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Predicting drug-target interactions from drug structure and protein sequence using novel convolutional neural networks

机译:使用小说卷积神经网络预测药物结构和蛋白质序列的药物 - 靶序列

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BACKGROUND:Accurate identification of potential interactions between drugs and protein targets is a critical step to accelerate drug discovery. Despite many relative experimental researches have been done in the past decades, detecting drug-target interactions (DTIs) remains to be extremely resource-intensive and time-consuming. Therefore, many computational approaches have been developed for predicting drug-target associations on a large scale.RESULTS:In this paper, we proposed an deep learning-based method to predict DTIs only using the information of drug structures and protein sequences. The final results showed that our method can achieve good performance with the accuracies up to 92.0%, 90.0%, 92.0% and 90.7% for the target families of enzymes, ion channels, GPCRs and nuclear receptors of our created dataset, respectively. Another dataset derived from DrugBank was used to further assess the generalization of the model, which yielded an accuracy of 0.9015 and an AUC value of 0.9557.CONCLUSION:It was elucidated that our model shows improved performance in comparison with other state-of-the-art computational methods on the common benchmark datasets. Experimental results demonstrated that our model successfully extracted more nuanced yet useful features, and therefore can be used as a practical tool to discover new drugs.AVAILABILITY:http://deeplearner.ahu.edu.cn/web/CnnDTI.htm.
机译:背景:准确识别药物和蛋白质目标之间的潜在相互作用是加速药物发现的关键步骤。尽管过去几十年来说,尽管有许多相对实验研究,但检测药物 - 目标相互作用(DTI)仍然是极其资源密集和耗时的。因此,已经开发了许多计算方法,用于预测大规模的药物目标关联。结果:在本文中,我们提出了一种基于深度学习的方法,以使用药物结构和蛋白质序列的信息来预测DTI。最终结果表明,我们的方法可以分别实现良好的性能,其精度高达92.0%,90.0%,92.0%和90.7%的酶酶,离子通道,GPCR和核受体的目标系列分别。从药物机组源的另一个数据集用于进一步评估模型的泛化,其精度为0.9015和act0.9557的AUC值。结论:我们的模型与其他状态相比,我们的模型显示出改善的性能。公共基准数据集上的艺术计算方法。实验结果表明,我们的模型成功地提取了更细致的且有用的功能,因此可以用作发现新药物的实用工具。可利用:http://deeplearner.ahu.edu.cn/web/cnndti.htm。

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