Prediction and principle discovery of drug combination based on multimodal friendship features

He-Gang Chen, XIONGHUI ZHOU
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Abstract

Combination therapy, which can improve therapeutic efficacy and reduce side effects, plays an important role in the treatment of multiple complex diseases. Yet, the design principles of molecular combinations remain unclear. In addition, the huge search space of candidate drug combinations and the numerous heterogeneous data has brought us a big challenge. Here, we proposed a Friendship based Method (FSM), which integrates diverse drug-to-drug information to predict drug combinations for specific diseases. By quantifying the friendship-based relationship between drugs, we found that there is a moderate similarity between the drugs of effective drug combinations in a high-dimensional, heterogeneous feature space. Following this discovery, FSM applied a two-step strategy to predict clinically efficacious drug combinations for specific diseases. First, our method employs the friendship features to evaluate whether each drug is combinable. Then, the synergistic potential of combinable drugs was further evaluated. FSM was validated on two types of disease. The results show that FSM achieves substantial performance improvement over other state-of-the-art methods and tends to have low toxicity. These results indicate that our model could potentially offer a generic, powerful strategy to identify efficacious combination therapies in the vast search space.
基于多模态友谊特征的药物组合预测和原理发现
联合疗法可以提高疗效、减少副作用,在多种复杂疾病的治疗中发挥着重要作用。然而,分子组合的设计原理仍不明确。此外,候选药物组合的巨大搜索空间和众多异构数据也给我们带来了巨大挑战。在此,我们提出了一种基于友谊关系的方法(FSM),该方法整合了药物间的各种信息来预测特定疾病的药物组合。通过量化药物之间基于友谊的关系,我们发现在高维异构特征空间中,有效药物组合的药物之间存在适度的相似性。根据这一发现,FSM 采用两步策略来预测特定疾病的临床有效药物组合。首先,我们的方法利用友谊特征来评估每种药物是否可以联合使用。然后,进一步评估可组合药物的协同潜力。FSM 在两种疾病上进行了验证。结果表明,与其他最先进的方法相比,FSM 的性能有了大幅提高,而且毒性较低。这些结果表明,我们的模型有可能提供一种通用、强大的策略,在广阔的搜索空间中识别有效的联合疗法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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