Volume 89, Issue 3
RESEARCH ARTICLE

rKIN: Kernel‐based method for estimating isotopic niche size and overlap

Carolyn A. Eckrich

Corresponding Author

Oregon Department of Fish and Wildlife, La Grande, OR, USA

Correspondence

Carolyn A. Eckrich

Email: eckrich.caro@gmail.com

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Shannon E. Albeke

Wyoming Geographic Information Science Center, University of Wyoming, Laramie, WY, USA

Program in Ecology, University of Wyoming, Laramie, WY, USA

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Elizabeth A. Flaherty

Department of Forestry and Natural Resources, Purdue University, West Lafayette, IN, USA

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R. Terry Bowyer

Institute of Arctic Biology, University of Alaska Fairbanks, Fairbanks, AK, USA

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Merav Ben‐David

Program in Ecology, University of Wyoming, Laramie, WY, USA

Department of Zoology and Physiology, University of Wyoming, Laramie, WY, USA

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First published: 04 December 2019
Citations: 2

Abstract

  1. The isotopic niche of consumers represents biologically relevant information on resource and habitat use. Several tools have been developed to quantify niche size and overlap. Nonetheless, methods adapted by spatial ecologists to quantify animal home ranges can be modified for use in stable isotope ecology when data are not normally distributed in bivariate space.
  2. We offer a tool that draws on existing spatial metrics, such as minimum convex polygon (MCP) and standard ellipse area (SEA), and add novel metrics using kernel utilization density (KUD) estimators to measure isotopic niche size and overlap. We present examples using empirical and simulated data to demonstrate the performance of the package kernel isotopic niches in r (rKIN) under various scenarios.
  3. Results of niche size from MCP, SEA and KUD were highly correlated but divergent among datasets. Overall, the KUD method produced the largest niche sizes and was more sensitive to the distribution of the isotopic data. Pairwise estimates of overlap were highly variable, likely because MCP and SEA inherently include or exclude unused areas in the resulting niche estimate. Four bandwidth methods (reference, normal scale, plug‐in and biased cross‐validation) produced comparable estimates of niche size and overlap at various sample sizes (10–40). Niche size and overlap were consistent across sample sizes >15.
  4. Use of rKIN will allow isotope ecologists to quantify niche shifts, expansions or contractions, as well as assess the performance of several estimation methods. The package also can be applied to other data types (e.g. principal component analysis, multi‐dimensional scaling) so long as axes and measurement units are identical and can be converted to Cartesian coordinates.

DATA AVAILABILITY STATEMENT

Data included in this manuscript are available at the University of Wyoming Data Archive at the following: https://doi.org/10.15786/20.500.11919/4878 (Eckrich, Albeke, Flaherty, Bowyer, & Ben‐David, 2019)

Number of times cited according to CrossRef: 2

  • Overlapping niches between two co‐occurring invasive fish: the topmouth gudgeon and the common bleak , Journal of Fish Biology, 10.1111/jfb.14499, 97, 5, (1385-1392), (2020).
  • Using stable isotopes of plasma, red blood cells, feces, and feathers to assess mature-forest bird diet during the post-fledging period, Canadian Journal of Zoology, 10.1139/cjz-2019-0109, (39-46), (2019).

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