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DLDTI:一种基于学习的药物-靶点相互作用识别框架,使用神经网络和网络表示法。

DLDTI: a learning-based framework for drug-target interaction identification using neural networks and network representation.

作者信息

Zhao Yihan, Zheng Kai, Guan Baoyi, Guo Mengmeng, Song Lei, Gao Jie, Qu Hua, Wang Yuhui, Shi Dazhuo, Zhang Ying

机构信息

Department of Graduate School, Beijing University of Chinese Medicine, Beijing, China.

School of Computer Science and Engineering, Central South University, Changsha, China.

出版信息

J Transl Med. 2020 Nov 13;18(1):434. doi: 10.1186/s12967-020-02602-7.

Abstract

BACKGROUND

Drug repositioning, the strategy of unveiling novel targets of existing drugs could reduce costs and accelerate the pace of drug development. To elucidate the novel molecular mechanism of known drugs, considering the long time and high cost of experimental determination, the efficient and feasible computational methods to predict the potential associations between drugs and targets are of great aid.

METHODS

A novel calculation model for drug-target interaction (DTI) prediction based on network representation learning and convolutional neural networks, called DLDTI, was generated. The proposed approach simultaneously fused the topology of complex networks and diverse information from heterogeneous data sources, and coped with the noisy, incomplete, and high-dimensional nature of large-scale biological data by learning the low-dimensional and rich depth features of drugs and proteins. The low-dimensional feature vectors were used to train DLDTI to obtain the optimal mapping space and to infer new DTIs by ranking candidates according to their proximity to the optimal mapping space. More specifically, based on the results from the DLDTI, we experimentally validated the predicted targets of tetramethylpyrazine (TMPZ) on atherosclerosis progression in vivo.

RESULTS

The experimental results showed that the DLDTI model achieved promising performance under fivefold cross-validations with AUC values of 0.9172, which was higher than the methods using different classifiers or different feature combination methods mentioned in this paper. For the validation study of TMPZ on atherosclerosis, a total of 288 targets were identified and 190 of them were involved in platelet activation. The pathway analysis indicated signaling pathways, namely PI3K/Akt, cAMP and calcium pathways might be the potential targets. Effects and molecular mechanism of TMPZ on atherosclerosis were experimentally confirmed in animal models.

CONCLUSIONS

DLDTI model can serve as a useful tool to provide promising DTI candidates for experimental validation. Based on the predicted results of DLDTI model, we found TMPZ could attenuate atherosclerosis by inhibiting signal transductions in platelets. The source code and datasets explored in this work are available at https://github.com/CUMTzackGit/DLDTI .

摘要

背景

药物重新定位,即揭示现有药物新靶点的策略,可降低成本并加快药物研发速度。为阐明已知药物的新分子机制,鉴于实验测定耗时且成本高,用于预测药物与靶点潜在关联的高效可行计算方法大有帮助。

方法

生成了一种基于网络表示学习和卷积神经网络的新型药物 - 靶点相互作用(DTI)预测计算模型,称为DLDTI。该方法同时融合了复杂网络的拓扑结构和来自异构数据源的多样信息,并通过学习药物和蛋白质的低维且丰富的深度特征来处理大规模生物数据的噪声、不完整和高维特性。低维特征向量用于训练DLDTI以获得最佳映射空间,并通过根据候选者与最佳映射空间的接近程度对其进行排序来推断新的DTI。更具体地说,基于DLDTI的结果,我们在体内实验验证了川芎嗪(TMPZ)对动脉粥样硬化进展的预测靶点。

结果

实验结果表明,DLDTI模型在五折交叉验证下表现出色,AUC值为0.9172,高于本文提及的使用不同分类器或不同特征组合方法的模型。对于TMPZ对动脉粥样硬化的验证研究,共鉴定出288个靶点,其中190个参与血小板活化。通路分析表明PI3K/Akt、cAMP和钙通路等信号通路可能是潜在靶点。TMPZ对动脉粥样硬化的作用和分子机制在动物模型中得到实验证实。

结论

DLDTI模型可作为一种有用工具,为实验验证提供有前景的DTI候选物。基于DLDTI模型的预测结果,我们发现TMPZ可通过抑制血小板中的信号转导来减轻动脉粥样硬化。本研究中探索的源代码和数据集可在https://github.com/CUMTzackGit/DLDTI获取。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c394/7666529/534c9125456f/12967_2020_2602_Fig1_HTML.jpg

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