An overview of the utility of population simulation software in molecular ecology

被引:68
作者
Hoban, Sean [1 ]
机构
[1] Univ Tennessee, Natl Inst Math & Biol Synth, Knoxville, TN 37996 USA
基金
美国国家科学基金会;
关键词
molecular markers; landscape; in situ; prediction; natural history; ex situ management; Approximate Bayesian Computation; population dynamics; NORTHERN ROCKY-MOUNTAINS; MARTEN MARTES-AMERICANA; GENETIC DIVERSITY; CLIMATE-CHANGE; DELETERIOUS MUTATIONS; COMPUTER-SIMULATIONS; DEMOGRAPHIC HISTORY; SAMPLING STRATEGIES; FOREST TREES; EVOLUTIONARY;
D O I
10.1111/mec.12741
中图分类号
Q5 [生物化学]; Q7 [分子生物学];
学科分类号
071010 ; 081704 ;
摘要
Stochastic simulation software that simultaneously model genetic, population and environmental processes can inform many topics in molecular ecology. These include forecasting species and community response to environmental change, inferring dispersal ecology, revealing cryptic mating, quantifying past population dynamics, assessing in situ management options and monitoring neutral and adaptive biodiversity change. Advances in population demographic-genetic simulation software, especially with respect to individual life history, landscapes and genetic processes, are transforming and expanding the ways that molecular data can be used. The aim of this review is to explain the roles that such software can play in molecular ecology studies (whether as a principal component or a supporting function) so that researchers can decide whether, when and precisely how simulations can be incorporated into their work. First, I use seven case studies to demonstrate how simulations are employed, their specific advantage/necessity and what alternative or complementary (nonsimulation) approaches are available. I also explain how simulations can be integrated with existing spatial, environmental, historical and genetic data sets. I next describe simulation features that may be of interest to molecular ecologists, such as spatial and behavioural considerations and species' interactions, to provide guidance on how particular simulation capabilities can serve particular needs. Lastly, I discuss the prospect of simulation software in emerging challenges (climate change, biodiversity monitoring, population exploitation) and opportunities (genomics, ancient DNA), in order to emphasize that the scope of simulation-based work is expanding. I also suggest practical considerations, priorities and elements of best practice. This should accelerate the uptake of simulation approaches and firmly embed them as a versatile tool in the molecular ecologist's toolbox.
引用
收藏
页码:2383 / 2401
页数:19
相关论文
共 105 条
[1]   Rapid forward-in-time simulation at the chromosome and genome level [J].
Aberer, Andre J. ;
Stamatakis, Alexandros .
BMC BIOINFORMATICS, 2013, 14
[2]   Habitat continuity and geographic distance predict population genetic differentiation in giant kelp [J].
Alberto, Filipe ;
Raimondi, Peter T. ;
Reed, Daniel C. ;
Coelho, Nelson C. ;
Leblois, Raphael ;
Whitmer, Allison ;
Serrao, Ester A. .
ECOLOGY, 2010, 91 (01) :49-56
[3]   Pre-Whaling Genetic Diversity and Population Ecology in Eastern Pacific Gray Whales: Insights from Ancient DNA and Stable Isotopes [J].
Alter, S. Elizabeth ;
Newsome, Seth D. ;
Palumbi, Stephen R. .
PLOS ONE, 2012, 7 (05)
[4]   Serial SimCoal: A population genetics model for data from multiple populations and points in time [J].
Anderson, CNK ;
Ramakrishnan, U ;
Chan, YL ;
Hadly, EA .
BIOINFORMATICS, 2005, 21 (08) :1733-1734
[5]   A road map for molecular ecology [J].
Andrew, Rose L. ;
Bernatchez, Louis ;
Bonin, Aurelie ;
Buerkle, C. Alex ;
Carstens, Bryan C. ;
Emerson, Brent C. ;
Garant, Dany ;
Giraud, Tatiana ;
Kane, Nolan C. ;
Rogers, Sean M. ;
Slate, Jon ;
Smith, Harry ;
Sork, Victoria L. ;
Stone, Graham N. ;
Vines, Timothy H. ;
Waits, Lisette ;
Widmer, Alex ;
Rieseberg, Loren H. .
MOLECULAR ECOLOGY, 2013, 22 (10) :2605-2626
[6]  
[Anonymous], PRACTICAL COMPUTING
[7]   Early detection of population declines: high power of genetic monitoring using effective population size estimators [J].
Antao, Tiago ;
Perez-Figueroa, Andres ;
Luikart, Gordon .
EVOLUTIONARY APPLICATIONS, 2011, 4 (01) :144-154
[8]  
Arenas M, 2012, PLOS COMPUTATIONAL B, V8, P1
[9]   Simulation modelling in landscape genetics: on the need to go further [J].
Balkenhol, Niko ;
Landguth, Erin L. .
MOLECULAR ECOLOGY, 2011, 20 (04) :667-670
[10]   Genetic structure of a recent climate change-driven range extension [J].
Banks, Sam C. ;
Ling, Scott D. ;
Johnson, Craig R. ;
Piggott, Maxine P. ;
Williamson, Jane E. ;
Beheregaray, Luciano B. .
MOLECULAR ECOLOGY, 2010, 19 (10) :2011-2024