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首页> 外文期刊>Analytical and bioanalytical chemistry >Selectivity for glucose, glucose-6-phosphate, and pyruvate in ternary mixtures from the multivariate analysis of near-infrared spectra
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Selectivity for glucose, glucose-6-phosphate, and pyruvate in ternary mixtures from the multivariate analysis of near-infrared spectra

机译:来自近红外光谱的多元分析对三元混合物中葡萄糖,6-磷酸葡萄糖和丙酮酸的选择性

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Near-infrared spectroscopy offers the potential for direct in situ analysis in complex biological systems. Chemical selectivity is a critical issue for such measurements given the extent of spectral overlap of overtone and combination spectra. In this work, the chemical basis of selectivity is investigated for a set of multivariate calibration models designed to quantify glucose, glucose-6-phosphate, and pyruvate independently in ternary mixtures. Near-infrared spectra are collected over the combination region (4,000-5,000 cm(-1)) for a set of 60 standard solutions maintained at 37 C. These standard solutions are composed of randomized concentrations (0.5-30 mM) of glucose, glucose-6-phosphate, and pyruvate. Individual calibration models are constructed for each solute by using the partial least-squares (PLS) algorithm with optimized spectral range and number of latent variables. The resulting standard errors are 0.90, 0.72, and 0.32 mM for glucose, glucose-6-phosphate, and pyruvate, respectively. A pure component selectivity analysis (PCSA) demonstrates selectivity for each solute in these ternary samples. The concentration of each solute is also predicted for each sample by using a set of net analyte signal (NAS) calibration models. A comparison of the PLS and NAS calibration vectors demonstrates the chemical basis of selectivity for these multivariate methods. Selectivity of each PLS and NAS calibration model originates from the unique spectral features associated with the targeted analyte. Overall, selectivity is demonstrated for each solute with an order of sensitivity of pyruvate > glucose-6-phosphate > glucose.
机译:近红外光谱技术为复杂生物系统中的直接原位分析提供了潜力。给定泛音和组合光谱的光谱重叠程度,化学选择性对于此类测量至关重要。在这项工作中,针对一组多元校准模型研究了选择性的化学基础,这些校准模型旨在独立定量三元混合物中的葡萄糖,6-磷酸葡萄糖和丙酮酸。对于一组维持在37 C的标准溶液,在组合区域(4,000-5,000 cm(-1))上收集近红外光谱。这些标准溶液由葡萄糖,葡萄糖的随机浓度(0.5-30 mM)组成-6-磷酸和丙酮酸。通过使用具有优化的光谱范围和潜在变量数量的偏最小二乘(PLS)算法,可以为每种溶质构建单独的校准模型。葡萄糖,6-磷酸葡萄糖和丙酮酸的标准误差分别为0.90、0.72和0.32 mM。纯组分选择性分析(PCSA)证明了这些三元样品中每种溶质的选择性。通过使用一组净分析物信号(NAS)校准模型,还可以预测每个样品的每种溶质的浓度。 PLS和NAS校准向量的比较证明了这些多元方法的选择性的化学基础。每个PLS和NAS校准模型的选择性源自与目标分析物相关的独特光谱特征。总的来说,证明了每种溶质的选择性,其顺序为丙酮酸> 6葡萄糖葡萄糖>葡萄糖。

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