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Modeling growth limits of Bacillus spp. spores by using deep-learning algorithm

机译:模拟芽孢杆菌的生长极限。深度学习算法的孢子

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Growtho growth boundary models for Bacillus spores that accounted for the effects of environmental pH, water activity (a(w)), acetic acid, lactic acid, bacterial strain, and storage period were developed using conventional logistic regression and machine learning algorithms. Growth in tryptic soy broth at 317 conditions comprising nine levels of pH (4.0-6.5), six levels of a(w) (0.85-1.00), six levels of acetic acid concentrations (0-0.8%), and five levels of lactic acid concentrations (0-0.8%) was examined to confirm growth limit conditions. All models developed using logistic regression, neural network, and deep learning on the basis of obtained datasets successfully described growtho growth boundaries of three Bacillus species. Although the logistic regression model failed to describe growth limits under some conditions, neural network and deep learning approaches enabled to determine them in such cases. The developed models were evaluated by independent experimental data of growth in tryptic soy broth and in clam soup. The deep learning model enabled better prediction of independent data with smaller probabilistic variability values than those of the logistic regression and neural network models. The deep learning procedure can be utilized for growth boundary modeling to control bacterial growth safely and flexibly.
机译:使用传统的逻辑回归和机器学习算法,建立了考虑环境pH,水活度(a(w)),乙酸,乳酸,细菌菌株和贮藏期的芽孢杆菌的生长/无生长边界模型。胰蛋白酶大豆肉汤在317种条件下的生长,其中包括9种pH(4.0-6.5),6种a(w)(0.85-1.00),6种乙酸浓度(0-0.8%)和5种乳酸检查酸浓度(0-0.8%)以确认生长极限条件。在获得的数据集的基础上,使用逻辑回归,神经网络和深度学习开发的所有模型均成功描述了三种芽孢杆菌的生长/无生长边界。尽管逻辑回归模型无法在某些情况下描述增长极限,但在这种情况下,神经网络和深度学习方法可以确定增长极限。通过独立的实验数据评估胰蛋白酶大豆肉汤和蛤c汤中生长的模型。与Logistic回归和神经网络模型相比,深度学习模型能够以较小的概率变异性值更好地预测独立数据。深度学习过程可用于生长边界建模,以安全,灵活地控制细菌的生长。

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