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Study of a noninvasive blood glucose detection model using the near-infrared light based on SA-NARX

机译:基于SA-NARX的近红外无创血糖检测模型的研究

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Accumulated attempts have been made to develop models for near-infrared noninvasive measurement of human blood glucose concentration. Most of them focus on the relationship between near-infrared absorbance and blood glucose concentration, but do not consider the fluctuation regularity of blood glucose concentration and the influence of environmental factors and human physiological state on near-infrared absorption. In order to improve the performance of prediction model, a hybrid method is proposed in this paper. The nonlinear autoregressive model with exogenous input (NARX) was introduced as prediction model. 7 variables, including 1550 nm near-infrared absorbance, ambient temperature, ambient humidity, systolic pressure, diastolic pressure, pulse rate and body temperature were introduced as initial input variables. The sensitivity analysis (SA) method was employed to select the relative important input variables for NARX model. Based on the result of SA, a robust and accurate NARX model with 4 input variables (1550 nm near-infrared absorbance, systolic pressure, pulse rate and body temperature) was derived. Compared with the back propagation neural network (BPNN) with the same selected 4 input variables and the BPNN with initial 7 input variables, the NARX model developed there showed better prediction performance, of which the root mean square error and correlation coefficients were 0.72 mmol/L and 0.85 respectively for the 10-fold cross validation set. The percentages of the 10-fold cross validation set samples falling in region A and B of the Clarke error grid analysis were 90.27% and 9.73% respectively. These results demonstrate the potential of our model for noninvasive measurement of blood glucose concentration. (C) 2019 Elsevier Ltd. All rights reserved.
机译:为了开发用于人体血糖浓度的近红外无创测量的模型,已经进行了尝试。他们中的大多数关注近红外吸收率与血糖浓度之间的关系,但没有考虑血糖浓度的波动规律以及环境因素和人体生理状态对近红外吸收的影响。为了提高预测模型的性能,提出了一种混合方法。介绍了带有外部输入的非线性自回归模型(NARX)作为预测模型。引入了包括1550 nm近红外吸收率,环境温度,环境湿度,收缩压,舒张压,脉搏频率和体温在内的7个变量作为初始输入变量。采用敏感性分析(SA)方法为NARX模型选择相对重要的输入变量。根据SA的结果,得出了具有4个输入变量(1550 nm近红外吸收率,收缩压,脉搏频率和体温)的稳健而准确的NARX模型。与具有相同选择的4个输入变量的反向传播神经网络(BPNN)和具有初始的7个输入变量的BPNN相比,在那里开发的NARX模型显示出更好的预测性能,其中均方根误差和相关系数为0.72 mmol / L和0.85分别代表10倍交叉验证集。落在Clarke误差网格分析的区域A和B中的10倍交叉验证集样本的百分比分别为90.27%和9.73%。这些结果证明了我们的模型在无创测量血糖浓度方面的潜力。 (C)2019 Elsevier Ltd.保留所有权利。

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