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Determination of glucose concentration from near infrared spectra using least square support vector machine

机译:使用最小二乘支持向量机从近红外光谱确定葡萄糖浓度

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One of the many challenges for translating noninvasive glucose measurement into clinical practice is the calibration of the measuring instrument. In this work, least squares support vector regression (LS-SVR) has been used to develop a multivariate calibration model for determination of glucose concentration from near infra-red (NIR) spectra. The behaviour of developed model is studied on NIR spectra of a mixture composed of glucose, urea, and triacetin which spans from 2100 nm to 2400 nm with a spectral resolution of 1nm. The proposed model improved the standard error of prediction (SEP) from 49.4 mg/dL in case of Principal Component Regression (PCR) and 27.5 mg/dL in case of Principal Least Squares Regression (PLSR) to 19.4mg/dL.
机译:将无创血糖测量转化为临床实践的众多挑战之一是测量仪器的校准。在这项工作中,最小二乘支持向量回归(LS-SVR)已用于开发用于从近红外(NIR)光谱确定葡萄糖浓度的多元校准模型。在由葡萄糖,尿素和三醋精组成的混合物的NIR光谱上研究了开发模型的行为,该混合物的跨度为2100 nm至2400 nm,光谱分辨率为1nm。拟议的模型将标准预测误差(SEP)从主成分回归(PCR)的49.4 mg / dL和主最小二乘回归(PLSR)的27.5 mg / dL提高到19.4mg / dL。

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