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SNF-CVAE: Computational method to predict drug-disease interactions using similarity network fusion and collective variational autoencoder

机译:SNF-CVAE:使用相似性网络融合和集体变分自动化器预测药物疾病相互作用的计算方法

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Drug repositioning is an emerging approach to identify novel therapeutic potentials for approved drugs and discover therapies for previously untreatable diseases. Drug repositioning has also attracted considerable attention in the pharmaceutical industry due to its time and cost efficiency in the drug development process compared to the traditional de novo drug discovery process. Recent advances in genomics, the tremendous growth of large-scale publicly available data, the availability of high-performance computing capabilities, along with the rise of machine learning, have further motivated the development of computational drug repositioning approaches. Investigating the relationship between different biomedical entities (e.g., drugs, diseases, genes) is one vital part of most recent studies in the drug repositioning field. Drug-disease interaction (R-DI) prediction is another main issue in drug repositioning research. Combining these relationships and interactions when introducing computational methods to identify novel drug-disease interactions with high accuracy is very challenging. In this study, we propose a robust approach, SNF-CVAE, for predicting novel drug-disease interactions using drug-related similarity information and known drug-disease interactions. SNF-CVAE integrates similarity measures, similarity selection, similarity network fusion (SNF), and collective variational autoencoder (CVAE) to conduct a non-linear analysis and improve the drug-disease interaction prediction accuracy. We evaluated the robustness of SNF-CVAE using different information models, drug similarity calculation measures, and drug similarity information. Moreover, we compared SNF-CVAE performance with four state-of-the-art machine learning models. SNF-CVAE achieved outstanding performance in stratified 5-fold cross-validation (Prec = 0.902, Rec = 0.883, F1 = 0.893, AUC-ROC = 0.958, and AUC-PR=0.970). Furthermore, we showed the efficiency of SNF-CVAE in predicting novel drug-disease interactions by validating the top-ranked interactions against pharmaceutical indications and clinical trial studies, which resulted in substantial pieces of evidence for almost all of RDIs predicted by our proposed model. To further demonstrate the reliability and robustness of SNF-CVAE, we conducted two case studies on the top predicted drug candidates for potentially treating Alzheimer's disease and Juvenile rheumatoid arthritis, which were successfully validated against clinical trials and published studies. In conclusion, we strongly believe that computational drug repurposing research could significantly benefit from integrating similarity measures and deep learning models to predict novel drug-disease interactions in heterogeneous networks. (C) 2020 Elsevier B.V. All rights reserved.
机译:药物重新定位是一种新兴的方法,用于识别批准的药物的新疗效,并发现以前无法治疗的疾病的治疗方法。与传统的De Novo药物发现过程相比,药物排雷在制药行业中也引起了相当大的关注。药物开发过程的成本效率。基因组学的最新进展,大规模公开数据的巨大增长,高性能计算能力的可用性以及机器学习的兴起,进一步激励了计算药物重新定位方法的发展。调查不同生物医学实体(例如,药物,疾病,基因)之间的关系是药物重新定位领域最近研究的一个重要组成部分。毒性疾病相互作用(R-DI)预测是药物排雷研究的另一个主要问题。在引入计算方法时结合这些关系和相互作用以识别高精度的新型毒性疾病相互作用是非常具有挑战性的。在这项研究中,我们提出了一种稳健的方法,SNF-CVAE,用于预测使用与药物相关的相似性信息和已知的药物疾病相互作用进行新的药物疾病相互作用。 SNF-CVAE集成了相似度测量,相似性选择,相似性网络融合(SNF)和集体变分性AutoEncoder(CVAE)来进行非线性分析并提高毒性疾病相互作用预测精度。我们使用不同的信息模型,药物相似性计算措施和药物相似信息评估了SNF-CVAE的稳健性。此外,我们将SNF-CVAE性能与四种最先进的机器学习模型进行了比较。 SNF-CVAE在分层5倍交叉验证中实现了出色的性能(PRED = 0.902,REC = 0.883,F1 = 0.893,AUC-ROC = 0.958和AUC-PR = 0.970)。此外,我们通过验证对药物适应症和临床试验研究的排名相互作用来预测新型毒性相互作用的SNF-CVAE在预测新的毒性疾病相互作用中的效率,这导致了几乎所有由我们所提出的模型预测的RDI所预测的基本证据。为了进一步证明SNF-CVAE的可靠性和稳健性,我们对潜在治疗阿尔茨海默病和青少年类风湿性关节炎的顶部预测的药物候选人进行了两种情况,这成功验证了临床试验和公开的研究。总之,我们强烈认为,计算药物重新调整研究可以显着损害整合相似度措施和深度学习模型,以预测异构网络中的新型毒性疾病相互作用。 (c)2020 Elsevier B.v.保留所有权利。

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