School of Electrical Engineering, Kookmin University, Seoul 02707, Korea.
Sensors (Basel). 2022 Apr 12;22(8):2963. doi: 10.3390/s22082963.
Glycated hemoglobin (HbA1c) is an important factor in monitoring diabetes. Since the glycated hemoglobin value reflects the average blood glucose level over 3 months, it is not affected by exercise or food intake immediately prior to measurement. Thus, it is used as the most basic measure of evaluating blood-glucose control over a certain period and predicting the occurrence of long-term complications due to diabetes. However, as the existing measurement methods are invasive, there is a burden on the measurement subject who has to endure increased blood gathering and exposure to the risk of secondary infections. To overcome this problem, we propose a machine-learning-based noninvasive estimation method in this study using photoplethysmography (PPG) signals. First, the development of the device used to acquire the PPG signals is described in detail. Thereafter, discriminative and effective features are extracted from the acquired PPG signals using the device, and a machine-learning algorithm is used to estimate the glycated hemoglobin value from the extracted features. Finally, the performance of the proposed method is evaluated by comparison with existing model-based methods.
糖化血红蛋白 (HbA1c) 是监测糖尿病的重要因素。由于糖化血红蛋白值反映了过去 3 个月内的平均血糖水平,因此不受测量前立即进行的运动或饮食的影响。因此,它被用作评估特定时间段内血糖控制水平和预测因糖尿病而发生长期并发症的最基本指标。然而,由于现有的测量方法具有侵入性,因此对测量对象存在负担,他们必须忍受增加采血和面临二次感染的风险。为了解决这个问题,我们在这项研究中提出了一种基于机器学习的非侵入性估计方法,该方法使用光体积描记法 (PPG) 信号。首先,详细描述了用于获取 PPG 信号的设备的开发。此后,使用该设备从获取的 PPG 信号中提取有区别和有效的特征,并使用机器学习算法从提取的特征中估计糖化血红蛋白值。最后,通过与现有的基于模型的方法进行比较来评估所提出方法的性能。