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Forensic Application of Stable Isotopes to Distinguish between Wild and Captive Turtles

by
John B. Hopkins III
1,*,
Cheryl A. Frederick
1,
Derek Yorks
2,
Erik Pollock
3 and
Matthew W. H. Chatfield
4
1
Center for Wildlife Studies, 36A High St., Camden, ME 04843, USA
2
Maine Department of Inland Fisheries and Wildlife, Bangor, ME 04441, USA
3
Stable Isotope Laboratory, University of Arkansas, Fayetteville, AR 72701, USA
4
School of Biology and Ecology, University of Maine, Orono, ME 04469, USA
*
Author to whom correspondence should be addressed.
Biology 2022, 11(12), 1728; https://doi.org/10.3390/biology11121728
Submission received: 1 November 2022 / Revised: 22 November 2022 / Accepted: 25 November 2022 / Published: 29 November 2022
(This article belongs to the Special Issue Applications of Stable Isotope Analysis in Ecology)

Abstract

:

Simple Summary

Wildlife trafficking is a major contributor to global biodiversity loss, especially reptiles, which are confiscated by law enforcement more than any other vertebrate class. Wildlife forensic experts can use chemicals from animal tissues to determine the origin of confiscated animals. Such physical evidence can help law enforcement prosecute wildlife traffickers in court and hold poachers accountable. In this study, we developed a statistical tool that can be used to determine if a confiscated wood turtle (Glyptemys insculpta) from Maine came from the wild or captivity. We used carbon and nitrogen stable isotopes from wood turtle claw tips to construct a statistical model that correctly classified all wild turtles as wild and nearly all captive turtles as captive (predictive accuracy 97.2%). Results from our study can be used to assist law enforcement in Maine and to develop a forensics tool used to help combat the illegal turtle trade.

Abstract

Wildlife traffickers often claim that confiscated animals were captive-bred rather than wild-caught to launder wild animals and escape prosecution. We used stable isotopes (δ13C and δ15N) derived from the claw tips of wild wood turtles from Maine and captive wood turtles throughout the eastern U.S. to develop a predictive model used to classify confiscated wood turtles as wild or captive. We found that the claw tips of wild and captive wood turtles (Glyptemys insculpta) were isotopically distinct. Captive turtles had significantly higher δ13C and δ15N values than wild turtles. Our model correctly classified all wild turtles as wild (100%) and nearly all captive turtles as captive (94%). All but two of the 71 turtles tested were successfully predicted as wild or captive (97.2% accuracy), yielding a misclassification rate of 2.8%. In addition to our model being useful to law enforcement in Maine, we aim to develop a multi-species model to assist conservation law enforcement efforts to curb illegal turtle trafficking from locations across the eastern United States and Canada.

1. Introduction

The illegal pet trade often involves “laundering” animals to hide their origins, creating legal loopholes that include passing an animal off as captive-bred [1,2]. One way to combat such wildlife laundering is to develop new forensic tools for determining the origins of animals seized by law enforcement [3], including predictive models used to classify a confiscated animal as poached from the wild versus raised in captivity at a private residence or commercial breeding facility. Results from such a quantitative analysis could be presented in court as evidence for prosecuting alleged wildlife traffickers [4].
Stable isotopes analysis (SIA) can be used as a powerful forensics tool for combating the illegal wildlife trade [5]. SIA of animal tissues can be used to differentiate between wild-caught and captive animals based on isotopic differences in the composition of their tissues, which reflect differences in the diet and environments they experienced during tissue growth [6]. Animals raised in captivity often have routine diets that are high in nutrients and are generally less varied than those consumed by wild animals [7,8]. Differences in diet can cause isotopic dissimilarity between groups, allowing researchers to differentiate between wild and captive animals, such as American mink (Mustela vision; [9]), Atlantic salmon (Salmo salar; [10]), Burmese pythons (Python bivittatus; [5]), and wood turtles (Glyptemys insculpta; this study).
Despite their overwhelming prevalence in the legal and illegal wildlife trade (much more so than mammals, birds, fish, invertebrates, and amphibians combined), reptiles, including freshwater turtles, have received little conservation funding or meaningful law enforcement attention, leading to population declines [11]. For instance, the collection of wood turtles is a contributor to population losses throughout their range, as evidenced by confiscations (see [12]). As a result of their declining numbers in the U.S. and Canada, wood turtles are currently listed as Endangered by the International Union for Conservation of Nature (IUCN) and have been proposed for listing under the U.S. Endangered Species Act [13].
In this study, we explored the use of carbon and nitrogen stable isotope ratios (expressed as δ13C and δ15N, respectively) derived from the claw tips of wild wood turtles from Maine and captive turtles collected from a variety of facilities throughout the eastern U.S. to (i) test predictions deduced from the wild- versus captive-feeding hypothesis, and (ii) develop a predictive model used to determine if a confiscated wood turtle from a given region, in this case, Maine, has wild or captive origins. Such information would help prevent wildlife trafficking of wood turtles in Maine and inform future strategies to expand our work to other geographic regions and species of concern.

2. Materials and Methods

2.1. Sampling

Wild wood turtles are considered riparian specialists, moving seasonally between aquatic and upland habitats, yet are omnivorous dietary generalists [14]. Wood turtles naturally concentrate in streams or stream-adjacent habitats in the spring and fall (reviewed in [15]) when turtles are located and routinely handled for population surveys and ecological studies. In 2020 and 2021, with the aid of our partners in the field, we collected claw tips from 35 wild wood turtles sampled from three areas in Maine during either the spring or fall (Table 1). Due to poaching concerns, details about the locations of wild turtles are not included here.
During the same years, we also obtained claw tips from 36 captive wood turtles from a network of 12 facilities throughout the eastern United States. Captive turtles were also sampled in the spring and fall, although dates were more variable than wild turtles (Table 1).
We collected samples using minimally invasive methods described in Hopkins et al. [16]. Specifically, participants used cat nail trimmers to clip off 1–3 mm of claw tip from one toe from each of two different feet. Participants stored all claw tips in paper envelopes, plastic bags, or plastic vials, labeling each with the date, species, age class, sex, and a unique identification number. Following Aresco et al. [17], who found turtle claw tissue reflected δ15N uptake in <6 months and δ13C uptake at >6 months, our wild samples were only taken from adults (ensuring well over one year of growth). Similarly, all sampled captive animals had been held for at least one year to allow ample time for any dietary changes from a wild to captive environment to be reflected in their claw tips [17].

2.2. Stable Isotope Analysis

We conducted stable isotope analysis at the University of Arkansas Stable Isotope Lab (UASIL). Staff at the UASIL weighed ~0.3 mg of claw material using a microbalance (Sartorius SC-2); wrapped each weighed sample in a tin capsule; and analyzed all samples using an EA-Isolink elemental analyzer interfaced via ConFlo IV to a Delta V plus isotope ratio mass spectrometer (Thermo Electron, Bremen, Germany). UASIL ran the system in a dual column mode for combustion (1020C), reduction (620C), and flow (100 mL/min), and CO2 and N2 gases were separated on 1/8” 0.5M GC column at 33C (proprietary phase Thermo Fisher Scientific, Waltham, MA, USA). The system was equipped with a Costech zero blank autosampler with a 49-position carousel; each full run consisted of 18 standards, 1 blank, and 30 samples. Staff at the UASIL normalized raw instrument delta values to international scale values using standards USGS 41a (n = 19) and USGS 8573 (n = 19) with δ13C = 36.55, −26.39 and δ15N = 47.55, −4.52, respectively. Standard reproducibility varied between 0.07 and 0.09 per mil (‰). Replicate standards had reproducibility better than 0.1‰ for both carbon and nitrogen.

2.3. Statistical Comparisons

Although we were primarily interested in comparing stable isotope values for wild and captive turtles, we also explored the possible differences in sex-based life history strategies and our seasonal sampling regimes [18]. Before performing the statistical comparisons described below, we first assessed the normality and homoscedasticity of δ13C and δ15N values for each of the three groups using Shapiro–Wilk and Levene’s tests, respectively. We also used Levene’s test to test the prediction that the variance of δ13C and δ15N values for captive turtles would be lower than wild turtles (our prediction was deduced from the hypothesis that captive turtle diets are less varied than their wild counterparts). We compared stable isotope values for captive and wild turtles, males and females, and turtles sampled in the spring and fall using t-tests, ANOVA, and Tukey tests if the stable isotope values for groups were normally distributed and had equal variance, or Mann–Whitney, Kruskal–Wallis, and Dunn’s (with Bonferroni correction) tests, if the stable isotope values for groups were non-parametric and/or they had non-constant variance. We conducted all analyses in R [19] using α = 0.05 .

2.4. Predictive Model

We used the package glmnet in R to fit generalized logistic regression models via penalized maximum likelihood. We also performed K-fold cross-validation using the glmnet package to select the best model from all combinations of models that include δ13C, δ15N, and sex as predictors. We did not include season as a variable in our candidate set because, in most cases, captive turtles did not have a seasonal diet. We reported the sensitivity (true positive rate), specificity (true negative rate), accuracy (success rate), misclassification rate (incorrect classification rate), optimal decision threshold, and the area under the receiver operating characteristic (AUROC) curve for our top model.

3. Results

3.1. Statistical Comparisons

All groups used in our statistical tests were normally distributed, except for wild turtles δ13C values (W = 0.926, p = 0.0213). We also found that the variance of δ13C values for turtles by sex (F = 8.745, p < 0.005) and season (F = 10.755, p < 0.005) were non-constant (Figure 1). Our data did not match the prediction that the variance of δ13C values for captive turtles would be lower than wild turtles; instead, we found the variance of δ13C values were greater for captive turtles (s2 = 1.64) than wild turtles (s2 = 0.12) and δ15N values for captive turtles (s2 = 1.42) were not significantly different from wild turtles (s2 = 1.67) (Figure 1, Table 1). We conducted non-parametric tests when comparing δ13C values for turtles and parametric tests when comparing their δ15N values. We learned that captive turtles were heavier in 13C and 15N than wild turtles, as indicated by their elevated δ13C (captive: −21.3 ± 1.3; wild: −24.6 ± 0.35; W = 1252, p < 0.005) and δ15N (captive: 9.0 ± 1.2; wild: 6.2 ± 1.3; t = 9.2838, df = 68.199, p < 0.005) values (Figure 1); this was not the case, however, for captive females versus males, wild females versus males, captive turtles sampled in the spring versus fall, and wild turtles sampled in the spring versus fall (Figures S1 and S2).

3.2. Predictive Model

Using an optimal discrimination threshold value of 0.48, our top model, which included all predictors (Table S1), classified all 35 wild wood turtles as wild (100% sensitivity) and 34 of 36 captive turtles as captive (94% specificity) (Table 1). The two captive turtles predicted as wild had the lowest δ13C values for captive turtles and lower than average δ15N values. The model coefficients suggest that the most important predictor was δ13C, followed by being female, δ15N, and being male (Table S1). Overall, our top model was 97.2% accurate at correctly classifying Maine wood turtles as wild or captive with a misclassification rate of 2.8%. A 0.997 area under the ROC curve suggests a very high predictive capacity for correctly classifying turtles as wild or captive.

4. Discussion

Our examination of stable isotopes derived from wood turtle claw tips yielded two principal findings. First, and most importantly, we found that wild wood turtles from Maine and captive wood turtles from a variety of facilities were isotopically distinct (Figure 1). Captive turtles had significantly higher δ13C and δ15N values; as a result, our predictive model correctly classified all wild turtles as wild and had a very low overall misclassification rate (<3%). Second, we learned that our data did not match the prediction that the stable isotope values for wild turtles would vary more than captive animals; instead, we found that wild turtles had lower isotopic variance than captive animals, suggesting wild wood turtle diets were less diverse.
Captive turtles likely had greater δ13C and δ15N values than wild turtles because their formulated diet contained corn and animal protein. Past studies found that the tissues of animals that forage for foods that are anthropogenic in origin, including those foods high in corn and animal protein, have elevated δ13C and δ15N values, respectively. For instance, hair from American black bears (Ursus americanus) that feed on human foods had greater mean δ13C values (<0.6‰) and δ15N values (2‰) than those on a wild diet [20]; claws from farm-raised American mink were, on average, far greater (4‰) than their wild counterparts [9]; muscle from farmed Atlantic salmon had greater mean δ13C values (>1‰) than wild salmon sampled in Newfoundland [10]; and skin from captive Burmese pythons (2‰) had greater mean δ13C values than skin from wild pythons [5].
Unlike previous studies that show greater variation in stable isotopes for wild animals than their captive counterparts [5,9,10], we did not find support for the hypothesis that wild wood turtles have more diverse diets than captive turtles. We learned that among the captive facilities that contributed samples to this study, no two fed their wood turtles the same diet. They varied in the use and type of their commercial diet, mixes of fruits and vegetables, and animal protein sources. Unfortunately, we did not have large enough sample sizes to test the prediction as it applies to each captive facility. If we had, we might have found that although turtles are isotopically diverse among facilities, they are not within each facility. Conversely, it is possible that temporal, spatial, or other unknown factors constrain dietary diversity in wild turtles to a greater extent than anticipated given their complex natural history.
Wood turtle ecology provides context for two other isotopic patterns we observed in our sample of wild turtles. First, while there are some variations in seasonal habitat use and movement patterns between males and females [21], we saw no isotopic differences between sexes, suggesting that minor divergences in life history strategies do not result in significant dietary differences (Figure S1). Second, we found that the isotopic composition of turtle claw tips collected in spring versus fall did not differ, which could have resulted from a long dormancy period (and lack of growth) of turtles as they overwinter in their aquatic hibernacula [15] (Figure S2).
With over a 97% accuracy rate, our model correctly identified all wild Maine wood turtles as wild and all but two captive turtles as captive. Although there is a small chance (<3%) that captive turtles in Maine could be predicted as wild by our current model, our data inform and validate this approach. Since captive diets were highly variable, reflected in isotopic variability, it is not surprising that two of these turtles were outliers. Differences in diets offered, food preferences, and activity (e.g., one turtle lost two limbs before taken into captivity, which may have influenced wear on claw tips) are likely explanations for their greater resemblance to wild turtles. We believe that with greater samples sizes, examination of confiscated turtles, and further model refinements, isotopic profiles may be used to discriminate wild versus captive turtles with 100% accuracy.

5. Conclusions

To our knowledge, there are no other studies that used stable isotopes to distinguish between wild and captive freshwater turtles. We view the use of δ13C and δ15N isotope values as the first crucial step in developing a wildlife forensic tool used to help combat the illegal turtle trade by assisting conservation law enforcement efforts in the courtroom. Although our model is nearly perfect at classifying wood turtles in Maine as wild or captive, our goal is to develop a more general model that extends beyond Maine with a predictive accuracy of 100%. In the future, we hope to improve the predictive capacity of our model by including wood turtles across their geographic range, other turtle species of conservation concern, and additional predictors, including other stable isotopes (e.g., δ2H and δ18O) and chemical tracers.

Supplementary Materials

The following supporting information can be downloaded at: https://www.mdpi.com/article/10.3390/biology11121728/s1, Figure S1: Stable isotope values for female and male turtles, Figure S2: Stable isotope values for turtles sampled in the spring and fall, Table S1: Predictor coefficients

Author Contributions

Conceptualization, J.B.H.III; methodology, J.B.H.III, M.W.H.C. and C.A.F.; sample analysis, E.P.; statistical analysis, J.B.H.III; resources, M.W.H.C., C.A.F. and D.Y.; data curation, M.W.H.C. and C.A.F.; writing—original draft preparation, J.B.H.III; writing—review and editing, M.W.H.C., C.A.F., D.Y. and E.P.; visualization, J.B.H.III; supervision, M.W.H.C. and C.A.F.; project administration, M.W.H.C.; funding acquisition, M.W.H.C., C.A.F. and D.Y. All authors have read and agreed to the published version of the manuscript.

Funding

This research was funded by the Maine Department of Inland Fisheries and Wildlife, the Dorr Foundation, the William P. Wharton Trust, The Lawrence E. White Family Foundation, and the USDA National Institute of Food and Agriculture, McIntire-Stennis Project Number ME0-42301 through the Maine Agricultural and Forest Experiment Station.

Institutional Review Board Statement

Sampling at Maine localities was conducted under the Department of Inland Fisheries and Wildlife Scientific Collection Permit numbers 2020-447 and 2021-447.

Informed Consent Statement

Not applicable.

Data Availability Statement

Not applicable.

Acknowledgments

We thank the Maine Department of Inland Fisheries and Wildlife and the following institutions for contributing samples: Center for Wildlife, Clyde Peeling’s Reptiland, Elmwood Park Zoo, John Ball Zoo, Lincoln Park Zoo, Maryland Zoo in Baltimore, New Jersey Division of Fish and Wildlife, Oklahoma City Zoo, The Orianne Society, Potter Park Zoo, Saint Louis Zoo, Staten Island Zoo, Tennessee Aquarium, Unity College, and Virginia Living Museum. We are also grateful to J. Ferguson for his advice on our statistical analysis.

Conflicts of Interest

The authors declare no conflict of interest.

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Figure 1. Carbon (δ13C) and nitrogen (δ15N) stable isotope values (per mil, ‰, measured by IRMS) derived from the claw tips of wild wood turtles captured in Maine and captive wood turtles sampled at various animal care facilities throughout the eastern United States (Table 1).
Figure 1. Carbon (δ13C) and nitrogen (δ15N) stable isotope values (per mil, ‰, measured by IRMS) derived from the claw tips of wild wood turtles captured in Maine and captive wood turtles sampled at various animal care facilities throughout the eastern United States (Table 1).
Biology 11 01728 g001
Table 1. Carbon (δ13C) and nitrogen (δ15N) stable isotope values for wild wood turtles captured in Maine and captive wood turtles sampled at various animal care facilities throughout the eastern United States. Prob Wild is the predicted probability that each turtle in the study is wild based on the stable isotopic composition of their claw tips and their sex.
Table 1. Carbon (δ13C) and nitrogen (δ15N) stable isotope values for wild wood turtles captured in Maine and captive wood turtles sampled at various animal care facilities throughout the eastern United States. Prob Wild is the predicted probability that each turtle in the study is wild based on the stable isotopic composition of their claw tips and their sex.
ClassLocationSexSeasonδ13Cδ15NProb Wild
CaptiveACF1FFall−21.079.980.0002
CaptiveACF2FFall−22.618.730.0226
CaptiveACF3FFall−22.988.590.0610
CaptiveACF3FFall−20.278.620.0001
CaptiveACF3FFall−19.149.900.0000
CaptiveACF4FFall−20.269.470.0000
CaptiveACF4FFall−20.919.110.0002
CaptiveACF4FFall−20.488.260.0002
CaptiveACF4FFall−24.388.400.7187
CaptiveACF4FFall−23.627.470.4788
CaptiveACF4FFall−19.989.200.0000
CaptiveACF2FSpring−19.5510.450.0000
CaptiveACF3FSpring−20.9610.460.0001
CaptiveACF4FSpring−19.6110.840.0000
CaptiveACF5FSpring−21.9210.050.0012
CaptiveACF6FSpring−21.108.970.0004
CaptiveACF7FSpring−21.8711.120.0004
CaptiveACF7FSpring−21.3810.920.0001
CaptiveACF8FSpring−20.409.480.0000
CaptiveACF9FSpring−21.258.790.0007
CaptiveACF9FSpring−21.148.790.0005
CaptiveACF9FSpring−20.468.970.0001
CaptiveACF9FSpring−21.838.740.0032
CaptiveACF9FSpring−22.546.800.1031
CaptiveACF9FSpring−22.646.500.1632
CaptiveACF9FSpring−22.407.050.0612
CaptiveACF9FSpring−21.469.480.0006
CaptiveACF9MFall−21.268.820.0023
CaptiveACF10MFall−20.279.840.0001
CaptiveACF11MFall−23.808.120.7136
CaptiveACF4MSpring−21.558.120.0090
CaptiveACF11MSpring−19.898.410.0001
CaptiveACF11MSpring−19.068.180.0000
CaptiveACF11MSpring−21.8210.340.0022
CaptiveACF12MSpring−21.019.510.0006
CaptiveACF12MSpring−22.086.470.1368
WildFIELD1FFall−24.824.220.9973
WildFIELD1FFall−24.905.390.9936
WildFIELD1FFall−24.756.230.9802
WildFIELD1FFall−24.893.890.9984
WildFIELD1FFall−24.047.310.7521
WildFIELD2FFall−24.614.020.9963
WildFIELD2FFall−24.576.470.9613
WildFIELD1FSpring−24.208.100.6866
WildFIELD1FSpring−24.715.750.9858
WildFIELD1FSpring−24.845.840.9889
WildFIELD1FSpring−24.606.630.9582
WildFIELD1FSpring−24.786.230.9812
WildFIELD1FSpring−25.2910.110.8359
WildFIELD1FSpring−25.004.370.9981
WildFIELD1FSpring−25.003.800.9989
WildFIELD1FSpring−24.307.690.8047
WildFIELD1FSpring−24.887.560.9518
WildFIELD1FSpring−24.836.150.9847
WildFIELD1FSpring−24.614.570.9939
WildFIELD1FSpring−24.906.400.9837
WildFIELD1FSpring−24.186.450.9063
WildFIELD1MFall−24.156.160.9738
WildFIELD1MFall−23.517.410.6998
WildFIELD1MFall−24.936.390.9952
WildFIELD1MFall−24.386.690.9757
WildFIELD1MSpring−24.766.490.9921
WildFIELD1MSpring−24.436.830.9756
WildFIELD1MSpring−24.875.910.9964
WildFIELD1MSpring−24.437.380.9600
WildFIELD1MSpring−24.397.150.9637
WildFIELD3MSpring−25.025.930.9975
WildFIELD3MSpring−24.896.030.9962
WildFIELD3MSpring−24.775.910.9954
WildFIELD3MSpring−24.396.850.9722
WildFIELD3MSpring−24.685.630.9956
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MDPI and ACS Style

Hopkins, J.B., III; Frederick, C.A.; Yorks, D.; Pollock, E.; Chatfield, M.W.H. Forensic Application of Stable Isotopes to Distinguish between Wild and Captive Turtles. Biology 2022, 11, 1728. https://doi.org/10.3390/biology11121728

AMA Style

Hopkins JB III, Frederick CA, Yorks D, Pollock E, Chatfield MWH. Forensic Application of Stable Isotopes to Distinguish between Wild and Captive Turtles. Biology. 2022; 11(12):1728. https://doi.org/10.3390/biology11121728

Chicago/Turabian Style

Hopkins, John B., III, Cheryl A. Frederick, Derek Yorks, Erik Pollock, and Matthew W. H. Chatfield. 2022. "Forensic Application of Stable Isotopes to Distinguish between Wild and Captive Turtles" Biology 11, no. 12: 1728. https://doi.org/10.3390/biology11121728

APA Style

Hopkins, J. B., III, Frederick, C. A., Yorks, D., Pollock, E., & Chatfield, M. W. H. (2022). Forensic Application of Stable Isotopes to Distinguish between Wild and Captive Turtles. Biology, 11(12), 1728. https://doi.org/10.3390/biology11121728

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