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Novel deep learning-based transcriptome data analysis for drug-drug interaction prediction with an application in diabetes

机译:基于深度学习的基于深度学习的转录组数据分析,用于糖尿病患者的药物相互作用预测

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Drug-drug interaction (DDI) is a serious public health issue. The L1000 database of the LINCS project has collected millions of genome-wide expressions induced by 20,000 small molecular compounds on 72 cell lines. Whether this unified and comprehensive transcriptome data resource can be used to build a better DDI prediction model is still unclear. Therefore, we developed and validated a novel deep learning model for predicting DDI using 89,970 known DDIs extracted from the DrugBank database (version 5.1.4). The proposed model consists of a graph convolutional autoencoder network (GCAN) for embedding drug-induced transcriptome data from the L1000 database of the LINCS project; and a long short-term memory (LSTM) for DDI prediction. Comparative evaluation of various machine learning methods demonstrated the superior performance of our proposed model for DDI prediction. Many of our predicted DDIs were revealed in the latest DrugBank database (version 5.1.7). In the case study, we predicted drugs interacting with sulfonylureas to cause hypoglycemia and drugs interacting with metformin to cause lactic acidosis, and showed both to induce effects on the proteins involved in the metabolic mechanism in vivo. The proposed deep learning model can accelerate the discovery of new DDIs. It can support future clinical research for safer and more effective drug co-prescription.
机译:药物 - 药物互动(DDI)是一个严重的公共卫生问题。 LINCs项目的L1000数据库收集了数百万基因组表达式,在72条细胞系上由20,000个小分子化合物诱导。无论是统一和全面的转录组数据资源是否可用于构建更好的DDI预测模型仍不清楚。因此,我们开发并验证了一种新的深度学习模型,用于使用从药物库数据库(5.1.4版)中提取的89,970名已知DDI来预测DDI。所提出的模型包括图表卷积AutoEncoder网络(GCAN),用于从LINCS项目的L1000数据库中嵌入药物诱导的转录组数据;和DDI预测的长短期内存(LSTM)。各种机器学习方法的比较评估显示了我们提出的DDI预测模型的优越性。我们的许多预测的DDIS在最新的药物商数据库(5.1.7版)中揭示。在案例研究中,我们预测与磺酰脲相互作用的药物,导致低血糖和与二甲双胍相互作用以引起乳酸中毒的药物,并显示出诱导对体内代谢机制的蛋白质的效果。建议的深度学习模式可以加速新DDI的发现。它可以支持更安全和更有效的药物协处理的未来临床研究。

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