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首页> 外文期刊>Meat Science >Application of mid-infrared spectroscopy with multivariate analysis and soft independent modeling of class analogies (SIMCA) for the detection of adulterants in minced beef
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Application of mid-infrared spectroscopy with multivariate analysis and soft independent modeling of class analogies (SIMCA) for the detection of adulterants in minced beef

机译:中红外光谱与多元分析和类比软独立建模(SIMCA)在碎牛肉中检测掺杂物的应用

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摘要

Chemometric MID-FTIR methods were developed to detect and quantity the adulteration of mince meat with horse meat, fat beef trimmings, and textured soy protein. Also, a SIMCA (Soft Independent Modeling Class Analogy) method was developed to discriminate between adulterated and unadulterated samples. Pure mince meat and adulterants (horse meat, fat beef trimmings and textured soy protein) were characterized based upon their protein, fat, water and ash content. In order to build the calibration models for each adulterant, mixtures of mince meat and adulterant were prepared in the range 2-90% (w/w). Chemometric analyses were obtained for each adulterant using multivariate analysis. A Partial Least Square (PLS) algorithm was tested to model each system (mince meat + adulterant) and the chemical composition of the mixture. The results showed that the infrared spectra of the samples were sensitive to their chemical composition. Good correlations between absorbance in the MID-FTIR and the percentage of adulteration were obtained in the region 1800-900 cm~(-1). Values of R~2 greater than 0.99, standard errors of calibration (SEC) in the range to 0.0001-1.278 and standard errors of prediction (SEP estimated) between 0.001 and 1.391 for the adulterant and chemical parameters were obtained. The SIMCA model showed 100% classification of adulterated meat samples from unadulterated ones. Chemometric MID-FTIR models represent an attractive option for meat quality screening without sample pretreatments which can identify the adulterant and quantify the percentage of adulteration and the chemical composition of the sample.
机译:开发了化学计量学MID-FTIR方法,以检测和定量肉末与马肉,肥牛肉屑和带纹理的大豆蛋白的掺假。此外,还开发了一种SIMCA(软件独立建模类比)方法,以区分掺假样品和未掺假样品。根据肉,蛋白,脂肪,水和灰分的含量,对肉末和掺假物(马肉,肥牛肉屑和大豆蛋白)进行了表征。为了建立每个掺假品的校准模型,将肉末和掺假品的混合物制备为2-90%(w / w)。使用多元分析对每个掺假物进行化学计量分析。测试了偏最小二乘(PLS)算法,以对每个系统(肉末+掺假肉)和混合物的化学成分建模。结果表明,样品的红外光谱对其化学成分敏感。在1800-900 cm〜(-1)范围内,MID-FTIR的吸光度与掺假百分比之间具有良好的相关性。获得的R〜2值大于0.99,校正和化学参数的校正标准误差(SEC)在0.0001-1.278范围内,预测的标准误差(SEP估计值)在0.001和1.391之间。 SIMCA模型显示出纯肉样品中的纯肉样品100%分类。化学计量学MID-FTIR模型代表了一种无需进行样品预处理即可对肉质进行筛选的诱人选择,该样品预处理可以识别掺假物并量化掺假百分比和样品的化学成分。

著录项

  • 来源
    《Meat Science》 |2010年第2期|P.511-519|共9页
  • 作者单位

    Departamento de Biofisica, Escuela National de Ciencias Biologicas, IPN. Prolongation de Carpio y Plan de Ayala S/N. Col. Santo Tomas. CP. 11340, DF Mexico, Mexico;

    rnDepartamento de Biofisica, Escuela National de Ciencias Biologicas, IPN. Prolongation de Carpio y Plan de Ayala S/N. Col. Santo Tomas. CP. 11340, DF Mexico, Mexico;

    rnDepartamento de Ingenieria Bioquimica. Escuela National de Ciencias Biologicas, IPN. Prolongation de Carpio y Plan de Ayala S/N. Col. Santo Tomas. CP. 11340, DF Mexico, Mexico;

  • 收录信息 美国《科学引文索引》(SCI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    meat adulteration; FTIR; multivariate analysis;

    机译:肉类掺假;FTIR;多元分析;

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