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SNF-NN: computational method to predict drug-disease interactions using similarity network fusion and neural networks

机译:SNF-NN:使用相似性网络融合和神经网络预测毒性相互作用的计算方法

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Drug repositioning is an emerging approach in pharmaceutical research for identifying novel therapeutic potentials for approved drugs and discover therapies for untreated diseases. Due to its time and cost efficiency, drug repositioning plays an instrumental role in optimizing the drug development process compared to the traditional de novo drug discovery process. Advances in the genomics, together with the enormous growth of large-scale publicly available data and the availability of high-performance computing capabilities, have further motivated the development of computational drug repositioning approaches. More recently, the rise of machine learning techniques, together with the availability of powerful computers, has made the area of computational drug repositioning an area of intense activities. In this study, a novel framework SNF-NN based on deep learning is presented, where novel drug-disease interactions are predicted using drug-related similarity information, disease-related similarity information, and known drug-disease interactions. Heterogeneous similarity information related to drugs and disease is fed to the proposed framework in order to predict novel drug-disease interactions. SNF-NN uses similarity selection, similarity network fusion, and a highly tuned novel neural network model to predict new drug-disease interactions. The robustness of SNF-NN is evaluated by comparing its performance with nine baseline machine learning methods. The proposed framework outperforms all baseline methods ( $$AUC-ROC$$ = 0.867, and $$AUC-PR$$ =0.876) using stratified 10-fold cross-validation. To further demonstrate the reliability and robustness of SNF-NN, two datasets are used to fairly validate the proposed framework’s performance against seven recent state-of-the-art methods for drug-disease interaction prediction. SNF-NN achieves remarkable performance in stratified 10-fold cross-validation with $$AUC-ROC$$ ranging from 0.879 to 0.931 and $$AUC-PR$$ from 0.856 to 0.903. Moreover, the efficiency of SNF-NN is verified by validating predicted unknown drug-disease interactions against clinical trials and published studies. In conclusion, computational drug repositioning research can significantly benefit from integrating similarity measures in heterogeneous networks and deep learning models for predicting novel drug-disease interactions. The data and implementation of SNF-NN are available at http://pages.cpsc.ucalgary.ca/?tnjarada/snf-nn.php .
机译:药物重新定位是一种用于识别批准的药物的新型治疗潜力的药物研究的新出现方法,并发现未经处理的疾病的治疗方法。由于其时间和成本效率,与传统的De Novo药物发现过程相比,药物重新定位在优化药物开发过程中起作用。基因组学的进步以及大规模公开可用数据的巨大增长以及高性能计算能力的可用性,进一步激励了计算药物重新定位方法的发展。最近,机器学习技术的兴起与强大的计算机的可用性一起,使得计算药物的区域重新定位了一个激烈的活动区域。在本研究中,提出了一种基于深度学习的新型框架SNF-NN,其中使用药物相关的相似性信息,疾病相关的相似性和已知的药物疾病相互作用来预测新的毒性疾病相互作用。与药物和疾病相关的异质相似性信息被送入所提出的框架,以预测新的毒性疾病相互作用。 SNF-NN使用相似性选择,相似度网络融合和高度调整的新型神经网络模型来预测新的毒性疾病相互作用。通过将其性能与九种基线机学习方法进行比较来评估SNF-Nn的稳健性。建议的框架优于所有基线方法($$ AUC-ROC $$ = 0.867,以及$$ AUC-PR $$ = 0.876),使用分层10倍交叉验证。为了进一步证明SNF-NN的可靠性和稳健性,使用两个数据集来公平地验证拟议的框架性能,以防止七种最先进的药物疾病相互作用预测方法。 SNF-NN在分层10倍的交叉验证中实现了显着性能,其中QUAC-ROC $$从0.879到0.931和$$ AUC-PR $$ 0.856至0.903。此外,通过验证预测未知的药物疾病相互作用和公布的研究来验证SNF-NN的效率。总之,计算药物重新定位研究可以显着受益于集成异构网络和深层学习模型中的相似性措施,以预测新型毒性疾病相互作用。 SNF-Nn的数据和实现可在http://pages.cpsc.ucalgary.ca/?tnjarada/snf-nn.php中获得。

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