Matabuena Marcos, Sartini Joe
Universidad de Santiago de Compostela and Department of Biostatistics, Harvard University, Boston, MA 02115, USA.
Department of Biostatistics, Johns Hopkins University, Francisco Gude, Universidad de Santiago de Compostela.
ArXiv. 2024 May 23:arXiv:2405.14690v1.
Glucose meal response information collected via Continuous Glucose Monitoring (CGM) is relevant to the assessment of individual metabolic status and the support of personalized diet prescriptions. However, the complexity of the data produced by CGM monitors pushes the limits of existing analytic methods. CGM data often exhibits substantial within-person variability and has a natural multilevel structure. This research is motivated by the analysis of CGM data from individuals without diabetes in the AEGIS study. The dataset includes detailed information on meal timing and nutrition for each individual over different days. The primary focus of this study is to examine CGM glucose responses following patients' meals and explore the time-dependent associations with dietary and patient characteristics. Motivated by this problem, we propose a new analytical framework based on multilevel functional models, including a new functional mixed R-square coefficient. The use of these models illustrates 3 key points: (i) The importance of analyzing glucose responses across the entire functional domain when making diet recommendations; (ii) The differential metabolic responses between normoglycemic and prediabetic patients, particularly with regards to lipid intake; (iii) The importance of including random, person-level effects when modelling this scientific problem.
通过连续血糖监测(CGM)收集的葡萄糖餐反应信息与个体代谢状态评估及个性化饮食处方的制定相关。然而,CGM监测仪产生的数据的复杂性超出了现有分析方法的极限。CGM数据通常表现出个体内部的显著变异性,并且具有天然的多层次结构。本研究的动机来自于对AEGIS研究中无糖尿病个体的CGM数据的分析。该数据集包含了每个个体在不同日期的用餐时间和营养的详细信息。本研究的主要重点是检查患者用餐后的CGM血糖反应,并探索与饮食和患者特征的时间依赖性关联。受此问题的启发,我们提出了一个基于多层次功能模型的新分析框架,包括一个新的功能混合R平方系数。这些模型的应用说明了三个关键点:(i)在制定饮食建议时分析整个功能域内的血糖反应的重要性;(ii)血糖正常和糖尿病前期患者之间的代谢反应差异,特别是在脂质摄入方面;(iii)在对这个科学问题进行建模时纳入随机的个体水平效应的重要性。