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Ligand-Based Virtual Screening using Random Walk Kernel and Empirical Filters

机译:使用随机游动核和经验过滤器的基于配体的虚拟筛选

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Drug discovery is a time-consuming and costly process. The data generated during various stages of the drug discovery is drastically increasing and it forces machine-learning scientist to implement more effective and fast methods for the utilization of data for reducing the cost and time. Molecular graphs are very expressive which allow faster implementation of the machine-learning algorithms. During the discovery phase, virtual or in silico screening plays a major role in optimizing the synthesis efforts and reducing the attrition rate of the new chemical entities (NCEs). In the present work, a combination of the virtual screening using walk kernel and empirical filters was tried. The model was applied to two classification problems to predict mutagenicity and toxicity on two publically-available datasets. The accuracies obtained were 67% for the PTC dataset and 87% for the MUTAG dataset. The results obtained from the combined method were found to be more accurate with less computational cost.
机译:药物发现是一个耗时且昂贵的过程。在药物发现的各个阶段生成的数据急剧增加,它迫使机器学习科学家采用更有效,更快速的方法来利用数据,从而降低成本和时间。分子图具有很高的表达力,可以更快地实施机器学习算法。在发现阶段,虚拟或计算机筛选在优化合成工作和降低新化学实体(NCE)的损耗率方面起着重要作用。在目前的工作中,尝试了使用步行核和经验过滤器的虚拟筛选的组合。该模型应用于两个分类问题,以预测两个公开可用的数据集的致突变性和毒性。 PTC数据集的准确性为67%,MUTAG数据集的准确性为87%。发现从组合方法获得的结果更准确,计算成本更低。

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