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首页> 外文期刊>Journal of Translational Medicine >Prediction of drug-target interactions from multi-molecular network based on LINE?network representation method
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Prediction of drug-target interactions from multi-molecular network based on LINE?network representation method

机译:基于线路的多分子网络预测药物 - 目标相互作用?网络表示方法

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摘要

The prediction of potential drug-target interactions (DTIs) not only provides a better comprehension of biological processes but also is critical for identifying new drugs. However, due to the disadvantages of expensive and high time-consuming traditional experiments, only a small section of interactions between drugs and targets in the database were verified experimentally. Therefore, it is meaningful and important to develop new computational methods with good performance for DTIs prediction. At present, many existing computational methods only utilize the single type of interactions between drugs and proteins without paying attention to the associations and influences with other types of molecules. In this work, we developed a novel network embedding-based heterogeneous information integration model to predict potential drug-target interactions. Firstly, a heterogeneous multi-molecuar?information network is built by combining the known associations among protein, drug, lncRNA, disease, and miRNA. Secondly, the Large-scale Information Network Embedding (LINE) model is used to learn behavior information (associations with other nodes) of drugs and proteins in the network. Hence, the known drug-protein interaction pairs can be represented as a combination of attribute information (e.g. protein sequences information and drug molecular fingerprints) and behavior information of themselves. Thirdly, the Random Forest classifier is used for training and prediction. In the results, under the five-fold cross validation, our method obtained 85.83% prediction accuracy with 80.47% sensitivity at the AUC of 92.33%. Moreover, in the case studies of three common drugs, the top 10 candidate targets have 8 (Caffeine), 7 (Clozapine) and 6 (Pioglitazone) are respectively verified to be associated with corresponding drugs. In short, these results indicate that our method can be a powerful tool for predicting potential drug-target interactions and finding unknown targets for certain drugs or unknown drugs for certain targets.
机译:预测潜在的药物 - 目标相互作用(DTI)不仅能够更好地理解生物过程,而且对于鉴定新药也是至关重要的。然而,由于昂贵和高耗时的传统实验的缺点,在实验上仅验证了数据库中药物和靶标之间的小部分。因此,开发具有良好性能的DTI预测的新计算方法是有意义的并且很重要。目前,许多现有的计算方法仅利用药物和蛋白质之间的单一类型的相互作用,而不注意关联和对其他类型分子的影响。在这项工作中,我们开发了一种基于新的网络嵌入的异构信息集成模型,以预测潜在的药物目标相互作用。首先,通过将已知的蛋白质,药物,LNCRNA,疾病和miRNA之间的已知关联组合来构建异质的多元素?信息网络。其次,大规模信息网络嵌入(线)模型用于学习网络中药物和蛋白质的行为信息(与其他节点的关联)。因此,已知的药物 - 蛋​​白质相互作用对可以表示为属性信息(例如蛋白质序列信息和药物分子指纹)的组合和自己的行为信息。第三,随机林分类器用于培训和预测。在结果,在五倍的交叉验证下,我们的方法在92.33%的AUC敏感度下获得了85.83%的预测精度。此外,在对三种常见药物的情况下,前10个候选靶标具有8(咖啡因),7(氯氮平)和6(吡格列酮)被验证与相应的药物相关。简而言之,这些结果表明,我们的方法可以是预测潜在药物 - 目标相互作用的强大工具,并为某些目标寻找某些药物或未知药物的未知目标。

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