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Data analytics-guided rational design of antimicrobial nanomedicines against opportunistic, resistant pathogens

  • Iowa State University

Research output: Contribution to journalArticlepeer-review

4 Scopus citations

Abstract

Nanoparticle carriers can improve antibiotic efficacy by altering drug biodistribution. However, traditional screening is impracticable due to a massive dataspace. A hybrid informatics approach was developed to identify polymer, antibiotic, and particle determinants of antimicrobial nanomedicine activity against Burkholderia cepacia, and to model nanomedicine performance. Polymer glass transition temperature, drug octanol-water partition coefficient, strongest acid dissociation constant, physiological charge, particle diameter, count and mass mean polydispersity index, zeta potential, fraction drug released at 2 h, and fraction release slope at 2 h were highly correlated with antimicrobial performance. Graph analysis provided dimensionality reduction while preserving nonlinear descriptor-property relationships, enabling accurate modeling of nanomedicine performance. The model successfully predicted particle performance in holdout validation, with moderate accuracy at rank-ordering. This data analytics-guided approach provides an important step toward the development of a rational design framework for antimicrobial nanomedicines against resistant infections by selecting appropriate carriers and payloads for improved potency.

Original languageEnglish
Article number102647
JournalNanomedicine: Nanotechnology, Biology, and Medicine
Volume48
DOIs
StatePublished - Feb 2023

Keywords

  • Antimicrobial resistance
  • Data mining
  • Degradable biomaterials
  • Drug delivery
  • Informatics

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