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Rapid qualitative and quantitative detection of beef fillets spoilage based on Fourier transform infrared spectroscopy data and artificial neural networks

机译:基于傅立叶变换红外光谱数据和人工神经网络的牛肉片变质的快速定性和定量检测

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摘要

A machine learning strategy in the form of a multilayer perceptron (MLP) neural network was employed to correlate Fourier transform infrared (FTIR) spectral data with beef spoilage during aerobic storage at chill and abuse temperatures. Fresh beef fillets were packaged under aerobic conditions and left to spoil at 0, 5, 10, 15, and 20 °C for up to 350 hours. FTIR spectra were collected directly from the surface of meat samples, whereas total viable counts of bacteria were obtained with standard plating methods. Sensory evaluation was performed during storage and samples were attributed into three quality classes namely fresh, semi-fresh, and spoiled. A neural network was designed to classify beef samples to one of the three quality classes based on the biochemical profile provided by the FTIR spectra, and in parallel to predict the microbial load (as total viable counts) on meat surface. The results obtained demonstrated that the developed neural network was able to classify with high accuracy the beef samples in the corresponding quality class using their FTIR spectra. The network was able to classify correctly 22 out of 24 fresh samples (91.7%), 32 out of 34 spoiled samples (94.1%), and 13 out of 16 semi-fresh samples (81.2%). No fresh sample was misclassified as spoiled and vice versa. The performance of the network in the prediction of microbial counts was based on graphical plots and statistical indices (bias and accuracy factors, standard error of prediction, mean relative and mean absolute percentage residuals). Results demonstrated good correlation of microbial load on beef surface with spectral data. The results of this work indicated that the biochemical fingerprints during beef spoilage obtained by FTIR spectroscopy in combination with the appropriate machine learning strategy have significant potential for rapid assessment of meat spoilage.
机译:采用了多层感知器(MLP)神经网络形式的机器学习策略,以将傅里叶变换红外(FTIR)光谱数据与在寒冷和滥用温度下有氧存储过程中的牛肉变质相关联。新鲜的牛肉片在有氧条件下包装,并在0、5、10、15和20°C下变质长达350小时。 FTIR光谱是直接从肉样品表面收集的,而细菌的总活菌数是通过标准的铺板方法获得的。在储存过程中进行了感官评估,并将样品分为三个质量等级,即新鲜,半新鲜和变质。设计了一个神经网络,根据FTIR光谱提供的生化特征,将牛肉样品分类为三个质量类别之一,并并行预测肉类表面的微生物负荷(以总活菌数计)。获得的结果表明,开发的神经网络能够使用FTIR光谱对相应质量等级的牛肉样品进行高精度分类。该网络能够正确分类24个新鲜样品中的22个(91.7%),34个变质样品中的32个(94.1%)和16个半新鲜样品中的13个(81.2%)。没有新鲜样品被误分类为变质,反之亦然。该网络在预测微生物数量方面的性能基于图表和统计指标(偏差和准确性因子,预测的标准误差,平均相对残差和平均绝对百分比残差)。结果表明牛肉表面的微生物负荷与光谱数据具有良好的相关性。这项工作的结果表明,通过FTIR光谱结合适当的机器学习策略获得的牛肉变质期间的生化指纹图谱具有快速评估肉变质的巨大潜力。

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