Multi-models with averaging in feature domain for non-invasive blood glucose estimation

Yiting Wei, B. Ling, Qinzg Liu, Jiaxin Liu
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引用次数: 1

Abstract

Diabetes is a serious chronic metabolic disease. In the recent years, more and more studies focus on the use of the non-invasive methods to achieve the blood glucose estimation. More and more consumer technology enterprises focusing on human health are committed to implementing accurate and non-invasive blood glucose algorithm in their products. The near infrared spectroscopy built in the wearable devices is one of the common approaches to achieve the non-invasive blood glucose estimation. However, due to the interference from the external environment, these wearable non-invasive methods yield the low estimation accuracy. Even if it is not medical equipment, as a consumer product, the detection accuracy will also be an important indicator for consumers. To address this issue, this paper employs different models based on different ranges of the blood glucose values for performing the blood glucose estimation. First the photoplethysmograms (PPGs) are acquired and they are denoised via the bit plane singular spectrum analysis (SSA) method. Second, the features are extracted. For the data in the training set, first the features are averaged across the measurements in the feature domain via the optimization approach. Second, the random forest is employed to sort the importance of each feature. Third, the training set is divided into three subsets according to the reference blood glucose values. Fourth, the feature vectors and the corresponding blood glucose values in the same group are employed to build an individual model. Fifth, for each feature, the average of the feature values for all the measurements in the same subset is computed. For the data in the test set, first, the sum of the weighted distances between the test feature values and the average values obtained in the above is computed for each model. Here, the weights are defined based on the importance sorted by the random forest obtained in the above. The model corresponding to the smallest sum is assigned. Finally, the blood glucose value is estimated based on the corresponding model. Compared to the state of arts methods, our proposed method can effectively improve the estimation accuracy. In particular, the mean absolute relative difference (MARD) and the percentage of the data fall in the zone A of the Clarke error grid yielded by our proposed method reaches 12.19%, and 87.0588%, respectively.
基于特征域平均的多模型无创血糖估计
糖尿病是一种严重的慢性代谢疾病。近年来,越来越多的研究集中在使用无创的方法来实现血糖的估计。越来越多关注人类健康的消费科技企业致力于在产品中实现精准、无创的血糖算法。可穿戴设备内置的近红外光谱是实现无创血糖测量的常用方法之一。然而,由于外部环境的干扰,这些可穿戴的非侵入性方法的估计精度较低。即使不是医疗器械,作为消费产品,检测精度也将是消费者的重要指标。针对这一问题,本文根据血糖值的不同范围,采用不同的模型进行血糖估计。首先采集光容积脉搏图(PPGs),并通过位平面奇异谱分析(SSA)方法对其进行去噪。其次,提取特征。对于训练集中的数据,首先通过优化方法在特征域的测量值上对特征进行平均。其次,利用随机森林对每个特征的重要性进行排序。第三,根据参考血糖值将训练集分成三个子集。第四,利用特征向量和同一组中相应的血糖值建立个体模型。第五,对于每个特征,计算同一子集中所有测量的特征值的平均值。对于测试集中的数据,首先计算每个模型的测试特征值与上述平均值之间的加权距离之和。在这里,权重是根据上面得到的随机森林排序的重要性来定义的。分配最小总和对应的模型。最后,根据相应的模型估算血糖值。与现有方法相比,该方法可以有效地提高估计精度。其中,Clarke误差网格的平均绝对相对差(MARD)和数据落在A区的百分比分别达到12.19%和87.0588%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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