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Prediction of Drug-Target Interactions for Drug Repositioning Only Based on Genomic Expression Similarity

机译:仅基于基因组表达相似性预测用于药物重新定位的药物-靶标相互作用

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摘要

Small drug molecules usually bind to multiple protein targets or even unintended off-targets. Such drug promiscuity has often led to unwanted or unexplained drug reactions, resulting in side effects or drug repositioning opportunities. So it is always an important issue in pharmacology to identify potential drug-target interactions (DTI). However, DTI discovery by experiment remains a challenging task, due to high expense of time and resources. Many computational methods are therefore developed to predict DTI with high throughput biological and clinical data. Here, we initiatively demonstrate that the on-target and off-target effects could be characterized by drug-induced in vitro genomic expression changes, e.g. the data in Connectivity Map (CMap). Thus, unknown ligands of a certain target can be found from the compounds showing high gene-expression similarity to the known ligands. Then to clarify the detailed practice of CMap based DTI prediction, we objectively evaluate how well each target is characterized by CMap. The results suggest that (1) some targets are better characterized than others, so the prediction models specific to these well characterized targets would be more accurate and reliable; (2) in some cases, a family of ligands for the same target tend to interact with common off-targets, which may help increase the efficiency of DTI discovery and explain the mechanisms of complicated drug actions. In the present study, CMap expression similarity is proposed as a novel indicator of drug-target interactions. The detailed strategies of improving data quality by decreasing the batch effect and building prediction models are also effectively established. We believe the success in CMap can be further translated into other public and commercial data of genomic expression, thus increasing research productivity towards valid drug repositioning and minimal side effects.
机译:小药物分子通常会结合多个蛋白质靶标,甚至会意外地脱离靶标。这种药物滥交常常导致不需要的或无法解释的药物反应,从而导致副作用或药物重新定位的机会。因此,确定潜在的药物-靶标相互作用(DTI)在药理学中始终是重要的问题。但是,由于时间和资源的大量浪费,通过实验发现DTI仍然是一项艰巨的任务。因此,开发了许多计算方法来预测具有高通量生物学和临床数据的DTI。在这里,我们主动证明了靶向和脱靶效应可以通过药物诱导的体外基因组表达变化来表征,例如连接图(CMap)中的数据。因此,可以从与已知配体表现出高基因表达相似性的化合物中找到特定靶标的未知配体。然后,为了阐明基于CMap的DTI预测的详细实践,我们客观地评估了CMap对每个目标的表征程度。结果表明:(1)一些目标比其他目标具有更好的特征,因此针对这些特征明确的目标的预测模型将更加准确和可靠; (2)在某些情况下,同一靶标的配体家族往往会与常见的脱靶标相互作用,这可能有助于提高DTI发现的效率并解释复杂的药物作用机理。在本研究中,CMap表达相似性被提出作为药物-靶标相互作用的新指标。还有效地建立了通过减少批处理效果和建立预测模型来提高数据质量的详细策略。我们相信,CMap的成功可以进一步转化为其他基因组表达的公共和商业数据,从而提高有效药物重新定位和最小副作用的研究效率。

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