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用于预测单核细胞增生李斯特菌生长极限的产物单元神经网络模型。

Product unit neural network models for predicting the growth limits of Listeria monocytogenes.

作者信息

Valero A, Hervás C, García-Gimeno R M, Zurera G

机构信息

Department of Food Science and Technology, University of Cordoba, Campus Rabanales, Edif. Darwin, 14014 Córdoba, Spain.

出版信息

Food Microbiol. 2007 Aug;24(5):452-64. doi: 10.1016/j.fm.2006.10.002. Epub 2006 Dec 8.

Abstract

A new approach to predict the growth/no growth interface of Listeria monocytogenes as a function of storage temperature, pH, citric acid (CA) and ascorbic acid (AA) is presented. A linear logistic regression procedure was performed and a non-linear model was obtained by adding new variables by means of a Neural Network model based on Product Units (PUNN). The classification efficiency of the training data set and the generalization data of the new Logistic Regression PUNN model (LRPU) were compared with Linear Logistic Regression (LLR) and Polynomial Logistic Regression (PLR) models. 92% of the total cases from the LRPU model were correctly classified, an improvement on the percentage obtained using the PLR model (90%) and significantly higher than the results obtained with the LLR model, 80%. On the other hand predictions of LRPU were closer to data observed which permits to design proper formulations in minimally processed foods. This novel methodology can be applied to predictive microbiology for describing growth/no growth interface of food-borne microorganisms such as L. monocytogenes. The optimal balance is trying to find models with an acceptable interpretation capacity and with good ability to fit the data on the boundaries of variable range. The results obtained conclude that these kinds of models might well be very a valuable tool for mathematical modeling.

摘要

本文提出了一种新方法,用于预测单核细胞增生李斯特菌的生长/不生长界面与储存温度、pH值、柠檬酸(CA)和抗坏血酸(AA)之间的函数关系。进行了线性逻辑回归分析,并通过基于乘积单元的神经网络模型(PUNN)添加新变量,获得了一个非线性模型。将新的逻辑回归PUNN模型(LRPU)的训练数据集和泛化数据的分类效率与线性逻辑回归(LLR)和多项式逻辑回归(PLR)模型进行了比较。LRPU模型对92%的总案例进行了正确分类,相比PLR模型的90%有所提高,且显著高于LLR模型的80%。另一方面,LRPU的预测结果更接近观测数据,这有助于设计适度加工食品的合适配方。这种新方法可应用于预测微生物学,以描述食源微生物如单核细胞增生李斯特菌的生长/不生长界面。最佳平衡是试图找到具有可接受解释能力且能很好拟合变量范围边界数据的模型。所得结果表明,这类模型很可能是数学建模的宝贵工具。

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