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用于快速评估鸡肉汉堡微生物质量的光谱数据

Spectroscopic Data for the Rapid Assessment of Microbiological Quality of Chicken Burgers.

作者信息

Fengou Lemonia-Christina, Liu Yunge, Roumani Danai, Tsakanikas Panagiotis, Nychas George-John E

机构信息

Laboratory of Microbiology and Biotechnology of Foods, Department of Food Science and Human Nutrition, School of Food and Nutritional Sciences, Agricultural University of Athens, Iera Odos 75, 11855 Athens, Greece.

Laboratory of Beef Processing and Quality Control, College of Food Science and Engineering, Shandong Agricultural University, Tai'an 271018, China.

出版信息

Foods. 2022 Aug 9;11(16):2386. doi: 10.3390/foods11162386.

Abstract

The rapid assessment of the microbiological quality of highly perishable food commodities is of great importance. Spectroscopic data coupled with machine learning methods have been investigated intensively in recent years, because of their rapid, non-destructive, eco-friendly qualities and their potential to be used on-, in- or at-line. In the present study, the microbiological quality of chicken burgers was evaluated using Fourier transform infrared (FTIR) spectroscopy and multispectral imaging (MSI) in tandem with machine learning algorithms. Six independent batches were purchased from a food industry and stored at 0, 4, and 8 °C. At regular time intervals (specifically every 24 h), duplicate samples were subjected to microbiological analysis, FTIR measurements, and MSI sampling. The samples (n = 274) acquired during the data collection were classified into three microbiological quality groups: “satisfactory”: 4−7 log CFU/g, “acceptable”: 7−8 log CFU/g, and “unacceptable”: >8 logCFU/g. Subsequently, classification models were trained and tested (external validation) with several machine learning approaches, namely partial least squares discriminant analysis (PLSDA), support vector machine (SVM), random forest (RF), logistic regression (LR), and ordinal logistic regression (OLR). Accuracy scores were attained for the external validation, exhibiting FTIR data values in the range of 79.41−89.71%, and, for the MSI data, in the range of 74.63−85.07%. The performance of the models showed merit in terms of the microbiological quality assessment of chicken burgers.

摘要

快速评估极易腐坏食品的微生物质量至关重要。近年来,光谱数据与机器学习方法因其快速、无损、环保的特性以及可用于在线、在线内或在线上的潜力而受到深入研究。在本研究中,采用傅里叶变换红外(FTIR)光谱和多光谱成像(MSI)并结合机器学习算法对鸡肉汉堡的微生物质量进行了评估。从一家食品企业购买了六个独立批次的产品,并分别储存在0、4和8°C的环境中。每隔一定时间间隔(具体为每24小时),对重复样本进行微生物分析、FTIR测量和MSI采样。在数据收集过程中获取的样本(n = 274)被分为三个微生物质量组:“满意”:4−7 log CFU/g,“可接受”:7−8 log CFU/g,“不可接受”:>8 logCFU/g。随后,使用几种机器学习方法对分类模型进行了训练和测试(外部验证),即偏最小二乘判别分析(PLSDA)、支持向量机(SVM)、随机森林(RF)、逻辑回归(LR)和有序逻辑回归(OLR)。外部验证获得了准确率得分,FTIR数据值范围为79.41−89.71%,MSI数据值范围为74.63−85.07%。这些模型的性能在鸡肉汉堡的微生物质量评估方面表现出色。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b27a/9407583/3addc5803b81/foods-11-02386-g001.jpg

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