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Predicting Comprehensive Drug-Drug Interactions for New Drugs via Triple Matrix Factorization

机译:通过三矩阵分解预测新药物的综合药物 - 药物相互作用

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There is an urgent need to discover or deduce drug-drug interactions (DDIs), which would cause serious adverse drug reactions. However, preclinical detection of DDIs bears a high cost. Machine learning-based computational approaches can be the assistance of experimental approaches. Utilizing pre-market drug properties (e.g. side effects), they are able to predict DDIs on a large scale before drugs enter the market. However, none of them can predict comprehensive DDIs, including enhancive and degressive DDIs, though it is important to know whether the interaction increases or decreases the behavior of the interacting drugs before making a co-prescription. Furthermore, existing computational approaches focus on predicting DDIs for new drugs that have none of existing interactions. However, none of them can predict DDIs among those new drugs. To address these issues, we first build a comprehensive dataset of DDIs, which contains both enhancive and degressive DDIs, and the side effects of the involving drugs in DDIs. Then we propose an algorithm of Triple Matrix Factorization and design a Unified Framework of DDI prediction based on it (TMFUF). The proposed approach is able to predict not only conventional binary DDIs but also comprehensive DDIs. Moreover, it provides a unified solution for the scenario that predicting potential DDIs for newly given drugs (having no known interaction at all), as well as the scenario that predicting potential DDIs among these new drugs. Finally, the experiments demonstrate that TMFUF is significantly superior to three state-of-the-art approaches in the conventional binary DDI prediction and also shows an acceptable performance in the comprehensive DDI prediction.
机译:迫切需要发现或推导药物 - 药物相互作用(DDIS),这会导致严重的药物反应。然而,DDI的临床前检测高成本。基于机器学习的计算方法可以是实验方法的帮助。利用预售前药物性质(例如副作用),在药物进入市场之前,它们能够在大规模上预测DDIS。然而,它们都无法预测全面的DDI,包括增强性和消失的DDI,尽管在制造共同处方之前,是否知道相互作用是否增加或降低相互作用药物的行为。此外,现有的计算方法专注于预测具有不存在现有交互的新药物的DDI。然而,他们都不能预测那些新药中的DDI。为了解决这些问题,我们首先建立一个综合DDI的数据集,其中包含增强性和消失的DDIS,以及涉及DDIS中的药物的副作用。然后,我们提出了一种基于IT(TMFUF)的三矩阵分解和设计DDI预测的统一框架。所提出的方法不仅可以预测传统的二进制DDI,而且是全面的DDI。此外,它提供了一种统一的解决方案,用于预测新给出的药物的潜在DDIS(根本没有已知的相互作用),以及预测这些新药中潜在DDIS的情况。最后,实验表明,TMFUF在传统二进制DDI预测中显着优于三种最先进的方法,并且还在综合DDI预测中显示出可接受的性能。

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