Abstract

Constraints placed upon the phenotypes of organisms result from their interactions with the environment. Over evolutionary time scales, these constraints feed back onto smaller molecular subnetworks comprising the organism. The evolution of biological networks is studied by considering a network of a few nodes embedded in a larger context. Taking into account this fact that any network under study is actually embedded in a larger context, we define network architecture, not on the basis of physical interactions alone, but rather as a specification of the manner in which constraints are placed upon the states of its nodes. We show that such network architectures possessing cycles in their topology, in contrast to those that do not, may be subjected to unsatisfiable constraints. This may be a significant factor leading to selection biased against those network architectures where such inconsistent constraints are more likely to arise. We proceed to quantify the likelihood of inconsistency arising as a function of network architecture finding that, in the absence of sampling bias over the space of possible constraints and for a given network size, networks with a larger number of cycles are more likely to have unsatisfiable constraints placed upon them. Our results identify a constraint that, at least in isolation, would contribute to a bias in the evolutionary process towards more hierarchical -modular versus completely connected network architectures. Together, these results highlight the context dependence of the functionality of biological networks.

Highlights

  • Probabilistic models of biological networks serve as a bridge between theory and experiment

  • In our model, the network architectures to which we refer represent the manner in which the network context places constraints upon a subnetwork

  • We will refer to this more fine-grained generalization of the genotype–phenotype map, where arbitrary biological networks are substituted for genes and arbitrary networks states are substituted for phenotypes, as network–network state maps

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Summary

Introduction

Probabilistic models of biological networks serve as a bridge between theory and experiment. One observes a subnetwork at a time and only obtains a more complete picture by later combining these partial views This contrasts with theory, where one makes a representation of a closed system that provides explicit values for all quantities of interest. When apparent inconsistency is observed, it must arise from the network context interacting with only partial information of the states of a given subnetwork. This would indicate that information about the network context must be included in order to maintain a consistent model of the system.

Environments of biological networks as abstract contexts
Probability distributions over network modules
Compatibility of distributions on network – network state maps
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Example of unsatisfiable constraints
Cyclic network contexts can impose unsatisfiable constraints
Geometry of probabilistic constraints on network states
Naive likelihood of sampling unsatisfiable constraints
11. Discussion
38. Ryan CJ et al 2012 Hierarchical modularity and the
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