Literature DB >> 30569864

Supervised Machine Learning Algorithms for Evaluation of Solid Lipid Nanoparticles and Particle Size.

A Alper Öztürk1, A Bilge Gündüz2, Ozan Ozisik2.   

Abstract

AIMS AND
OBJECTIVES: Solid Lipid Nanoparticles (SLNs) are pharmaceutical delivery systems that have advantages such as controlled drug release, long-term stability etc. Particle Size (PS) is one of the important criteria of SLNs. These factors affect drug release rate, bio-distribution etc. In this study, the formulation of SLNs using high-speed homogenization technique has been evaluated. The main emphasis of the work is to study whether the effect of mixing time and formulation ingredients on PS can be modeled. For this purpose, different machine learning algorithms have been applied and evaluated using the mean absolute error metric.
MATERIALS AND METHODS: SLNs were prepared by high-speed homogenizaton. PS, size distribution and zeta potential measurements were performed on freshly prepared samples. In order to model the formulation of the particles in terms of mixing time and formulation ingredients and evaluate the predictability of PS depending on these parameters, different machine learning algorithms were applied on the prepared dataset and the performances of the algorithms were also evaluated.
RESULTS: PS of SLNs obtained was in the range of 263-498nm. The results present that PS of SLNs can be best estimated by decision tree based methods, among which Random Forest has the least mean absolute error value with 0.028. As a result, the estimation of machine learning algorithms demonstrates that particle size can be estimated by both decision rule-based machine learning methods and function fitting machine learning methods.
CONCLUSION: Our findings present that machine learning methods can be highly useful for determining formulation parameters for further research. Copyright© Bentham Science Publishers; For any queries, please email at epub@benthamscience.net.

Entities:  

Keywords:  Solid lipid nanoparticles (SLNs); estimation; high-speed homogenization; machinezzm321990learning; particle size; pharmaceutical formulation; supervised learning.

Mesh:

Substances:

Year:  2018        PMID: 30569864     DOI: 10.2174/1386207322666181218160704

Source DB:  PubMed          Journal:  Comb Chem High Throughput Screen        ISSN: 1386-2073            Impact factor:   1.339


  3 in total

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2.  Anti-Cancer Drug Solubility Development within a Green Solvent: Design of Novel and Robust Mathematical Models Based on Artificial Intelligence.

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Authors:  Nermin E Eleraky; Ayat Allam; Sahar B Hassan; Mahmoud M Omar
Journal:  Pharmaceutics       Date:  2020-02-08       Impact factor: 6.321

  3 in total

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