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Non-negative Matrix Tri-Factorization for Data Integration and Network-based Drug Repositioning

机译:用于数据集成和基于网络的药物重新定位的非负矩阵三分化

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Drug discovery is a high cost and high risk process, thus finding new uses for approved drugs, i.e. drug repositioning, via computational methods has become increasingly interesting. In this study, we present a new network-based approach for predicting potential new indications for existing drugs through their connections with other biological entities. For this aim, we first built a large network integrating drugs, proteins, biological pathways and drugs' categories as nodes of the network, and connections between such nodes as links of the network. Our method leverages the Non-Negative Matrix Tri-Factorization reconstruction of adjacency matrices in order to predict novel category-drug links, i.e. a new category (or use)associated with a drug, taking the entire network information into account. We tested our method on a set of 1,120 drugs labeled with ten categories; when we hide to the method the 10% of the drug-category associations, it was able to infer those missing values with a recall of 60% and a precision of 70%. Precision and recall remain higher than a Random Classifier in case of larger percentage of hidden links, demonstrating the robustness of the method. Also, we were able to predict novel drug-label associations not yet reported in the repository. Finally, we favorably compared our method with a state of the art method for drug repositioning; the NMTF method achieved an average precision score of 0.68 vs. the 0.55 score of the state of the art method.
机译:药物发现是一种高成本和高风险过程,从而寻找批准的药物的新用途,即通过计算方法越来越有趣。在这项研究中,我们提出了一种新的基于网络的方法,用于通过与其他生物实体的联系来预测现有药物的潜在新适应症。为此目的,我们首先建立了一个大型网络整合药物,蛋白质,生物途径和药物类别作为网络的节点,以及这些节点之间的连接作为网络的链接。我们的方法利用邻接矩阵的非负矩阵三分化重建,以预测新的类别药物链接,即与药物相关的新类别(或使用),以考虑整个网络信息。我们在标有十个类别标记的一组1,120药物上测试了我们的方法;当我们隐藏到方法的10%的药物类别协会时,它能够推断那些缺失的值,召回60%,精度为70%。在较大百分比的隐藏链路的情况下,精度和召回仍高于随机分类器,展示该方法的稳健性。此外,我们能够预测在存储库中尚未报告的新药标签关联。最后,我们有利地将我们的方法与药物重新定位的最新方法进行了比较; NMTF方法实现了0.68 Vs的平均精度得分。

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