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Comparison of Target Features for Predicting Drug-Target Interactions by Deep Neural Network Based on Large-Scale Drug-Induced Transcriptome Data

机译:基于大规模药物诱导的转录组数据的深度神经网络预测药物-靶标相互作用的靶标特征比较

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摘要

Uncovering drug-target interactions (DTIs) is pivotal to understand drug mode-of-action (MoA), avoid adverse drug reaction (ADR), and seek opportunities for drug repositioning (DR). For decades, in silico predictions for DTIs have largely depended on structural information of both targets and compounds, e.g., docking or ligand-based virtual screening. Recently, the application of deep neural network (DNN) is opening a new path to uncover novel DTIs for thousands of targets. One important question is which features for targets are most relevant to DTI prediction. As an early attempt to answer this question, we objectively compared three canonical target features extracted from: (i) the expression profiles by gene knockdown (GEPs); (ii) the protein–protein interaction network (PPI network); and (iii) the pathway membership (PM) of a target gene. For drug features, the large-scale drug-induced transcriptome dataset, or the Library of Integrated Network-based Cellular Signatures (LINCS) L1000 dataset was used. All these features are closely related to protein function or drug MoA, of which utility is only sparsely investigated. In particular, few studies have compared the three types of target features in DNN-based DTI prediction under the same evaluation scheme. Among the three target features, the PM and the PPI network show similar performances superior to GEPs. DNN models based on both features consistently outperformed other machine learning methods such as naïve Bayes, random forest, or logistic regression.
机译:揭示药物-靶标相互作用(DTI)对于理解药物作用模式(MoA),避免药物不良反应(ADR)和寻找药物重新定位(DR)的机会至关重要。数十年来,计算机技术对DTI的预测很大程度上取决于靶标和化合物的结构信息,例如,对接或基于配体的虚拟筛选。最近,深度神经网络(DNN)的应用为发现数千个目标的新颖DTI开辟了一条新途径。一个重要的问题是目标的哪些功能与DTI预测最相关。作为回答这个问题的早期尝试,我们客观地比较了从以下三种方法中提取的三个典型目标特征: (ii)蛋白质-蛋白质相互作用网络(PPI网络); (iii)靶基因的途径成员(PM)。对于药物特征,使用了大规模药物诱导的转录组数据集,或基于集成网络的细胞特征库(LINCS)L1000数据集。所有这些特征都与蛋白质功能或药物MoA密切相关,而对其效用的研究很少。特别是,很少有研究在相同的评估方案下比较基于DNN的DTI预测中的三种目标特征。在这三个目标功能中,PM和PPI网络显示出优于GEP的相似性能。基于这两种功能的DNN模型始终优于其他机器学习方法,例如朴素的贝叶斯,随机森林或逻辑回归。

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