Ibragimova Regina, Iliadis Dimitrios, Waegeman Willem
Department of Data Analysis and Mathematical Modelling, Ghent University, Coupure Links, Ghent 9000, Belgium.
J Chem Inf Model. 2025 Jul 14;65(13):6558-6567. doi: 10.1021/acs.jcim.5c00484. Epub 2025 Jun 30.
Recently, machine learning (ML) has gained popularity in the early stages of drug discovery. This trend is unsurprising given the increasing volume of relevant experimental data and the continuous improvement of ML algorithms. However, conventional models, which rely on the principle of molecular similarity, often fail to capture the complexities of chemical interactions, particularly those involving activity cliffs (ACs)─compounds that are structurally similar but exhibit evidently different activity behaviors. In this study, we explore whether transfer learning from AC prediction can enhance prediction of interactions between drug-like compounds and protein targets. We develop a universal model for AC prediction and investigate its impact when transferring learned representations to DTI prediction. Our results suggest that AC-informed transfer learning has the potential to improve the handling of challenging AC-related scenarios, while maintaining overall predictive performance. This study contributes to the ongoing exploration of strategies to enhance ML-based DTI prediction, particularly in cases where conventional approaches face limitations.
最近,机器学习(ML)在药物发现的早期阶段受到了广泛关注。鉴于相关实验数据量的不断增加以及ML算法的持续改进,这种趋势并不令人意外。然而,传统模型依赖于分子相似性原理,往往无法捕捉化学相互作用的复杂性,特别是那些涉及活性悬崖(ACs)的相互作用——结构相似但活性行为明显不同的化合物。在本研究中,我们探讨了从AC预测进行迁移学习是否可以增强类药物化合物与蛋白质靶点之间相互作用的预测。我们开发了一个用于AC预测的通用模型,并研究了将学习到的表示迁移到DTI预测时的影响。我们的结果表明,基于AC的迁移学习有可能改善对具有挑战性的AC相关场景的处理,同时保持整体预测性能。这项研究有助于持续探索增强基于ML的DTI预测的策略,特别是在传统方法面临局限性的情况下。