New Machine Learning Approach for the Optimization of Nano-Hybrid Formulations

Nano-hybrid systems are products of interactions between organic and inorganic materials designed and planned to develop drug delivery platforms that can be self-assembled. Poloxamine, commercially available as Tetronic®, is formed by blocks of copolymers consisting of poly (ethylene oxide) (PEO) an...

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Veröffentlicht in:Nanomanufacturing 2022-07, Vol.2 (3), p.82-97
Hauptverfasser: Barbosa, Raquel de M., Lima, Cleanne C., Oliveira, Fabio F. de, Câmara, Gabriel B. M., Viseras, César, Moura, Tulio F. A. de Lima e, Souto, Eliana B., Severino, Patricia, Raffin, Fernanda N., Fernandes, Marcelo A. C.
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container_end_page 97
container_issue 3
container_start_page 82
container_title Nanomanufacturing
container_volume 2
creator Barbosa, Raquel de M.
Lima, Cleanne C.
Oliveira, Fabio F. de
Câmara, Gabriel B. M.
Viseras, César
Moura, Tulio F. A. de Lima e
Souto, Eliana B.
Severino, Patricia
Raffin, Fernanda N.
Fernandes, Marcelo A. C.
description Nano-hybrid systems are products of interactions between organic and inorganic materials designed and planned to develop drug delivery platforms that can be self-assembled. Poloxamine, commercially available as Tetronic®, is formed by blocks of copolymers consisting of poly (ethylene oxide) (PEO) and poly (propylene oxide) (PPO) units arranged in a four-armed star shape. Structurally, Tetronics are similar to Pluronics®, with an additional feature as they are also pH-dependent due to their central ethylenediamine unit. Laponite is a synthetic clay arranged in the form of discs with a diameter of approximately 25 nm and a thickness of 1 nm. Both compounds are biocompatible and considered as candidates for the formation of carrier systems. The objective is to explore associations between a Tetronic (T1304) and LAP (Laponite) at concentrations of 1–20% (w/w) and 0–3% (w/w), respectively. Response surface methodology (RMS) and two types of machine learning (multilayer perceptron (MLP) and support vector machine (SVM)) were used to evaluate the physical behavior of the systems and the β-Lapachone (β-Lap) solubility in the systems. β-Lap (model drug with low solubility in water) has antiviral, antiparasitic, antitumor, and anti-inflammatory properties. The results show an adequate machine learning approach to predict the physical behavior of nanocarrier systems with and without the presence of LAP. Additionally, the analysis performed with SVM showed better results (R2 > 0.97) in terms of data adjustment in the evaluation of β-Lap solubility. Furthermore, this work presents a new methodology for classifying phase behavior using ML. The new methodology allows the creation of a phase behavior surface for different concentrations of T1304 and LAP at different pHs and temperatures. The machine learning strategies used were excellent in assisting in the optimized development of new nano-hybrid platforms.
doi_str_mv 10.3390/nanomanufacturing2030007
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source DOAJ Directory of Open Access Journals; MDPI - Multidisciplinary Digital Publishing Institute
subjects Artificial intelligence
Classification
Contrast agents
Copolymers
Design of experiments
Drug delivery systems
Machine learning
Nanocomposites
Pharmaceutical industry
Polyamines
Support vector machines
Temperature
title New Machine Learning Approach for the Optimization of Nano-Hybrid Formulations
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