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PLS Predictive Model for In-Vivo Non-Invasive Finger Touch Blood Glucose NIR Spectrosensor

机译:PLS in-Vivo非侵入手指触摸血糖NIR光谱传感器的预测模型

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Diabetes is one of the non-communicable disease that has high prevalence trends. The use of finger pricking to monitor the glucose level is painful thus non-invasive alternative is needed. Non-invasive finger touch blood glucose NIR spectrosensor was utilized for the in-vivo glucose monitoring on patients at Hospital Universiti Kebangsaan Malaysia (HUKM). The development of predictive model for the glucose monitoring was based on partial least square (PLS) algorithm. Different type of preprocesses were selected to check the performance of the model with different method of signal preprocessing. The optimum number of variable when performing variable selection is 744. The R2C and R2p acquired were 0.2492 and 0.1734 respectively. The RMSEC and RMSEP for the model were 3.0324 and 2.9901 for the combination of preprocessing of generalized least square (Gls) weighting and autoscale (As). Interval PLS (iPLS) was implemented for the wavelength extraction to enhance the predictive model. R2p for 500 variables (wavelength points) shown the best result with a value of 0.2390. RMSEP also has decreased by to 2.8221 from the previous model 2.9956.
机译:糖尿病是具有较高流行趋势的非传染性疾病之一。使用手指刺对监测葡萄糖水平是痛苦的,因此需要无侵入性替代品。非侵入式手指触摸血糖NIR光谱传感器用于医院大学凯班省马来西亚(HUKM)患者的体内葡萄糖监测。葡萄糖监测预测模型的发展基于偏最小二乘(PLS)算法。选择不同类型的预处理以检查模型的性能,以不同的信号预处理方法。执行变量选择时的最佳变量数为744. r 2 C和R. 2 P分别获得的P为0.2492和0.1734。用于该模型的RMSEC和RMSEP为3.0324和2.9901,用于预处理广泛性最小二乘(GLS)加权和自动尺度(AS)。为波长提取实施间隔PLS(IPL)以增强预测模型。 R. 2 P对于500变量(波长点)显示,值为0.2390的最佳结果。 RMSEP还从之前的2.9956款中减少到2.8221。

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