Sun Yuyang, Kosmas Panagiotis
IEEE J Biomed Health Inform. 2025 Feb;29(2):1419-1432. doi: 10.1109/JBHI.2024.3472077. Epub 2025 Feb 10.
Precise and timely forecasting of blood glucose levels is essential for effective diabetes management. While extensive research has been conducted on Type 1 diabetes mellitus, Type 2 diabetes mellitus (T2DM) presents unique challenges due to its heterogeneity, underscoring the need for specialized blood glucose forecasting systems. This study introduces a novel blood glucose forecasting system, applied to a dataset of 100 patients from the ShanghaiT2DM study. Our study uniquely integrates knowledge-driven and data-driven approaches, leveraging expert knowledge to validate and interpret the relationships among diabetes-related variables and deploying the data-driven approach to provide accurate forecast blood glucose levels. The Bayesian network approach facilitates the analysis of dependencies among various diabetes-related variables, thus enabling the inference of continuous glucose monitoring (CGM) trajectories in similar individuals with T2DM. By incorporating past CGM data including inference CGM trajectories, dietary records, and individual-specific information, the Bayesian structural time series (BSTS) model effectively forecasts glucose levels across time intervals ranging from 15 to 60 minutes. Forecast results show a mean absolute error of mg/dL, a root mean square error of mg/dL, and a mean absolute percentage error of , for a 15-minute prediction horizon. This study makes the first application of the ShanghaiT2DM dataset for glucose level forecasting, considering the influences of diabetes-related variables. Its findings establish a foundational framework for developing personalized diabetes management strategies, potentially enhancing diabetes care through more accurate and timely interventions.
精确且及时地预测血糖水平对于有效的糖尿病管理至关重要。虽然针对1型糖尿病已开展了广泛研究,但2型糖尿病(T2DM)因其异质性带来了独特挑战,这凸显了对专门的血糖预测系统的需求。本研究引入了一种新颖的血糖预测系统,并将其应用于来自上海T2DM研究的100名患者的数据集。我们的研究独特地整合了知识驱动和数据驱动方法,利用专家知识来验证和解释糖尿病相关变量之间的关系,并采用数据驱动方法来提供准确的血糖水平预测。贝叶斯网络方法有助于分析各种糖尿病相关变量之间的依赖性,从而能够推断出患有T2DM的相似个体的连续血糖监测(CGM)轨迹。通过纳入过去的CGM数据,包括推断的CGM轨迹、饮食记录和个体特定信息,贝叶斯结构时间序列(BSTS)模型有效地预测了15至60分钟时间间隔内的血糖水平。对于15分钟的预测期,预测结果显示平均绝对误差为mg/dL,均方根误差为mg/dL,平均绝对百分比误差为 。本研究首次将上海T2DM数据集应用于血糖水平预测,并考虑了糖尿病相关变量的影响。其研究结果为制定个性化糖尿病管理策略建立了一个基础框架,有望通过更准确和及时的干预措施来改善糖尿病护理。