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ARWAR: A network approach for predicting Adverse Drug Reactions

机译:ARWAR:一种预测药物不良反应的网络方法

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Predicting novel drug side-effects, or Adverse Drug Reactions (ADRs), plays an important role in the drug discovery process. Existing methods consider mainly the chemical and biological characteristics of each drug individually, thereby neglecting information hidden in the relationships among drugs. Complementary to the existing individual methods, in this paper, we propose a novel network approach for ADR prediction that is called Augmented Random-WAlk with Restarts (ARWAR). ARWAR, first, applies an existing method to build a network of highly related drugs. Then, it augments the original drug network by adding new nodes and new edges to the network and finally, it applies Random Walks with Restarts to predict novel ADRs. Empirical results show that the ARWAR method presented here outperforms the existing network approach by 20% with respect to average Fmeasure. Furthermore, ARWAR is capable of generating novel hypotheses about drugs with respect to novel and biologically meaningful ADR. (C) 2015 Elsevier Ltd. All rights reserved.
机译:预测新药的副作用或药物不良反应(ADR)在药物发现过程中起着重要作用。现有方法主要考虑每种药物的化学和生物学特性,从而忽略了隐藏在药物之间关系中的信息。作为对现有单个方法的补充,本文提出了一种用于ADR预测的新颖网络方法,称为带有重启的增强随机加权随机数(ARWAR)。首先,ARWAR采用现有方法来建立高度相关的药物网络。然后,它通过向网络中添加新节点和新边缘来增强原始药物网络,最后,将“随机游走”与“重新启动”应用于预测新的ADR。实证结果表明,相对于平均Fmeasure,本文提出的ARWAR方法比现有网络方法要好20%。此外,ARWAR能够针对新颖且具有生物学意义的ADR产生有关药物的新颖假设。 (C)2015 Elsevier Ltd.保留所有权利。

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