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How Sure Can We Be about ML Methods-Based Evaluation of Compound Activity Incorporation of Information about Prediction Uncertainty Using Deep Learning Techniques

机译:我们如何确定ML方法的基于方法的复合活动评估,使用深层学习技术纳入关于预测不确定性的信息

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A great variety of computational approaches support drug design processes, helping in selection of new potentially active compounds, and optimization of their physicochemical and ADMET properties. Machine learning is a group of methods that are able to evaluate in relatively short time enormous amounts of data. However, the quality of machine-learning-based prediction depends on the data supplied for model training. In this study, we used deep neural networks for the task of compound activity prediction and developed dropout-based approaches for estimating prediction uncertainty. Several types of analyses were performed: the relationships between the prediction error, similarity to the training set, prediction uncertainty, number and standard deviation of activity values were examined. It was tested whether incorporation of information about prediction uncertainty influences compounds ranking based on predicted activity and prediction uncertainty was used to search for the potential errors in the ChEMBL database. The obtained outcome indicates that incorporation of information about uncertainty of compound activity prediction can be of great help during virtual screening experiments.
机译:各种各样的计算方法支持药物设计过程,有助于选择新的潜在活性化合物,以及它们的物理化学和呼吸特性的优化。机器学习是一组方法,可以在相对较短的时间内评估大量数据。然而,基于机器学习的预测的质量取决于提供模型训练的数据。在这项研究中,我们使用深神经网络进行复合活性预测的任务,并开发了基于辍学的方法,以估计预测不确定性。进行了几种类型的分析:研究了预测误差与活动值的预测,预测不确定性,数量和标准偏差之间的预测误差,相似性。测试了关于预测不确定性的信息的纳入基于预测的活动和预测不确定性的化合物排序,用于搜索ChemBL数据库中的潜在误差。所获得的结果表明,在虚拟筛选实验期间,将关于复合活性预测的不确定性的信息纳入信息。

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