FB2026_01 , released March 12, 2026
FB2026_01 , released March 12, 2026
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Goulard Coderc de Lacam, E., Roux, B., Chipot, C. (2024). Classifying Protein-Protein Binding Affinity with Free-Energy Calculations and Machine Learning Approaches.  J Chem Inf Model 64(3): 1081--1091.
FlyBase ID
FBrf0258707
Publication Type
Research paper
Abstract
Understanding the intricate phenomenon of neuronal wiring in the brain is of great interest in neuroscience. In the fruit fly, Drosophila melanogaster, the Dpr-DIP interactome has been identified to play an important role in this process. However, experimental data suggest that a merely limited subset of complexes, essentially 57 out of a total of 231, exhibit strong binding affinity. In this work, we sought to identify the residue-level molecular basis underlying the difference in binding affinity using a state-of-the-art methodology consisting of standard binding free-energy calculations with a geometrical route and machine learning (ML) techniques. We determined the binding affinity for two complexes using statistical mechanics simulations, achieving an excellent reproduction of the experimental data. Moreover, we predicted the binding free energy for two additional low-affinity complexes, devoid of experimental estimation, while simultaneously identifying key residues for the binding. Furthermore, through the use of ML algorithms, linear discriminant analysis, and random forest, we achieved remarkable accuracy, as high as 0.99, in discerning between strong (cognate) and weak (noncognate) binders. The presented ML approach encompasses easily transferable input features, enabling its broad application to any interactome while facilitating the identification of pivotal residues critical for binding interactions. The predictive power of the generated model was probed on similar protein families from 13 diverse species. Our ML model exhibited commendable performance on these additional data sets, showcasing its reliability and robustness across the species barrier.
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    Language of Publication
    English
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    Parent Publication
    Publication Type
    Journal
    Abbreviation
    J Chem Inf Model
    Title
    Journal of chemical information and modeling
    ISBN/ISSN
    1549-9596 1549-960X
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