Evolution in the real world: Stochastic variation and the determinants of fitness in Carlina vulgaris
Authored by M Rees, KE Rose, PJ Grubb
Date Published: 2002
Sponsors:
United Kingdom Natural Environment Research Council (NERC)
Platforms:
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Model Documentation:
Other Narrative
Mathematical description
Model Code URLs:
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Abstract
Empirical studies of life histories often ignore stochastic variation, despite theoretical demonstrations of its potential impact on
life-history evolution. Here we use a novel approach to explore the
effects of stochastic variation on life-history evolution and estimate
the selection pressures operating on the monocarpic perennial Carlina
vulgaris, in which flowering may be delayed by up to eight years. The
approach is novel in that we use modern theoretical techniques to
estimate selection pressures and the fitness landscape from a fully
parameterised individual-based model. These approaches take into account
temporal variation in demographic rates and density dependence. Analysis
of 16 years' data revealed significant temporal variation in growth, mortality, and recruitment in our study population. Flowering was
strongly size dependent and, unusually for such a species, also age
dependent. Individual-based models of the flowering strategy, parameterized using field data, consistently underestimated the size at
flowering, when temporal variation in demographic rates was ignored. In
contrast, models that incorporated temporal variation in growth, mortality, and recruitment predicted sizes at flowering not
significantly different from those observed in the field. Temporal
variation in mortality, which had the largest effect on the flowering
strategy, selected for increased size at flowering. An analytical
approximation is presented to explain this result, extending the
``1-year look-ahead criterion{''} presented in Rees et al. (2000). A
fitness landscape generated by following the fate of rare mutant
invaders with a broad range of alternative flowering strategies
demonstrated that the observed parameters were adaptive. However, the
fitness landscape reveals that approximately equal fitness is achieved
by a broad range of strategies, providing a mechanism for the
maintenance of genetic variation. To understand how the different
parameters that defined our models determine the fitness of rare
mutants, we numerically estimated the elasticities and sensitivities of
mutant fitness. This demonstrated strong selection on a number of the
parameters. Elasticities and sensitivities estimated in constant and
random environments were significantly positively correlated, and both
were negatively related to the standard error of the parameter. This
last result is surprising and, we argue, reflects the genetic and
phenotypic responses to selection.
Tags
Dynamics
Growth rate
Life-history variation
Elasticity analysis
Density-dependent populations
Selection
pressures
Threshold size
Cynoglossum-officinale
Chalk grassland
Mount kenya