首页> 外文期刊>Journal of dairy science >Monitoring Quality Loss of Pasteurized Skim Milk Using Visible and Short Wavelength Near-Infrared Spectroscopy and Multivariate Analysis
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Monitoring Quality Loss of Pasteurized Skim Milk Using Visible and Short Wavelength Near-Infrared Spectroscopy and Multivariate Analysis

机译:可见和短波长近红外光谱法和多元分析法监测巴氏杀菌脱脂奶的质量损失

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Visible and short wavelength near-infrared diffuse reflectance spectroscopy (600 to 1,100 nm) was evaluated as a technique for detecting and monitoring spoilage of pasteurized skim milk at 3 storage temperatures (6, 21, and 37℃) over 3 to 30 h (control, t = 0 h; n = 3). Spectra, total aerobic plate count, and pH were obtained, with a total of 60 spectra acquired per sample. Multivariate statistical procedures, including principal component analysis, soft independent modeling of class analogy, and partial least squares calibration models were developed for predicting the degree of milk spoilage. Principal component analysis showed apparent clustering and segregation of milk samples that were stored at different time intervals. Milk samples that were stored for 30 h or less at different temperatures were noticeably separated from control and distinctly clustered. Soft independent modeling of class analogy analysis could correctly classify 88 to 93% of spectra of incubated samples from control at 30 h. A partial least squares model with 5 latent variables correlating spectral features with bacterial counts and pH yielded a correlation coefficient (R = 0.99 and 0.99) and a standard error of prediction (0.34 log_(10) cfu/mL and 0.031 pH unit), respectively. It may be feasible to use short wavelength near-infrared spectroscopy to detect and monitor milk spoilage rapidly and noninvasively by correlating changes in spectral features with the level of bacterial proliferation and milk spoilage.
机译:对可见光和短波长近红外漫反射光谱(600至1,100 nm)进行了评估,以检测和监测巴氏杀菌脱脂牛奶在3个储存温度(6、21和37℃)下3至30小时内的变质情况(对照,t = 0h; n = 3)。获得了光谱,总需氧板数和pH,每个样品总共获得了60个光谱。为了预测牛奶变质的程度,开发了多元统计程序,包括主成分分析,类比的软独立建模和偏最小二乘校准模型。主成分分析表明,以不同时间间隔存储的牛奶样品明显聚集和分离。在不同温度下保存30小时或更短时间的牛奶样品与对照明显分离,并明显聚集。类比分析的软独立建模可以正确分类30 h内对照样品的88%至93%的光谱。具有5个潜在变量的偏最小二乘模型将光谱特征与细菌数和pH相关联,分别产生相关系数(R = 0.99和0.99)和预测标准误差(0.34 log_(10)cfu / mL和0.031 pH单位) 。通过将光谱特征的变化与细菌繁殖和牛奶变质的水平相关联,使用短波长近红外光谱法快速,无创地检测和监测牛奶变质可能是可行的。

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