Optimisation of pesticide crystal protein production from Bacillus thuringiensis employing artificial intelligence techniques

K. Pakshirajan, C. Mandă
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Abstract

Mixtures containing spores of the bacterium Bacillus thuringiensis and its δ-endotoxins – referred to as pesticide crystal protein (PCP) – are very well known to be effective against several insects and pests. In this work, three factors, namely medium pH, inoculum size and sugar concentration from molasses, that were found to be highly significant for the production of PCP were optimised of their levels using a combination of artificial intelligence techniques – artificial neural network (ANN) and genetic algorithm (GA). Earlier results, expressed in terms of the culture optical density at 600 nm wavelength (OD600), were first modelled by ANN based on back propagation algorithm, which was highly accurate in predicting the system with coefficient of determination (R²) value greater than 0.99 in both training and validation of the network. Optimum values of 3.65 for pH, 6.009% for inoculum size and 1.61 g/L for sugar concentration were obtained using GA based on the developed ANN model. At these optimised settings of the factors, a predicted maximum (OD600) value of 0.5764 was achieved, which was 9.17% more than the previously obtained maximum experimental value.
基于人工智能技术的苏云金芽孢杆菌农药结晶蛋白生产优化
众所周知,含有苏云金芽孢杆菌孢子及其δ-内毒素(即农药晶体蛋白)的混合物对几种昆虫和害虫有效。在这项工作中,使用人工智能技术-人工神经网络(ANN)和遗传算法(GA)的组合优化了三个因素,即培养基pH值,接种量和糖蜜中的糖浓度,这些因素被发现对PCP的产生非常重要。早期的结果以600 nm波长处的培养光密度(OD600)表示,首先采用基于反向传播算法的ANN建模,该算法对系统的预测精度很高,在网络的训练和验证中,决定系数(R²)均大于0.99。基于建立的人工神经网络模型,采用遗传算法得到的最佳pH值为3.65,接种量为6.009%,糖浓度为1.61 g/L。在这些因素的优化设置下,预测最大值(OD600)达到0.5764,比先前获得的最大实验值提高9.17%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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