Graduate School of Agricultural Science, Hokkaido University, Kita-9, Nishi-9, Kita-ku, Sapporo 060-8589, Japan.
Graduate School of Agricultural Science, Hokkaido University, Kita-9, Nishi-9, Kita-ku, Sapporo 060-8589, Japan.
J Microbiol Methods. 2022 Jan;192:106366. doi: 10.1016/j.mimet.2021.106366. Epub 2021 Nov 12.
To predict bacterial population behavior in food, statistical models with specific function form have been applied in the field of predictive microbiology. Modelers need to consider the linear or non-linear relationship between the response and explanatory variables in the statistical modeling approach. In the present study, we focused on machine learning methods to skip definition of primary and secondary structure model. Support vector regression, extremely randomized trees regression, and Gaussian process regression were used to predict population growth of Escherichia coli O157 at 15 and 25 °C without defining the primary and secondary models. Furthermore, the support vector regression model was applied to predict small population of bacteria cells with probability theory. The model performance of the machine learning models were nearly equal to that of the current statistical models. Machine learning models have a potential for predicting bacterial population behavior.
为了预测食品中细菌群体的行为,预测微生物学领域已经应用了具有特定函数形式的统计模型。建模者需要在统计建模方法中考虑响应变量和解释变量之间的线性或非线性关系。在本研究中,我们专注于机器学习方法,以跳过主、二级结构模型的定义。支持向量回归、极端随机树回归和高斯过程回归被用于预测在 15 和 25°C 下大肠杆菌 O157 的群体生长,而无需定义主、二级模型。此外,支持向量回归模型还应用于基于概率论预测细菌小种群细胞。机器学习模型的模型性能几乎与当前统计模型相当。机器学习模型在预测细菌群体行为方面具有潜力。