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Wiley InterScience

Evolution

Evolution

Volume 61 Issue 3, Pages 666 - 674

Published Online: 21 Feb 2007

© 2010, Society for the Study of Evolution



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EFFECTS OF POPULATION SIZE AND MUTATION RATE ON THE EVOLUTION OF MUTATIONAL ROBUSTNESS
Santiago F. Elena 1,2 , Claus O. Wilke 3,4 , Charles Ofria 5,6 , and Richard E. Lenski 7,8
  1 Instituto de Biología Molecular y Celular de Plantas, CSIC-UPV, 46022 Valencia, Spain   2 E-mail: sfelena@ibmcp.upv.es   3 Section for Integrative Biology and Center for Computational Biology and Bioinformatics, University of Texas, Austin, Texas 78712   4 E-mail: cwilke@mail.utexas.edu   5 Department of Computer Sciences and Engineering, Michigan State University, East Lansing, Michigan 48824   6 E-mail: ofria@msu.edu   7 Department of Microbiology and Molecular Genetics, Michigan State University, East Lansing, Michigan 48824   8 E-mail: lenski@msu.edu
Associate Editor: T. Hansen
Copyright 2007 The Author(s) Journal compilation © 2007 The Society for the Study of Evolution
KEYWORDS
Deleterious mutations • digital organisms • fitness landscapes • mutational robustness • neutral networks • population size

ABSTRACT

It is often assumed that the efficiency of selection for mutational robustness would be proportional to mutation rate and population size, thus being inefficient in small populations. However, Krakauer and Plotkin (2002) hypothesized that selection in small populations would favor robustness mechanisms, such as redundancy, that mask the effect of deleterious mutations. In large populations, by contrast, selection is more effective at removing deleterious mutants and fitness would be improved by eliminating mechanisms that mask the effect of deleterious mutations and thus impede their removal. Here, we test whether these predictions are supported in experiments with evolving populations of digital organisms. Digital organisms are self-replicating programs that inhabit a virtual world inside a computer. Like their organic counterparts, digital organisms mutate, compete, evolve, and adapt by natural selection to their environment. In this study, 160 populations evolved at different combinations of mutation rate and population size. After 104 generations, we measured the mutational robustness of the most abundant genotype in each population. Mutational robustness tended to increase with mutation rate and to decline with population size, although the dependence with population size was in part mediated by a negative relationship between fitness and robustness. These results are independent of whether genomes were constrained to their original length or allowed to change in size.


Received October 17, 2006
Accepted November 16, 2006

DIGITAL OBJECT IDENTIFIER (DOI)
10.1111/j.1558-5646.2007.00064.x About DOI

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