Multiple linear regression and artificial neural networks for delta-endotoxin and protease yields modelling of Bacillus thuringiensis
Author | Ennouri, Karim |
Author | Ben Ayed, Rayda |
Author | Triki, Mohamed Ali |
Author | Ottaviani, Ennio |
Author | Mazzarello, Maura |
Author | Hertelli, Fathi |
Author | Zouari, Nabil |
Available date | 2021-01-27T11:06:56Z |
Publication Date | 2017 |
Publication Name | 3 Biotech |
Resource | Scopus |
ISSN | 2190572X |
Abstract | The aim of the present work was to develop a model that supplies accurate predictions of the yields of delta-endotoxins and proteases produced by B. thuringiensis var. kurstaki HD-1. Using available medium ingredients as variables, a mathematical method, based on Plackett-Burman design (PB), was employed to analyze and compare data generated by the Bootstrap method and processed by multiple linear regressions (MLR) and artificial neural networks (ANN) including multilayer perceptron (MLP) and radial basis function (RBF) models. The predictive ability of these models was evaluated by comparison of output data through the determination of coefficient (R2) and mean square error (MSE) values. The results demonstrate that the prediction of the yields of delta-endotoxin and protease was more accurate by ANN technique (87 and 89% for delta-endotoxin and protease determination coefficients, respectively) when compared with MLR method (73.1 and 77.2% for delta-endotoxin and protease determination coefficients, respectively), suggesting that the proposed ANNs, especially MLP, is a suitable new approach for determining yields of bacterial products that allow us to make more appropriate predictions in a shorter time and with less engineering effort. , Springer-Verlag GmbH Germany. |
Language | en |
Publisher | Springer Verlag |
Subject | Artificial neural networks Bacillus thuringiensis Bootstrap method Delta-endotoxins Multiple linear regression Proteases |
Type | Article |
Issue Number | 3 |
Volume Number | 7 |
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Biological & Environmental Sciences [920 items ]