研究目的
To develop a robust, sensitive, and reproducible method based on near‐infrared spectroscopy coupled with multivariate analysis for the detection and quantification of urea adulteration in fresh milk samples.
研究成果
The study demonstrated that NIR spectroscopy coupled with multivariate methods can be a robust, sensitive, and nondestructive technique for detecting and quantifying urea adulteration in fresh milk samples. The PLS‐DA model effectively discriminated between adulterated and nonadulterated milk samples, and the PLSR model accurately quantified the levels of urea adulteration.
研究不足
The study does not explicitly mention limitations, but potential areas for optimization could include expanding the range of adulterants tested and further validating the method with a larger and more diverse set of milk samples.
1:Experimental Design and Method Selection:
The study used near‐infrared spectroscopy coupled with multivariate analysis for detecting and quantifying urea adulteration in milk. Principal components analysis (PCA), partial least‐squares discriminant analysis (PLS‐DA), and partial least‐squares regressions (PLSR) methods were applied for the multivariate analysis.
2:Sample Selection and Data Sources:
162 fresh milk samples were used, consisting of 20 nonadulterated samples and 142 adulterated with urea at eight different percentage levels, each prepared in triplicates.
3:List of Experimental Equipment and Materials:
A Frontier NIR spectrophotometer (BSEN60825‐1:2007) by Perkin Elmer was used for scanning the absorption of each sample in the wavenumber range of 10,000–4,000 cm-1, using a 0.2 mm path length CaF2 sealed cell at a resolution of 2 cm-
4:2 mm path length CaF2 sealed cell at a resolution of 2 cm-Experimental Procedures and Operational Workflow:
1.
4. Experimental Procedures and Operational Workflow: The NIR spectral data were split into a training set (70%) for building the PLSR model and a test set (30%) for external validation. Spectral transformations such as baseline correction, 1st derivative with Savitzky–Golay smoothing, and standard normal variate (SNV) were applied to remove noise and minimize scattering effects.
5:Data Analysis Methods:
PCA was used to reduce the dimensionality of the spectral data and explore similarities and differences among samples. PLS‐DA was used for discrimination between nonadulterated and adulterated milk samples. PLSR was used to quantify the levels of urea adulteration.
独家科研数据包,助您复现前沿成果,加速创新突破
获取完整内容