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Spoilage assessment of chicken breast fillets by means of fourier transform infrared spectroscopy and multispectral image analysis

机译:通过傅里叶变换红外光谱和多光谱图像分析,通过傅立叶变换烧伤评估鸡胸肉内圆角

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摘要

The objective of this research was the evaluation of Fourier transforms infrared spectroscopy (FT-IR) and multispectral image analysis (MSI) as efficient spectroscopic methods in tandem with multivariate data analysis and machine learning for the assessment of spoilage on the surface of chicken breast fillets. For this purpose, two independent storage experiments of chicken breast fillets (n ​= ​215) were conducted at 0, 5, 10, and 15 ​°C for up to 480 ​h. During storage, samples were analyzed microbiologically for the enumeration of Total Viable Counts (TVC) and Pseudomonas spp. In addition, FT-IR and MSI spectral data were collected at the same time intervals as for microbiological analyses. Multivariate data analysis was performed using two software platforms (a commercial and a publicly available developed platform) comprising several machine learning algorithms for the estimation of the TVC and Pseudomonas spp. population of the surface of the samples. The performance of the developed models was evaluated by intra batch and independent batch testing. Partial Least Squares- Regression (PLS-R) models from the commercial software predicted TVC with root mean square error (RMSE) values of 1.359 and 1.029 log CFU/cm2 for MSI and FT-IR analysis, respectively. Moreover, RMSE values for Pseudomonas spp. model were 1.574 log CFU/cm2 for MSI data and 1.078 log CFU/cm2 for FT-IR data. From the implementation of the in-house sorfML platform, artificial neural networks (nnet) and least-angle regression (lars) were the most accurate models with the best performance in terms of RMSE values. Nnet models developed on MSI data demonstrated the lowest RMSE values (0.717 log CFU/cm2) for intra-batch testing, while lars outperformed nnet on independent batch testing with RMSE of 1.252 log CFU/cm2. Furthermore, lars models excelled with the FT-IR data with RMSE of 0.904 and 0.851 log CFU/cm2 in intra-batch and independent batch testing, respectively. These findings suggested that FT-IR analysis is more efficient than MSI to predict the microbiological quality on the surface of chicken breast fillets.
机译:本研究的目的是傅立叶变换的评价变换红外光谱(FT-IR)和多光谱图像分析(MSI)为处于串联高效光谱学方法与腐败的鸡胸肉的表面上的评估多变量数据分析和机器学习。为了这个目的,鸡胸肉(N = 215)的两个独立的存储实验在0进行的,5,10,和15℃下高达480小时。在贮存过程中,样品的总活菌计数(TVC)和假单孢菌属的微生物计数分析。此外,FT-IR和MSI光谱数据在相同的时间间隔作为用于微生物分析收集。使用包含的TVC和假单胞菌属的估计数的机器学习算法的两个软件平台(商业和公共可用的开发平台)进行多变量数据分析。样品的表面的人口。建立的模型的性能进行了批内和独立的批量测试评估。从商用软件偏最小二乘回归Squares-(PLS-R)型号根均方误差(RMSE)1.359 1.029和日志CFU / cm 2的用于分别MSI和FT-IR分析,预测值TVC。此外,假单孢菌属RMSE值。模型是1.574日志CFU / cm2的MSI数据和1.078日志CFU / cm2的FT-IR数据。从内部sorfML平台,人工神经网络(NNET)和最小角回归(拉斯)的执行是最准确的模型与RMSE值方面的最佳性能。上MSI数据开发NNET模型证明了批内测试的最低RMSE值(0.717日志CFU / cm2)时,而拉斯跑赢NNET上独立批量测试与1.252日志CFU / cm 2的RMSE。此外,LARS模型擅长与0.904 0.851和日志分别CFU / cm 2的在帧内分批和独立批量测试,与RMSE的FT-IR数据。这些结果表明,FT-IR分析的效率比MSI预测鸡胸肉的表面上的微生物质量。

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