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Analysis and prediction of drug-drug interaction by minimum redundancy maximum relevance and incremental feature selection

机译:最小冗余最大相关性和增量特征选择的药物药物互动的分析与预测

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Drug-drug interaction (DDI) defines a situation in which one drug affects the activity of another when both are administered together. DDI is a common cause of adverse drug reactions and sometimes also leads to improved therapeutic effects. Therefore, it is of great interest to discover novel DDIs according to their molecular properties and mechanisms in a robust and rigorous way. This paper attempts to predict effective DDIs using the following properties: (1) chemical interaction between drugs; (2) protein interactions between the targets of drugs; and (3) target enrichment of KEGG pathways. The data consisted of 7323 pairs of DDIs collected from the DrugBank and 36,615 pairs of drugs constructed by randomly combining two drugs. Each drug pair was represented by 465 features derived from the aforementioned three categories of properties. The random forest algorithm was adopted to train the prediction model. Some feature selection techniques, including minimum redundancy maximum relevance and incremental feature selection, were used to extract key features as the optimal input for the prediction model. The extracted key features may help to gain insights into the mechanisms of DDIs and provide some guidelines for the relevant clinical medication developments, and the prediction model can give new clues for identification of novel DDIs.
机译:药物 - 药物相互作用(DDI)定义了一种在施持两者时一种药物影响另一个药物的情况。 DDI是不良药物反应的常见原因,有时也导致改善治疗效果。因此,通过以稳健和严谨的方式发现新型DDIS,对新型DDIS进行了极大的兴趣。本文试图使用以下性质预测有效的DDIS:(1)药物之间的化学相互作用; (2)药物目标之间的蛋白质相互作用; (3)靶心富集Kegg途径。这些数据由7323对从药物银行收集的7323对DDI,并通过随机结合两种药物构建的36,615对药物。每个药物对由来自上述三类性质衍生的465个特征表示。采用随机森林算法训练预测模型。一些特征选择技术,包括最小冗余最大相关性和增量特征选择,用于提取作为预测模型的最佳输入的关键特征。提取的关键特征可以有助于深入了解DDI的机制,并为相关的临床药物发育提供一些准则,并且预测模型可以为新的DDIS提供新的线索。

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