Published October 20, 2023 | Version v1
Dataset Open

Principles of Computation by Competitive Protein Dimerization Networks

  • 1. ROR icon California Institute of Technology
  • 2. ROR icon Broad Institute

Description

Many biological signaling pathways employ proteins that competitively dimerize in diverse combinations. These dimerization networks can perform biochemical computations, in which the concentrations of monomers (inputs) determine the concentrations of dimers (outputs). Despite their prevalence, little is known about the range of input-output computations that dimerization networks can perform (their "expressivity") and how it depends on network size and connectivity. Using a systematic computational approach, we demonstrate that even small dimerization networks (3-6 monomers) can perform diverse multi-input computations. Further, dimerization networks are versatile, performing different computations when their protein components are expressed at different levels, such as in different cell types. Remarkably, individual networks with random interaction affinities, when large enough (≥8 proteins), can perform nearly all (~90%) potential one-input network computations merely by tuning their monomer expression levels. Thus, even the simple process of competitive dimerization provides a powerful architecture for multi-input, cell-type-specific signal processing.

Files

parresgold_2023_dimer_networks_code.zip
Files (105.1 MB)
Name Size
md5:d151dd8e81223a1a9bc4be2113b1a99c
13.8 MB Preview Download
md5:9547406c9493fc3ec7f8783e6a7d3bc3
91.2 MB Preview Download
md5:18afa3cedbebe954300468e70ac8632b
71.0 kB Preview Download

External Files

Files available via S3 at https://renc.osn.xsede.org/ini210004tommorrell/kas2z-0fe41/

parresgold_2023_dimer_networks_data.tar, 340.2 GB Download

Additional details

Created:
October 31, 2023
Modified:
October 31, 2023