Human Nutrition Unit, Faculty of Medicine and Health Sciences, Institut d'Investigació Sanitària Pere Virgili, University Hospital Sant Joan de Reus, Rovira i Virgili University, Reus, Spain.
CIBER Fisiopatología de la Obesidad y Nutrición (CIBEROBN), Instituto de Salud Carlos III, Madrid, Spain.
Sci Rep. 2019 Sep 25;9(1):13895. doi: 10.1038/s41598-019-50260-7.
Different plasma metabolites have been related to insulin resistance (IR). However, there is a lack of metabolite models predicting IR with external validation. The aim of this study is to identify a multi-metabolite model associated to the homeostatic model assessment (HOMA)-IR values. We performed a cross-sectional metabolomics analysis of samples collected from overweight and obese subjects from two independent studies. The training step was performed in 236 subjects from the SATIN study and validated in 102 subjects from the GLYNDIET study. Plasma metabolomics profile was analyzed using three different approaches: GC/quadrupole-TOF, LC/quadrupole-TOF, and nuclear magnetic resonance (NMR). Associations between metabolites and HOMA-IR were assessed using elastic net regression analysis with a leave-one-out cross validation (CV) and 100 CV runs. HOMA-IR was analyzed both as linear and categorical (median or lower versus higher than the median). Receiver operating characteristic curves were constructed based on metabolites' weighted models. A set of 30 metabolites discriminating extremes of HOMA-IR were consistently selected. These metabolites comprised some amino acids, lipid species and different organic acids. The area under the curve (AUC) for the discrimination between HOMA-IR extreme categories was 0.82 (95% CI: 0.74-0.90), based on the multi-metabolite model weighted with the regression coefficients of metabolites in the validation dataset. We identified a set of metabolites discriminating between extremes of HOMA-IR and able to predict HOMA-IR with high accuracy.
不同的血浆代谢物与胰岛素抵抗(IR)有关。然而,缺乏具有外部验证的预测 IR 的代谢物模型。本研究旨在确定与稳态模型评估(HOMA)-IR 值相关的多代谢物模型。我们对来自两项独立研究的超重和肥胖受试者的样本进行了横断面代谢组学分析。在 SATIN 研究的 236 名受试者中进行了训练步骤,并在 GLYNDIET 研究的 102 名受试者中进行了验证。使用三种不同的方法分析了血浆代谢组学图谱:GC/四极杆-TOF、LC/四极杆-TOF 和核磁共振(NMR)。使用弹性网络回归分析,通过留一法交叉验证(CV)和 100 次 CV 运行,评估代谢物与 HOMA-IR 之间的关联。对 HOMA-IR 进行线性和分类(中位数或更低与中位数以上)分析。基于代谢物加权模型构建了接受者操作特征曲线。一致选择了一组 30 种区分 HOMA-IR 极端值的代谢物。这些代谢物包括一些氨基酸、脂质种类和不同的有机酸。基于在验证数据集中使用代谢物回归系数加权的多代谢物模型,区分 HOMA-IR 极端类别曲线下面积(AUC)为 0.82(95%CI:0.74-0.90)。我们确定了一组可区分 HOMA-IR 极端值并能够以高精度预测 HOMA-IR 的代谢物。