The Effect of Machine Learning Algorithms on the Prediction of Layer-by-Layer Coating Properties.
Journal
ACS omega
ISSN: 2470-1343
Titre abrégé: ACS Omega
Pays: United States
ID NLM: 101691658
Informations de publication
Date de publication:
07 Feb 2023
07 Feb 2023
Historique:
received:
07
10
2022
accepted:
30
12
2022
entrez:
13
2
2023
pubmed:
14
2
2023
medline:
14
2
2023
Statut:
epublish
Résumé
Layer-by-layer film (LbL) coatings made of polyelectrolytes are a powerful tool for surface modification, including the applications in the biomedical field, for food packaging, and in many electrochemical systems. However, despite the number of publications related to LbL assembly, predicting LbL coating properties represents quite a challenge, can take a long time, and be very costly. Machine learning (ML) methodologies that are now emerging can accelerate and improve new coating development and potentially revolutionize the field. Recently, we have demonstrated a preliminary ML-based model for coating thickness prediction. In this paper, we compared several ML algorithms for optimizing a methodology for coating thickness prediction, namely, linear regression, Support Vector Regressor, Random Forest Regressor, and Extra Tree Regressor. The current research has shown that learning algorithms are effective in predicting the coating output value, with the Extra Tree Regressor algorithm demonstrating superior predictive performance, when used in combination with optimized hyperparameters and with missing data imputation. The best predictors of the coating thickness were determined, and they can be later used to accurately predict coating thickness, avoiding measurement of multiple parameters. The development of optimized methodologies will ensure different reliable predictive models for coating property/function relations. As a continuation, the methodology can be adapted and used for predicting the outputs connected to antimicrobial, anti-inflammatory, and antiviral properties in order to be able to respond to actual biomedical problems such as antibiotic resistance, implant rejection, or COVID-19 outbreak.
Identifiants
pubmed: 36777619
doi: 10.1021/acsomega.2c06471
pmc: PMC9909801
doi:
Types de publication
Journal Article
Langues
eng
Pagination
4677-4686Informations de copyright
© 2023 The Authors. Published by American Chemical Society.
Déclaration de conflit d'intérêts
The authors declare the following competing financial interest(s): Conflict of interest statement (NE Vrana, P Lavalle): SPARTHA Medical is a spin-off company from INSERM and this work has been carried out as a collaboration. SPARTHA Medical develops commercial coatings, but the current study does not focus on SPARTHA coatings and the aim was to set a new methodology for coating property prediction.
Références
Adv Healthc Mater. 2021 Jan;10(1):e2001373
pubmed: 33052031
Proc Natl Acad Sci U S A. 2002 Oct 1;99(20):12531-5
pubmed: 12237412
Int J Pharm. 2006 Dec 11;327(1-2):126-38
pubmed: 16959449
Biomaterials. 2016 Oct;104:168-81
pubmed: 27454063
Sci Rep. 2021 Sep 21;11(1):18702
pubmed: 34548560
Materials (Basel). 2019 Mar 01;12(5):
pubmed: 30823684
Materials (Basel). 2019 May 07;12(9):
pubmed: 31067762
Sensors (Basel). 2019 Feb 07;19(3):
pubmed: 30736483
Shock. 2016 Dec;46(6):597-608
pubmed: 27454373
IET Nanobiotechnol. 2017 Dec;11(8):903-908
pubmed: 29155388
Phys Rev E. 2017 Mar;95(3-1):032504
pubmed: 28415199
Materials (Basel). 2016 Jul 20;9(7):
pubmed: 28773721
J Control Release. 2012 May 10;159(3):403-412
pubmed: 22300622
Biomaterials. 2011 Sep;32(26):6183-93
pubmed: 21645919
Adv Healthc Mater. 2015 Sep 16;4(13):2026-36
pubmed: 26379222
Adv Mater. 2010 Jan 26;22(4):441-67
pubmed: 20217734
Chem Soc Rev. 2016 May 31;45(11):3088-121
pubmed: 27003471
AAPS J. 2010 Jun;12(2):188-96
pubmed: 20143194
Soft Matter. 2007 Jun 19;3(7):804-816
pubmed: 32900071