| Literature DB >> 24010501 |
Scott E Nielsen1, Marc R L Cattet, John Boulanger, Jerome Cranston, Greg J McDermid, Aaron B A Shafer, Gordon B Stenhouse.
Abstract
BACKGROUND: Individual body growth is controlled in large part by the spatial and temporal heterogeneity of, and competition for, resources. Grizzly bears (Ursus arctos L.) are an excellent species for studying the effects of resource heterogeneity and maternal effects (i.e. silver spoon) on life history traits such as body size because their habitats are highly variable in space and time. Here, we evaluated influences on body size of grizzly bears in Alberta, Canada by testing six factors that accounted for spatial and temporal heterogeneity in environments during maternal, natal and 'capture' (recent) environments. After accounting for intrinsic biological factors (age, sex), we examined how body size, measured in mass, length and body condition, was influenced by: (a) population density; (b) regional habitat productivity; (c) inter-annual variability in productivity (including silver spoon effects); (d) local habitat quality; (e) human footprint (disturbances); and (f) landscape change.Entities:
Mesh:
Year: 2013 PMID: 24010501 PMCID: PMC3849066 DOI: 10.1186/1472-6785-13-31
Source DB: PubMed Journal: BMC Ecol ISSN: 1472-6785 Impact factor: 2.964
Environmental variables used to measure hypothesized environmental drivers of body size patterns in grizzly bears within Alberta, Canada
| | | | |
| Temperature (Winter, Spring, Summer) | °C | home range | 1971-2000 |
| Precipitation (Winter, Spring, Summer) | mm | home range | 1971-2000 |
| Ecosystem | categories | telemetry | |
| | | | |
| Temperature (Winter, Spring, Summer) | °C | home range | |
| Precipitation (Winter, Spring, Summer) | mm | home range | |
| | | | |
| Shrub habitat (quadratic) | % | telemetry | |
| Canopy cover (quadratic) | % | telemetry | |
| Variation in canopy cover | % | telemetry | |
| Deciduous canopy cover (quadratic) | % | telemetry | |
| Forest age (quadratic) | years | telemetry | |
| Forest age variation | years | telemetry | |
| Regenerating forest habitat (quadratic) | % | telemetry | |
| Variation in regen. forest age | years | telemetry | |
| Soil wetness (quadratic) | index | telemetry | |
| | | | |
| Private lands | % | telemetry | |
| Protected area | % | telemetry | |
| Mortality risk | index | telemetry | |
| Safe harbour habitat | index | telemetry | |
| Linear feature density | km/km2 | telemetry | |
| Distance to human feature | m | telemetry | |
| Distance to active energy well | m | telemetry | |
| | | | |
| Annual rate of habitat change | % | telemetry |
§ Home ranges estimated by 50% multi-annual kernels; climate variables measured at kernel centroid; † Temporal scales relate to time of measurements; B relates to birth year &C to capture year. For inter-annual variation, 2-yrs prior to and up to 1-yr following birth or 1-yr prior to and the year of capture are considered.
Figure 1Grizzly bear capture locations in Alberta, Canada for 112 unique animals across a 750 km distance. Years of capture by population unit indicated along the side of each population unit. Inset map illustrates location within the current range of the species in North America.
Figure 2Grizzly bear capture data for 112 animals. a) Percent of animals, by sex, captured at each age class; b) Breakdown of the number of times an individual was captured (by overall percentage).
Standardized regression coefficients and significance ( ) of model variables describing body mass (log scale), straight line length (log scale), and body condition measures of springtime grizzly bear captures in Alberta, Canada
| 1) Biology and capture effects | | | | | | |
| Age | 1.663 | <0.001 | 1.606 | <0.001 | 1.898 | <0.001 |
| Age2 | -1.348 | <0.001 | -1.467 | <0.001 | -1.450 | <0.001 |
| Adult Females (AF) | | | | | -0.367 | <0.001 |
| Adult F w/ cubs (AFC) | | | | | -0.562 | <0.001 |
| Male x Age | 0.619 | <0.001 | 0.570 | <0.001 | | |
| Number of captures | | | | | -0.196 | 0.002 |
| Population density | | | | | | |
| 2) Regional habitat productivity | | | | | | |
| March precipitation | -0.255 | <0.001 | | | | |
| Spring (May-Jun) temperature | | | 0.202 | 0.002 | | |
| Alpine habitat use (HP) | -0.226 | <0.001 | | | | |
| 3) Inter-annual climate variability | | | | | | |
| | | | | | | |
| Summer (Jul-Aug) temperature | -0.220 | <0.001 | 0.168 | 0.009 | | |
| | | | | | | |
| Spring (May-Jun) temperature | | | 0.149 | 0.038 | | |
| Summer (May-Oct) temperature | 0.154 | 0.013 | | | | |
| Winter (Dec-Mar) precipitation | 0.173 | 0.001 | | | | |
| August precipitation | -0.115 | 0.043 | | | | |
| July precipitation | | | | | -0.248 | 0.002 |
| | | | | | | |
| 4) Local habitat quality | | | | | | |
| Canopy variation (HP) | -0.112 | 0.009 | | | | |
| Regen. forest age variation (HP) | | | | | 0.288 | <0.001 |
| 5) Human footprint | | | | | | |
| 6) Landscape change | 0.199 | 0.013 | ||||
All measures of habitat use were based on global position system (GPS) telemetry data and relate to a habitat patch (HP) scale of a 30 m pixel (900 m2).
Figure 3Model coefficient of determination () for body mass (log[kg]), straight line length (log[SLL]), and body condition index (BCI). Hierarchically blocked variables were partitioned to represent different hypothesized biological or environmental factors. Only significant (p < 0.05) blocked variables are illustrated.