Making inference from wildlife collision data: inferring predator absence from prey strikes

PeerJ. 2017 Feb 22:5:e3014. doi: 10.7717/peerj.3014. eCollection 2017.

Abstract

Wildlife collision data are ubiquitous, though challenging for making ecological inference due to typically irreducible uncertainty relating to the sampling process. We illustrate a new approach that is useful for generating inference from predator data arising from wildlife collisions. By simply conditioning on a second prey species sampled via the same collision process, and by using a biologically realistic numerical response functions, we can produce a coherent numerical response relationship between predator and prey. This relationship can then be used to make inference on the population size of the predator species, including the probability of extinction. The statistical conditioning enables us to account for unmeasured variation in factors influencing the runway strike incidence for individual airports and to enable valid comparisons. A practical application of the approach for testing hypotheses about the distribution and abundance of a predator species is illustrated using the hypothesized red fox incursion into Tasmania, Australia. We estimate that conditional on the numerical response between fox and lagomorph runway strikes on mainland Australia, the predictive probability of observing no runway strikes of foxes in Tasmania after observing 15 lagomorph strikes is 0.001. We conclude there is enough evidence to safely reject the null hypothesis that there is a widespread red fox population in Tasmania at a population density consistent with prey availability. The method is novel and has potential wider application.

Keywords: Distribution; Extinction; Incursion; Numerical response; Roadkill; Runway strike; Vulpes vulpes; Wildlife collision; Wildlife strike.

Grants and funding

The work was supported by the CSIRO. The funders had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript.