Published April 15, 2025 | Version v1
Journal article Open

Investigating Statistical Conditions of Coevolutionary Signals that Enable Algorithmic Predictions of Protein Partners

  • 1. Universidade de Brasília
  • 2. University of Chicago

Description

This study examines the statistical conditions of coevolutionary signals that allow algorithmic predictions of protein partners based on amino acid sequences rather than 3D structures. It introduces a Markov stochastic model that predicts the number of correct protein partners based on coevolutionary information. The model defines state probabilities using a Poisson mixture of normal distributions, with key parameters including the total number of protein sequences M, the coevolutionary information gap α, and variance σ02. The model suggests that algorithmic approaches that maximize coevolutionary information cannot effectively resolve partners in protein families with a large number of sequences M ≥ 100. The model shows that true-positive (TP) rates can be enhanced by disregarding mismatches among similar sequences. This approach allows a distinction, in terms of {α, σ02}, between optimized solutions with trivial errors and other degenerate solutions. Our findings enable the a priori classification of protein families where partners can be reliably predicted by ignoring trivial errors between similar sequences, advancing the understanding of coevolutionary models for large protein data sets.

Data availability

All numerical calculations of the statistical model can be reproduced following the tutorial made available for download at GITHUB https://github.com/jafiorote/ga_error_sources. A complete collection of scripts for running Genetic Algorithm simulations and performing parameter calculations─including I, I*, I0, σ02 and TP rate─for both examples of orthologous and paralogous protein families is available for download from the ZENODO repository https://zenodo.org/records/14624294.

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Additional details

Identifiers

DOI
10.1021/acs.jcim.5c00052
Other
oai:uchicago.tind.io:14903

Funding

Coordenacao de Aperfeicoamento de Pessoal de Nivel Superior

UChicago Information

Division(s)
Biological Sciences Division
Department(s)
Ben May Department for Cancer Research