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Drug repositioning using drug-disease vectors based on an integrated network

机译:使用基于集成网络的疾病载体进行药物重新定位

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Diverse interactions occur between biomolecules, such as activation, inhibition, expression, or repression. However, previous network-based studies of drug repositioning have employed interaction on the binary protein-protein interaction (PPI) network without considering the characteristics of the interactions. Recently, some studies of drug repositioning using gene expression data found that associations between drug and disease genes are useful information for identifying novel drugs to treat diseases. However, the gene expression profiles for drugs and diseases are not always available. Although gene expression profiles of drugs and diseases are available, existing methods cannot use the drugs or diseases, when differentially expressed genes in the profiles are not included in their network. We developed a novel method for identifying candidate indications of existing drugs considering types of interactions between biomolecules based on known drug-disease associations. To obtain associations between drug and disease genes, we constructed a directed network using protein interaction and gene regulation data obtained from various public databases providing diverse biological pathways. The network includes three types of edges depending on relationships between biomolecules. To quantify the association between a target gene and a disease gene, we explored the shortest paths from the target gene to the disease gene and calculated the types and weights of the shortest paths. For each drug-disease pair, we built a vector consisting of values for each disease gene influenced by the drug. Using the vectors and known drug-disease associations, we constructed classifiers to identify novel drugs for each disease. We propose a method for exploring candidate drugs of diseases using associations between drugs and disease genes derived from a directed gene network instead of gene regulation data obtained from gene expression profiles. Compared to existing methods that require information on gene relationships and gene expression data, our method can be applied to a greater number of drugs and diseases. Furthermore, to validate our predictions, we compared the predictions with drug-disease pairs in clinical trials using the hypergeometric test, which showed significant results. Our method also showed better performance compared to existing methods for the area under the receiver operating characteristic curve (AUC).
机译:生物分子之间发生各种相互作用,例如激活,抑制,表达或抑制。但是,以前基于网络的药物重新定位研究已经在二元蛋白质-蛋白质相互作用(PPI)网络上采用了相互作用,而没有考虑相互作用的特征。最近,一些使用基因表达数据进行药物重新定位的研究发现,药物与疾病基因之间的关联对于鉴定治疗疾病的新药是有用的信息。但是,药物和疾病的基因表达谱并不总是可用。尽管可以获得药物和疾病的基因表达图谱,但是当分布图谱中的差异表达基因不包括在其网络中时,现有方法无法使用药物或疾病。我们开发了一种新方法,可根据已知的药物-疾病关联性考虑生物分子之间的相互作用类型,从而确定现有药物的候选适应症。为了获得药物和疾病基因之间的关联,我们使用蛋白质相互作用和基因调控数据构建了一个有向网络,该数据可从提供各种生物学途径的各种公共数据库中获得。该网络包括三种类型的边缘,具体取决于生物分子之间的关系。为了量化目标基因和疾病基因之间的关联,我们探索了从目标基因到疾病基因的最短路径,并计算了最短路径的类型和权重。对于每个药物-疾病对,我们构建了一个向量,其中包含受药物影响的每种疾病基因的值。使用载体和已知的疾病-疾病关联,我们构建了分类器以识别每种疾病的新药。我们提出了一种探索药物候选疾病的方法,该方法利用药物与直接基因网络衍生的疾病基因之间的关联来代替从基因表达谱获得的基因调控数据。与需要有关基因关系和基因表达数据信息的现有方法相比,我们的方法可以应用于更多的药物和疾病。此外,为了验证我们的预测,我们在临床试验中使用超几何学测试将预测与药物-疾病对进行了比较,结果显示出显着效果。与现有方法相比,我们的方法在接收器工作特性曲线(AUC)下的面积也表现出更好的性能。

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