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Variable selection for quantitative determination of glucose concentration with near-infrared spectroscopy

机译:通过近红外光谱法定量测定葡萄糖浓度的变量选择

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Abstract: Near-IR spectroscopy has been used in combination with multivariate calibration techniques such as partial-lest squares regression (PLSR) to quantify glucose concentration in various media. However, for reasonable prediction capability in measuring glucose many calibration samples are needed. n addition, spectroscopic data often contain over 1000 data points, presenting a very large data matrix for calibration. It is desirable to reduce the available data to contain only the information necessary for accurate prediction of chemical concentration before PLSR is applied. This will eliminate noisy variable sand consequently the data can be processed more quickly and efficiently. A variable selection method that reduces prediction bias in single factor partial least square regression models was developed and applied to near-IR absorbance spectra of glucose in two different media: pH buffer and cell culture medium. Comparisons between calibration and prediction capability for full spectra and reduced sets were completed, resulting in statistically equivalent mean squared errors. The number of response variables needed to fit the calibration data and accurately predict concentrations form new spectra was reduced in each case. The algorithm correctly chose the glucose peak areas as the informative variables and computation time was decreased by an order of magnitude. !12
机译:摘要:近红外光谱已与多元校正技术(例如偏最小二乘回归(PLSR))结合使用,以量化各种培养基中的葡萄糖浓度。然而,为了在测量葡萄糖方面具有合理的预测能力,需要许多校准样品。此外,光谱数据通常包含超过1000个数据点,因此提供了非常大的数据矩阵以进行校准。希望减少可用数据以仅包含在应用PLSR之前准确预测化学浓度的必要信息。这样可以消除嘈杂的沙粒,从而可以更快,更有效地处理数据。开发了一种可降低单因素偏最小二乘回归模型中预测偏差的变量选择方法,并将其应用于两种不同介质(pH缓冲液和细胞培养基)中葡萄糖的近红外吸收光谱。完成了对全光谱和精简集的校准和预测能力之间的比较,从而得出了统计上均等的均方误差。在每种情况下,减少了适合校准数据并准确预测新光谱浓度所需的响应变量的数量。该算法正确选择了葡萄糖峰面积作为信息变量,计算时间减少了一个数量级。 !12

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