Hong Bingjie, Khushnood Abbas, Niu Ling, Syed Jafar Abbas
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引用次数: 0
Abstract
Accurate identification of drug-target interactions can help researchers shorten the time of new drug development and reduce the blindness and cost of new drug research. For this purpose, the link prediction technology is used in this paper to predict the accuracy of 24 kinds of similarity indexes in the Matador database. The accuracy of link prediction based on structural similarity depends on whether the definition of structural similarity can grasp the structural characteristics of the target network well. And it does not need to know the information of nodes and edges of the network in advance. The results show that compared with other algorithms, the accuracy of Local Random Walk (LRW) model is the highest when the step size is 5, and the algorithm with the best area under the ROC curve ( AUC ) stability is Hub Promoted Index (HPI).
准确识别药物-靶标相互作用可以帮助研究人员缩短新药开发时间,降低新药研究的盲目性和成本。为此,本文采用链接预测技术对Matador数据库中24种相似度指标的准确性进行预测。基于结构相似度的链路预测的准确性取决于结构相似度的定义能否很好地把握目标网络的结构特征。并且不需要事先知道网络的节点和边的信息。结果表明,与其他算法相比,局部随机行走(LRW)模型在步长为5时精度最高,而ROC曲线下面积(AUC)稳定性最好的算法是Hub Promoted Index (HPI)算法。