Genetic correlations greatly increase mutational robustness and can both reduce and enhance evolvability
Sam F. Greenbury, Steffen Schaper, Sebastian E. Ahnert, Ard A. Louis

TL;DR
This study demonstrates that genetic correlations in genotype-phenotype maps significantly enhance mutational robustness and can both hinder and promote evolvability depending on the nature of these correlations.
Contribution
It quantifies how genetic correlations affect robustness and evolvability by comparing real GP maps with a random null model, revealing their impact on evolutionary dynamics.
Findings
Genetic correlations increase mutational robustness by orders of magnitude.
Correlations can both reduce and enhance evolvability depending on their type.
Neutral networks are expanded by these correlations, facilitating neutral exploration.
Abstract
Mutational neighbourhoods in genotype-phenotype (GP) maps are widely believed to be more likely to share characteristics than expected from random chance. Such genetic correlations should, as John Maynard Smith famously pointed out, strongly influence evolutionary dynamics. We explore and quantify these intuitions by comparing three GP maps - RNA SS, HP for tertiary, Polyominoes for protein quaternary structure - to a simple random null model that maintains the number of genotypes mapping to each phenotype, but assigns genotypes randomly. The mutational neighbourhood of a genotype in these GP maps is much more likely to contain (mutationally neutral) genotypes mapping to the same phenotype than in the random null model. These neutral correlations can increase the robustness to mutations by orders of magnitude over that of the null model, raising robustness above the critical threshold…
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