School of Computer Science (National Pilot Software Engineering School), Beijing University of Posts and Telecommunications, Beijing 100876, China.
Key Laboratory of Trustworthy Distributed Computing and Service, Ministry of Education, Beijing 100876, China.
Sensors (Basel). 2022 Nov 3;22(21):8454. doi: 10.3390/s22218454.
Diabetes is an increasingly common disease that poses an immense challenge to public health. Hyperglycemia is also a common complication in clinical patients in the intensive care unit, increasing the rate of infection and mortality. The accurate and real-time prediction of blood glucose concentrations after each short-acting insulin injection has great clinical significance and is the basis of all intelligent blood glucose control systems. Most previous prediction methods require long-term continuous blood glucose records from specific patients to train the prediction models, resulting in these methods not being used in clinical practice. In this study, we construct 13 deep neural networks with different architectures to atomically predict blood glucose concentrations after arbitrary independent insulin injections without requiring continuous historical records of any patient. Using our proposed models, the best root mean square error of the prediction results reaches 15.82 mg/dL, and 99.5% of the predictions are clinically acceptable, which is more accurate than previously proposed blood glucose prediction methods. Through the re-validation of the models, we demonstrate the clinical practicability and universal accuracy of our proposed prediction method.
糖尿病是一种日益常见的疾病,对公共健康构成巨大挑战。高血糖也是重症监护病房临床患者的常见并发症,增加了感染和死亡率。准确、实时地预测每次速效胰岛素注射后的血糖浓度具有重要的临床意义,是所有智能血糖控制系统的基础。大多数先前的预测方法需要特定患者的长期连续血糖记录来训练预测模型,导致这些方法无法在临床实践中使用。在这项研究中,我们构建了 13 种具有不同架构的深度神经网络,无需任何患者的连续历史记录,即可对任意独立胰岛素注射后的血糖浓度进行原子预测。使用我们提出的模型,预测结果的均方根误差最好达到 15.82mg/dL,99.5%的预测结果是临床可接受的,比以前提出的血糖预测方法更准确。通过对模型的重新验证,我们证明了我们提出的预测方法的临床实用性和普遍准确性。