Multiple estimates of effective population size for monitoring a long‐lived vertebrate: an application to Yellowstone grizzly bears
2015
Kamath, Pauline L. | Haroldson, Mark A. | Luikart, Gordon | Paetkau, David | Whitman, Craig | Manen, Frank T.
Effective population size (Nₑ) is a key parameter for monitoring the genetic health of threatened populations because it reflects a population's evolutionary potential and risk of extinction due to genetic stochasticity. However, its application to wildlife monitoring has been limited because it is difficult to measure in natural populations. The isolated and well‐studied population of grizzly bears (Ursus arctos) in the Greater Yellowstone Ecosystem provides a rare opportunity to examine the usefulness of different Nₑ estimators for monitoring. We genotyped 729 Yellowstone grizzly bears using 20 microsatellites and applied three single‐sample estimators to examine contemporary trends in generation interval (GI), effective number of breeders (Nb) and Nₑ during 1982–2007. We also used multisample methods to estimate variance (NₑV) and inbreeding Nₑ (NₑI). Single‐sample estimates revealed positive trajectories, with over a fourfold increase in Nₑ (≈100 to 450) and near doubling of the GI (≈8 to 14) from the 1980s to 2000s. NₑV (240–319) and NₑI (256) were comparable with the harmonic mean single‐sample Nₑ (213) over the time period. Reanalysing historical data, we found NₑV increased from ≈80 in the 1910s–1960s to ≈280 in the contemporary population. The estimated ratio of effective to total census size (Nₑ/Nc) was stable and high (0.42–0.66) compared to previous brown bear studies. These results support independent demographic evidence for Yellowstone grizzly bear population growth since the 1980s. They further demonstrate how genetic monitoring of Nₑ can complement demographic‐based monitoring of Nc and vital rates, providing a valuable tool for wildlife managers.
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