整合机制信息预测药物-药物相互作用及相关决策支持

A. Noor
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引用次数: 1

摘要

虽然计算方法在预测药物-药物相互作用(ddi)方面提供了巨大的潜力,但这种预测在支持临床决策方面的效用有限;特别是,从关于潜在发展中国家的大量现有资料中推导出相互作用机制特别困难。在这里,我们提出了一种反向链推理算法,该算法在集成多种机制信息(从代谢酶到遗传变异)的知识图上运行。给定两种感兴趣的药物,该算法应用复杂的规则来识别支持它们潜在相互作用的证据,这反过来又表明它们的相互作用机制。对两种广泛使用的药物(抗生素左氧氟沙星和化疗药物伊立替康)疑似相互作用的规则集进行了评估,成功地确定了支持并可能解释其相互作用的药理学和生物医学特征。该算法是有效评估已识别ddi临床相关性的第一步,也是识别可在实验环境中验证的相互作用药物对的第一步,以支持临床决策并最终提高用药安全性。
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Integrating Mechanistic Information to Predict Drug-Drug Interactions and Associated Relevance for Decision Support
While computational methods offer great potential in predicting drug-drug interactions (DDIs), such predictions as of yet have limited utility in supporting clinical decision-making; in particular, there exists especial difficulty in deriving interaction mechanisms from the vast abundance of available information on potential DDIs. Here, we present a backward-chaining inference algorithm that operates on a knowledge graph integrating multiple types of mechanistic information, from metabolizing enzymes to genetic variants. Given two drugs of interest, this algorithm applies complex rules to identify evidence supporting their potential interaction, which in turn suggests their mechanism of interaction. An evaluation of the ruleset using two widely-used drugs with a suspected interaction, the antibiotic levofloxacin and the chemotherapeutic irinotecan, successfully identified pharmacological and biomedical features that support and may explain their interaction. This algorithm represents a first step toward effectively assessing the clinical relevance of identified DDIs, and of identifying pairs of interacting drugs that may be validated in the experimental setting to support clinical decision-making and ultimately improve medication safety.
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