Centre of Biological Engineering, University of Minho, Campus of Gualtar, Braga, Portugal.
J Integr Bioinform. 2022 Aug 26;19(3). doi: 10.1515/jib-2022-0006. eCollection 2022 Sep 1.
Machine learning (ML) is increasingly being used to guide drug discovery processes. When applying ML approaches to chemical datasets, molecular descriptors and fingerprints are typically used to represent compounds as numerical vectors. However, in recent years, end-to-end deep learning (DL) methods that can learn feature representations directly from line notations or molecular graphs have been proposed as alternatives to using precomputed features. This study set out to investigate which compound representation methods are the most suitable for drug sensitivity prediction in cancer cell lines. Twelve different representations were benchmarked on 5 compound screening datasets, using DeepMol, a new chemoinformatics package developed by our research group, to perform these analyses. The results of this study show that the predictive performance of end-to-end DL models is comparable to, and at times surpasses, that of models trained on molecular fingerprints, even when less training data is available. This study also found that combining several compound representation methods into an ensemble can improve performance. Finally, we show that a feature attribution method can boost the explainability of the DL models.
机器学习(ML)越来越多地被用于指导药物发现过程。当将 ML 方法应用于化学数据集时,通常使用分子描述符和指纹将化合物表示为数字向量。然而,近年来,已经提出了端到端深度学习(DL)方法,可以直接从线符号或分子图中学习特征表示,作为使用预计算特征的替代方法。本研究旨在探讨哪种化合物表示方法最适合癌细胞系的药物敏感性预测。使用我们研究小组开发的新化学生信包 DeepMol,在 5 个化合物筛选数据集上对 12 种不同的表示方法进行了基准测试,以执行这些分析。本研究的结果表明,端到端 DL 模型的预测性能可与基于分子指纹训练的模型相媲美,有时甚至超过后者,即使可用的训练数据较少。本研究还发现,将几种化合物表示方法组合成一个集成可以提高性能。最后,我们展示了一种特征归因方法可以提高 DL 模型的可解释性。