Inferring interaction partners from protein sequences using mutual information
Anne-Florence Bitbol

TL;DR
This paper shows that mutual information can be used to more effectively identify functional protein interaction partners from sequence data, providing insights beyond direct contact residue correlations.
Contribution
The study demonstrates that maximizing mutual information between protein families improves partner prediction and reveals interaction signatures, contrasting with structure-focused models.
Findings
Mutual information-based method slightly outperforms existing algorithms.
The method provides signatures indicating protein interactions.
Statistical dependences extend beyond interface residue contacts.
Abstract
Functional protein-protein interactions are crucial in most cellular processes. They enable multi-protein complexes to assemble and to remain stable, and they allow signal transduction in various pathways. Functional interactions between proteins result in coevolution between the interacting partners, and thus in correlations between their sequences. Pairwise maximum-entropy based models have enabled successful inference of pairs of amino-acid residues that are in contact in the three-dimensional structure of multi-protein complexes, starting from the correlations in the sequence data of known interaction partners. Recently, algorithms inspired by these methods have been developed to identify which proteins are functional interaction partners among the paralogous proteins of two families, starting from sequence data alone. Here, we demonstrate that a slightly higher performance for…
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