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Estimation of the applicability domain of kernel-based machine learning models for virtual screening

机译:用于虚拟筛选的基于内核的机器学习模型的适用范围的估计

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摘要

BackgroundThe virtual screening of large compound databases is an important application of structural-activity relationship models. Due to the high structural diversity of these data sets, it is impossible for machine learning based QSAR models, which rely on a specific training set, to give reliable results for all compounds. Thus, it is important to consider the subset of the chemical space in which the model is applicable. The approaches to this problem that have been published so far mostly use vectorial descriptor representations to define this domain of applicability of the model. Unfortunately, these cannot be extended easily to structured kernel-based machine learning models. For this reason, we propose three approaches to estimate the domain of applicability of a kernel-based QSAR model.
机译:背景大型化合物数据库的虚拟筛选是结构-活性关系模型的重要应用。由于这些数据集的高度结构多样性,依靠特定训练集的基于机器学习的QSAR模型不可能为所有化合物提供可靠的结果。因此,重要的是要考虑可应用该模型的化学空间的子集。迄今为止,已发布的针对该问题的方法大多使用矢量描述符表示法来定义模型的适用范围。不幸的是,这些不能轻易扩展到基于结构化内核的机器学习模型。因此,我们提出了三种方法来估计基于内核的QSAR模型的适用范围。

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