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Natural Environment Research Council
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Details of Award

NERC Reference : NE/I022027/1

Structured demography, stochasticity and selection in free-living populations.

Fellowship Award

Fellow:
Professor D Childs, University of Sheffield, Animal and Plant Sciences
Science Area:
Terrestrial
Overall Classification:
Terrestrial
ENRIs:
Global Change
Biodiversity
Science Topics:
Population Genetics/Evolution
Population Ecology
Behavioural Ecology
Climate & Climate Change
Abstract:
Evolutionary biologists have always employed a large diversity of approaches for studying natural selection and the complex suite of species' adaptations that arise from this process. Theoretical biologists have used both simple and complex models to map out the fundamental mechanisms driving evolutionary processes and understand specific adaptations, while empirical biologists often approach this problem by carrying out careful manipulations in the laboratory or controlled field conditions. Ultimately of course, we must aim to explain the patterns and processes observed in natural populations to completely valid our theories. Evolutionary quantitative genetics (EQG) is one such approach biologists have used to meet this objective. By monitoring natural populations over long periods of time, we can build rich datasets describing the performance of individual organisms in terms of their rates of survival and reproduction (fitness), and then link these to the traits we wish to study. By employing sophisticated statistical models, it is possible to then use this data to understand how natural selection interacts with the genetics governing these traits' inheritance to predict how they should change. Although EQG has taught us much about evolutionary processes, this approach is not without problems. The assumptions of the simple model that underlies it are seldom completely met in a natural setting. For example, natural populations are often demographically structured (individuals differ as a result of processes such as ageing or growth and different generations overlap), and the environment they experience fluctuates a great deal from one year to the next. A core objective of my proposed research is to develop a methodology that can account for these complexities and improve out ability to predict and understand the traits we observe. Throughout my career I have used detailed mathematical models of natural systems to better understand how natural selection works. I have often relied on a set of mathematical tools called evolutionary game theory (often now referred to as adaptive dynamics). This approach can cope with many of issues raised above, but in doing so necessarily makes simplifying assumptions about the role of genetics. Making use of two of the world's very best long-term mammal studies (the feral Soay sheep of St Kilda, Scotland and the Yellow-bellied marmots of Gothic, Colorado), I aim to combine the best aspects of both EQG and adaptive dynamics to build a better predictive framework for studying evolution. In developing this research programme, I aim to focus much of my research on an important biological question that has interested me throughout my research career, 'How does living in an unpredictable fluctuating environment shape natural selection, and ultimately, species' traits?' We must address this question if we hope to predict how species may (or may not) respond to ongoing anthropogenic environmental change. For example, extreme weather events are predicted to become more common in the face of climate change. If my research shows that such variation is indeed important, then we will need to move beyond thinking just about changes in the average, to consider the role variation per se.
Period of Award:
1 Nov 2011 - 31 Oct 2016
Value:
£472,576
Authorised funds only
NERC Reference:
NE/I022027/1
Grant Stage:
Completed
Scheme:
Advanced Fellow (FEC)
Grant Status:
Closed
Programme:
Advanced Fellow

This fellowship award has a total value of £472,576  

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FDAB - Financial Details (Award breakdown by headings)

DI - Other CostsIndirect - Indirect CostsDI - StaffDA - Estate CostsDA - Other Directly AllocatedDI - T&S
£19,224£144,687£233,536£56,803£2,724£15,601

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