Identifying the common genetic networks of ADR (adverse drug reaction) clusters and developing an ADR classification model†

IF 3.743 Q2 Biochemistry, Genetics and Molecular Biology Molecular BioSystems Pub Date : 2017-06-19 DOI:10.1039/C7MB00059F
Youhyeon Hwang, Min Oh, Giup Jang, Taekeon Lee, Chihyun Park, Jaegyoon Ahn and Youngmi Yoon
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引用次数: 5

Abstract

Adverse drug reactions (ADRs) are one of the major concerns threatening public health and have resulted in failures in drug development. Thus, predicting ADRs and discovering the mechanisms underlying ADRs have become important tasks in pharmacovigilance. Identification of potential ADRs by computational approaches in the early stages would be advantageous in drug development. Here we propose a computational method that elucidates the action mechanisms of ADRs and predicts potential ADRs by utilizing ADR genes, drug features, and protein–protein interaction (PPI) networks. If some ADRs share similar features, there is a high possibility that they may appear together in a drug and share analogous mechanisms. Proceeding from this assumption, we clustered ADRs according to interactions of ADR genes in the PPI networks and the frequency of co-occurrence of ADRs in drugs. ADR clusters were verified based on a side effect database and literature data regarding whether ADRs have relevance to other ADRs in the same cluster. Gene networks shared by ADRs in each cluster were constructed by cumulating the shortest paths between drug target genes and ADR genes in the PPI network. We developed a classification model to predict potential ADRs using these gene networks shared by ADRs and calculated cross-validation AUC (area under the curve) values for each ADR cluster. In addition, in order to demonstrate correlations between gene networks shared by ADRs and ADRs in a cluster, we applied the Wilcoxon rank sum statistical test to the literature data and results of a Google query search. We attained statistically meaningful p-values (<0.05) for every ADR cluster. The results suggest that our approach provides insights into discovering the action mechanisms of ADRs and is a novel attempt to predict ADRs in a biological aspect.

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确定ADR(药物不良反应)集群的共同遗传网络并建立ADR分类模型†
药物不良反应(adr)是威胁公众健康的主要问题之一,并导致药物开发的失败。因此,预测药物不良反应和发现药物不良反应的机制已成为药物警戒的重要任务。在早期阶段通过计算方法识别潜在的不良反应将有利于药物开发。在此,我们提出了一种计算方法,通过利用ADR基因、药物特征和蛋白-蛋白相互作用(PPI)网络来阐明ADR的作用机制并预测潜在的ADR。如果某些adr具有相似的特征,则它们很可能在药物中一起出现并具有类似的机制。从这一假设出发,我们根据PPI网络中ADR基因的相互作用和药物中ADR共现的频率对ADR进行聚类。根据副作用数据库和文献数据验证ADR聚类是否与同一聚类中的其他ADR相关。通过累积PPI网络中药物靶基因与ADR基因之间的最短路径,构建各簇中ADR共享的基因网络。我们建立了一个分类模型,利用这些ADR共享的基因网络来预测潜在的ADR,并计算每个ADR集群的交叉验证AUC(曲线下面积)值。此外,为了证明adr共享的基因网络与集群内adr之间的相关性,我们对文献数据和Google查询搜索结果应用了Wilcoxon秩和统计检验。我们获得了具有统计学意义的p值(<0.05)。结果表明,我们的方法为发现adr的作用机制提供了见解,并且是在生物学方面预测adr的新尝试。
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来源期刊
Molecular BioSystems
Molecular BioSystems 生物-生化与分子生物学
CiteScore
2.94
自引率
0.00%
发文量
0
审稿时长
2.6 months
期刊介绍: Molecular Omics publishes molecular level experimental and bioinformatics research in the -omics sciences, including genomics, proteomics, transcriptomics and metabolomics. We will also welcome multidisciplinary papers presenting studies combining different types of omics, or the interface of omics and other fields such as systems biology or chemical biology.
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