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System pharmacology: Application of network theory in predicting potential adverse drug reaction based on gene expression data

机译:系统药理学:网络理论在基于基因表达数据预测潜在药物不良反应中的应用

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In drug development process, adverse drug reaction (ADR) is one of the biggest challenges to evaluate the drug safety for passing to the market. Genomic expression data following in vitro drug treatments and thus have become widely used in ADR identification and prediction. In this research, we develop the prediction method by using system pharmacology-based study. We performed the proteomic, small molecular compounds - protein interaction and ADR data based on Connectivity Map database. A major protein-drug-side effect (PDS) network and a protein-drug (PD) network were obtained and analyzed by followed network centrality study, which allows for selection of side effects that are defined as central nodes. From the result, the top ranking of novel side effects was identified. In a case study, we established prediction models for 2,3, 7, 8-tetra-chlorodibenzo-p-dioxin (TCDD) in breast cancer treatment adverse events. In conclusion, the network-based approach provided the relationship between protein targets network and side effects based on the gene expression profiles and can predict the potential side effects for new a combinatory drug in the drug development process.
机译:在药品开发过程中,药品不良反应(ADR)是评估药品投放市场的最大挑战之一。体外药物治疗后的基因组表达数据,因此已广泛用于ADR的鉴定和预测。在这项研究中,我们通过使用基于系统药理学的研究来开发预测方法。我们基于连接图数据库进行了蛋白质组学,小分子化合物-蛋白质相互作用和ADR数据。获得了主要的蛋白质-药物副作用(PDS)网络和蛋白质-药物(PD)网络,并通过随后的网络中心性研究对其进行了分析,从而可以选择定义为中心节点的副作用。根据结果​​,确定了新型副作用的最高排名。在一个案例研究中,我们建立了2,3,7,8-四氯二苯并-对-二恶英(TCDD)在乳腺癌治疗不良事件中的预测模型。总之,基于网络的方法基于基因表达谱提供了蛋白质靶标网络与副作用之间的关系,并可以预测药物开发过程中新型组合药物的潜在副作用。

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