Introduction
Most populations of threatened species require management and conservation actions to ensure their recovery and persistence. This is particularly true for vertebrates affected by hunting and habitat loss, two of the major causes of biodiversity loss (Péres, Reference Péres2001; Urquiza-Haas et al., Reference Urquiza-Haas, Peres and Dolman2011). However, in many cases conservation actions are implemented without previous assessments of their potential impacts on a population or an evaluation of their relative effectiveness in comparison to alternative strategies. Although for many species or populations such assessments could require data that have not been collected, in some cases it is possible to complement field data with secondary information to evaluate the relative potential impacts of conservation actions.
One common approach to assessing such strategies is population viability analysis (Urquiza-Haas et al., Reference Urquiza-Haas, Peres and Dolman2011), which estimates the probability of a population persisting over time (Morris & Doak, Reference Morris and Doak2003). Such an analysis allows us to obtain the survival probability (P[Survive]) for a given period of time and to determine the viability of the population under alternative conservation scenarios. It thus supports decision-making regarding the most effective actions based on demographic information of the population, ecological parameters of the species and stochastic variables that affect the population. This type of analysis has been widely used to address conservation problems involving several species, including cracids (Martínez-Morales et al., Reference Martínez-Morales, Cruz and Cuarón2009; São Bernardo et al., Reference São Bernardo, Desbiez, Olmos and Collar2014). Nonetheless, population viability analyses, as well as sensitivity analyses that assess the impacts of variable vital rates on population growth, have limitations and should be implemented and interpreted with care (Manlik et al., Reference Manlik, Lacy and Sherwin2018). The perturbations evaluated should be realistic and feasible to implement, the parameters used should be presented clearly, with levels of confidence to ensure robustness and reliability for decision-making, and population viability analysis models should be repeatable and reproducible (Morrison et al., Reference Morrison, Wardle and Castley2016; Manlik et al., Reference Manlik, Lacy and Sherwin2018).
The cracids are one of the most threatened bird families in the Neotropics (Silva & Strahl, Reference Silva, Strahl, Robinson, Redford and Rabinovich1997). The blue-billed curassow Crax alberti is endemic to Colombia. Historically it occurred in the northern dry forests of Colombia and to the south in humid forests of the Middle Magdalena Valley (Renjifo et al., Reference Renjifo, Franco-Maya, Amaya-Espinel, Kattan and López-Lanús2002). These areas include some of the most transformed and least protected ecosystems in Colombia (Forero-Medina & Joppa, Reference Forero-Medina and Joppa2010; González-Caro & Vásquez, Reference González-Caro, Vásquez, Quintero Vallejo, Benavides, Moreno and González-Caro2018). Habitat destruction across the species’ range, and hunting, are the greatest threats to the blue-billed curassow and have caused dramatic declines in its populations (Renjifo et al., Reference Renjifo, Franco-Maya, Amaya-Espinel, Kattan and López-Lanús2002; Melo-Vasquez et al., Reference Melo-Vasquez, Ochoa-Quintero, López-Arévalo and Velásquez-Sandino2008). Although it is currently categorized as Critically Endangered on the IUCN Red List (BirdLife International, Reference BirdLife International2018), there have been no robust assessments of the viability of its remnant populations or of the potential impacts of possible conservation actions. Given the reduction of its range, it is essential to understand which populations could persist over time and the relative value of alternative conservation strategies. This is the case not only for the blue-billed curassow but also for other endemic and keystone species in the tropics for which information on population viability is not available.
In this study we used population viability analysis to evaluate the viability of the C. alberti population located in the municipality of Yondó, Antioquia, over a 100-year timeframe, and to compare the effectiveness of the conservation actions that could be implemented. For this we collected field data using camera traps and performed an occupancy analysis that allowed us to obtain an estimate of the initial population and the carrying capacity of the area. We then conducted a population viability analysis whilst simulating seven scenarios that reflect possible conservation actions. We compared the predictions of these scenarios to determine which conservation actions could increase the viability of the population to the greatest extent.
Study area
The area where we studied a local blue-billed curassow population for 5 years (2017–2021) comprises c. 300 km2 within the municipality of Yondó. The area includes parts of the sub-municipalities (veredas) of San Bartolo, Santa Clara, Barbacoas, Bocas de Barbacoas, La Ganadera and Cienaga Chiquita (Fig. 1). Mean annual precipitation is 2,732 mm, with a mean annual temperature of 28°C and relative humidity of 76–81%. There are dry periods in June–September and December–March and rainy periods in April–May and October–November (Corantioquia, Reference Corantioquia2005).
The landscape comprises a mosaic of land-cover types, including pastures, grasslands, secondary vegetation, wetlands, forests (in various states of preservation), sandy areas, agricultural areas and waterbodies (Fig. 1). As with most humid forests of the Magdalena Valley, this territory has been affected significantly by deforestation, a process that has reduced the forest to patches, most of them small (González-Caro & Vásquez, Reference González-Caro, Vásquez, Quintero Vallejo, Benavides, Moreno and González-Caro2018). This area contains one of the few remaining populations of blue-billed curassow. Once ranging across northern Colombia and the Middle Magdalena Valley, the species is now limited to a few large remnant forests, including the dry forests in Tayrona National Park, the Serranía de San Lucas massif and the forest patches in the Middle Magdalena Valley.
Methods
We first performed occupancy analysis using camera-trap data we collected in the study area in 2017 (see details below). The results from this analysis allowed us to determine the initial population (N 0) and carrying capacity (k) variables. We then used these results to perform a population viability analysis.
Occupancy
To assess the presence of the blue-billed curassow in the study area, we used single-season occupancy models, which describe the proportion of the area occupied by a species whilst correcting for detection errors (MacKenzie et al., Reference MacKenzie, Nichols, Royle, Pollock, Bailey and Hines2006). We used motion-sensitive infrared flash cameras (Reconyx HC500, Reconyx, Holmen, USA) to detect the blue-billed curassow. We divided the sampling area into a grid of 1 × 1 km cells and selected 29 cells with > 10% of forest in which to set the camera traps, covering the heterogeneity of the landscape. We surveyed during the dry season of 2017 using one camera trap per cell for 60 consecutive nights.
We considered 19 anthropogenic and environmental variables (Table 1) that could potentially influence the species’ occupancy. We included the area of each of the land-cover types at two scales: the 1 × 1 km grid cells, and with a 1-km buffer around each cell (i.e. a cell size of 3 × 3 km). As C. alberti is a terrestrial species associated with forests, uses tree strata from the ground to the canopy (Cuervo et al., Reference Cuervo, Ochoa and Salaman1999; Quevedo et al., Reference Quevedo, Urueña, Machado, Arias-Moreno, Medina-Castro and Castañeda2008) and could be affected differentially by forest structure and flooding, for the land-cover variables we considered the overall forest area and the areas of the main forest types: fragmented vs dense; flooded vs upland; tall (canopy > 15 m) vs low (canopy 5–15 m). Additionally, we used two anthropogenic variables: minimum distance to human settlements and minimum distance to roads, which account for accessibility and are assumed to be correlated with the probability of hunting.
We adjusted the occupancy models in two steps: first adjusting for the probability of detection and then adjusting for the probability of occupancy. For detection we divided the sampling days into different time periods to establish the number of replicates. By identifying the model with the best fit, using the Akaike information criterion, we considered replicates of 5, 10, 15 and 20 clustered days (data not shown) and found that the best fit was obtained when grouping 15 days as a detection event. Additionally, we incorporated two detection variables: the area of forest and the area of pasture within the cell. Although there were no differences between the models (Table 2), we used the null model for detection as it is the most parsimonious (i.e. with the least number of parameters). Next, we adjusted for occupancy. Considering that many of the variables were highly correlated (Fig. 2), the models were run with each of the variables independently and only incorporated more than one variable if the correlation was < 0.3 and not significant. As we do not have a high presence of zeros it was not necessary to correct for this factor. We adjusted the models using the unmarked package in R (R Development Core Team, 2010; Fiske & Chandler, Reference Fiske and Chandler2011). To determine the model that best represents the data, we used the Akaike information criterion corrected for small sample size (AICc) and Akaike weight (lowest AICc score and highest Akaike weight score; Burnham & Anderson, Reference Burnham and Anderson2002).
1 Number of parameters in the model.
2 Akaike information criterion corrected for small sample size.
3 Difference in AICc from the best model.
Population viability analysis
To evaluate the viability of the population and compare the effects of alternative conservation actions, we performed a population viability analysis using Vortex 10.0.7.9, which uses a Monte Carlo simulation of the effects of the deterministic forces as well as demographic, environmental and genetic stochastic events on wildlife populations (Lacy, Reference Lacy1993). We built the model based on results obtained in the occupancy analysis as well as available information on the species obtained from published articles and captive breeding programmes implemented in national (Asociación Colombiana de Parques Zoológicos y Acuarios) and international zoos (Houston Zoo, USA; Crnokrak & Roff, Reference Crnokrak and Roff1999; Cuervo et al., Reference Cuervo, Ochoa and Salaman1999; Reed et al., Reference Reed, O'Grady, Ballou and Frankham2003; Brooks & Fuller, Reference Brooks, Fuller and Brooks2006; Medina & Castañeda, Reference Medina and Castañeda2006; O'Grady et al., Reference O'Grady, Brook, Reed, Ballou, Tonkyn and Frankham2006; Quevedo et al., Reference Quevedo, Urueña, Machado, Arias-Moreno, Medina-Castro and Castañeda2008). As the forest patches were once connected, we assumed there is only one genetic population and that connectivity between patches would be sufficient to facilitate movement of the blue-billed curassow between them; therefore, we modelled a single population in the system. We assumed that the system is not saturated (N 0 < k) because previous occupancy models indicate heterogeneity in the probability of occupancy, with some habitat areas potentially being uninhabited at present. The age structure of the population is also unknown; therefore, we established a stable distribution for all of the simulated scenarios, making the number of births equal to the number of deaths. We ran each simulation with 100 iterations to 100 years and defined as viable populations those with a probability of survival > 0.4 at the end of the simulation time.
Initial population size and carrying capacity
We estimated the initial population size (N 0) using Equation (1):
where A (Occu≥0.7) is the area of non-flooded forest within the study area with an occupancy value of ≥ 0.7 and d the population density. We used two population density values: one low estimate of 1.66 individuals/km2 reported in the municipality of Maceo, Antioquia (González, Reference Gonzáles, Quevedo, Urueña, Arias, Ochoa, Melo, Machado and Montero2004) and a higher estimate of 2.5 individuals/km2 obtained from the reserve El Paujil, in the departments of Boyacá and Santander (Rodríguez, Reference Rodriguez2006). We generated two groups of scenarios with these initial density values (Table 3). We calculated the carrying capacity (k) again, using Equation (1), but replacing A (Occu≥0.7) with A (Total), with the latter corresponding to the total non-flooded forest area, thus assuming that the entire forest habitat would be occupied. To include the direct effect of deforestation on habitat loss and thus k, we added an annual change of –0.8% to the carrying capacity during the first 30 years of the simulation. We estimated this forest loss rate in the landscape based on the per cent of forest cover loss in the territory during 2000–2014, which was 10.9% total or 0.8% per year (Hansen et al., Reference Hansen, Potapov, Moore, Hancher, Turubanova and Tyukavina2013).
1 Estimated by multiplying the population density by the habitable area with an occupancy value of ≥ 0.7 (for details, see Methods).
2 Estimated by multiplying the population density by the potentially habitable area (for details, see Methods).
3 From the breeding programme at Houston Zoo.
4 Estimated from our fieldwork (for details, see Methods).
Annual mortality and longevity
Mortality by age is unknown for the natural populations of C. alberti. To obtain this parameter, we used as a reference the mortality proposed for a population of the red-billed curassow Crax blumenbachii in Brazil (São Bernardo et al., Reference São Bernardo, Desbiez, Olmos and Collar2014). We assumed the following for both sexes: individuals of 0–1 year, 35% mortality; 1–2 years, 25%; 2–3 years, 10%; and ≥ 3 years, 8%. Based on information collected by Houston Zoo (C. Holmes, pers. comm., 2016), we used a maximum age of 25 years for both males and females, with this also being the maximum reproductive age.
Catastrophes
Catastrophes are natural environmental events outside normal variation (e.g. hurricanes, floods, diseases or similar events) and can affect the reproduction and/or survival of a species. The probability of a rapid population decrease in vertebrates has a high correlation with generational time: the probability that a population experiences a catastrophe causing a reduction of 50% in the population is 14% per generation (Reed et al., Reference Reed, O'Grady, Ballou and Frankham2003). To incorporate this value for C. alberti, we assumed a catastrophe probability of 14% every 7 years (i.e. the generation time of the species) or 2% per year, with each catastrophe causing a 50% reduction in the survival of the population. These catastrophes could occur in real scenarios as a result of climate variations or diseases affecting the species, increasing the mortality of young individuals or affecting the nesting success.
Annual mortality from hunting
We have received reports of hunting of C. alberti but there is no detailed information regarding the number of individuals hunted per year. We used mortality from hunting of five adults (≥ 3 years; four male and one female) and two juveniles (0–1 years; one male and one female) per year based on informal conversations with local people. The number of adult males is higher as hunters can detect them during the breeding season from the sounds they use to gain the attention of females.
Conservation scenarios
With regards to the various conservation actions that could be implemented and have been discussed in meetings and workshops, we created seven scenarios to evaluate the response of the population to changes in population size, carrying capacity and mortality from hunting (Tables 4 & 5). These were combined with the two initial densities considered, creating a total of 14 scenarios.
Results
Occupancy analysis
We obtained 918 photographs of blue-billed curassows during the 1,740-night survey period (240 occasions) in 17 of the 29 survey cells (i.e. naïve occupancy ψ = 0.59). The models with the best support for explaining the occupancy of the blue-billed curassow (ΔAICc < 2) were those that included the area of lowland dense flooded forest and the area of open pastures within the buffer zone (Table 2), both of which have a negative effect on the species (i.e. occupancy being higher in areas with little lowland flooded forest and few pastures). To determine occupancy, we used the model that included both variables affecting detection, which resulted in a mean occupancy, of ψ = 0.83 ± SE 0.002 for the study area.
Population viability analysis
Given the results from the occupancy analysis, which informed the area occupied by the species, and the density values, we obtained two N 0 values, to generate two groups of scenarios (low density, d = 1.66 individuals/km2; high density, d = 2.50 individuals/km2), corresponding to an N0 of 64 and 97 individuals, respectively. We also obtained k values for the two groups of scenarios, resulting in 84 and 126 individuals, respectively.
The simulations for the No_Intervention scenarios indicated a high probability of extinction of the current population, with mean times to extinction of 16 and 36 years for the low and high initial densities, respectively (Table 6). Amongst the low-density scenarios, the only scenario with viability of > 100 years was Hunting_0. Amongst the high-density scenarios, those with viability of > 100 years were Hunting_50, Hunting_0 and Protected_Area (Fig. 3, Table 6).
The scenarios that decreased mortality from hunting across the whole landscape (Hunting_50 and Hunting_0 at both low and high initial densities) were the most successful in ensuring viability for 100 years (Table 6). The Protected_Area scenarios were second in ensuring viability, indicating viability at a high initial density and increasing the mean time to extinction by 40 years compared to No_Intervention at a low initial density (Fig. 3). Supplementation was not effective if hunting remained constant, although it delayed the mean time to extinction by 11 and 7 years at a low and high density, respectively, compared with the corresponding No_Intervention scenarios. The scenarios affecting carrying capacity (k) (k_Constant and k_Increasing at both low and high densities) did not change the probability of extinction significantly compared to the corresponding No_Intervention scenarios (Table 6).
Discussion
Using the information available for C. alberti (both field data and secondary information) we were able to create a model reflecting the dynamics of the population of the species in Yondó. We used this model to compare possible conservation strategies for the long-term persistence of the species. Even with limited information, the comparison of the scenario outcomes provides evidence regarding which of these scenarios will most likely prove successful in the long term.
We conclude that without any intervention the population is not viable over a 100-year period, with a probability of survival close to zero for the two densities modelled. This is the first analysis of this type for C. alberti, although there are similar studies using population viability analysis for other cracids (Martínez-Morales et al., Reference Martínez-Morales, Cruz and Cuarón2009; São Bernardo et al., Reference São Bernardo, Desbiez, Olmos and Collar2014). We conclude that the threats to this species are driving this population to extinction and that implementing further conservation actions is necessary to avoid this. The model confirms the susceptibility of the species to hunting pressure. This agrees with results showing that hunting is the major driver of non-viability of C. alberti populations (Cuervo et al., Reference Cuervo, Ochoa and Salaman1999). The conservation strategies that offer the best long-term results are those that reduce hunting. The results indicate that it could be sufficient to reduce this by half in the study area to guarantee the viability of this population. Given the sensitivity of the species to hunting, we recommend a detailed study to assess hunting levels in this area.
Eliminating or significantly reducing hunting levels across the whole study area could prove difficult as there are several human settlements and multiple private properties in the area, where this practice could continue. However, our results indicate that eliminating hunting in the three properties containing the largest forest remnants would be one of the best strategies for reducing the extinction probability of this C. alberti population and could be sufficient to sustain the population, with it functioning as a source of individuals to the whole population. This action is realistic as there are only three properties to consider and conservation agreements have been signed with their owners. These agreements guarantee forest protection and no hunting within their boundaries. Conservation efforts should focus on enforcing these agreements and monitoring hunting, to ensure that no blue-billed curassows are taken within these areas. Our results indicate this would be the most effective and realistic strategy of the seven scenarios considered. If achieved, it could increase the long-term viability of the population. It will be important to monitor the subpopulations within the properties and to increase the connectivity between them. Actions to reduce hunting elsewhere should not, however, be neglected, as they contribute to the long-term viability of the population.
Our findings indicate that supplementation of the population with captive-bred individuals does not seem to be an effective strategy on its own, requiring a simultaneous reduction of hunting to reduce the extinction probability of this population. Therefore, it is important to consider the costs and benefits of such a measure, especially because it would require the care of chicks and intensive tracking of released animals. This strategy has proved successful in other populations of cracids (Pereira & Wajntal, Reference Pereira and Wajntal1999; São Bernardo et al., Reference São Bernardo, Desbiez, Olmos and Collar2014) but has also highlighted the need to control or reduce the threats facing the introduced animals, especially hunting. If this strategy is considered for C. alberti, it will be important for it to be accompanied by other actions controlling the threats to any introduced animals.
Reducing deforestation in the landscape is a major goal of conservation projects, but it seems that for this particular species reducing the deforestation rate or small-scale forest restoration alone will not increase the carrying capacity sufficiently to boost the population. Regardless, this strategy should be considered, given that fragmentation of forest patches negatively affects large bird species (Thornton et al., Reference Thornton, Branch and Sunquist2012). In addition, it is important that the blue-billed curassow should be able move between forest patches.
Population viability analysis is a practical tool for comparing the effectiveness of alternative conservation actions. Using this type of analysis, the cost-effectiveness of projects can be increased by making use of the predictions of the population dynamics of species. In the case of the blue-billed curassow, population viability analysis could help with conservation decision-making both now and in the future.
Acknowledgements
We thank Andrey Valencia for preparing maps; the staff of Asociación Colombiana de Parques Zoológicos y Acuarios, Carlos Galvis (Cali Zoo) and Chris Holmes (Houston Zoo) for sharing their knowledge of captive breeding programmes; and Gustavo Kattan (RIP), whose contributions facilitated the writing of this article. This project was supported by Ecopetrol S.A., Fundación Santo Domingo, Fondo Acción, Wildlife Conservation Society and Fundación Biodiversa Colombia.
Author contributions
Study design, writing: IFV, GHK, LV, FA, GF-M; occupancy analysis: LV, LC; population viability analysis: IFV, GHK, GF-M; fieldwork: LV, FA.
Conflicts of interest
None.
Ethical standards
This study abided by the Oryx guidelines on ethical standards. The data were obtained using camera-trap surveys, a non-invasive method. No photographs of people were inadvertently acquired using the camera traps.