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Drug-Protein-Disease Association Prediction and Drug Repositioning Based on Tensor Decomposition

机译:基于张量分解的药物 - 蛋​​白疾病关联预测和药物重新定位

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The old paradigm “one gene, one drug, one disease” of drug discovery is challenged in many cases, where many drugs act on multiple targets and diseases rather than only one. Drug repositioning, which aims to discover new indications of known drugs, is a useful and economical strategy for drug discovery. It is also important to identify the functional clustering of target proteins, drugs and diseases, and to understand the pathological reasons for their interactions among these clusters and individuals. In this study, we propose a novel computational method to predict potential associations among drugs, proteins and diseases based on tensor decomposition. First, we collect pairwise associations between drugs, proteins and diseases, and integrate them into a three-dimensional tensor, representing the drug-protein-disease triplet associations. Then, we carry out tensor decomposition on the association tensor together with some additional information, and get three factor matrices of drugs, proteins and diseases respectively. Finally, we reconstruct the association tensor by the factor matrices to derive new predictions of triplet associations. We compare our method with some baseline methods and find our method outperforming the others. We validate our top ranked predictions by literature search and computational docking. In addition, we cluster the drugs, proteins and diseases using the factor matrices, which reflect the functional patterns of the drugs, proteins and diseases. Comparing our clustering to existing classifications/clusters, we find some agreement between them and that the factor matrices indeed reflect the functional patterns.
机译:在许多情况下,旧的范式“一种基因,一种药物,一种药物,一种药物,一种药物”受到挑战,许多药物在多种靶标和疾病上行为,而不是一个药物。旨在发现已知药物新迹象的药物重新定位是一种有用和经济的药物发现策略。鉴定目标蛋白质,药物和疾病的功能聚类以及了解这些簇和个人之间的互动的病理原因也很重要。在这项研究中,我们提出了一种新的计算方法来预测基于张量分解的药物,蛋白质和疾病之间的潜在关联。首先,我们收集药物,蛋白质和疾病之间的成对关联,并将它们整合到三维张量中,代表药物 - 蛋​​白质疾病三重态相关联。然后,我们将关联张量与一些附加信息一起进行张量分解,并分别获得三个药物,蛋白质和疾病的一个因子矩阵。最后,我们通过因子矩阵重建关联张量来导出三重态关联的新预测。我们将我们的方法与一些基线方法进行比较,并找到我们的方法优于其他方法。我们通过文献搜索和计算对接来验证我们的最高排名的预测。此外,我们使用因子矩阵聚集药物,蛋白质和疾病,反映药物,蛋白质和疾病的功能模式。将群集与现有分类/集群进行比较,我们在它们之间找到了一些协议,并且因子矩阵确实反映了功能模式。

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