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A quantitative structure–activity relationship (QSAR) study on glycan array data to determine the specificities of glycan-binding proteins

机译:对聚糖阵列数据进行定量构效关系(QSAR)研究以确定聚糖结合蛋白的特异性

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摘要

Advances in glycan array technology have provided opportunities to automatically and systematically characterize the binding specificities of glycan-binding proteins. However, there is still a lack of robust methods for such analyses. In this study, we developed a novel quantitative structure–activity relationship (QSAR) method to analyze glycan array data. We first decomposed glycan chains into mono-, di-, tri- or tetrasaccharide subtrees. The bond information was incorporated into subtrees to help distinguish glycan chain structures. Then, we performed partial least-squares (PLS) regression on glycan array data using the subtrees as features. The application of QSAR to the glycan array data of different glycan-binding proteins demonstrated that PLS regression using subtree features can obtain higher R2 values and a higher percentage of variance explained in glycan array intensities. Based on the regression coefficients of PLS, we were able to effectively identify subtrees that indicate the binding specificities of a glycan-binding protein. Our approach will facilitate the glycan-binding specificity analysis using the glycan array. A user-friendly web tool of the QSAR method is available at .
机译:聚糖阵列技术的进步为自动和系统地表征聚糖结合蛋白的结合特异性提供了机会。但是,仍然缺乏用于此类分析的可靠方法。在这项研究中,我们开发了一种新颖的定量构效关系(QSAR)方法来分析聚糖阵列数据。我们首先将聚糖链分解为单糖,二糖,三糖或四糖亚树。键信息被合并到子树中以帮助区分聚糖链结构。然后,我们以子树为特征对聚糖阵列数据进行了偏最小二乘(PLS)回归。将QSAR应用于不同糖结合蛋白的糖阵列数据表明,利用亚树特征进行PLS回归可以获得较高的R 2 值和较高的方差百分比(以糖阵列强度解释)。基于PLS的回归系数,我们能够有效地鉴定出表明聚糖结合蛋白结合特异性的子树。我们的方法将有助于使用聚糖阵列进行聚糖结合特异性分析。 QSAR方法的用户友好型Web工具可在上找到。

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