Department of Biology, Faculty of Science, University of Zagreb, 10000 Zagreb, Croatia.
Genos Glycoscience Research Laboratory, 10000 Zagreb, Croatia.
Int J Mol Sci. 2024 Sep 16;25(18):9988. doi: 10.3390/ijms25189988.
In immunoglobulin G (IgG), -glycosylation plays a pivotal role in structure and function. It is often altered in different diseases, suggesting that it could be a promising health biomarker. Studies indicate that IgG glycosylation not only associates with various diseases but also has predictive capabilities. Additionally, changes in IgG glycosylation correlate with physiological and biochemical traits known to reflect overall health state. This study aimed to investigate the power of IgG glycans to predict physiological and biochemical parameters. We developed two models using IgG -glycan data as an input: a regression model using elastic net and a machine learning model using deep learning. Data were obtained from the Korčula and Vis cohorts. The Korčula cohort data were used to train both models, while the Vis cohort was used exclusively for validation. Our results demonstrated that IgG glycome composition effectively predicts several biochemical and physiological parameters, especially those related to lipid and glucose metabolism and cardiovascular events. Both models performed similarly on the Korčula cohort; however, the deep learning model showed a higher potential for generalization when validated on the Vis cohort. This study reinforces the idea that IgG glycosylation reflects individuals' health state and brings us one step closer to implementing glycan-based diagnostics in personalized medicine. Additionally, it shows that the predictive power of IgG glycans can be used for imputing missing covariate data in deep learning frameworks.
在免疫球蛋白 G(IgG)中,-糖基化在结构和功能中起着关键作用。它在不同的疾病中经常发生改变,这表明它可能是一种有前途的健康生物标志物。研究表明,IgG 糖基化不仅与各种疾病相关,而且具有预测能力。此外,IgG 糖基化的变化与已知反映整体健康状况的生理和生化特征相关。本研究旨在探讨 IgG 聚糖预测生理和生化参数的能力。我们使用 IgG-聚糖数据作为输入开发了两种模型:使用弹性网络的回归模型和使用深度学习的机器学习模型。数据来自科尔丘拉和维斯队列。科尔丘拉队列的数据用于训练这两种模型,而维斯队列仅用于验证。我们的结果表明,IgG 聚糖组成可以有效地预测多种生化和生理参数,特别是与脂质和葡萄糖代谢以及心血管事件相关的参数。两种模型在科尔丘拉队列上的表现相似;然而,深度学习模型在维斯队列上验证时显示出更高的泛化潜力。这项研究进一步证实了 IgG 糖基化反映个体健康状况的观点,并使我们在实施基于聚糖的个性化医疗诊断方面又迈进了一步。此外,它表明 IgG 聚糖的预测能力可用于在深度学习框架中插补缺失的协变量数据。