Evolution of functional specialization and division of labor
- PMID: 22308336
- PMCID: PMC3277576
- DOI: 10.1073/pnas.1110521109
Evolution of functional specialization and division of labor
Abstract
Division of labor among functionally specialized modules occurs at all levels of biological organization in both animals and plants. Well-known examples include the evolution of specialized enzymes after gene duplication, the evolution of specialized cell types, limb diversification in arthropods, and the evolution of specialized colony members in many taxa of marine invertebrates and social insects. Here, we identify conditions favoring the evolution of division of labor by means of a general mathematical model. Our starting point is the assumption that modules contribute to two different biological tasks and that the potential of modules to contribute to these tasks is traded off. Our results are phrased in terms of properties of performance functions that map the phenotype of modules to measures of performance. We show that division of labor is favored by three factors: positional effects that predispose modules for one of the tasks, accelerating performance functions, and synergistic interactions between modules. If modules can be lost or damaged, selection for robustness can counteract selection for functional specialization. To illustrate our theory we apply it to the evolution of specialized enzymes coded by duplicated genes.
Conflict of interest statement
The authors declare no conflict of interest.
Figures
, plotted on the z axis, is a monotonically increasing function of the trait values of the two modules, θ1 and θ2, plotted on the x and y axes, respectively. Shaded lines show performance along the constrained trait space defined by
. Thick solid lines show performance along a straight line orthogonal to the constrained trait space. Another possibility to visualize the curvature of performance landscapes is by means of contour lines or iso-performance curves. An iso-performance curve consists of all combinations
that result in the same level of performance
. Iso-performance curves are shown as thin solid lines and are useful in Fig. 2 and
in the constrained trait. The expected direction of the evolutionary dynamics is indicated by arrows. The solid and dashed curves depict iso-performance curves of the underlying performance functions F1 and F2, respectively, as introduced in the Fig. 1 legend. (A) Iso-performance curves are convex for F1 and concave for F2, indicating that functional differentiation decreases performance in both tasks. Thus, the point
is a fitness maximum. (B) Iso-performance curves are concave for F1 and convex for F2, indicating that functional differentiation increases performance in both tasks. Thus, the point
is a saddle point of the fitness landscape. (C) Iso-performance curves are concave for both F1 and F2, indicating that functional differentiation increases performance for task 1 and decreases performance for task 2. In this particular example the increase in performance in task 1 is sufficiently large to outweigh the decrease in performance in task 2 such that the point
is still a saddle point of the fitness landscape. For plots D, E, and F it is assumed that module 1 has an intrinsic advantage in contributing to task 2 whereas module 2 has an intrinsic advantage in contributing to task 1. Each plot in the lower row is a perturbation of the corresponding plot in the upper row. In D nonequivalence of modules moves the fitness maximum above the diagonal whereas in E and F nonequivalence moves the saddle point below the diagonal. In both cases, selection favors specialization of module 1 for task 1 and of module 2 for task 2. Note that extrema of the fitness landscape correspond to points
where iso-performance curves for F1 and F2 are tangent to each other. Plots show the function
with F1 and F2 defined in
and
.
References
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