Department of Chemical and Biomolecular Engineering, Johns Hopkins University, Baltimore, MD 21218, USA.
Glycobiology. 2009 Nov;19(11):1163-75. doi: 10.1093/glycob/cwp081. Epub 2009 Jun 8.
Effective representation and characterization of biosynthetic pathways of glycosylation can be facilitated by mathematical modeling. This paper describes the expansion of a previously developed detailed model for N-linked glycosylation with the further application of the model to analyze MALDI-TOF mass spectra of human N-glycans in terms of underlying cellular enzyme activities. The glycosylation reaction network is automatically generated by the model, based on the reaction specificities of the glycosylation enzymes. The use of a molecular mass cutoff and a network pruning method typically limits the model size to about 10,000 glycan structures. This allows prediction of the complete glycan profile and its abundances for any set of assumed enzyme concentrations and reaction rate parameters. A synthetic mass spectrum from model-calculated glycan profiles is obtained and enzyme concentrations are adjusted to bring the theoretically calculated mass spectrum into agreement with experiment. The result of this process is a complete characterization of a measured glycan mass spectrum containing hundreds of masses in terms of the activities of 19 enzymes. In addition, a complete annotation of the mass spectrum in terms of glycan structure is produced, including the proportions of isomers within each peak. The method was applied to mass spectrometric data of normal human monocytes and monocytic leukemia (THP1) cells to derive glycosyltransferase activity changes underlying the differences in glycan structure between the normal and diseased cells. Model predictions could lead to a better understanding of the changes associated with disease states, identification of disease-associated biomarkers, and bioengineered glycan modifications.
有效的生物合成途径的表示和描述可以通过数学建模来实现。本文描述了一个已有的详细 N 连接糖基化模型的扩展,进一步将该模型应用于分析人 N 糖链的 MALDI-TOF 质谱,以了解细胞内酶活性的基础。糖基化反应网络是通过模型自动生成的,基于糖基化酶的反应特异性。使用分子量截止值和网络修剪方法通常将模型大小限制在约 10000 种糖结构。这允许预测任何一组假设的酶浓度和反应速率参数的完整聚糖谱及其丰度。从模型计算的聚糖谱中获得合成质谱,并调整酶浓度以使理论计算的质谱与实验相符。该过程的结果是根据 19 种酶的活性对包含数百个质量的测量聚糖谱进行全面描述。此外,还根据聚糖结构对质谱进行了完整注释,包括每个峰内异构体的比例。该方法应用于正常人单核细胞和单核细胞白血病(THP1)细胞的质谱数据,以得出聚糖结构差异背后的糖基转移酶活性变化。模型预测可以帮助更好地理解与疾病状态相关的变化,鉴定与疾病相关的生物标志物,并对聚糖进行生物工程修饰。