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Improved genome-scale multi-target virtual screening via a novel collaborative filtering approach to cold-start problem

机译:通过新颖的协作滤波方法改进基因组规模的多目标虚拟筛选到冷启动问题

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Conventional one-drug-one-gene approach has been of limited success in modern drug discovery. Polypharmacology, which focuses on searching for multi-targeted drugs to perturb disease-causing networks instead of designing selective ligands to target individual proteins, has emerged as a new drug discovery paradigm. Although many methods for single-target virtual screening have been developed to improve the efficiency of drug discovery, few of these algorithms are designed for polypharmacology. Here, we present a novel theoretical framework and a corresponding algorithm for genome-scale multi-target virtual screening based on the one-class collaborative filtering technique. Our method overcomes the sparseness of the protein-chemical interaction data by means of interaction matrix weighting and dual regularization from both chemicals and proteins. While the statistical foundation behind our method is general enough to encompass genome-wide drug off-target prediction, the program is specifically tailored to find protein targets for new chemicals with little to no available interaction data. We extensively evaluate our method using a number of the most widely accepted gene-specific and cross-gene family benchmarks and demonstrate that our method outperforms other state-of-the-art algorithms for predicting the interaction of new chemicals with multiple proteins. Thus, the proposed algorithm may provide a powerful tool for multi-target drug design.
机译:常规的单药 - 一基因方法在现代药物发现中取得了有限。多酚乐会专注于寻找多目标药物对扰动疾病的网络而不是设计选择性配体来靶向个体蛋白质,其作为一种新的药物发现范式。虽然已经开发出许多用于单目标虚拟筛查的方法以提高药物发现的效率,但这些算法中的很少用于多药地。在这里,我们基于单级协同滤波技术展示了一种新颖的理论框架和相应的基因组多目标虚拟筛选算法。我们的方法克服了蛋白化学相互作用数据的稀疏性通过从化学物质和蛋白质中的相互作用基质加权和双正则化。虽然我们的方法背后的统计基础足以包含基因组的偏离目标预测,但该程序特别定制,以找到新化学品的蛋白质目标,几乎没有可用的交互数据。我们使用许多最广泛接受的基因特异性和交叉基因家族基准进行广泛评估我们的方法,并证明我们的方法优于其他最先进的算法,以预测新化学品与多种蛋白质的相互作用。因此,所提出的算法可以提供用于多目标药物设计的强大工具。

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