Drug-target interactions (DTIs) play a crucial role in target-based drug discovery and development. Computational prediction of DTIs can effectively complement experimental wet-lab techniques for the identification of DTIs, which are typically time- and resource-consuming. However, the performances of the current DTI prediction approaches suffer from a problem of low precision and high false-positive rate. In this study, we aim to develop a novel DTI prediction method for improving the prediction performance based on a cascade deep forest (CDF) model, named DTI-CDF, with multiple similarity-based features between drugs and the similarity-based features between target proteins extracted from the heterogeneous graph, which contains known DTIs. In the experiments, we built five replicates of 10-fold cross-validation under three different experimental settings of data sets, namely, corresponding DTI values of certain drugs (SD), targets (ST), or drug-target pairs (SP) in the training sets are missed but existed in the test sets. The experimental results demonstrate that our proposed approach DTI-CDF achieves a significantly higher performance than that of the traditional ensemble learning-based methods such as random forest and XGBoost, deep neural network, and the state-of-the-art methods such as DDR. Furthermore, there are 1352 newly predicted DTIs which are proved to be correct by KEGG and DrugBank databases. The data sets and source code are freely available at https://github.com//a96123155/DTI-CDF.

译文

:药物-靶标相互作用(DTI)在基于靶标的药物发现和开发中起着至关重要的作用。 DTI的计算预测可以有效地补充用于确定DTI的实验性湿实验室技术,这通常是耗时和资源消耗的。但是,当前的DTI预测方法的性能存在精度低和假阳性率高的问题。在这项研究中,我们旨在开发一种新的DTI预测方法,以基于称为DTI-CDF的级联深林(CDF)模型来提高预测性能,该模型具有多个药物之间基于相似性的特征以及目标之间基于相似性的特征从异构图中提取的蛋白质,其中包含已知的DTI。在实验中,我们在三种不同的数据集实验设置下建立了10倍交叉验证的五个重复样本,分别是某些药物(SD),靶标(ST)或药物靶标对(SP)的相应DTI值。缺少训练集,但存在于测试集中。实验结果表明,与传统的基于集合学习的方法(例如,随机森林和XGBoost),深度神经网络以及最新的方法(例如,DDR)相比,我们提出的方法DTI-CDF的性能要高得多。此外,还有KEGG和DrugBank数据库证明是正确的1352个新预测的DTI。数据集和源代码可从https://github.com//a96123155/DTI-CDF免费获得。

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