A Guide for Active Learning in Synergistic Drug Discovery

Shuhui Wang, Alexandre Allauzen, Philippe Nghe, Vaitea Opuu
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Abstract

Synergistic drug combination screening is a promising strategy in drug discovery, but it involves navigating a costly and complex search space. While AI, particularly deep learning, has advanced synergy predictions, its effectiveness is limited by the low occurrence of synergistic drug pairs. Active learning, which integrates experimental testing into the learning process, has been proposed to address this challenge. In this work, we explore the key components of active learning to provide recommendations for its implementation. We find that molecular encoding has a limited impact on performance, while the cellular environment features significantly enhance predictions. Additionally, active learning can discover 60% of synergistic drug pairs with only exploring 10% of combinatorial space. The synergy yield ratio is observed to be even higher with smaller batch sizes, where dynamic tuning of the exploration-exploitation strategy can further enhance performance.
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协同药物发现中的主动学习指南
协同药物组合筛选是一种前景广阔的药物发现策略,但需要在昂贵而复杂的搜索空间中进行导航。虽然人工智能,尤其是深度学习,已经推进了协同作用的预测,但其有效性受到协同药物配对出现率低的限制。为了应对这一挑战,有人提出了将实验测试融入学习过程的主动学习。在这项工作中,我们探讨了主动学习的关键要素,为其实施提供了建议。我们发现,分子编码对性能的影响有限,而细胞环境特征则能显著提高预测能力。此外,主动学习只需探索 10%的组合空间,就能发现 60% 的协同药物配对。据观察,在批量规模较小的情况下,协同收益率甚至更高,而动态调整探索-开发策略可进一步提高性能。
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