Song Yu-Lin, Peng Yan-Kun, Guo Hui, Zhang Lei-Lei, Zhao Juan
Guang Pu Xue Yu Guang Pu Fen Xi. 2014 Mar;34(3):741-5.
The objective of this study is to develop a hyperspectral imaging system to predict the bacteria total viable count in fresh pork. The hyperspectral scattering data were curvefitted by different fitting methods, and correlation differences of models were compared based on the bacteria total viable count of fresh pork, thus providing modeling basis of device for future study. Total 63 fresh pork samples which was used in the experiment were stored at 4 degrees C in the refrigerator of constant temperature. Experiment was performed everyday for 15 days. 4 or 5 random samples were used each day for the experiment. Hyperspectral scattering images and spectral scattering optical data in the wavelength region of 400 to 1 100 nm were acquired from the surface of all of the pork samples. Lorentz and Gompertz function and the modified function was applied to fit the scattering profiles of pork samples. Different parameters could be obtained by Lorentz and Gompertz fitting and the modified function fitting. The different parameters could represent the optical characteristic of the scattering profiles. The standard values of the bacteria total viable count of pork were obtained by classical microbiological plating methods. Because the standard value of the bacteria total viable count was big, log10 of the bacteria total viable count obtained by classical microbiological plating was used to simplify the calculation. Both individual parameters and integrated parameters were explored to develop the models. The multi-linear regression statistical approach was used to establish the models for predicting pork the bacteria total viable count. Both Lorentz and Gompertz function and the modified function included three and four parameters formula. The results showed that correlation coefficient of the models is higher with Lorentz three parameters combination, Lorentz four parameters combination and Gompertz four parameters combination than the individual parameters and other two or three integrated parameters. The three models' correction set and prediction set correlation coefficients were 0.93, 0.96, 0.96 and 0.90, 0.90, 0.92, and the corresponding standard deviation were 0.47, 0.44, 0.39 and 0.56, 0.46, 0.42. Correlation was best with Gompertz four parameters. The device system will select the best correlation and the best stability of the model as the final model.
本研究的目的是开发一种高光谱成像系统,用于预测新鲜猪肉中的细菌总活菌数。采用不同的拟合方法对高光谱散射数据进行曲线拟合,并根据新鲜猪肉的细菌总活菌数比较模型的相关性差异,从而为未来的研究提供设备建模依据。实验中使用的63个新鲜猪肉样本在4℃的恒温冰箱中保存。实验持续15天,每天进行。每天随机抽取4或5个样本进行实验。从所有猪肉样本表面获取400至1100nm波长范围内的高光谱散射图像和光谱散射光学数据。应用洛伦兹函数、冈珀茨函数及其修正函数对猪肉样本的散射曲线进行拟合。通过洛伦兹拟合、冈珀茨拟合及其修正函数拟合可得到不同的参数。这些不同的参数可以代表散射曲线的光学特性。猪肉细菌总活菌数的标准值通过经典的微生物平板计数法获得。由于细菌总活菌数的标准值较大,因此采用经典微生物平板计数法得到的细菌总活菌数的log10来简化计算。探索了单个参数和综合参数来建立模型。采用多元线性回归统计方法建立预测猪肉细菌总活菌数的模型。洛伦兹函数、冈珀茨函数及其修正函数均包括三参数公式和四参数公式。结果表明,与单个参数和其他两参数或三参数综合参数相比,洛伦兹三参数组合、洛伦兹四参数组合和冈珀茨四参数组合的模型相关系数更高。三个模型的校正集和预测集相关系数分别为0.93、0.96、0.96和0.90、0.90、0.92,相应的标准差分别为0.47、0.44、0.39和0.56、0.46、0.42。冈珀茨四参数的相关性最好。设备系统将选择相关性最好、稳定性最好的模型作为最终模型。