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A Gated Recurrent Unit Model for Drug Repositioning by Combining Comprehensive Similarity Measures and Gaussian Interaction Profile Kernel

机译:综合相似度测度和高斯相互作用谱核相结合的门控递归药物重定位模型

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Drug repositioning can find new uses for existing drugs and accelerate the processing of new drugs research and developments. It is noteworthy that the number of successful drug repositioning stories is increasing rapidly. Various computational methods have been presented to predict novel drug-disease associations for drug repositioning based on similarity measures among drugs and diseases or heterogeneous networks. However, there are some known associations between drugs and diseases that previous studies not utilized. In this work, we proposed a GRU model to predict potential drug-disease interactions by using comprehensive similarity. 10-fold cross-validation and common evaluation indicators are used to evaluate the performance of our model. Our model outperformed existing methods. The experimental results proved our model is a useful tool for drug repositioning and biochemical medicine research.
机译:药物重新定位可以找到现有药物的新用途,并加快对新药研发的处理。值得注意的是,成功的毒品重新定位故事的数量正在迅速增加。已经提出了各种计算方法,以基于药物和疾病之间的相似性度量或异构网络来预测用于药物重新定位的新型药物-疾病关联。但是,以前的研究并未利用药物和疾病之间的某些已知关联。在这项工作中,我们提出了一个GRU模型,通过使用全面的相似性来预测潜在的药物-疾病相互作用。 10倍交叉验证和通用评估指标用于评估我们模型的性能。我们的模型优于现有方法。实验结果证明我们的模型是药物重新定位和生化医学研究的有用工具。

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