Detalhes do Documento

Machine learning-assisted optimization of drug combinations in zeolite-based delivery systems for melanoma therapy

Autor(es): Bertão, Ana Raquel ; Teixeira, Filipe ; Ivasiv, Viktoriya ; Parpot, Pier ; Almeida Aguiar, Cristina ; Fonseca, A. M. ; Bañobre-López, Manuel ; Baltazar, Fátima ; Neves, Isabel C.

Data: 2024

Identificador Persistente: https://hdl.handle.net/1822/90759

Origem: RepositóriUM - Universidade do Minho

Assunto(s): ANN models; machine learning; melanoma therapy; microbial infections; ZDS formulations; zeolite


Descrição

Two independent artificial neural network (ANN) models were used to determine the optimal drug combination of zeolite-based delivery systems (ZDS) for cancer therapy. The systems were based on the NaY zeolite using silver (Ag+) and 5-fluorouracil (5-FU) as antimicrobial and antineoplastic agents. Different ZDS samples were prepared, and their characterization indicates the successful incorporation of both pharmacologically active species without any relevant changes to the zeolite structure. Silver acts as a counterion of the negative framework, and 5-FU retains its molecular integrity. The data from the A375 cell viability assays, involving ZDS samples (solid phase), 5-FU, and Ag+ aqueous solutions (liquid phase), were used to train two independent machine learning (ML) models. Both models exhibited a high level of accuracy in predicting the experimental cell viability results, allowing the development of a novel protocol for virtual cell viability assays. The findings suggest that the incorporation of both Ag and 5-FU into the zeolite structure significantly potentiates their anticancer activity when compared to that of the liquid phase. Additionally, two optimal AgY/5-FU@Y ratios were proposed to achieve the best cell viability outcomes. The ZDS also exhibited significant efficacy against Escherichia coli (E. coli) and Staphylococcus aureus (S. aureus); the predicted combination ratio is also effective against S. aureus, underscoring the potential of this approach as a therapeutic option for cancer-associated bacterial infections.

Tipo de Documento Artigo científico
Idioma Inglês
Contribuidor(es) Universidade do Minho
Licença CC
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