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Application of Multivariate Statistical Analysis to Simultaneous Spectrophotometric Enzymatic Determination of Glucose and Cholesterol in Serum Samples

机译:多变量统计分析在血清样品中同时分光光度酶法测定血清样品中的荧光和胆固醇

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A method using UV-Vis spectroscopy and multivariate tools for simultaneous determination of glucose and cholesterol was developed in this paper. The method is based on the development of the reaction between the analytes (cholesterol and glucose) and enzymatic reagents. The spectra were analyzed by partial least squares regression and artificial neural networks. The precision estimated between nominal and calculate concentration demonstrate that artificial neural network model was adequate to quantify both analytes in serum samples, since the % relative error obtained was in the interval from 5.1 to 8.3. The proposed model was applied to analyze blood serum samples, and the results are similar compared to those obtained employing the reference method.
机译:本文开发了一种用于同时测定葡萄糖和胆固醇的UV-Vis光谱和多变量工具的方法。该方法基于分析物(胆固醇和葡萄糖)与酶促试剂之间的反应的发展。通过部分最小二乘回归和人工神经网络分析光谱。标称和计算浓度之间估计的精度证明人工神经网络模型足以量化血清样品中的分析物,因为所获得的%相对误差在5.1至8.3的间隔中。拟议的模型用于分析血清样品,与采用参考方法获得的那些相比,结果类似。

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