Faculty of Engineering, Khon Kaen University, Khon Kaen, Thailand.
Thakhantho Hospital, Kalasin, Thailand.
Sci Rep. 2022 Feb 2;12(1):1769. doi: 10.1038/s41598-022-05570-8.
Non-invasive and accurate method for continuous blood glucose monitoring, the self-testing of blood glucose is in quest for better diagnosis, control and the management of diabetes mellitus (DM). Therefore, this study reports a multiple photonic band near-infrared (mbNIR) sensor augmented with personalized medical features (PMF) in Shallow Dense Neural Networks (SDNN) for the precise, inexpensive and pain free blood glucose determination. Datasets collected from 401 blood samples were randomized and trained with ten-fold validation. Additionally, a cohort of 234 individuals not included in the model training set were investigated to evaluate the performance of the model. The model achieved the accuracy of 97.8% along with 96.0% precision, 94.8% sensitivity and 98.7% specificity for DM classification based on a diagnosis threshold of 126 mg/dL for diabetes in fasting blood glucose. For non-invasive real-time blood glucose monitoring, the model exhibited ± 15% error with 95% confidence interval and the detection limit of 60-400 mg/dL, as validated with the standard hexokinase enzymatic method for glucose estimation. In conclusion, this proposed mbNIR based SDNN model with PMF is highly accurate and computationally cheaper compared to similar previous works using complex neural network. Some groups proposed using complicated mixed types of sensors to improve noninvasive glucose prediction accuracy; however, the accuracy gain over the complexity and costs of the systems harvested is still in questioned (Geng et al. in Sci Rep 7:12650, 2017). None of previous works report on accuracy enhancement of NIR/NN using PMF. Therefore, the proposed SDNN over PMF/mbNIR is an extremely promising candidate for the non-invasive real-time blood glucose monitoring with less complexity and pain-free.
用于连续血糖监测的无创且准确的方法,自我血糖检测是为了更好地诊断、控制和管理糖尿病(DM)。因此,本研究报告了一种基于浅层密集神经网络(SDNN)的多光子带近红外(mbNIR)传感器,该传感器增强了个性化医疗特征(PMF),可用于精确、廉价且无痛苦的血糖测定。从 401 个血样中收集的数据被随机分为十份进行验证。此外,还对未包含在模型训练集中的 234 个人群进行了研究,以评估模型的性能。该模型在基于空腹血糖中糖尿病诊断阈值为 126mg/dL 的 DM 分类中达到了 97.8%的准确率,96.0%的精度,94.8%的灵敏度和 98.7%的特异性。对于非侵入性实时血糖监测,该模型的误差为±15%,置信区间为 95%,检测限为 60-400mg/dL,与葡萄糖估计的标准己糖激酶酶法验证一致。总之,与使用复杂神经网络的类似先前工作相比,基于 PMF 的这种提出的 mbNIR 基于 SDNN 模型具有更高的准确性和更低的计算成本。一些研究小组提出使用复杂的混合类型传感器来提高非侵入性血糖预测的准确性;然而,系统收获的准确性提高与复杂性和成本之间的权衡仍存在疑问(Geng 等人,在 Sci Rep 7:12650,2017)。以前的工作都没有报告过使用 PMF 增强 NIR/NN 的准确性。因此,基于 SDNN 的 PMF/mbNIR 是非侵入性实时血糖监测的极有前途的候选者,具有更低的复杂性和无痛苦性。