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Temperature Insensitive Prediction of Glucose Concentration in Turbid Medium using Multivariable Calibration based on External Parameter Orthogonalization

机译:基于外部参数正交化的多变量标定法用于浊度介质中葡萄糖浓度的温度不敏感预测

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The measurement accuracy of non-invasive blood glucose concentration (BGC) sensing with near-infrared spectroscopy is easily affected by the temperature variation in tissue because it would induce an unacceptable spectrum variation and the consequent prediction deviation. We use a multivariable correction method based on external parameter orthogonalization (EPO) to calibrate the spectral data recorded at different temperature values to reduce the spectral variation. The tested medium is a kind of tissue phantom, the Intralipid aqueous solution. The calibration uses a projection matrix to get the orthogonal spectral space to the variable of external parameter, i.e. temperature, and then the useful spectral information relative to glucose concentration has been reserved. Even more, training the projection matrix can be separated to building the calibration matrix for the prediction of glucose concentration as it only uses the representative samples' data with temperature variation. The method presents a lower complexity than modeling a robust prediction matrix, which can be built from comprehensive spectral data involved the all variables both of BGC and temperature. In our test, the calibrated spectra with the same glucose concentration but different temperature values show a significantly improved repeatability. And then the glucose concentration prediction results show a lower root mean squared error of prediction (RMSEP) than that using the robust calibration model, which has considered the two variables. We also discuss the rationality of the representative samples chosen by EPO. This research may be referenced to the temperature calibration for in vivo BGC sensing.
机译:用近红外光谱法感测无创血糖浓度(BGC)的测量精度容易受到组织中温度变化的影响,因为它会引起不可接受的光谱变化和随之而来的预测偏差。我们使用基于外部参数正交化(EPO)的多变量校正方法来校准在不同温度值下记录的光谱数据,以减少光谱变化。被测试的介质是一种组织模型,即脂质内水溶液。校准使用投影矩阵来获取与外部参数(即温度)变量正交的光谱空间,然后保留了相对于葡萄糖浓度的有用光谱信息。甚至可以将训练投影矩阵分离出来,以建立用于预测葡萄糖浓度的校准矩阵,因为它仅使用具有温度变化的代表性样本数据。该方法比建模鲁棒的预测矩阵具有更低的复杂度,后者可以从涉及BGC和温度所有变量的综合光谱数据中构建。在我们的测试中,具有相同葡萄糖浓度但不同温度值的校准光谱显示出显着改善的重复性。然后,与考虑了两个变量的稳健校准模型相比,葡萄糖浓度的预测结果显示出较低的预测均方根误差(RMSEP)。我们还将讨论EPO选择的代表性样本的合理性。该研究可参考体内BGC传感的温度校准。

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