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GraphBNC: Machine Learning-Aided Prediction of Interactions Between Metal Nanoclusters and Blood Proteins

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Journal Adv Mater
Date 2024 Sep 25
PMID 39318073
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Abstract

Hybrid nanostructures between biomolecules and inorganic nanomaterials constitute a largely unexplored field of research, with the potential for novel applications in bioimaging, biosensing, and nanomedicine. Developing such applications relies critically on understanding the dynamical properties of the nano-bio interface. This work introduces and validates a strategy to predict atom-scale interactions between water-soluble gold nanoclusters (AuNCs) and a set of blood proteins (albumin, apolipoprotein, immunoglobulin, and fibrinogen). Graph theory and neural networks are utilized to predict the strengths of interactions in AuNC-protein complexes on a coarse-grained level, which are then optimized in Monte Carlo-based structure search and refined to atomic-scale structures. The training data is based on extensive molecular dynamics (MD) simulations of AuNC-protein complexes, and the validating MD simulations show the robustness of the predictions. This strategy can be generalized to any complexes of inorganic nanostructures and biomolecules provided that one generates enough data about the interactions, and the bioactive parts of the nanostructure can be coarse-grained rationally.

Citing Articles

GraphBNC: Machine Learning-Aided Prediction of Interactions Between Metal Nanoclusters and Blood Proteins.

Pihlajamaki A, Matus M, Malola S, Hakkinen H Adv Mater. 2024; 36(47):e2407046.

PMID: 39318073 PMC: 11586822. DOI: 10.1002/adma.202407046.

References
1.
Sousa A, Schuck P, Hassan S . Biomolecular interactions of ultrasmall metallic nanoparticles and nanoclusters. Nanoscale Adv. 2021; 3(11):2995-3027. PMC: 8168927. DOI: 10.1039/d1na00086a. View

2.
Tubiana J, Schneidman-Duhovny D, Wolfson H . ScanNet: an interpretable geometric deep learning model for structure-based protein binding site prediction. Nat Methods. 2022; 19(6):730-739. DOI: 10.1038/s41592-022-01490-7. View

3.
Fernandez-Quintero M, Kroell K, Heiss M, Loeffler J, Quoika P, Waibl F . Surprisingly Fast Interface and Elbow Angle Dynamics of Antigen-Binding Fragments. Front Mol Biosci. 2020; 7:609088. PMC: 7732698. DOI: 10.3389/fmolb.2020.609088. View

4.
Jadzinsky P, Calero G, Ackerson C, Bushnell D, Kornberg R . Structure of a thiol monolayer-protected gold nanoparticle at 1.1 A resolution. Science. 2007; 318(5849):430-3. DOI: 10.1126/science.1148624. View

5.
Mosesson M . Fibrinogen and fibrin structure and functions. J Thromb Haemost. 2005; 3(8):1894-904. DOI: 10.1111/j.1538-7836.2005.01365.x. View