Machine learning-enhanced nanofiber systems: A new frontier in controlled drug release.

Journal: Nanotechnology
Published Date:

Abstract

The use of machine learning (ML) is reshaping the design and optimization of nanofiber-based drug delivery systems (N-DDS). Electrospun nanofibers offer high surface area, tunable porosity, and versatile drug encapsulation strategies, making them attractive for controlled release applications in multiple therapeutic areas. However, the optimization of materials, fabrication conditions, encapsulation strategies, and release mechanisms is challenging due to the multitude of interdependent parameters. This review outlines how ML has been applied to accelerate N-DDS development, replacing traditional trial-and-error approaches with predictive and adaptive models. We first present a bibliometric landscape of the literature on nanofibers and drug delivery systems (DDS), highlighting the role of electrospinning. We then discuss recent applications of ML in polymer selection, electrospinning optimization, encapsulation strategies, and drug release kinetics. Special attention is given to case studies where ML models achieved high predictive accuracy in tailoring nanofiber morphology, encapsulation efficiency, and release profiles. We also elaborate upon the key challenges for clinical translation, including data quality, scalability, sustainability, and ethical concerns. By integrating ML and other artificial intelligence (AI) methods with nanofiber engineering, N-DDS can progress toward patient-specific, sustainable, and industrially scalable therapeutic platforms, opening new frontiers in precision medicine.

Authors

  • Gabriella Onila Nascimento Soares
    Materials Engeneering Departament, University of Sao Paulo, Avenida joão Dagnone, 1100 - Santa Angelina, São Carlos, São Paulo, 13563120, BRAZIL.
  • Vitor Santi
    Institute of Physiscs of São Carlos, University of Sao Paulo, Av. Trab. São Carlense, 400 - Parque Arnold Schimidt, São Carlos, São Carlos, None Selected, 13566-590, BRAZIL.
  • Andrey Coatrini Soares
    Federal University of Amazonas, Av. General Rodrigo Octavio Jordão Ramos, 1200 - Coroado I, Manaus, AM, 69080-900, BRAZIL.
  • Diego Sousa
    Institue of Physics of São Carlos, University of Sao Paulo, Av. Trab. São Carlense, 400 - Parque Arnold Schimidt, São Carlos, São Paulo, SP, 13566590, BRAZIL.
  • Sarah Oliveira Lamas de Souza
    Federal University of Minas Gerais, Avenida Presidente Antônio Carlos, 6627 - Pampulha, Belo Horizonte, MG, 31270-901, BRAZIL.
  • Osvaldo Novais de Oliveira
    Institute of Physics of Sao Carlos, University of Sao Paulo, Av. Trab. São Carlense, 400 - Parque Arnold Schimidt, São Carlos, São Carlos, None Selected, 13566590, BRAZIL.

Keywords

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