Machine learning-guided morphological property prediction of 2D electrospun scaffolds: the effect of polymer chemical composition and processing parameters
Mohammad Hossein Golbabaei,
Mohammadreza Saeidi Varnoosfaderani,
Farshid Hemmati
et al.
Abstract:ML was adopted to predict electrospun scaffolds' morphological properties. The scaffolds' conductivity and fiber diameter were modeled by machine learning. A deep neural network model showed a prediction accuracy with an R2 score of more than 0.7.
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