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Predicting the protein corona on nanoparticles using random forest models with nanoparticle, protein, and experimental features.

Publication ,  Journal Article
Vijgen, N; Poulsen, KM; Macias, GS; Payne, CK
Published in: Nanoscale advances
September 2025

Nanoparticles (NPs) present in any biological environment form a "corona" of proteins on the NP surface. This protein corona, rather than the bare NP, determines the biological response to the protein-NP complex. Experiments, especially proteomics, can provide an inventory of proteins in the corona, but researchers currently lack a method to predict which proteins will interact with NPs. The ability to predict the protein corona would aid the design of NPs by decreasing the time and cost of experiments. We describe the development and use of random forest regression and classification models to predict protein abundance and enrichment, respectively, on the surface of NPs using a dataset of NP, protein, and experimental features. These models were trained using data generated in-house through the synthesis and functionalization of NPs with varied core material, surface ligand, diameter, and zeta potential. NPs were incubated with fetal bovine serum, a common protein source for cultured cells, to form a corona, which was characterized by proteomics. Both models identified protein abundance in the serum used to form the corona as the most significant predictor of corona proteins. NP zeta potential and hydrodynamic diameter emerged as the most important NP factors. The random forest regression model was used to test the ability to predict the protein corona of NPs that were excluded from the training data. We highlight the best and worst predictions. These findings offer a machine learning approach to guide experiments.

Duke Scholars

Published In

Nanoscale advances

DOI

EISSN

2516-0230

ISSN

2516-0230

Publication Date

September 2025

Volume

7

Issue

18

Start / End Page

5612 / 5624

Related Subject Headings

  • 4018 Nanotechnology
  • 4016 Materials engineering
  • 3403 Macromolecular and materials chemistry
 

Citation

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ICMJE
MLA
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Vijgen, N., Poulsen, K. M., Macias, G. S., & Payne, C. K. (2025). Predicting the protein corona on nanoparticles using random forest models with nanoparticle, protein, and experimental features. Nanoscale Advances, 7(18), 5612–5624. https://doi.org/10.1039/d5na00425j
Vijgen, Nicole, Karsten M. Poulsen, Gustavo Sosa Macias, and Christine K. Payne. “Predicting the protein corona on nanoparticles using random forest models with nanoparticle, protein, and experimental features.Nanoscale Advances 7, no. 18 (September 2025): 5612–24. https://doi.org/10.1039/d5na00425j.
Vijgen N, Poulsen KM, Macias GS, Payne CK. Predicting the protein corona on nanoparticles using random forest models with nanoparticle, protein, and experimental features. Nanoscale advances. 2025 Sep;7(18):5612–24.
Vijgen, Nicole, et al. “Predicting the protein corona on nanoparticles using random forest models with nanoparticle, protein, and experimental features.Nanoscale Advances, vol. 7, no. 18, Sept. 2025, pp. 5612–24. Epmc, doi:10.1039/d5na00425j.
Vijgen N, Poulsen KM, Macias GS, Payne CK. Predicting the protein corona on nanoparticles using random forest models with nanoparticle, protein, and experimental features. Nanoscale advances. 2025 Sep;7(18):5612–5624.

Published In

Nanoscale advances

DOI

EISSN

2516-0230

ISSN

2516-0230

Publication Date

September 2025

Volume

7

Issue

18

Start / End Page

5612 / 5624

Related Subject Headings

  • 4018 Nanotechnology
  • 4016 Materials engineering
  • 3403 Macromolecular and materials chemistry