Department of Physics, Nanoscience Center, University of Jyväskylä, Jyväskylä, FI-40014, Finland.
Department of Chemistry, Nanoscience Center, University of Jyväskylä, Jyväskylä, FI-40014, Finland.
Adv Mater. 2024 Nov;36(47):e2407046. doi: 10.1002/adma.202407046. Epub 2024 Sep 24.
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.
生物分子和无机纳米材料之间的杂化纳米结构构成了一个很大程度上尚未开发的研究领域,具有在生物成像、生物传感和纳米医学中应用的潜力。开发此类应用依赖于对纳米生物界面动力学特性的理解。这项工作介绍并验证了一种策略,可以预测水溶性金纳米簇 (AuNC) 与一组血液蛋白(白蛋白、载脂蛋白、免疫球蛋白和纤维蛋白原)之间的原子级相互作用。图论和神经网络用于在粗粒度水平上预测 AuNC-蛋白复合物中的相互作用强度,然后在基于蒙特卡罗的结构搜索中进行优化,并细化到原子级结构。训练数据基于 AuNC-蛋白复合物的广泛分子动力学 (MD) 模拟,验证的 MD 模拟表明预测的稳健性。只要针对相互作用生成足够的数据,并且可以合理地将纳米结构的生物活性部分进行粗粒化,那么该策略就可以推广到任何无机纳米结构和生物分子的复合物中。