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MoLPC2: improved prediction of large protein complex structures and stoichiometry using Monte Carlo Tree Search and AlphaFold2

Ho Yeung Chim, Arne Elofsson

2024Bioinformatics10 citationsDOIOpen Access PDF

Abstract

MOTIVATION: Today, the prediction of structures of large protein complexes solely from their sequence information requires prior knowledge of the stoichiometry of the complex. To address this challenge, we have enhanced the Monte Carlo Tree Search algorithms in MoLPC to enable the assembly of protein complexes while simultaneously predicting their stoichiometry. RESULTS: In MoLPC2, we have improved the predictions by allowing sampling alternative AlphaFold predictions. Using MoLPC2, we accurately predicted the structures of 50 out of 175 nonredundant protein complexes (TM-score ≥ 0.8) without knowing the stoichiometry. MoLPC2 provides new opportunities for predicting protein complex structures without stoichiometry information. AVAILABILITY AND IMPLEMENTATION: MoLPC2 is freely available at https://github.com/hychim/molpc2. A notebook is also available from the repository for easy use.

Topics & Concepts

StoichiometryComputer scienceMonte Carlo methodTree (set theory)Sequence (biology)Data miningSampling (signal processing)AlgorithmChemistryMathematicsStatisticsCombinatoricsBiochemistryOrganic chemistryFilter (signal processing)Computer visionProtein Structure and DynamicsEnzyme Structure and FunctionMachine Learning in Bioinformatics