Introduction

Toxoplasma gondii is a ubiquitous multihost protozoan parasite capable of infecting any warm-blooded species and requires a felid definitive host to sexually reproduce1. Infection spreads either through the ingestion of oocysts shed in the environment by a definitive host (e.g., environmentally mediated transmission via water or vegetation), the ingestion of infected tissue cysts in definitive or intermediate hosts1,2, or, if the fetus survives infection, vertically through congenital transmission2.

Once an intermediate host is exposed, the infection spreads from the intestinal lining to form cysts in the brain and muscle tissue and acute toxoplasmosis occurs2. If acute infection occurs during pregnancy it can lead to birthing complications, spontaneous abortions, and stillbirths; and in young or immunosuppressed individuals can cause fatal encephalitis3,4. Immunocompetent individuals generally exhibit no clinical symptoms but will have a chronic lifetime infection due to the presence of cysts2. Experimental studies have shown that chronic infections, even in healthy individuals, can lead to increased dopamine5,6 and testosterone production7,8. These hormone changes can cause increased aggression9,10 and risk-taking behaviour such as increased hyperactive movement, failure to avoid olfactory predator cues (i.e., seeking out instead of avoiding felid urine), and decreased neophobia7,11,12,13.

Considering the effects that T. gondii infection can have on intermediate host reproduction and behaviour, T. gondii’s role in wild ecosystem processes are understudied. One of the few studies focused on infection impacts on behavior in a wild mammal, Gering et al. (2021) found that toxoplasmosis was associated with increased boldness in hyena (Crocuta crocuta) cubs and that seropositive hyenas of all ages were more likely to be killed by African lions (Panthera leo)14. That study demonstrated a mechanistic link between toxoplasmosis and an individual’s fitness through behaviour and decision-making.

Gray wolves (Canis lupus) in Yellowstone National Park (YNP) have been the subject of extensive research over several decades, primarily focused on predator-prey dynamics, population dynamics, genetics, behaviour, and canine pathogens15. YNP is a complex multi-carnivore system, where wolves and a definitive T. gondii host, cougars (Puma concolor), overlap spatially due to high landscape heterogeneity and prey movements16. Thus, similar multispecies T. gondii transmission pathways as those found between spotted hyenas and lions could be present between wolves and cougars in North American systems, where wolves that spatially overlap with cougars may have increased T. gondii transmission risk via direct or indirect contact with cougars. T. gondii has been documented in the YNP gray wolf17 and we seek to understand T. gondii’s role in this social, intermediate host carnivore using 26 years of gray wolf serological and observational data.

Our first aim was to determine which demographic and ecological factors affect T. gondii infection in wolves in YNP. We tested individual demographic factors, including age, sex, social status at the time of capture, and coat color due to their potential variation in disease susceptibility. Previous research has found the risk of T. gondii infection increases with age due to accumulating risk of exposure with time17,18. The other three wolf demographic factors were included because of their links to certain hormones, which may influence an animal’s susceptibility to infection19. Sex hormones play a role in infection risk and, once infected, hormone production may be altered19; however, other studies found no link between T. gondii seroprevalence and sex14,17,18. Due to natural variations in hormone levels (testosterone, progesterone, estrogen, etc.) between the sexes20, there may be differing risks and subsequent behavioral responses to infection. Previous research has found social status (e.g., pack leaders)21 and coat color (gray coat color wolves have higher cortisol levels and increased behavioral aggression)22 linked to varying hormone levels and immune defense23,24. To determine if seroprevalence is affected by the amount of spatial overlap with a T. gondii definitive host (i.e., cougars), we included an overlap index for each wolf and areas of high cougar density.

Our second aim was to determine if T. gondii infection influences wolf behavior. We identified three wolf behaviours associated with greater risk-taking: (1) dispersing from a pack, (2) achieving dominant social status (referred to as becoming a leader), (3) approaching people or vehicles (referred to as habituation), and two causes of death associated with increased risk:(a) intraspecific mortality (i.e., death by other wolves through interpack fights), or (b) anthropogenic mortality (i.e., death by humans due to decreased proximity to humans or human structures). As behavior can be influenced by many factors, we controlled for certain variables in each of the behavior models: sex can influence behaviors such as dispersal, and age can influence the probability of a certain behavior occurring25. Northern YNP has very high wolf density, the roads are open year-round, the elevation is lower and provides winter range for ungulates and opportunities for wolf hunters just outside the park boundary. All these factors may affect wolf behavior as the wolves there may have increased opportunities to disperse, to die, and may be more susceptible to habituation. Therefore, we controlled for YNP system (northern or not) as well. In controlling for these factors that may influence wolf behavior, we aim to isolate the influence of T. gondii infection on behavior. We tested if serostatus influenced the odds of a wolf performing these behaviors or dying of one of these causes. We discuss the findings from both of our aims, factors influencing T. gondii seroprevalence and determining if toxoplasmosis affects wolf behavior, with respect to interspecific disease dynamics and how behavioural changes can impact gray wolves at multiple scales.

Here we found that T. gondii infection in wolves was predicted by pack overlap with a definitive host, cougars, and that wolves seropositive for T. gondii changed their behaviour to take greater risks—being more likely to disperse and to become pack leaders than seronegative wolves. Due to a wolf pack’s social structure, these behaviour changes may cause a feedback loop that leads to pack-level increases in risk-taking with important implications for further disease transmission, interspecific competition with cougars, and wolf survival.

Results

Serology

Of the 62 cougars tested for T. gondii, 51.6% were seropositive. Seroprevalence in cougars increased from 45% during the first sampling time (n = 47, 1999 to 2004) to 73% during the second sampling time (n = 15, 2016 to 2020). This test confirmed the presence of T. gondii in YNP’s most-abundant definitive host.

Between 1995 and 2020, an average of 11.8 sera samples were collected each year (range = 4–22) to test for T. gondii antibodies. All 50 tests from 1995 through 1999 were negative, then three wolves tested seropositive in 2000. Thereafter, between one and eight wolves were seropositive each year. Seventeen equivocal samples were detected using the ELISA and were then rerun using the MAT assay, which allowed us to distinguish eleven seropositive and six seronegative samples. The pooled seroprevalence was 0.0% from 1995 to 2000, 24.5% from 2000 to 2004, 18.7% from 2005 to 2009, 42.9% from 2010 to 2014, and 36.5% from 2015 to 2020. Using samples collected from 2000 to 2020, we ran 273 tests on 256 samples. Prevalence was 27.1% (n = 74) with 61.9% negative (n = 169) and 11.0% equivocal (n = 30). Twenty-five individuals were tested more than once throughout their life due to multiple captures, and therefore have multiple samples, spaced at least eleven months apart. Eight males were tested twice, 15 females were tested twice, and two females were tested three times. Accounting for multiple tests, 229 individuals were tested: 116 males, 112 females, and one hermaphrodite. Females (31.25%) had slightly higher seroprevalence than males (25.00%), but these proportions were not different (z-score = −1.05, p = 0.15).

Wolf age was recorded both as a continuous variable and categorical variable with 100 pups, 53 yearlings, 88 adults (aged 2.0–5.9), and 15 old adults (aged 6.0 and older). Seroprevalence was similar between the three younger categories (pup = 29.00%, yearling = 28.30%, adult=26.14%) and only increased with old adults (46.67%). A test comparing pup seroprevalence to all other age categories was not significant (z-score=0.346, p = 0.36). The biggest difference was between old adults and all other age categories pooled (z-score = −1.40, p = 0.08). We also tested for differences in T. gondii exposure between gray and black coat colors and found no difference: gray wolves (n = 115) had 25.22% and black wolves (n = 114) had 31.58% seropositivity (z-score = −1.07, p = 0.14). Similarly, we tested social status at the time of sampling and found no difference: subordinates (n = 197) had 30.45% and leaders (n = 59) had 23.73% seropositivity.

Wolves that had at least 42.1% overlap with cougar density ≥1.8/100 km2 (HCO) had a higher proportion of seropositive tests than wolves with MCO (5.1–42.0%), which was higher than wolves with LCO (0 to 5% overlap). Twelve wolves (n = 83, 14.46%) with LCO were positive, 30 wolves (n = 83, 36.14%) with MCO were positive, and 31 wolves (n = 84, 36.90%) with HCO were positive. The proportion of seropositive wolves in a pooled MCO and HCO was greater than wolves with LCO (z-score = −3.65, p = <0.001). To visualize cougar density and overlap with different wolf pack territories we pooled seropositive tests in nine general wolf use areas and plotted them on a map of YNP with high cougar density highlighted (Fig. 1).

Fig. 1: Map of cougar density and T. gondii seroprevalence in wolves in Yellowstone National Park (YNP).
figure 1

a Map of cougar density and T. gondii seroprevalence in wolves in Yellowstone National Park (YNP). Yellow indicates cougar density <1.8/100 km2 and purple indicates cougar density ≥1.8/100 km2. Pie charts show the T. gondii seroprevalence (seropositive=black; seronegative=white/transparent) from wolves living in nine general areas throughout YNP, pooled across years 2000–2020. b A sample year (2015) of wolf pack territory minimum convex polygons in YNP along with each pack’s cougar overlap index level (LCO, MCO, or HCO) based on percentage of overlap with cougar density ≥1.8/100 km2 (purple).

Demography analysis results

The full model testing the probability of seropositivity, with a wi = 0.99, included SEX, AGE IN YEARS, SOCIAL STATUS, COAT COLOR, and COUGAR OVERLAP INDEX (Table 1). The NULL model performed poorly, with a wi = 0.01.

Table 1 Full GLMM for the probability that an individual wolf tests positive for T. gondii.

The COUGAR OVERLAP index (β = 1.089, 95% CIs: 0.176–2.003) was an important factor in the odds a wolf was seropositive for T. gondii. An increase from LCO to MCO to HCO was associated with a higher likelihood of testing positive. The odds ratio of COUGAR OVERLAP was 2.97 (exp[1.089]), meaning the odds an MCO wolf was seropositive was nearly three times higher than an LCO wolf. The odds an HCO wolf was seropositive was almost 9 times higher odds of being seropositive than a wolf in LCO. Predicted probabilities for seropositivity (Fig. 2), based on the full model, showed that seropositivity increased non-linearly with cougar overlap: wolves living in areas with LCO had a predicted 4.7% prevalence, whereas wolves living in MCO had a predicted 12.5% prevalence, and wolves in HCO had a predicted 28.4% prevalence.

Fig. 2: Gray wolf T. gondii serostatus results and predicted probability of infection given cougar density overlap.
figure 2

Gray wolves with T. gondii serology results were divided into one of three categories relative to their average annual overlap with cougar density ≥1.8/100 km2 (top bar): Low Cougar Overlap (LCO in yellow) indicates wolves living in areas with 0.0 to 5.0% overlap, Moderate Cougar Overlap (MCO in orange) indicates 5.1–42.0% overlap, and High Cougar Overlap (HCO in red) indicates 42.1–100% overlap. This results in three categories of nearly equal sample size. The lower bars show the predicted probabilities, with 95% confidence intervals, of a seropositive T. gondii test for gray wolves living in LCO (yellow), MCO (orange), or HCO (red). Predicted probabilities are based on the full model.

Unexpectedly, AGE did not have an effect on T. gondii infection (β = 0.296, 95% CIs: −0.158–0.751) and the 95% confidence intervals overlapped zero. The full model included SEX, but this variable was nonsignificant and the confidence interval overlapped zero (β = 0.769, 95% CIs:−0.4984–2.022). SOCIAL STATUS at the time of testing was non-significant (β = −0.836, 95% CIs:−1.982–0.311) as was COAT COLOR (β = 0.516, 95% CIs:−0.726–1.757).

Behaviour analysis results

Wolves classified as dispersers had nearly double the T. gondii seroprevalence of non-dispersers: 36.26% for dispersers and 18.42% for non-dispersers (z-score=3.11 p < 0.001). The model (DISP1) that included TOXO performed better (wi = 0.92; Table 2) than the model without TOXO (DISP2). All four variables were significant with p values < 0.05 and none of the confidence intervals overlapped zero. Males were more likely to disperse than females, wolves living in northern YNP were more likely to disperse than wolves in the interior of YNP, wolves were more likely to disperse with increasing time monitored, and seropositive wolves were more likely to disperse than seronegative wolves (β = 2.459, 95% CIs: 0.298–4.620). The odds ratio for TOXO was 11.69 (exp[2.459]), meaning the odds a seropositive wolf disperses was 11 times higher than the odds a seronegative wolf disperses.

Table 2 Best-fit GLMM for the probability that a wolf disperses.

Using the best-performing model to predict dispersal, we found that seropositive male wolves were most likely to disperse, followed by seronegative male wolves, seropositive females, then seronegative females (Fig. 3). This result confirms previously reported evidence of sex-biased dispersal in YNP wolves25 and indicates that T. gondii infection influences the decision to disperse in both sexes. A seropositive male has a 50% probability of dispersing by six months monitored and seronegative males by 21 months monitored. Seropositive females have a 25% probability of dispersing by 30 months monitored whereas seronegative females reach the same probability at 48 months. These differences (15 months for males to reach 50% dispersing and 18 months for females to reach 25% dispersing) suggest seropositive wolves disperse at much higher rates than seronegative wolves.

Fig. 3: Predicted probabilities of wolf dispersal given sex, amount of time monitored, and T. gondii serostatus.
figure 3

Predicted probabilities of dispersing for male (blue) and female (orange) gray wolves with a seropositive (solid lines) or seronegative (dashed lines) T. gondii test. The shaded areas indicate 95% confidence intervals. The gray line indicates the average number of months (24.9) a wolf is monitored in YNP.

Seropositive wolves were more likely to become pack leaders than seronegative wolves (z = 4.1705, p < 0.001). The model including TOXO (LEAD1) performed better (wi = 1.0, Table 3) than the model without TOXO (LEAD2) and SYSTEM was the only variable that overlapped zero. The effect of TOXO was positive and the confidence intervals just reached zero (β = 3.83, 95% CIs: −0.004–7.664). With an odds ratio of 46.06 (exp[3.83]), the odds that a seropositive wolf becomes a pack leader is more than 46 times higher than a seronegative wolf becoming a pack leader.

Table 3 Best-fit GLMM for the probability that a wolf becomes a pack leader.

Using the best-performing model to predict leadership we plotted the probability of becoming a leader for wolves with and without T. gondii and found that seropositive wolves were more likely to become a leader than seronegative wolves and this effect increased with time monitored (Fig. 4).

Fig. 4: Predicted probabilities of wolf leadership given the amount of time monitored and T. gondii serostatus.
figure 4

Predicted probabilities of becoming a pack leader for gray wolves with a seropositive (solid blue line) or seronegative (dashed lime line) T. gondii test. The shaded areas indicate 95% confidence intervals. The gray line indicates the average number of months (24.9) a wolf is monitored in YNP.

T. gondii infection did not explain habituated behaviour (z = 1.604, p = 0.055) although this sample size was very small with only 27 wolves classified as habituated and only four of those seropositive (13.79%). The model without TOXO (HAB2; wi = 0.69) performed better than the model with TOXO (HAB1). This behavior measure was very course and limited by sample size.

We tested for differences in T. gondii seroprevalence for wolves with different cause-specific mortality and found no differences with several comparisons of the proportions: human-caused (n = 56, 32.14% T. gondii positive) versus natural-caused (n = 99; 31.31%) was not different (z = 0.107, p = 0.456). Wolf-caused (n = 63, 31.75%) versus any other known cause (n = 137; 33.78%) was not different (z = 0.253, p = 0.401). And wolf-caused versus only known (non-wolf) natural mortalities (n = 81; 38.90%) was not different (z = −0.567, p = 0.284). For both causes of death examined through GLMMs, the models without TOXO performed better (INTRA-MORT2: wi = 0.72 and ANTHRO-MORT2: wi = 0.75) than models including TOXO (INTRA-MORT1 & ANTHRO-MORT1).

Discussion

This study provides insights into the relationship between parasite infection and intermediate host behaviour in a wild system. Infection with the parasite Toxoplasma gondii has been linked to increased risk-taking in rodents7,11,12, chimpanzees (Pan troglodytes)13, hyenas14, and now gray wolves. Wolf territory overlap with cougars was a major ecological predictor of T. gondii infection, while wolf demographics (e.g. sex or age) were not informative. T. gondii seropositivity impacted wolf behaviour in two of the three measures of risky behaviour that we tested: seropositive wolves were more likely to disperse and to become pack leaders than seronegative wolves (Fig. 5). These results support not only the historical laboratory work, but also the recent work on hyenas14 confirming toxoplasmosis can affect behaviour and decision-making in wild intermediate host species5,11,14.

Fig. 5: Visual depiction of predicted probabilities of wolf serostatus and behavior.
figure 5

Schematic of results from both the demographic and the behaviour analysis. Displayed at the top are three sample packs with different cougar overlap categories and their corresponding predicted probabilities of T. gondii infection (seronegative in black; seropositive in red) based on the best-fit demographic model. Red-filled wolves indicate the expected percent of infected wolves out of 100% (e.g., total number of wolves in the pack). Cougar density ≥1.8/100 km2 is depicted with hatch-marks. Cougar density below 1.8/100 km2 is all the area outside of the hatch-marks. At the bottom are the predicted probabilities with 95% confidence intervals (gray lines) based on the best-fit behaviour models, of two risky behaviours: dispersing and becoming a pack leader for seronegative and seropositive wolves at 24.9 months monitored (the average number of months wolves in this study were monitored).

Gray wolves and cougars are competitors that evolved concurrently in North America16. These two carnivores generally prey on the same species, yet interspecific conflict is mitigated through partitioned time and space use, as well as active avoidance of each other16,26. Our study corroborates Gering et al. (2021) findings that parasite transmission is an important factor in the dynamic between sympatric carnivores14.

Due to the strong impact of overlap with cougars on gray wolf T. gondii seroprevalence, gray wolves are likely contracting the parasite through direct contact with infected cougars or their shed oocysts, and not through the consumption of alternative intermediate host species. Large ungulates in YNP migrate seasonally to all areas of the park, overlapping all the sampled wolf pack territories. If these ungulates had high T. gondii seroprevalence, we would likely record all wolf packs having similar seroprevalence levels. Elk, the primary prey of wolves in YNP, have been tested for T. gondii (n = 155) and none were clearly seropositive and only five (3.2%) were suspected seropositive (unpublished data, Yellowstone Center for Resources Wildlife Health).

During winter, migrating ungulates in YNP move to lower elevations26,27,28 and, as both wolves and cougars hunt ungulates, this subsequently increases overlap between the two predators16. This increase in overlap occurs during the wolf breeding, gestation, and whelping seasons (February to June20) from mid-winter into early spring. Assuming wolves are more likely to be exposed to T. gondii during this time, there is potential for negative impacts on their reproduction. Specifically, acute T. gondii can cause complications in embryonic and fetal development and result in fetal or newborn mortality, as shown in domestic dogs4. In addition, wolf-to-wolf transmission might be possible during this time (the winter wolf breeding season) because T. gondii can be sexually transmitted in canid species during acute infection4.

In congruence with previous T. gondii wildlife studies, including wolves, sex was not an important predictor of T. gondii infection14,17,18. Contrary to other studies14,17, model results showed that wolf infection did not vary with age. These effects could possibly be masked by spatial differences in exposure whereby a young wolf living in areas with many cougars has a higher risk of infection than an older wolf living for years in a territory with little cougar overlap.

This study is the first to examine the relationship between T. gondii infection and wolf behaviour and decision-making, finding a link between parasitic infection and wolf ecology. Dispersal is an important function of wolf population dynamics, but represents a risky decision as those that disperse suffer higher mortality rates25,29,30. However, if an individual survives the dispersal process, they often find increased opportunities for reproduction31. As seropositive wolves are more likely to disperse, this presents a potential for wolves with T. gondii to fill gaps in unoccupied territories or attempt to establish populations in new areas.

Additionally, seropositive wolves were almost twice as likely to become pack leaders compared to seronegative wolves. Having T. gondii may increase testosterone levels7,8 leading to heightened aggression9,10 and preferential sexual selection (as was found in rats [Rattus norvegicus])7,32. If seropositive wolves are more aggressive during intra-pack interactions, they may more easily become pack leaders. Increased aggression and dominance, combined with possible preferential sexual selection, may explain the mechanism between toxoplasmosis and leadership. Ultimately, obtaining a dominant leadership position is critical for increased fitness through reproductive success33,34 and is presumably under strong selection.

Due to the group-living structure of the gray wolf pack, the pack leaders have a disproportionate influence on their pack mates and on group decisions (Fig. 6). If the lead wolves are infected with T. gondii and show behavioural changes (e.g., seeking out felid scent or novel situations, as in rats or chimpanzees)12,13 this may create a dynamic whereby behaviour, triggered by the parasite in one wolf, influences the rest of the wolves in the pack. If pack leaders seek out felid scent, this could increase the likelihood that uninfected individuals encounter infected cougars or their shed T. gondii oocysts in the environment and then become infected as well. An intermediate host seeking out felid scent helps enable the parasite to complete its lifecycle if the host was killed and consumed by the felid12,13. Additionally, through social learning, pack leader behaviour (i.e., seeking out riskier situations) may be observed and emulated by uninfected individuals, creating a more assertive, risk-embracing pack culture even though only a few key individuals are actually infected. Both pathways could increase wolf T. gondii infections through increases in spatial overlap and perhaps even direct interactions with cougars.

Fig. 6: Hypothesized wolf-cougar-T. gondii feedback loop.
figure 6

Schematic of the possible feedback loop involving gray wolves, cougars, and T. gondii. Red figures indicate seropositive animals and black indicates seronegative animals. Thick, purple arrows indicate links supported by this or other published literature. Thin, gray lines indicate hypothesized relationships.

There are almost certainly evolutionary limits in place to moderate this feedback loop. Acute infection during pregnancy can result in litter mortality4. This aspect of acute infection would severely decrease reproductive success and be evolutionarily disadvantageous for infected individuals. Furthermore, it is rare that a wolf dies of a cause that has little or no risk. The three leading causes of death for wolves in YNP are intraspecific fights, anthropogenic (e.g., hunted by humans, hit by vehicle), and fatal injuries incurred while hunting large prey25. If infected wolves (or those that have learned from infected leaders) take greater risks, it is likely their survival will be lower than those avoiding risks. This hypothetical T. gondii-cougar-wolf-behaviour feedback loop depends on the balance between risks resulting in an evolutionary advantage (e.g., leadership and increased reproductive opportunities) and risks resulting in premature death. Regardless, the effects of T. gondii infection clearly ripple beyond our findings in this study with implications for gray wolf survival and reproduction, and interspecific competition and disease dynamics.

This study is a rare demonstration of a parasite infection influencing behaviour in a wild mammal population. We identified a substantial increase in the odds of dispersal and of becoming a pack leader, both risky behaviours, in wolves seropositive for Toxoplasma gondii. These two life history behaviours represent some of the most important decisions a wolf can make in its lifetime and may have dramatic impacts on gray wolf fitness, distribution, and vital rates. Dispersing wolves often explore new habitats and are the individuals expanding current gray wolf range. Dispersers that survive to establish a territory often gain breeding positions. Pack leaders are the individuals most likely to reproduce which has important implications on population growth rate and may also affect pack behaviour and culture. Additionally, our results suggest that wolves contract T. gondii directly from cougars or their shed oocysts, not through an intermediate host. This study demonstrates how community-level interactions can affect individual behaviour and could potentially scale up to group-level decision-making, population biology, and community ecology. Incorporating the implications of parasite infections into future wildlife research is vital to understanding the impacts of parasites on individuals, groups, populations, and ecosystem processes.

Method

Ethics statement

All wildlife were handled in accordance with recommendations from the American Society of Mammalogists35. Wolf capture protocols are approved by National Park Service veterinarians and University of Montana IACUC #AUP 046-21. Cougar capture protocols are approved by National Park Service veterinarians under IACUC numbers IMR_YELL_Stahler_cougar_2018.A1 and 1988-YCW-502.

Study area

YNP is a National Park managed by the United States Department of the Interior. It is visited by over 4 million people each year, and over 98% of the park’s area (8,991 km2) is undeveloped and managed as wilderness. Northern YNP (995-km2) differs from the interior of YNP (see Houston 1978 for detailed description and map with boundaries)27 as it has lower elevation and is used by elk (Cervus canadensis), bison (Bison bison), and mule deer (Odocoileus hemionus) as primary winter range. Consequently, this area has relatively high wolf and cougar densities. The wolf population, after being extirpated in the early 1900s and then reintroduced in 1995 to 1997, generally numbered between 90 to 120 wolves in eight to twelve packs25, with approximately half the total in northern YNP. Three different felid species that serve as definitive hosts to T. gondii have been found in YNP. Cougars are the focus of this study because bobcats (Lynx rufus) occur at very low densities (pers. communication K. Gunther) and Canada lynx (Lynx canadensis) are extremely rare36. Cougars were largely eradicated from the area by the 1930s, but naturally recolonized YNP by the 1980s, creating a resident population primarily in northern YNP37.

Sample collection

Since wolf reintroduction to YNP in 1995, biologists captured and radio collared 12–20 wolves each year to understand wolf movement and ecology. The wolves were anesthetized with a 10 mg/kg dose of Telazol® (tiletamine & zolazepam), categorized as male or female based on external reproductive organs, then fitted with a VHF (Very High Frequency) or GPS (Global Positioning System) radio-collar (Telonics inc. Mesa, AZ; Vectronic Aerospace Berlin, Germany). Approximately 8–30 ml of blood was drawn from the cephalic vein into vacutainer tubes for genetic sampling and disease screening. Between 3–15 ml of the blood was centrifuged for 15 minutes and the serum was extracted and stored at −80 °C in 1.8 ml plastic cryovials. Age estimates were based on tooth wear, pelage fading, and known pack composition. Coat color was recorded as either gray or black.

Serological screening

Sera from wolves were tested for antibodies to Toxoplasma gondii by the Cornell Animal Health Diagnostic Center (Ithaca, NY). Samples were tested using either enzyme-linked immunosorbent assay (ELISA) or modified-agglutination tests (MAT). For ELISA tests, any optical density measure less than 0.90 was considered negative, 0.91–1.09 was equivocal, and greater than 1.10 was considered positive; for MAT tests, any result with a detectable antibody titer level of 1:25 or greater dilution was considered positive. To be conservative, we treated equivocal tests as negative for analysis. We report prevalence as the percent of seropositive wolves out of the total number of wolves tested. As the first T. gondii infection in a gray wolf in YNP was confirmed in 2000, five years after testing began, the data used in the analyses were from 2000 and after.

To confirm that T. gondii was present in the cougar population, sera from 62 individuals captured (methods described in Ruth et al. 2010, Anton 2020)38,39 in two phases, from 1999 to 2004 and 2016 to 2020, and was tested using the same MAT protocols described above.

Cougar overlap index

Cougars and wolves generally select for different habitats due to their disparate hunting strategies16. However, due to YNP’s high landscape heterogeneity and common use of the same prey populations, the two species exhibit variable overlap and interspecific encounters, including mortalities, occur16. Cougars and wolves range throughout YNP at low densities except for northern YNP where both occur at higher densities39,40,41. This spatial overlap with a definitive host species has been hypothesized to increase transmission to intermediate hosts18. Anton (2020) used non-invasive genetic surveys to sample northern YNP and constructed a spatial model of cougar density within the sampled area42, identifying cougar density per 3.2 km2 cell (for specific methods see Anton 2020)39. We used this spatial model to determine areas within the northern range of YNP where cougar density was ≥1.8 cougars/100 km2. This served as the cutoff between above and below-average cougar density39,41. The remainder of YNP, including areas outside of Anton 2020’s sampling area, were classified as below average cougar density (less than 1.8/100 km2) based on a paucity of cougar sightings and trail camera captures (usually <1 per year) and little to no use by GPS-collared cougars. In addition, the area was not conducive to year-round cougar occupancy because of the relatively flat, treed terrain with little relief and few canyons, and prey species only using the area from approximately June to September due to high elevation and severe winters16,41. It is possible there were a few small areas that were classified as below average density that have seasonal cougar densities approaching average levels. We calculated an index for each wolf’s overlap with cougar density ≥1.8/100 km2 by plotting each wolf territory, measured as a 95% minimum convex polygon (MCP) each biological year (April 1 to March 31) from aerial locations of wolf packs from 2000 to 2021, with the cougar spatial model. Although Anton’s spatial model was built on individual genetic detections in winter (January-March) from 2014–2017, cougar use of northern YNP has remained relatively consistent throughout nearly three decades of wolf research conducted in YNP16,39,42. For each wolf tested, we averaged the annual overlap with cougar density ≥1.8 cougars/100 km2 across years from birth to the time of the T. gondii test. Therefore, each wolf was assigned an average cougar overlap percent (mean = 31.53, range 0–100). As the individual wolf overlap percentages with cougar density were not evenly distributed, this index was divided into three categories: Low Cougar Overlap (LCO, 83 wolves with 0.0–5.0% overlap), Moderate Cougar Overlap (MCO, 83 wolves with 5.1–42.0% overlap), and High Cougar Overlap (HCO, 84 wolves with 42.1–100% overlap). This method ensured that the wolf overlap index with cougars was a metric of relative overlap compared to other wolves, not absolute wolf overlap with cougar density.

Behavioural data collection

Wolf packs were directly observed at varying frequency (approximately 20 to 250 times per year) depending on sightability within a pack’s territory43 from 1995 to 2021. Individual wolves were scored as a pack leader after meeting both of the following criteria: repeated observations (at least five times per year) of dominance over same-sex pack members and evidence of a pair bond (double scent-marking)44 with the opposite-sex dominant individual. Wolves were recorded as habituated (1) if they approached or travelled near people or vehicles to within 10 meters. If a wolf was never recorded approaching within 10 m during the study period, it was coded 0. Dispersal was assessed post hoc when a wolf was tracked separately from its pack mates and away from the pack’s territory and did not return. Cause of death was determined through necropsies in the field or at a laboratory.

Statistics and reproducibility

Demographic analysis

We report seroprevalence for specific demographic categories (e.g., male versus female) and compare these proportions using z-scores. To examine individual variation in T. gondii infection, we used a generalized linear mixed model (GLMM) with a binomial distribution using T. gondii infection as the response variable. We compared a null model to a full model and report model performance based on DAIC and model weights (wi). We used the program STATA for all analyses.

The full model included sex (either male or female, based on external reproductive organs), coat color (black or gray), and social status (leader or subordinate) at time of capture as categorical variables and age as a continuous variable. Studies on other species suggest that T. gondii seroprevalence and susceptibility may be influenced by certain hormones19 and we included the variables sex, coat color, and social status because they are associated with certain hormonal patterns45. Gray wolves have higher cortisol levels compared to black wolves23,24. Social status influences, and is possibly influenced by, glucocorticoids21,46. Age was included to account for accumulating exposure risk throughout a wolf’s life. We also included a cougar overlap index for each wolf. The cougar overlap index was averaged across years per individual, from birth until the time of the wolf’s sample was taken. To account for re-tested individuals, and for unmeasured variables associated with individual wolves, we included wolf identity (WOLF_ID) as a random intercept. Year was not included as a random intercept because T. gondii exposure causes a chronic infection and it was unknown when seropositive wolves were exposed to T. gondii. Accounting for variation in year, relating to serostatus, would be only a reflection of capture effort in a given year rather than wolf exposure to T. gondii.

We compared a NULL model (testing if seroprevalence is best explained by the random intercept only) to a full model which included SEX, AGE, COAT COLOR, SOCIAL STATUS, and COUGAR OVERLAP. We tested for correlations between these variables and found none to be significant with p-values less than 0.05 (Supplementary Table 1). Variables from the best-performing model were significant if the p-value was 0.05 or less and the 95% confidence interval did not overlap zero. We constructed fitted value plots for the predicted probability that a wolf was seropositive for T. gondii antibodies based on the best-performing model.

Behaviour analysis

We identified three wolf behaviours considered risky: (1) dispersing, (2) becoming a pack leader, and (3) showing habituated behaviour around humans. We also identified two causes of death associated with known types of risk: (a) intraspecific mortality and (b) anthropogenic mortality which included deaths from hunting, poaching, vehicle strikes, lethal removal, and capture-related mortalities. We first report seroprevalence for each behavior or cause of death (e.g., percent of dispersers versus non-dispersers that were seropositive) and compare these proportions using z-tests. We then used generalized linear mixed models (GLMMs) with a binomial distribution where wolves displaying the behavior of interest were coded as a 1 and those that did not display the behavior were coded as a 0 (e.g., 1=dispersed or 0=did not disperse). We developed a base model for each behaviour and included covariates associated with the specific wolf behaviour and decision-making15. We then compared this to a model that included all the same variables plus T. gondii seroprevalence. We report model performance based on DAIC and model weights (wi). We included wolf identity (WOLF_ID) as a random intercept and used the program STATA for all analyses.

To test whether T. gondii infection affected dispersal, we compared two models. DISP1 included SEX, SYSTEM, TIME AVAILABLE, and TOXO status. DISP2 included all the same variables minus TOXO. This method allowed us to determine the effect of T. gondii while controlling for other important factors, described below. The same method was used to test for T. gondii effects on leadership: LEAD1 included SYSTEM, TIME AVAILABLE, and TOXO and was compared to LEAD2 including only SYSTEM and TIME AVAILABLE. The models testing for effects on habituation included: HAB1—SEX, TIME AVAILABLE, SYSTEM, and TOXO and HAB2—SEX, TIME AVAILABLE, and SYSTEM. For both GLMMs related to cause of death we compared INTRA-MORT1 and ANTHRO-MORT1 including SEX, AGE CLASS, SYSTEM, and TOXO to INTRA-MORT2 and ANTHRO-MORT2 including SEX, AGE CLASS, and SYSTEM. We included individual wolf ID as a random intercept for all models except the habituation analysis (HAB1 and HAB2) which were restricted by sample size and models attempting to account for repeated measures did not converge.

To account for the duration a wolf was monitored while infection status was known, we used the continuous variable TIME AVAILABLE. Temporal measure TIME AVAILABLE was the total number of days each wolf was monitored (mean: 746, range: 3–3800). The focal time period for the response (i.e., risky behaviour) was dependent on the time period of a wolf’s known T. gondii serostatus. Wolves that were seronegative had a TIME AVAILABLE from the time of their test backwards to their birth, and wolves that were seropositive had a TIME AVAILABLE from their test date forward to death, or to present time if still alive. Restricting observed behaviours to the time period for which we knew a wolf’s infection status ensured that we accurately accounted for parasite infection when assessing behaviour. For wolves that tested negative, we subtracted 180 days from their time available because the first six months of a wolf’s life are spent as dependents at a den or rendezvous site, and they are not old enough to disperse or become leaders.

SEX (male or female) and AGE CLASS (pup, yearling, adult, or old) were included in a subset of the behavior models to control for their known effects on wolf life history, particularly related to dispersal, where males are more likely to disperse and dispersal rates increase with age, and survival25.

Relatively high wolf density in northern YNP may affect wolf behavior. For example, wolves that lived in northern YNP had closer selection distance to roads47 and this may correlate with habituated behavior. High wolf density may also affect behavior such as dispersal given the greater access to potential mates. To account for this dynamic, we included SYSTEM (northern YNP or non-northern YNP) in the behavior models.

Variables from the best-performing model were significant if the p-value was 0.05 or less and the coefficient 95% confidence interval did not overlap zero. If the best-performing model for each behavior included TOXO, we constructed fitted value plots to visualize the predicted probability of the behavior given serostatus and the other significant variables.

Reporting summary

Further information on research design is available in the Nature Research Reporting Summary linked to this article.