Department of Information Engineering, University of Padova, Padua, Italy.
Am J Physiol Endocrinol Metab. 2010 May;298(5):E950-60. doi: 10.1152/ajpendo.00656.2009. Epub 2010 Jan 26.
Population approaches, traditionally employed in pharmacokinetic-pharmacodynamic studies, have shown value also in the context of glucose-insulin metabolism models by providing more accurate individual parameters estimates and a compelling statistical framework for the analysis of between-subject variability (BSV). In this work, the advantages of population techniques are further explored by proposing integration of covariates in the intravenous glucose tolerance test (IVGTT) glucose minimal model analysis. A previously published dataset of 204 healthy subjects, who underwent insulin-modified IVGTTs, was analyzed in NONMEM, and relevant demographic information about each subject was employed to explain part of the BSV observed in parameter values. Demographic data included height, weight, sex, and age, but also basal glycemia and insulinemia, and information about amount and distribution of body fat. On the basis of nonlinear mixed-effects modeling, age, visceral abdominal fat, and basal insulinemia were significant predictors for SI (insulin sensitivity), whereas only age and basal insulinemia were significant for P2 (insulin action). The volume of distribution correlated with sex, age, percentage of total body fat, and basal glycemia, whereas no significant covariate was detected to explain variability in SG (glucose effectiveness). The introduction of covariates resulted in a significant shrinking of the unexplained BSV, especially for SI and P2 and considerably improved the model fit. These results offer a starting point for speculation about the physiological meaning of the relationships detected and pave the way for the design of less invasive and less expensive protocols for epidemiological studies of glucose-insulin metabolism.
人群方法,传统上用于药代动力学 - 药效学研究,在葡萄糖 - 胰岛素代谢模型中也显示出价值,通过提供更准确的个体参数估计和引人注目的统计框架来分析个体间变异性(BSV)。在这项工作中,通过提出将协变量整合到静脉内葡萄糖耐量试验(IVGTT)葡萄糖最小模型分析中,进一步探讨了人群技术的优势。对 204 名接受胰岛素改良 IVGTT 的健康受试者的先前发表的数据集进行了 NONMEM 分析,并使用每个受试者的相关人口统计学信息来解释观察到的参数值中的部分 BSV。人口统计学数据包括身高、体重、性别和年龄,但也包括基础血糖和胰岛素水平,以及关于体脂肪量和分布的信息。基于非线性混合效应模型,年龄、内脏腹部脂肪和基础胰岛素水平是 SI(胰岛素敏感性)的显著预测因子,而只有年龄和基础胰岛素水平是 P2(胰岛素作用)的显著预测因子。分布体积与性别、年龄、体脂肪百分比和基础血糖相关,而没有发现显著的协变量来解释 SG(葡萄糖效应)的变异性。引入协变量后,未解释的 BSV 显著缩小,特别是对于 SI 和 P2,并且大大改善了模型拟合。这些结果为探讨所检测到的关系的生理意义提供了一个起点,并为设计用于葡萄糖 - 胰岛素代谢的流行病学研究的侵入性更小、成本更低的方案铺平了道路。