Affiliation:
1. Max‐Planck‐Institute for Terrestrial Microbiology Marburg Germany
2. BioQuant Center for Quantitative Analysis of Molecular and Cellular Biosystems Heidelberg University Heidelberg Germany
3. Center for Molecular Biology of Heidelberg University (ZMBH) Heidelberg Germany
Abstract
AbstractThe quaternary structure with specific stoichiometry is pivotal to the specific function of protein complexes. However, determining the structure of many protein complexes experimentally remains a major bottleneck. Structural bioinformatics approaches, such as the deep learning algorithm Alphafold2‐multimer (AF2‐multimer), leverage the co‐evolution of amino acids and sequence‐structure relationships for accurate de novo structure and contact prediction. Pseudo‐likelihood maximization direct coupling analysis (plmDCA) has been used to detect co‐evolving residue pairs by statistical modeling. Here, we provide evidence that combining both methods can be used for de novo prediction of the quaternary structure and stoichiometry of a protein complex. We achieve this by augmenting the existing AF2‐multimer confidence metrics with an interpretable score to identify the complex with an optimal fraction of native contacts of co‐evolving residue pairs at intermolecular interfaces. We use this strategy to predict the quaternary structure and non‐trivial stoichiometries of Bacillus subtilis spore germination protein complexes with unknown structures. Co‐evolution at intermolecular interfaces may therefore synergize with AI‐based de novo quaternary structure prediction of structurally uncharacterized bacterial protein complexes.
Subject
Molecular Biology,Microbiology
Cited by
1 articles.
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