Ennouri Karim, Ayed Rayda Ben, Hassen Hanen Ben, Mazzarello Maura, Ottaviani Ennio
Laboratory of Probability and Statistics, Faculty of Sciences of Sfax , Sfax , Tunisia.
Centre of Biotechnology of Sfax , Sfax , Tunisia.
Acta Microbiol Immunol Hung. 2015 Dec;62(4):379-92. doi: 10.1556/030.62.2015.4.3.
Bacillus thuringiensis (Bt) is a Gram-positive bacterium. The entomopathogenic activity of Bt is related to the existence of the crystal consisting of protoxins, also called delta-endotoxins. In order to optimize and explain the production of delta-endotoxins of Bacillus thuringiensis kurstaki, we studied seven medium components: soybean meal, starch, KH₂PO₄, K₂HPO₄, FeSO₄, MnSO₄, and MgSO₄and their relationships with the concentration of delta-endotoxins using an experimental design (Plackett-Burman design) and Bayesian networks modelling. The effects of the ingredients of the culture medium on delta-endotoxins production were estimated. The developed model showed that different medium components are important for the Bacillus thuringiensis fermentation. The most important factors influenced the production of delta-endotoxins are FeSO₄, K2HPO₄, starch and soybean meal. Indeed, it was found that soybean meal, K₂HPO₄, KH₂PO₄and starch also showed positive effect on the delta-endotoxins production. However, FeSO4 and MnSO4 expressed opposite effect. The developed model, based on Bayesian techniques, can automatically learn emerging models in data to serve in the prediction of delta-endotoxins concentrations. The constructed model in the present study implies that experimental design (Plackett-Burman design) joined with Bayesian networks method could be used for identification of effect variables on delta-endotoxins variation.
苏云金芽孢杆菌(Bt)是一种革兰氏阳性细菌。Bt的昆虫致病活性与由原毒素(也称为δ-内毒素)组成的晶体的存在有关。为了优化和解释库斯塔克苏云金芽孢杆菌δ-内毒素的产生,我们使用实验设计(Plackett-Burman设计)和贝叶斯网络建模研究了七种培养基成分:豆粕、淀粉、KH₂PO₄、K₂HPO₄、FeSO₄、MnSO₄和MgSO₄及其与δ-内毒素浓度的关系。评估了培养基成分对δ-内毒素产生的影响。所建立的模型表明,不同的培养基成分对苏云金芽孢杆菌发酵很重要。影响δ-内毒素产生的最重要因素是FeSO₄、K₂HPO₄、淀粉和豆粕。实际上,发现豆粕、K₂HPO₄、KH₂PO₄和淀粉对δ-内毒素的产生也有积极影响。然而,FeSO₄和MnSO₄表现出相反的影响。基于贝叶斯技术开发的模型可以自动学习数据中出现的模型,以用于预测δ-内毒素浓度。本研究构建的模型表明,实验设计(Plackett-Burman设计)与贝叶斯网络方法相结合可用于识别影响δ-内毒素变化的变量。