Drug Release Nanoparticle System Design: Data Set Compilation and Machine Learning Modeling

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He, Shan
Barón, Ander
de Bilbao, Begoña
Casañola-Martín, Gerardo M.
Chelu, Mariana
Musuc, Adina Magdalena
Bediaga, Harbil
Ascencio, Estefanía

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S. He, A. Barón, C. R. Munteanu, B. de Bilbao, G. M. Casañola-Martin, M. Chelu, A. M. Musuc, H. Bediaga, E. Ascencio, I. Castellanos-Rubio, S. Arrasate, A. Pazos, M. Insausti, B. Rasulev, and H. González-Díaz, "Drug Release Nanoparticle System Design: Data Set Compilation and Machine Learning Modeling," ACS Applied Materials & Interfaces, vol. 17, no. 3, pp. 5290–5306, 2025, doi: 10.1021/acsami.4c16800.

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Abstract

[Abstract]: Magnetic nanoparticles (NPs) are gaining significant interest in the field of biomedical functional nanomaterials because of their distinctive chemical and physical characteristics, particularly in drug delivery and magnetic hyperthermia applications. In this paper, we experimentally synthesized and characterized new Fe3O4-based NPs, functionalizing its surface with a 5-TAMRA cadaverine modified copolymer consisting of PMAO and PEG. Despite these advancements, many combinations of NP cores and coatings remain unexplored. To address this, we created a new data set of NP systems from public sources. Herein, 11 different AI/ML algorithms were used to develop the predictive AI/ML models. The linear discriminant analysis (LDA) and random forest (RF) models showed high values of sensitivity and specificity (>0.9) in training/validation series and 3-fold cross validation, respectively. The AI/ML models are able to predict 14 output properties (CC50 (μM), EC50 (μM), inhibition (%), etc.) for all combinations of 54 different NP cores classes vs. 25 different coats and vs. 41 different cell lines, allowing the short listing of the best results for experimental assays. The results of this work may help to reduce the cost of traditional trial and error procedures.

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This document is the Accepted Manuscript version of a Published Work that appeared in final form in ACS Applied Materials & Interfaces, copyright © 2025 American Chemical Society after peer review and technical editing by the publisher. To access the final edited and published work see 10.1021/acsami.4c16800

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Copyright © 2025 American Chemical Society