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用于鸡绞肉中鼠伤寒沙门氏菌热灭活至消除的神经网络模型:通过全样本富集、微型最大可能数法获取数据

Neural Network Model for Thermal Inactivation of Salmonella Typhimurium to Elimination in Ground Chicken: Acquisition of Data by Whole Sample Enrichment, Miniature Most-Probable-Number Method.

作者信息

Oscar T P

机构信息

U.S. Department of Agriculture, Agricultural Research Service, Residue Chemistry and Predictive Microbiology Research Unit, Room 2111, Center for Food Science and Technology, University of Maryland Eastern Shore, Princess Anne, Maryland 21853, USA.

出版信息

J Food Prot. 2017 Jan;80(1):104-112. doi: 10.4315/0362-028X.JFP-16-199.

Abstract

Predictive models are valuable tools for assessing food safety. Existing thermal inactivation models for Salmonella and ground chicken do not provide predictions above 71°C, which is below the recommended final cooked temperature of 73.9°C for chicken. They also do not predict when all Salmonella are eliminated without extrapolating beyond the data used to develop them. Thus, a study was undertaken to develop a model for thermal inactivation of Salmonella to elimination in ground chicken at temperatures above those of existing models. Ground chicken thigh portions (0.76 cm) in microcentrifuge tubes were inoculated with 4.45 ± 0.25 log most probable number (MPN) of a single strain of Salmonella Typhimurium (chicken isolate). They were cooked at 50 to 100°C in 2 or 2.5°C increments in a heating block that simulated two-sided pan frying. A whole sample enrichment, miniature MPN (WSE-mMPN) method was used for enumeration. The lower limit of detection was one Salmonella cell per portion. MPN data were used to develop a multiple-layer feedforward neural network model. Model performance was evaluated using the acceptable prediction zone (APZ) method. The proportion of residuals in an APZ (pAPZ) from -1 log (fail-safe) to 0.5 log (fail-dangerous) was 0.911 (379 of 416) for dependent data and 0.910 (162 of 178) for independent data for interpolation. A pAPZ ≥0.7 indicated that model predictions had acceptable bias and accuracy. There were no local prediction problems because pAPZ for individual thermal inactivation curves ranged from 0.813 to 1.000. Independent data for interpolation satisfied the test data criteria of the APZ method. Thus, the model was successfully validated. Predicted times for a 1-log reduction ranged from 9.6 min at 56°C to 0.71 min at 100°C. Predicted times for elimination ranged from 8.6 min at 60°C to 1.4 min at 100°C. The model will be a valuable new tool for predicting and managing this important risk to public health.

摘要

预测模型是评估食品安全的重要工具。现有的沙门氏菌和碎鸡肉热灭活模型无法提供71°C以上的预测结果,而这低于鸡肉建议的最终烹饪温度73.9°C。它们也无法预测沙门氏菌全部被消除的时间,且不能外推到用于建立模型的数据范围之外。因此,开展了一项研究,以建立一个沙门氏菌在高于现有模型温度下在碎鸡肉中热灭活至消除的模型。将碎鸡肉大腿部分(0.76厘米)装入微量离心管,接种4.45±0.25对数最可能数(MPN)的单一鼠伤寒沙门氏菌菌株(鸡肉分离株)。在模拟双面煎炒的加热块中,以2或2.5°C的增量在50至100°C下烹饪。采用全样本富集、微型MPN(WSE-mMPN)方法进行计数。检测下限为每份一个沙门氏菌细胞。MPN数据用于建立多层前馈神经网络模型。使用可接受预测区间(APZ)方法评估模型性能。对于依赖数据,从-1对数(故障安全)到0.5对数(故障危险)的APZ中的残差比例(pAPZ)为0.911(416个中的379个),对于独立数据进行内插时为0.910(178个中的162个)。pAPZ≥0.7表明模型预测具有可接受的偏差和准确性。由于单个热灭活曲线的pAPZ范围为0.813至1.000,因此不存在局部预测问题。用于内插的独立数据满足APZ方法的测试数据标准。因此,该模型成功得到验证。预测的1个对数减少时间范围为56°C时9.6分钟至100°C时0.71分钟。预测的消除时间范围为60°C时8.6分钟至100°C时1.4分钟。该模型将成为预测和管理这一重要公共卫生风险的宝贵新工具。

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