s R2 (Tjur, Reference Tjur2009) values. These measures are based solely on the fixed (β parameters) and random effects of the model and do not account for the latent parameters Ω (parasite co-occurrence structure). Explanatory power was estimated as the proportion of variance in the complete dataset explained by the model parameter average estimates. We then split the dataset randomly into three thirds and calculated the proportion of variance explained by the same global parameter estimates in each of the 3 randomly generated datasets. The average of these 3 proportions was the model predictive power.
Model selection was primarily based on the value of the Tjur’s R2 and AUC reflecting explanatory and predictive performance of the model, and secondary on the value of the complementary criterion WAIC (Watanabe, Reference Watanabe2010) reflecting the goodness-of-fit in terms of the log posterior predictive score (Ovaskainen and Abrego, Reference Ovaskainen and Abrego2020). The quality of the model was defined by a high value of Tjur’s R2 and AUC and low value of WAIC (Ovaskainen and Abrego, Reference Ovaskainen and Abrego2020).
We also assessed the relative contributions of fixed and random effects to the variance in infection probability using variance partitioning, which informed the contribution of selected variables (exposure, susceptibility or exposure-susceptibility interaction) on the probability of infection for each parasite (Van den Broecke et al., Reference Van den Broecke, Bernaerts, Ribas, Sluydts, Mnyone, Matthysen and Leirs2021).
We considered the statistical significance of effects based on the posterior support (PS), i.e. the posterior probability that a parameter is strictly positive or strictly negative (Ovaskainen and Abrego, Reference Ovaskainen and Abrego2020). For fixed and random effect (β parameter) and parasite trait specific response (γ parameter), we considered an effect to be ‘significant’ when the PS value was ≥0.95, and as showing a ‘tendency’ when it was ≥0.90 but <0.95 (Van den Broecke et al., Reference Van den Broecke, Bernaerts, Ribas, Sluydts, Mnyone, Matthysen and Leirs2021). For the latent parasite co-occurrence structure (Ω parameter), we followed the approach of Dallas et al. (Reference Dallas, Laine and Ovaskainen2019), given the known low statistical power for detecting such interactions in sparse data. We therefore reported all effects with a PS value ≥0.75, to highlight potentially meaningful patterns in co-occurrence or inter-annual structure.
Results
Infection and co-infection frequencies
All 130 collected samples showed infection with, or antibodies against, at least one of the eleven parasites analysed. Additionally, 129 of them (99.2%) had been exposed to at least 2 parasites. The most frequent number of parasite taxa detected in a host was 4 (found in 35 individuals, 26.2%), and the maximum number of parasite taxa, found in 2 individuals, was 8 (Fig. S1).
Infection prevalence varied significantly between parasites, from 10.8% for Nematodirus spp. to 95.4% for A. phagocytophilum (Figure 1).

Figure 1. Infection prevalence for 11 parasites in 130 samples from wild roe deer captured between 2016 to 2017 and 2019 to 2022 in South-West France. Error bars represent the 95% confidence interval of the estimated prevalence.
Model selection, HMSC convergence and fit
Following model comparison, we kept the most complete model including exposure and susceptibility variables together with interactions between age and activity, and sex and activity. This model had the highest value for the 2 main selection criteria (Tjur’s R2 and AUC) for explanatory and predictive performance with the second-lowest WAIC value (Table 1). The WAIC was the lowest for the model with only susceptibility factors and its predictive performance was close to the one of the complete model. Nevertheless, a non-negligible proportion of variance was explained by exposure (3.79%) and exposure-susceptibility interaction (5.33%) variables (Fig. 2), indicating that exposure processes meaningfully contribute to infection patterns, even though their inclusion did not substantially enhance predictive performance. This model was therefore the most appropriate to answer our research question, i.e. to assess the joint effects of exposure and susceptibility factors, and their potential covariation, on the probability of infection and the structure of the parasite community within the host.

Figure 2. Variance partitioning from the HMSC model showing the proportion of variance (Tjur R2) in parasite occurrence explained by fixed and random effects. For each parasite species, the height of each bar represents the relative contribution of each variable to the variance explained. The legend indicates the mean variance explained by each fixed and random effect, averaged across all parasite species. Dark blue coloured parasite names correspond to vector-borne parasites whereas red coloured parasite names correspond to oro-faecal transmitted parasites.
Table 1. Model characteristics and performance to account for multiple infection patterns in 130 wild roe deer

Visual inspection and potential scale reduction factor evaluation for β, γ and Ω parameters, representing respectively host related variables effect, parasite traits and host related variables association, and parasite associations, confirmed the convergence of the HMSC model. The averaged potential scale reduction factors were estimated to 1.0004 (max = 1.004) for β parameters, 1.0004 (max = 1.003) for the γ parameters, and 1.0016 (max = 1.0117) for the Ω parameters.
The selected model fitted the data with a mean AUC of 0.850 (range: 0.731–0.970) for the explanatory power, and 0.560 (range: 0.29–0.77) for the predictive power. The Tjur R2 for the explanatory power was on average 0.155 (range: 0.070–0.288), and 0.041 (range: −0.02–0.09) for the predictive power, meaning that fixed and random effects included in the model explained and predicted the data better than random in average. The 2 most prevalent parasites (A. phagocytophilum 95.4% and B. capreoli 90%), having low variance, had low Tjur R2 (6.7% and 10.1%) which reduced the overall explanatory and predictive performance of the model (averaged over the 11 parasites). Nevertheless, we chose to retain all parasite taxa to obtain a broader view of how host exposure and susceptibility shape parasite community structure, and to detect potential parasite–parasite associations.
Livestock community in the home range
The mean home range size of roe deer was 246.6 ha, varying from 5 to 1987 ha (95% CI: 150–250). Most home ranges contained pasture used by cattle (93.1%) and some contained sheep pasture (29.2%), or fields spread with pig manure (30.0%) issued from a single pig farm. Some roe deer had home range where 2 (cattle and pigs for 19.2%, cattle and sheep for 18.5%) or 3 domestic species (10.8%) were present.
The presence of livestock species in the home range accounted for 1.9% (Fig. 2) of the inter-individual variation in roe deer infection propensity. Roe deer living in home ranges containing the 3 domestic species – cattle, sheep and pig – displayed significantly higher prevalences of T. gondii (mean β = 0.93, PS = 0.98) and Strongylidae (mean β = 0.75, PS = 0.96), and tended to be more often infected by Coccidia (mean β = 0.50, PS = 0.91) than roe deer without livestock in their home range. The latter trend also held for roe deer using cattle pasture and pig manure spreading area (mean β = 0.51, PS = 0.93; Fig. 3A). The effect of the presence of the 3 livestock species was associated with the parasite transmission mode, with oro-faecal parasites tending to show a positive response to the 3 species presence (mean γ = 0.56, PS = 0.94; Fig. S3). In addition, roe deer using only cattle pasture tended to be more often infected by B. capreoli (mean β = 0.51, PS = 0.93) and A. phagocytophilum (mean β = 0.63, PS = 0.93) and less often infected by Bartonella spp. (mean β = −0.50, PS = 0.94). Roe deer using cattle and sheep pasture were significantly less often infected by Bartonella than roe deer without livestock in their home range (mean β = −0.61, PS = 0.95).

Figure 3. Estimation of beta coefficients for livestock presence (A) and host characteristics (B) on the probability of infection for the 11 tested parasites. The circle on each bar represents the mean of the beta coefficient, and the bar the 95% credibility interval of its posterior distribution. A black circle means the effect is statistically significant (PS ≥ 0.95), a grey circle means the effect is a tendency (PS ≥ 0.90 and < 0.95) and a white means a non-significant effect.
Regarding predicted parasite taxa richness using β parameters, individuals without livestock in their home range have the lower mean parasite richness (mean parasite richness (PR) = 3.97, CI: 2.96–5.11) compared to those with at least one livestock species, such as cattle (mean PR = 4.26, CI: 3.57–5.12), cattle and sheep (mean PR = 4.09, CI: 3.21–5.09), cattle and pig (mean PR = 4.89, CI: 4.08–5.86), or all 3 species (mean PR = 4.81, CI: 3.82–5.94) (Fig. S2). However, this difference in parasite richness was only marked in individuals whose home range included both cattle and pig manure, as the lower bound of their credibility interval exceeded the mean richness estimate of individuals without livestock.
Age and sex
Roe deer sex and age accounted for 0.76% and 2.38% (Fig. 2) of the variance of parasite infection propensity, respectively. Males had a significantly higher infection rate of A. phagocytophilum (mean β = 0.64, PS = 0.96) and Strongylidae (mean β = 0.54, PS = 0.98) and tended to show a higher frequency of infection with Coccidia (mean β = 0.30, PS = 0.94) and B. capreoli (mean β = 0.45, PS = 0.93) than females (Fig. 3B).
Among the 3 defined age categories, juveniles were significantly more likely to be infected with gastrointestinal parasites such as Strongylidae (mean β = 0.61, PS = 0.97) and Coccidia (mean β = 0.74, PS = 0.99) and tended to be more frequently infected with B. capreoli (mean β = 0.60, PS = 0.92) than adults. In addition, juveniles were less often seropositive to Borrelia spp. (mean β = −0.75, PS = 0.96) and less often infected by Mycoplasma spp. (mean β = −0.86, PS = 0.98) and tended to be less often seropositive to T. gondii compared to adults (mean β = −0.56, PS = 0.92). Yearlings also had a higher probability of infection with Strongylidae (mean β = 0.66, PS = 0.97) and a tendency for a higher prevalence of HEV compared to adults (mean β = 0.57, PS = 0.94). The effect of the yearling age stage on infection probability was associated with the parasite transmission mode, with oro-faecal parasites showing a tendency for a positive response (mean γ = 0.38, PS = 0.90; Fig. S3).
Roe deer activity
The level of activity (ODBA) varied between a mean daily value of 1702 to 38 677 in our study data, suggesting strong inter-individual variability. Activity and the interactions between activity and sex and activity and age accounted for 1.89%, 0.91% and 3.44% (Fig. 2) of the variance in parasite infection, respectively. The positive slope of the relationships between activity and infection probability were significantly stronger for yearlings (compared to adults) for T. gondii (mean β = 0.99, PS = 0.98), HEV (mean β = 0.81, PS = 0.97), Mycoplasma spp. (mean β = 1.10, PS = 0.98), Borrelia spp. (mean β = 1.23, PS = 0.99) and Bartonella spp. (mean β = 0.92, PS = 0.98) and tended to be stronger for B. venatorum (mean β = 0.73, PS = 0.94) (Fig. 4B). The effect of yearling activity on infection probability was related to the parasite transmission mode (Fig. S3). Specifically, vector-borne parasites showed a significant positive response to yearling activity (mean γ = 0.69, PS = 0.96), and parasites transmitted via the oro-faecal contamination tended to respond positively (mean γ = 0.49, PS = 0.90).

Figure 4. Relationship between host activity and parasite species richness predicted by the HMSC model for yearling and adult roe deer. Sex and presence of livestock species in the home range have been fixed as the more probable values in the dataset (female and cattle). Dots represent observed data; the line represents the predicted mean parasite richness for every activity value and the blue area represents the 95% credibility interval of the estimate.
This age-dependent effect of activity was also reflected in parasite taxa richness, with a significant positive correlation between activity and parasite richness for yearlings (PS = 0.99) (Fig. 4A). In contrast, in adults, parasite taxa richness almost tended to decrease as host activity increased (PS = 0.89; Fig. 4B).
Parasite association
Residual parasite co-occurrence after accounting for exposure to domestic animals, activity, age and sex effects, was estimated at the year and individual random effect levels.
At the year scale, we found a significant positive co-occurrence between HEV and Bartonella spp. (mean Ω = 0.18, PS = 0.96), indicating that HEV seroprevalence was strongly correlated with Bartonella spp. infection rates (Fig. 5A). We also identified other positive latent co-occurrence patterns with posterior support values above 0.75, including between B. capreoli and Anaplasma phagocytophilum (mean Ω = 0.02, PS = 0.78), B. venatorum (mean Ω = 0.02, PS = 0.81), and Borrelia spp. antibodies (mean Ω = 0.01, PS = 0.77).

Figure 5. Associations between parasite presences in roe deer, after considering the effects of spatial behaviour, activity and age, sex related effects, at the year level (A) or at the individual level (B). Blue indicates a negative association whereas red indicates a positive association. Colours are shown only for a |posterior support value| > 0.75.
In contrast, we observed a tendency for negative co-occurrence between both Bartonella spp. and HEV with B. capreoli (mean Ω = −0.10, PS = 0.93; and mean Ω = −0.04, PS = 0.90, respectively). Other negative associations (PS > 0.75) were found between A. phagocytophilum and Bartonella spp. (mean Ω = − 0.06, PS = 0.82) or HEV (mean Ω = −0.03, PS = 0.80), and between B. venatorum and Bartonella spp. (mean Ω =− 0.06, PS = 0.87) or HEV (mean Ω = − 0.03, PS = 0.85), and between Borrelia spp. and Bartonella spp. (mean Ω = −0.05, PS = 0.81) or HEV (mean Ω = −0.02, PS = 0.79). Similarly, a negative co-occurrence was found between Strongylidae and Bartonella spp. (mean Ω = −0.06, PS = 0.82).
At the individual scale, only few associations with posterior support value above 0.75 were revealed. Our model highlighted negative co-occurrence between T. gondii antibodies and Nematodirus spp. (mean Ω = −0.09, PS = 0.81) or HEV (mean Ω = −0.04, PS = 0.78), whereas HEV antibodies and Nematodirus spp. showed positive association (mean Ω = 0.05, PS = 0.80) (Fig. 5B).
Discussion
As expected, nearly all roe deer were co-infected by several parasites with most often 3–5 parasites among the 11 considered. This result emphasizes the relevance of considering parasite communities and potential parasite–parasite interactions when studying infection patterns (Telfer et al., Reference Telfer, Lambin, Birtles, Beldomenico, Burthe, Paterson and Begon2010). The HMSC analysis allowed us to disentangle the effects of the various factors with a satisfactory fit despite the complexity inherent to data recorded in a wildlife population living in a complex environment (Van den Broecke et al., Reference Van den Broecke, Bernaerts, Ribas, Sluydts, Mnyone, Matthysen and Leirs2021, Reference Van den Broecke, Tafompa, Mwamundela, Bernaerts, Ribas, Mnyone, Leirs and Mariën2023). As expected, exposure related factors – the presence of livestock and the level of activity – and susceptibility related factors – age, sex and between-parasite interactions – both influenced the co-infection patterns in roe deer. Our approach highlights how host-related factors linked to individual exposure and susceptibility explain part of the variance in infection propensity, while annual environmental fluctuations and weak parasite–parasite interactions may also contribute to the remaining unexplained variance.
Infection patterns in relation to roe deer exposure to domestic ungulates
Consistent with our first prediction, the presence of several livestock species in roe deer home range increased their likelihood of harbouring parasites that can be shared with domestic animals. Compared to roe deer living in home range without livestock, roe deer moving in areas used by cattle, pig (manure) and sheep exhibited a higher prevalence of Strongylidae and T. gondii. A tendency was also detected for Coccidia, which also held in the absence of sheep. These results did not hold with any other livestock species combination. This is likely due to unequal domestic species occurrence across the study area. Pigs (and pig manure) and, to a lesser extent sheep, used a limited space in our study area, whereas cattle are more widely distributed, with most roe deer exploiting their pastures. A quantitative analysis considering the abundance of domestic animals and the intensity of roe deer infection, rather than simple occurrences of domestic animals and parasites, could have revealed a ‘burden intensity effect’ of roe deer exposure to cattle as shown for parasitic helminths in the same area (Verheyden et al., Reference Verheyden, Richomme, Sevila, Merlet, Lourtet, Chaval and Hoste2020). The lack of information about the quantity of spread manure and about the abundance of livestock over the full parasite sampling period limited our possibility to answer this question. In addition, because the various gastrointestinal parasite species were not easily distinguishable using faecal egg counts, we could not detect more specific host related effects of livestock presence, even though sheep and roe deer are known to share several gastrointestinal parasite species in this area such as Haemonchus contortus or Trichostrongylus axei (Beaumelle et al., Reference Beaumelle, Redman, Verheyden, Jacquiet, Bégoc, Veyssière, Benabed, Cargnelutti, Lourtet, Poirel, de Rijke, Yannic, Gilleard and Bourgoin2022).
Pigs are known to be infected by T. gondii (Lehmann et al., Reference Lehmann, Graham, Dahl, Sreekumar, Launer, Corn, Gamble and Dubey2003; Djokic et al., Reference Djokic, Blaga, Aubert, Durand, Perret, Geers, Ducry, Vallee, Djakovic, Mzabi, Villena and Boireau2016) and Coccidia (Delsart et al., Reference Delsart, Fablet, Rose, Répérant, Blaga, Dufour and Pol2022). However, these parasites are rarely (Coccidia) or never (T. gondii) excreted by pigs, reducing the likelihood of interspecific transmission from pig to roe deer. Nevertheless, compared to roe deer that did not use domestic ungulate pastures, individuals with cattle, sheep and pig in their home range are likely to live closer to farms and livestock breeding infrastructures where cats can be abundant. Indirect transmission of cat-derived T. gondii oocysts to roe deer, through cat encroachment into roe deer habitat or manure dispersion, could thus explain the significant positive correlation between the occurrence of the 3 domestic ungulate species and the infection by T. gondii, as noted in other wild species (Gotteland et al., Reference Gotteland, Chaval, Villena, Galan, Geers, Aubert, Poulle, Charbonnel and Gilot-Fromont2014; Barros et al., Reference Barros, Cabezón, Dubey, Almería, Ribas, Escobar, Ramos and Medina-Vogel2018). One could also consider a potential effect of wild species present in these areas, such as wild boar or small mammals. However, interspecific transmission between non-felid species is typically linked to cannibalism or predation of small mammals; these behaviours are not relevant in roe deer (Barroso et al., Reference Barroso, García-Bocanegra, Acevedo, Palencia, Carro, Jiménez-Ruiz, Almería, Dubey, Cano-Terriza and Vicente2020).
Unexpectedly, roe deer using cattle and sheep presence areas exhibit a significant lower prevalence of Bartonella spp. Roe deer and cattle can both be infected by Bartonella bovis (Skotarczak and Adamska, Reference Skotarczak and Adamska2005; Cherry et al., Reference Cherry, Maggi, Cannedy and Breitschwerdt2009) and we could expect a higher probability of infection for individuals using cattle pastures. However, livestock grazing has been shown to reduce the density of rodents and the abundance of fleas (McCauley et al., Reference McCauley, Keesing, Young and Dittmar2008; Bueno et al., Reference Bueno, Ruckstuhl, Arrigo, Aivaz and Neuhaus2012) which are the main vector of Bartonella spp. (Billeter et al., Reference Billeter, Levy, Chomel and Breitschwerdt2008). Thus, the negative correlation found in our model could come from a negative effect of livestock grazing on the abundance of Bartonella spp.’s vectors reducing the likelihood of infection for roe deer using these areas.
Nevertheless, we acknowledge that we had no information on the parasitic community hosted by cattle and pigs in our study area, neither in terms of diversity, nor in terms of abundance. It is also possible that various antiparasitic strategies would be used by the breeders leading to local heterogeneity in parasite excretion or in vectorial transmission. Our interpretation of the link between livestock presence and roe deer parasite exposure therefore remains partly speculative. However, we point that the sharing of parasites between roe deer and sheep has been demonstrated in this area (Beaumelle et al., Reference Beaumelle, Redman, Verheyden, Jacquiet, Bégoc, Veyssière, Benabed, Cargnelutti, Lourtet, Poirel, de Rijke, Yannic, Gilleard and Bourgoin2022). This highlights potentially fruitful directions for future research, including parasite screening in cattle and pigs to investigate more thoroughly the effects of spatial cohabitation with domestic animals on roe deer exposure to parasites.
Infection patterns in relation to age and sex
In many mammal species, parasitism has been shown as male-biased (Perkins et al., Reference Perkins, Cattadori, Tagliapietra, Rizzoli and Hudson2003; Ferrari et al., Reference Ferrari, Cattadori, Nespereira, Rizzoli and Hudson2004). These sex-based differences in infection probability are often associated to susceptibility factors such as the immunosuppressive effect of testosterone (Klein, Reference Klein2000; Foo et al., Reference Foo, Nakagawa, Rhodes and Simmons2017; La Peña E et al., Reference De La Peña, Martín, Barja, Pérez‐Caballero, Acosta and Carranza2020) or males reduced investment in immunity compared to females (Rolff, Reference Rolff2002) but they also can be associated with exposure factors that can differ depending on the sex such as home range size, activity, or sociability (Brehm et al., Reference Brehm, Assis, Martin and Orrock2024). Here, male individuals were significantly more often infected by A. phagocytophilum and Strongylidae and tended to be more often infected by Coccidia and Bartonella spp. Testosterone is regarded as an immunosuppressive factor that increases the overall probability of infection. The production of androgen hormones may notably reduce the Th2 response (González et al., Reference González, Díaz, Pérez, Hernández, Chico and de León2010), which is normally upregulated against gastrointestinal parasite infections (Maizels et al., Reference Maizels, Balic, Gomez‐Escobar, Nair, Taylor and Allen2004) and so increase the probability of infection by parasites such as Strongylidae. Concerning the tick-borne parasites, a higher prevalence and intensity of infection have also been found for Anaplasma marginale in African buffalo males (Sisson et al., Reference Sisson, Beechler, Jabbar, Jolles and Hufschmid2023). The authors invoke possible differences in physiology and immunity leading to a higher susceptibility of males compared to females, as shown in a range of mammalian species (Foo et al., Reference Foo, Nakagawa, Rhodes and Simmons2017). This sex-based difference in tick-borne parasite prevalences can also be due to morphological differences. Being on average 11% heavier than females (Chirichella et al., Reference Chirichella, Apollonio, Pokorny and De Marinis2023), male roe deer could host more ticks than females (Kiffner et al., Reference Kiffner, Lödige, Alings, Vor and Rühe2011) increasing their exposure to tick-borne parasites. Moreover, males are known to be more active during the reproductive period (Malagnino et al., Reference Malagnino, Marchand, Garel, Cargnelutti, Itty, Chaval, Hewison, Loison and Morellet2021), which may increase their likelihood of encountering vectors and parasites and thus their probability of infection (Brehm et al., Reference Brehm, Assis, Martin and Orrock2024).
Concerning the effect of age, young individuals may not yet have developed acquired immunity, making them more vulnerable to infections requiring a specific immune response (Gasparoni et al., Reference Gasparoni, Ciardelli, Avanzini, Castellazzi, Carini, Rondini and Chirico2003; Body et al., Reference Body, Ferté, Gaillard, Delorme, Klein and Gilot-Fromont2011). In our study, younger individuals were more likely infected by Strongylidae (juveniles and yearlings) and Coccidia (juveniles). The Th2 immune response is generally deemed to be effective against helminths (Maizels et al., Reference Maizels, Balic, Gomez‐Escobar, Nair, Taylor and Allen2004), and age-related shifts from Th1 to Th2 immunity have been revealed in other mammals (Gardner and Murasko, Reference Gardner and Murasko2002; Kovacs et al., Reference Kovacs, Duffner and Plackett2004). Such a shift could also occur in roe deer, causing helminth infection probability to decrease over the growth phase age and the immunity development.
Juveniles were also less infected by 2 vector borne parasites: Mycoplasma spp. and Borrelia spp. These differences can reflect ticks being more likely to attach to adults due to their larger size (Vor et al., Reference Vor, Kiffner, Hagedorn, Niedrig and Rühe2010; Kiffner et al., Reference Kiffner, Lödige, Alings, Vor and Rühe2011), increasing their exposure to vectorized pathogens compared to juveniles. Moreover, the smaller size of juveniles and their activity, which starts after the peak of nymph abundance in spring, may make them more exposed to larvae, which take their first blood meal (Kahl and Gray, Reference Kahl and Gray2023), reducing their probability of infection by parasite without transovarian transmission such as Borrelia spp. and Mycoplasma spp. (Zhioua et al., Reference Zhioua, Aeschlimann and Gern1994; Obiegala et al., Reference Obiegala, Król, Oltersdorf, Nader and Pfeffer2017).
Infection patterns in relation to activity
As expected from previous studies (Bohn et al., Reference Bohn, Webber, Florko, Paslawski, Peterson, Piche, Menzies and Willis2017; Santicchia et al., Reference Santicchia, Romeo, Ferrari, Matthysen, Vanlauwe, Wauters and Martinoli2019), the prevalence of several parasites (T. gondii, HEV, Mycoplasma spp., Bartonella spp., Borrelia spp., B. venatorum) significantly increased with roe deer activity level, but only in yearlings. Parasite taxa richness also increased with activity in yearlings and this correlation tends to reverse at the adult stage.
In our data, a significant proportion of yearlings may have undergone postnatal dispersal during the previous spring, 10 months before (34% of individuals in our population) (Debeffe et al., Reference Debeffe, Morellet, Cargnelutti, Lourtet, Bon, Gaillard and Mark Hewison2012). This event is stressful and resource-consuming, potentially impacting yearling immunity and susceptibility (Bonte et al., Reference Bonte, Van Dyck, Bullock, Coulon, Delgado, Gibbs, Lehouck, Matthysen, Mustin, Saastamoinen, Schtickzelle, Stevens, Vandewoestijne, Baguette, Barton, Benton, Chaput-Bardy, Clobert, Dytham, Hovestadt, Meier, Palmer, Turlure and Travis2012). Moreover, this dispersal exposed yearlings to new environments and parasites, to which they may be more susceptible (Teitelbaum et al., Reference Teitelbaum, Huang, Hall and Altizer2018). Consequently, the impact of activity on exposure could be likely more significant for yearlings, leading to a greater number of infections.
However, the opposite correlation between activity and parasite richness found for adults could come from the development of the acquired immunity in the adult stage in consequence of previous exposures (Sweeny and Albery, Reference Sweeny and Albery2022). The individual repeatability of movement and space use has been highlighted in the studied roe deer population (Gervais et al., Reference Gervais, Hewison, Morellet, Bernard, Merlet, Cargnelutti, Chaval, Pujol and Quéméré2020; Khazar et al., Reference Khazar, Morellet, Hewison, Gervais, Verheyden, Loc’h G, Bonnet, Cèbe, Chaval, Geffré, Lourtet, Merlet and Bonnot2025). More active adults were probably also more active yearlings which were more exposed to parasites during this life stage. As a result, more active adults may have developed a greater and more diversified acquired immunity, making them more resistant to infection (Hawley et al., Reference Hawley, Etienne, Ezenwa and Jolles2011; Sweeny and Albery, Reference Sweeny and Albery2022) and reversing the correlation between activity and co-infection. Complementary mechanisms may be involved: the higher activity in adults may reflect a better body condition and so, a higher resistance to infection (Barron et al., Reference Barron, Gervasi, Pruitt and Martin2015; Goossens et al. Reference Goossens, Wybouw, Van Leeuwen and Bonte2020) or reduced adult roe deer activity may be a consequence of parasitism (Hofmann-Lehmann et al., Reference Hofmann-Lehmann, Meli, Dreher, Gönczi, Deplazes, Braun, Engels, Schüpbach, Jörger, Thoma, Griot, Stärk, Willi, Schmidt, Kocan and Lutz2004; Poulin, Reference Poulin2013; McArdle et al., Reference McArdle, Turkova and Cunnington2018).
This age-dependent effect of activity highlights the necessity of considering both exposure and susceptibility factors and their interactions. Exposure and susceptibility can vary independently or synergistically, depending on numerous ecological factors, which complicate their inference on the probability of infection (Sweeny and Albery, Reference Sweeny and Albery2022).
Parasite associations and co-infection patterns
We hypothesized that parasite co-infection patterns might partly result from immunomodulation or resource competition between parasites within the host. However, only a few notable associations were observed (Fig. 5).
Bartonella spp. and HEV antibodies showed a positive association at the yearly level, meaning that the presence of one parasite in the roe deer population during a given year was significantly and positively associated with the presence of the other. Moreover, both were negatively associated with tick-borne parasites such as Anaplasma phagocytophilum, Babesia species, Borrelia spp., and orofecally transmitted Strongylidae. Conversely, tick-borne parasites exhibited positive associations among themselves, suggesting a division between a group of tick-borne parasites and a group comprising Bartonella spp. and HEV. The positive association between Bartonella spp. and HEV was not due to the few individuals captured in 2019 (N = 7), all of which were negative for both parasites, as this trend persisted even when these individuals were excluded from the dataset. This underscores the potential role of year-specific environmental factors, such as temperature, humidity and vegetation, in shaping parasite or vector survival (Storey and Phillips, Reference Storey and Phillips1985; Waruiru et al., Reference Waruiru, Kyvsgaard, Thamsborg, Nansen, Bøgh, Munyua and Gathuma2000; Gubler et al., Reference Gubler, Reiter, Ebi, Yap, Nasci and Patz2001; Turner and Getz, Reference Turner and Getz2010). For example, Bartonella spp. and HEV may benefit from increased annual rainfall and humidity, which could boost flea abundance (Gracia et al., Reference Gracia, Calvete, Estrada, Castillo, Peribáñez and Lucientes2013), which are the primary vectors of Bartonella spp., and increase water flow, facilitating HEV transmission (Tricou et al., Reference Tricou, Bouscaillou, Laghoe-Nguembe, Béré, Konamna, Sélékon, Nakouné, Kazanji and Komas2020). Additionally, recent studies have highlighted competition among ectoparasites (Lutermann et al., Reference Lutermann, Fagir and Bennett2015). Tick infestations, for instance, have been shown to compete with the occurrence of lice (Hoffmann et al., Reference Hoffmann, Horak, Bennett and Lutermann2016) and fleas (Krasnov et al., Reference Krasnov, Stanko and Morand2010). Consequently, environmental conditions favouring flea proliferation may enhance the transmission of Bartonella spp. and HEV outbreaks while reducing tick infestations and the transmission of tick-borne parasites, potentially explaining the patterns observed in our results.
At the individual scale, we did not observe the negative association expected between blood parasites sharing the same resources. We only detected negative association of T. gondii with both HEV and Nematodirus spp., whereas the 2 later parasites were positively associated. Although some studies suggest that the immunosuppressive effects of hepatitis viruses may enhance helminth infections (Cox, Reference Cox2001), and that T. gondii immunomodulation could reduce microparasite infections (Ahmed et al., Reference Ahmed, French, Rausch, Kühl, Hemminger, Dunay, Steinfelder and Hartmann2017), interpreting these results with certainty remains challenging. The slight co-occurrence pattern observed at the individual level indicated that between-parasite interactions in roe deer were likely negligible compared to other factors influencing exposure and susceptibility. Furthermore, these findings may be limited by the dataset, which includes few recaptures and lacks longitudinal monitoring of individuals, thereby restricting the ability to observe changes in parasite communities over time.
Conclusion
This study highlights the value of integrating exposure and susceptibility factors, along with their interactions, to better understand co-infection patterns in wildlife. By accounting for ecological, behavioural and host-specific characteristics, it provides perspectives on the factors driving inter-individual variability of the parasite community in a complex environment. Such an integrative approach advances our understanding of host-parasite systems and underscores the importance of considering both individual and environmental determinants to unravel co-infection mechanisms. The interplay between exposure and susceptibility factors, such as the influence of livestock presence, host activity, age-specific immune responses and between-parasite interactions, demonstrates the complexity of parasite-host relationships. Future research should expand on this framework by incorporating longitudinal studies to capture temporal dynamics, as well as exploring interactions at a finer scale, such as parasite-specific traits or immune pathways. Quantifying the relative contributions of these factors across different ecosystems could provide deeper insights into generalizable patterns of co-infection. Using recently developed hierarchical methods, this work offers the groundwork for broader ecological investigations into parasite community dynamics, offering a foundation to better understand how environmental, behavioural and physiological factors intersect in shaping parasite communities.
Supplementary material
The supplementary material for this article can be found at https://doi.org/10.1017/S0031182025100899
Acknowledgements
This study was conducted as part of a PhD funded by Université Paul Sabatier and the doctoral school Sciences Ecologiques, Vétérinaire, Agronomiques & Bioingéniérie (SEVAB). We would thank everyone, technicians, researchers, veterinarians and volunteers that participated to the data record and the capture of animals. We also thank the PhyloPic community for their contribution to make available free naturalistic illustrations used in our graphical abstract.
Author contributions
The conceptualization of the study was done by CP, EGF, FB, HV and VB. Administration and funding support were managed by EGF and HV. Roe deer captures were performed by AB, FB, GLL, HV, JM, VB and YC. The livestock presence record was performed by BL, JM and YC. The data cleaning was realized by AB, FB and YC. DNA extractions were performed by SM and XB. Parasite or antibody detections were performed by: JM and AB for gastrointestinal parasites, FB, LM and CB for Babesia spp., FB, ACL, CR for Bartonella spp., VO and TB for Borrelia spp., CD and JI for Hepatitis E virus, IV and DA for Toxoplasma gondii, SM and XB for Anaplasma phagocytophilum, LXN for Mycoplasma spp. Methodology and statistical analysis were led by FB with the help of VS. FB wrote the original draft of the article with main reviewing and edition by CP, EGF, HV and VB, and a great help of VS and LM.
Financial support
This study was supported by PhD funding from Université Paul Sabatier and doctoral school Sciences Ecologiques, Vétérinaire, Agronomiques & Bioingéniérie (SEVAB). Part of this work was also funded by the Cervimatique project (défi clé RIVOC Occitanie region, University of Montpellier) (grant number, N°UM 211055, N°INRAE C8452).
Competing interests
The authors declare there are no conflicts of interest.
Ethical standards
All protocols for capturing and marking roe deer were reviewed and approved by the French Ministry for Research and Higher Education and the Animal Health and Science ethics committee (n°115) (project numbers Apafis#39320 and Apafis#7880). More detailed descriptions of these methods can be found in Morellet et al. (Reference Morellet, Verheyden, Angibault, Cargnelutti, Lourtet and Hewison2009), Debeffe et al. (Reference Debeffe, Morellet, Cargnelutti, Lourtet, Bon, Gaillard and Mark Hewison2012) and Bonnot et al. (Reference Bonnot, Hewison, Morellet, Gaillard, Debeffe, Couriot, Cargnelutti, Chaval, Lourtet, Kjellander and Vanpé2017, Reference Bonnot, Goulard, Hewison, Cargnelutti, Lourtet, Chaval and Morellet2018). The laboratory Behaviour and Ecology of Wild Mammals ensures that the protocol complies with all animal welfare requirements and updates its protocol every year.