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Explore protein-protein interaction network involved in glucosinolate biosynthesis

机译:探索参与芥子油苷生物合成的蛋白质-蛋白质相互作用网络

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摘要

Protein is the primary element of organism and takes part in almost all the biological processes such as metabolism and neurological regulation. Generally, proteins are interacting with each other while they exert biological role in vivo. The exploration upon protein-protein interactions (PPIs) of the specific biological process could provide valuable information to the study of the relevant field. In this paper, we focus on the collection of proteins participated in glucosinolate biosynthesis, and build 4 decision tree models to predict PPIs involved in glucosinolate biosynthesis. Information of domain-domain interactions (DDIs) is introduced in constructing feature vectors, and the interactive or non-interactive relationship between two proteins is represented by a pair of symmetrical feature vectors. 4 domain-based decision tree models are constructed and trained by the samples with 1:1, 1:2, 1:3, 1:4 positive-negative ratio respectively. 5-fold cross-validation and a standalone external test are used in order to trace the best performed model. The proposed method is effective which is demonstrated by the higher specificity, sensitivity and high attribute usage while training decision trees. We use the intersection of the best two prediction results to validate and explore PPIs based on the proteins participated in glucosinolate biosynthesis, and finally a comprehensive PPI network is drawn according to the prediction result.
机译:蛋白质是有机体的主要元素,几乎参与所有生物过程,例如代谢和神经调节。通常,蛋白质在体内发挥生物学作用时会相互相互作用。对特定生物过程的蛋白质相互作用的探索可以为相关领域的研究提供有价值的信息。在本文中,我们集中于参与芥子油苷生物合成的蛋白质的收集,并建立4个决策树模型来预测参与芥子油苷生物合成的PPI。在构建特征向量时引入了域-域相互作用(DDI)的信息,两个蛋白质之间的相互作用或非相互作用关系由一对对称特征向量表示。分别以1:1、1:2、1:3、1:4正负比的样本构建和训练4个基于域的决策树模型。为了追踪表现最佳的模型,使用了5倍交叉验证和独立外部测试。该方法是有效的,在训练决策树时具有较高的特异性,敏感性和较高的属性使用率。我们利用最好的两个预测结果的交集来验证和探索基于硫代芥子油苷生物合成的蛋白质的PPI,最后根据预测结果绘制一个全面的PPI网络。

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