Home > Research > Publications & Outputs > Machine learning to predict morphology, topogra...

Associated organisational unit

Links

Text available via DOI:

View graph of relations

Machine learning to predict morphology, topography and mechanical properties of sustainable gelatin-based electrospun scaffolds

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Published

Standard

Machine learning to predict morphology, topography and mechanical properties of sustainable gelatin-based electrospun scaffolds. / Roldán, Elisa; Reeves, Neil D.; Cooper, Glen et al.
In: Scientific Reports, Vol. 14, No. 1, 21017, 09.09.2024.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Harvard

APA

Vancouver

Roldán E, Reeves ND, Cooper G, Andrews K. Machine learning to predict morphology, topography and mechanical properties of sustainable gelatin-based electrospun scaffolds. Scientific Reports. 2024 Sept 9;14(1):21017. doi: 10.1038/s41598-024-71824-2

Author

Bibtex

@article{3c689b624f5e491193dd2a8a676f06c3,
title = "Machine learning to predict morphology, topography and mechanical properties of sustainable gelatin-based electrospun scaffolds",
abstract = "Electrospinning is an outstanding manufacturing technique for producing nano-micro-scaled fibrous scaffolds comparable to biological tissues. However, the solvents used are normally hazardous for the health and the environment, which compromises the sustainability of the process and the industrial scaling. This novel study compares different machine learning models to predict how green solvents affect the morphology, topography and mechanical properties of gelatin-based scaffolds. Gelatin-based scaffolds were produced with different concentrations of distillate water (dH2O), acetic acid (HAc) and dimethyl sulfoxide (DMSO). 2214 observations, 12 machine learning approaches, including Generalised Linear Models, Generalised Additive Models, Generalised Additive Models for Location, Scale and Shape (GAMLSS), Decision Trees, Random Forest, Support Vector Machine and Artificial Neural Network, and a total of 72 models were developed to predict diameter of the fibres, inter-fibre separation, roughness, ultimate tensile strength, Young{\textquoteright}s modulus and strain at break. The best GAMLSS models improved the performance of R2 with respect to the popular regression models by 6.868%, and the MAPE was improved by 21.16%. HAc highly influenced the morphology and topography; however, the importance of DMSO was higher in the mechanical properties. The addition of the morphological properties as covariates in the topographic and mechanical models enhanced their understanding.",
author = "Elisa Rold{\'a}n and Reeves, {Neil D.} and Glen Cooper and Kirstie Andrews",
year = "2024",
month = sep,
day = "9",
doi = "10.1038/s41598-024-71824-2",
language = "English",
volume = "14",
journal = "Scientific Reports",
issn = "2045-2322",
publisher = "Nature Publishing Group",
number = "1",

}

RIS

TY - JOUR

T1 - Machine learning to predict morphology, topography and mechanical properties of sustainable gelatin-based electrospun scaffolds

AU - Roldán, Elisa

AU - Reeves, Neil D.

AU - Cooper, Glen

AU - Andrews, Kirstie

PY - 2024/9/9

Y1 - 2024/9/9

N2 - Electrospinning is an outstanding manufacturing technique for producing nano-micro-scaled fibrous scaffolds comparable to biological tissues. However, the solvents used are normally hazardous for the health and the environment, which compromises the sustainability of the process and the industrial scaling. This novel study compares different machine learning models to predict how green solvents affect the morphology, topography and mechanical properties of gelatin-based scaffolds. Gelatin-based scaffolds were produced with different concentrations of distillate water (dH2O), acetic acid (HAc) and dimethyl sulfoxide (DMSO). 2214 observations, 12 machine learning approaches, including Generalised Linear Models, Generalised Additive Models, Generalised Additive Models for Location, Scale and Shape (GAMLSS), Decision Trees, Random Forest, Support Vector Machine and Artificial Neural Network, and a total of 72 models were developed to predict diameter of the fibres, inter-fibre separation, roughness, ultimate tensile strength, Young’s modulus and strain at break. The best GAMLSS models improved the performance of R2 with respect to the popular regression models by 6.868%, and the MAPE was improved by 21.16%. HAc highly influenced the morphology and topography; however, the importance of DMSO was higher in the mechanical properties. The addition of the morphological properties as covariates in the topographic and mechanical models enhanced their understanding.

AB - Electrospinning is an outstanding manufacturing technique for producing nano-micro-scaled fibrous scaffolds comparable to biological tissues. However, the solvents used are normally hazardous for the health and the environment, which compromises the sustainability of the process and the industrial scaling. This novel study compares different machine learning models to predict how green solvents affect the morphology, topography and mechanical properties of gelatin-based scaffolds. Gelatin-based scaffolds were produced with different concentrations of distillate water (dH2O), acetic acid (HAc) and dimethyl sulfoxide (DMSO). 2214 observations, 12 machine learning approaches, including Generalised Linear Models, Generalised Additive Models, Generalised Additive Models for Location, Scale and Shape (GAMLSS), Decision Trees, Random Forest, Support Vector Machine and Artificial Neural Network, and a total of 72 models were developed to predict diameter of the fibres, inter-fibre separation, roughness, ultimate tensile strength, Young’s modulus and strain at break. The best GAMLSS models improved the performance of R2 with respect to the popular regression models by 6.868%, and the MAPE was improved by 21.16%. HAc highly influenced the morphology and topography; however, the importance of DMSO was higher in the mechanical properties. The addition of the morphological properties as covariates in the topographic and mechanical models enhanced their understanding.

U2 - 10.1038/s41598-024-71824-2

DO - 10.1038/s41598-024-71824-2

M3 - Journal article

VL - 14

JO - Scientific Reports

JF - Scientific Reports

SN - 2045-2322

IS - 1

M1 - 21017

ER -