基于分层多分辨率分析和随机森林的可穿戴无创血糖测量

Zheng Li, Qiuliang Ye, Yitong Guo, Zikang Tian, B. Ling, R. W. Lam
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引用次数: 4

摘要

可穿戴式无创血糖测量在生物医学信号处理领域发挥着重要作用。常用的血糖估计方法是通过直接随机森林算法。然而,由于信号的低信噪比通常会破坏信号的有用信息,因此输入训练算法的失真特征导致估计性能较差。本文提出采用基于经验模式分解(EMD)的分层多分辨率分析进行预处理,采用随机森林进行可穿戴式无创血糖估计。更准确地说,在基于EMD的分层多分辨率分析中,采用了两层分解,并且仅丢弃第二层分解中的前两个固有模态函数(IMF)。然后,通过随机森林回归算法对处理后的近红外信号提取的特征进行训练。计算机数值仿真结果表明,该方法在平均估计精度和Clarke误差网格上的分布误差方面均优于未经EMD预处理的经典方法和基于EMD预处理的传统方法。
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Wearable Non-invasive Blood Glucose Estimation via Empirical Mode Decomposition Based Hierarchical Multiresolution Analysis and Random Forest
Wearable non-invasive blood glucose estimation plays an important role in the biomedical signal processing community. The common blood glucose estimation method is via the direct random forest algorithm. However, since the useful information of the signal is usually corrupted due to the low SNR, the distorted features inputted for the training algorithm result to a poor estimation performance. This paper proposes to employ an empirical mode decomposition (EMD) based hierarchical multiresolution analysis for performing the pre-processing and the random forest for performing the wearable non-invasive blood glucose estimation. More precisely, two levels of decompositions are employed in the EMD based hierarchical multiresolution analysis and only the first two intrinsic mode functions (IMF) in the second level of decomposition are discarded. Next, the features exacted from the processed near infrared (NIR) signal are trained via the random forest regression algorithm. The computer numerical simulation results show that the proposed method outperforms the classical method without the EMD pre-processing and with conventional EMD based pre-processing in terms of the average estimation accuracy and the distribution error shown on the Clarke error gird.
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